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Topic Editors

Faculty of Electric Power Engineering, Kunming University of Science and Technology, Kunming 650500, China
Prof. Dr. Zhijian Liu
Faculty of Electric Power Engineering, Kunming University of Science and Technology, Kunming 650500, China
Prof. Dr. Lin Jiang
Department of Electrical Engineering and Electronics, University of Liverpool, Liverpool L69 3GJ, UK

Advances in Power Science and Technology

Abstract submission deadline
closed (29 February 2024)
Manuscript submission deadline
closed (31 May 2024)
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Topic Information

Dear Colleagues,

With the continuous increase in renewable energy in the power system, technologies such as grid control and optimization, energy storage planning, and wind power forecasting have become increasingly important. These technologies can help to realize the sustainable development of the power system and improve the security, stability, and reliability of the power grid.

The purpose of power grid control and optimization is to ensure the stability and reliability of the power system through real-time monitoring and adjust the operation of the power grid. The purpose of energy storage planning is to optimize the energy storage capacity and distribution of the power system to meet the load demand and respond to emergencies. The purpose of wind power prediction is to predict the future wind speed and wind energy using meteorology, statistics, and machine learning methods, so as to optimize the planning and scheduling of wind power generation.

The research of this topic involves many fields, including power system, energy storage technology, meteorology, statistics, and machine learning. Through relevant research, the challenges faced by the power system can be effectively solved and the sustainable development of the power industry can be promoted.

Prof. Dr. Bo Yang
Prof. Dr. Zhijian Liu
Prof. Dr. Lin Jiang
Topic Editors

Keywords

  • control
  • optimization
  • forecast
  • plan
  • power system

Participating Journals

Journal Name Impact Factor CiteScore Launched Year First Decision (median) APC
Electricity
electricity
- 4.8 2020 27.2 Days CHF 1000
Electronics
electronics
2.6 5.3 2012 16.8 Days CHF 2400
Energies
energies
3.0 6.2 2008 17.5 Days CHF 2600
Processes
processes
2.8 5.1 2013 14.4 Days CHF 2400
Sustainability
sustainability
3.3 6.8 2009 20 Days CHF 2400

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Published Papers (27 papers)

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4 pages, 142 KiB  
Editorial
Exploring Sustainable Development of New Power Systems under Dual Carbon Goals: Control, Optimization, and Forecasting
by Bo Yang, Jinhang Duan, Zhijian Liu and Lin Jiang
Energies 2024, 17(16), 3909; https://doi.org/10.3390/en17163909 - 8 Aug 2024
Viewed by 920
Abstract
In the context of achieving carbon neutrality, the substantial integration of high proportions of renewable energy sources has significantly impacted the dynamic characteristics of power systems, including frequency stability, voltage security, and synchronous stability, thereby posing formidable challenges to the secure and stable [...] Read more.
In the context of achieving carbon neutrality, the substantial integration of high proportions of renewable energy sources has significantly impacted the dynamic characteristics of power systems, including frequency stability, voltage security, and synchronous stability, thereby posing formidable challenges to the secure and stable operation of power systems [...] Full article
(This article belongs to the Topic Advances in Power Science and Technology)
19 pages, 4027 KiB  
Article
Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam
by Phu Trieu Ha, Dao Trong Tran, Tan Minh Phan and Thang Trung Nguyen
Sustainability 2024, 16(15), 6581; https://doi.org/10.3390/su16156581 - 1 Aug 2024
Cited by 1 | Viewed by 1138
Abstract
The study maximizes the total profit of a hybrid power system with cascaded hydropower plants, thermal power plants, pumped storage hydropower plants, and wind and solar power plants over one operation day, considering the uncertainty of wind speed and solar radiation. Wind speed [...] Read more.
The study maximizes the total profit of a hybrid power system with cascaded hydropower plants, thermal power plants, pumped storage hydropower plants, and wind and solar power plants over one operation day, considering the uncertainty of wind speed and solar radiation. Wind speed and solar radiation in a specific zone in Vietnam are collected using the wind and solar global atlases, and the maximum data are then supposed to be 120% of the collection for uncertainty consideration. The metaheuristic algorithms, including the original Slime mould algorithm (SMA), Equilibrium optimizer, and improved Slime mould algorithm (ISMA), are implemented for the system. ISMA is a developed version of SMA that cancels old methods and proposes new methods of updating new solutions. In the first stage, the cascaded system with four hydropower plants is optimally operated by simulating two cases: simultaneous optimization and individual optimization. ISMA is better than EO and SMA for the two cases, and the results of ISMA from the simultaneous optimization reach greater energy than individual optimization by 154.8 MW, equivalent to 4.11% of the individual optimization. For the whole system, ISMA can reach a greater total profit than EO and SMA over one operating day by USD 6007.5 and USD 650.5, equivalent to 0.12% and 0.013%. The results indicate that the optimization operation of cascaded hydropower plants and hybrid power systems can reach a huge benefit in electricity sales Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>The structure of the considered hybrid system.</p>
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<p>The configuration of the four cascaded hydroelectric plants.</p>
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<p>Location of Binh Thuan province in Vietnam.</p>
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<p>Real wind speed and power in a location of Binh Thuan province in Vietnam.</p>
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<p>Wind power applied for uncertainty.</p>
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<p>Maximum hourly solar power.</p>
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<p>Renewable powers for uncertainty and electric price.</p>
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<p>One-day energy of the whole cascaded system.</p>
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<p>Comparison of generation: (<b>a</b>) CasHP1, (<b>b</b>) CasHP 2, (<b>c</b>) CasHP3, (<b>d</b>) CaseHP4.</p>
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<p>Total profit values collected from twenty trials.</p>
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<p>Cost, revenue, and profit of thermal power plants: (<b>a</b>) the first ThP, (<b>b</b>) the second ThP, (<b>c</b>) the third ThP, (<b>d</b>) the fourth ThP.</p>
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<p>Cost, revenue, and profit: (<b>a</b>) wind power plant, (<b>b</b>) solar power plant.</p>
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<p>Total cost, revenue and profit of whole system.</p>
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<p>Costs of the wind power plant.</p>
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<p>Costs of the solar power plant.</p>
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24 pages, 3002 KiB  
Article
Adaptability Evaluation of Power Grid Planning Scheme for Novel Power System Considering Multiple Decision Psychology
by Yuqing Wang, Chaochen Yan, Zhaozhen Wang and Jiaxing Wang
Energies 2024, 17(15), 3672; https://doi.org/10.3390/en17153672 - 25 Jul 2024
Cited by 2 | Viewed by 635
Abstract
With a substantial fraction of renewable energy integrated into the electrical grid, the new power system urgently requires grid planning scheme displaying adaptability to different energy types and their volatility. Considering the indeterminacy of renewable energy generation output and the different attitudes of [...] Read more.
With a substantial fraction of renewable energy integrated into the electrical grid, the new power system urgently requires grid planning scheme displaying adaptability to different energy types and their volatility. Considering the indeterminacy of renewable energy generation output and the different attitudes of decision-makers towards its risk, this paper proposes an adaptability assessment methodology for power grid planning schemes considering multiple decision psychology. First, an evaluation indicator framework is established based on the adaptive requirements of the grid planning for novel power system, and the weights of indicators are calculated based on an improved AHP-CRITIC combination weighting method. Second, improved cumulative prospect theory (ICPT) is adopted to improve to the calculation method of the distance between the evaluation program and the positive and negative ideal programs in the GRA and TOPSIS, which effectively characterize the different decision-making psychologies, and a combination evaluation model is constructed based on a cooperative game (CG), namely, an adaptability evaluation model of grid planning schemes for novel power systems based on GRA-TOPSIS integrating CG and ICPT. Finally, the proposed model serves to evaluate grid planning schemes of three regions in China’s 14th Five-Year Plan. The evaluation results show that the adaptability of the schemes varies under different decision-making psychologies, and under the risk-aggressive and loss-sensitive decision-making psychologies, grid planning scheme of Region 1 with the greatest accommodation capacity of renewable energy is preferable. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Adaptive demand of grid planning for novel power system.</p>
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<p>Flow chart of adaptability evaluation method of grid planning scheme for novel power system considering multiple decision psychology.</p>
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<p>Improved prospect value function.</p>
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<p>Comparison of the assessment results of 3 evaluation methods.</p>
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<p>The scores of the first-level indicators in ICPT-GRA.</p>
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<p>The scores of the first-level indicators in ICPT-TOPSIS.</p>
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<p>The scores of the first-level indicators in GRA-TOPSIS integrating CG and ICPT.</p>
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<p>The scores of the second-level indicators in GRA-TOPSIS integrating CG and ICPT.</p>
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<p>Results of multiple psychological comprehensive evaluation of decision-makers.</p>
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<p>Results of the evaluation of first-level indicators under multiple psychology in Region 1.</p>
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20 pages, 3598 KiB  
Article
Multi-Site Wind Speed Prediction Based on Graph Embedding and Cyclic Graph Isomorphism Network (GIN-GRU)
by Hongshun Wu and Hui Chen
Energies 2024, 17(14), 3516; https://doi.org/10.3390/en17143516 - 17 Jul 2024
Cited by 2 | Viewed by 745
Abstract
Accurate and reliable wind speed prediction is conducive to improving the power generation efficiency of electrical systems. Due to the lack of adequate consideration of spatial feature extraction, the existing wind speed prediction models have certain limitations in capturing the rich neighborhood information [...] Read more.
Accurate and reliable wind speed prediction is conducive to improving the power generation efficiency of electrical systems. Due to the lack of adequate consideration of spatial feature extraction, the existing wind speed prediction models have certain limitations in capturing the rich neighborhood information of multiple sites. To address the previously mentioned constraints, our study introduces a graph isomorphism-based gated recurrent unit (GIN-GRU). Initially, the model utilizes a hybrid mechanism of random forest and principal component analysis (PCA-RF) to discuss the feature data from different sites. This process not only preserves the primary features but also extracts critical information by performing dimensionality reduction on the residual features. Subsequently, the model constructs graph networks by integrating graph embedding techniques with the Mahalanobis distance metric to synthesize the correlation information among features from multiple sites. This approach effectively consolidates the interrelated feature data and captures the complex interactions across multiple sites. Ultimately, the graph isomorphism network (GIN) delves into the intrinsic relationships within the graph networks and the gated recurrent unit (GRU) integrates these relationships with temporal correlations to address the challenges of wind speed prediction effectively. The experiments conducted on wind farm datasets for offshore California in 2019 have demonstrated that the proposed model has higher prediction accuracy compared to the comparative model such as CNN-LSTM and GAT-LSTM. Specifically, by modifying the network layers, we achieved higher precision, with the mean square error (MSE) and root mean square error (RMSE) of wind speed at a height of 10 m being 0.8457 m/s and 0.9196 m/s, respectively. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>The flow chart of PCA-RF.</p>
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<p>The flow chart of graph embedding.</p>
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<p>The flow chart of graph creation.</p>
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<p>GRU visual flow chart.</p>
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<p>The flow chart of GIN-GRU.</p>
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<p>Features of the top thirteen MDI scores.</p>
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<p>Graph networks constructed by different models.</p>
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<p>Result of comparison between GE-GIN-GRU wind speed prediction and real value.</p>
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<p>GE-GIN-GRU wind speed prediction compared with other models.</p>
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<p>Comparison between PCA-RF feature screening and RF feature screening.</p>
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<p>Comparison of varying the number of network edges on the error metrics of wind speed prediction.</p>
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23 pages, 7866 KiB  
Article
Hardware-in-the-Loop Emulation of a SEPIC Multiplier Converter in a Photovoltaic System
by Johnny Posada Contreras and Julio C. Rosas-Caro
Electricity 2024, 5(3), 426-448; https://doi.org/10.3390/electricity5030022 - 5 Jul 2024
Cited by 2 | Viewed by 849
Abstract
This article presents the development and execution of a Single-Ended Primary-Inductor Converter (SEPIC) multiplier within a Hardware-in-the-Loop (HIL) emulation environment tailored for photovoltaic (PV) applications. Utilizing the advanced capabilities of the dSPACE 1104 platform, this work establishes a dynamic data exchange mechanism between [...] Read more.
This article presents the development and execution of a Single-Ended Primary-Inductor Converter (SEPIC) multiplier within a Hardware-in-the-Loop (HIL) emulation environment tailored for photovoltaic (PV) applications. Utilizing the advanced capabilities of the dSPACE 1104 platform, this work establishes a dynamic data exchange mechanism between a variable voltage power supply and the SEPIC multiplier converter, enhancing the efficiency of solar energy harnessing. The proposed emulation model was crafted to simulate real-world solar energy capture, facilitating the evaluation of control strategies under laboratory conditions. By emulating realistic operational scenarios, this approach significantly accelerates the innovation cycle for PV system technologies, enabling faster validation and refinement of emerging solutions. The SEPIC multiplier converter is a new topology based on the traditional SEPIC with the capability of producing a larger output voltage in a scalable manner. This initiative sets a new benchmark for conducting PV system research, offering a blend of precision and flexibility in testing supervisory strategies, thereby streamlining the path toward technological advancements in solar energy utilization. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>PV system emulation scheme.</p>
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<p>The characteristic solar cell I-V.</p>
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<p>Solar cell diode model [<a href="#B20-electricity-05-00022" class="html-bibr">20</a>].</p>
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<p>Solar panel model for emulation.</p>
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<p>I-V characteristic curve of the solar panel.</p>
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<p>Schematic diagram of the panel’s array emulator.</p>
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<p>(<b>a</b>) SEPIC converter. (<b>b</b>) Multiplier SEPIC converter.</p>
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<p>Switching states when (<b>a</b>) the transistor is on and (<b>b</b>) when the transistor is off.</p>
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<p>Voltage boost factor vs. duty cycle or duty ratio.</p>
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<p>Schematic of the Multiplier SEPIC.</p>
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<p>(<b>a</b>) Simulation results for Vo. (<b>b</b>) Simulation results for Ii.</p>
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<p>(<b>a</b>) Experimental results for the case with Rload = 115 ohms load. (<b>b</b>) Experimental results for the case with Rload = 69 ohms load.</p>
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<p>Input (red) and output (blue) converter voltage signals.</p>
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<p>Input (red) and output (blue) converter currents.</p>
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<p>System simulation.</p>
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<p>P&amp;O algorithm.</p>
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<p>System power with the SEPIC running in the dynamic mode.</p>
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<p>Voltage and current signals with the dynamic mode for the SEPIC.</p>
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<p>System efficiency during the dynamic mode of the SEPIC.</p>
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<p>Hardware implementation of PV Emulator + Multiplier SEPIC.</p>
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<p>Modification of the MPP due to temperature change. The red curves are at 25 °C, and the blue curves are at 45 °C.</p>
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<p>(<b>a</b>) Power evolution of <span class="html-italic">P<sub>pv</sub></span> panel (blue) and <span class="html-italic">Po</span> in the output of Multiplier SEPIC (red). (<b>b</b>) Voltage evolution of <span class="html-italic">V<sub>pv</sub></span> panel (blue) and <span class="html-italic">Vo</span> in the output of Multiplier SEPIC (red). (<b>c</b>) Current evolution of <span class="html-italic">I<sub>pv</sub></span> panel (blue) and <span class="html-italic">Io</span> in the output of Multiplier SEPIC (red).</p>
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20 pages, 6347 KiB  
Article
Grid-Connected Inverter Grid Voltage Feedforward Control Strategy Based on Multi-Objective Constraint in Weak Grid
by Su’e Wang, Kaiyuan Cui and Pengfei Hao
Energies 2024, 17(13), 3288; https://doi.org/10.3390/en17133288 - 4 Jul 2024
Cited by 3 | Viewed by 793
Abstract
In weak grid, feedforward of grid voltage control is widely used to effectively suppress grid-side current distortion of inverters caused by harmonics in point of common coupling (PCC) voltage. However, due to its introduction of a positive feedback loop related to the grid [...] Read more.
In weak grid, feedforward of grid voltage control is widely used to effectively suppress grid-side current distortion of inverters caused by harmonics in point of common coupling (PCC) voltage. However, due to its introduction of a positive feedback loop related to the grid impedance, it results in a significant reduction in the system phase margin. In view of this, in this paper, the output impedance of a three-phase LCL grid-connected inverter under a quasi-proportional resonant (QPR) controller is first modeled. Instead of the traditional grid voltage feedforward control strategy, a band-pass filter is added to the grid voltage feedforward channel. Secondly, a multi-objective constraint method is proposed to make improvements to the feedforward function. Then, a multi-objective constraint function is established with the constraints of base-wave current tracking performance, system stability margin, and low-frequency amplitude, and the feasibility of its function optimization design method is verified. Theoretical analysis shows that the optimized grid voltage feedforward control strategy can effectively reshape the phase characteristics of the system output impedance, which greatly broadens the adaptation range of the system to the grid impedance. Finally, the effectiveness of the proposed control strategy is verified by building a semi-physical simulation experimental platform based on RT-LAB OP4510. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p><span class="html-italic">LCL</span> grid-connected inverter and control system schematic diagram.</p>
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<p>System control block diagram.</p>
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<p>System control block diagram equivalent transformation. (<b>a</b>) with feedforward channel; (<b>b</b>) merge feedforward channel.</p>
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<p>System control block diagram equivalent transformation. (<b>a</b>) with feedforward channel; (<b>b</b>) merge feedforward channel.</p>
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<p>Impedance model of the grid-connected inverter.</p>
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<p>Bode plot of inverter output impedance with and without grid voltage feedforward.</p>
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<p>System control block diagram with BPF.</p>
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<p>Bode plot of output impedance of the improved inverter.</p>
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<p>Bode plot of inverter output impedance after changing BPF parameter.</p>
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<p>Distribution of parameter values.</p>
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<p>Bode plot of <span class="html-italic">Z</span><sub>01</sub>(<span class="html-italic">s</span>) and <span class="html-italic">Z</span>`<sub>03</sub>(<span class="html-italic">s</span>).</p>
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<p>Bode plot of <span class="html-italic">Z</span><sub>0</sub>(<span class="html-italic">s</span>) and <span class="html-italic">Z</span>`<sub>03</sub>(<span class="html-italic">s</span>).</p>
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<p>Bode plot of <span class="html-italic">Z</span><sub>03</sub>(<span class="html-italic">s</span>) and <span class="html-italic">Z</span>`<sub>03</sub>(<span class="html-italic">s</span>).</p>
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<p>Bode plot of <span class="html-italic">Z</span>`<sub>03</sub>(<span class="html-italic">s</span>) and <span class="html-italic">L<sub>g</sub></span>.</p>
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<p>Hardware-in-the-loop experimental platform.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current of the system under strong grid condition without grid voltage feedforward control.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current after harmonic injection.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current under proportional feedforward control.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current with proportional feedforward control in weak grid.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current with BPF feedforward control in weak grid.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current under multi-objective constraint control in weak grid.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected voltage and grid-connected current under multi-objective constraint control in weak grid.</p>
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<p>Hardware-in-the-loop experiment waveform of grid-connected current jump.</p>
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20 pages, 4818 KiB  
Article
Research on a Distributed Photovoltaic Two-Level Planning Method Based on the SCMPSO Algorithm
by Ang Dong and Seon-Keun Lee
Energies 2024, 17(13), 3251; https://doi.org/10.3390/en17133251 - 2 Jul 2024
Cited by 1 | Viewed by 680
Abstract
In response to challenges such as voltage limit violations, excessive currents, and power imbalances caused by the integration of distributed photovoltaic (distributed PV) systems into the distribution network, this study proposes at two-level optimization configuration method. This method effectively balances the grid capacity [...] Read more.
In response to challenges such as voltage limit violations, excessive currents, and power imbalances caused by the integration of distributed photovoltaic (distributed PV) systems into the distribution network, this study proposes at two-level optimization configuration method. This method effectively balances the grid capacity and reduces the active power losses, thereby decreasing the operating costs. The upper-level optimization enhances the distribution network’s capacity by determining the siting and sizing of distributed PV devices. The lower-level aims to reduce the active power losses, improve the voltage stability margins, and minimize the voltage deviations. The upper-level planning results, which include the siting and sizing of the distributed PV, are used as initial conditions for the lower level. Subsequently, the lower level feeds back its optimization results to further refine the configuration. The model is solved using an improved second-order oscillating chaotic map particle swarm optimization algorithm (SCMPSO) combined with a second-order relaxation method. The simulation experiments on an improved IEEE 33-bus test system show that the SCMPSO algorithm can effectively reduce the voltage deviations, decrease the voltage fluctuations, lower the active power losses in the distribution network, and significantly enhance the power quality. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Distribution network PV integration structure.</p>
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<p>Two-level planning framework for distributed photovoltaics.</p>
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<p>Oscillatory convergence curve.</p>
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<p>Progressive convergence curve.</p>
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<p>Test results of various benchmark functions.</p>
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<p>Iteration comparison of different particle swarm optimization algorithms.</p>
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<p>Model solution flowchart.</p>
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<p>IEEE-33 node system.</p>
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<p>Annual solar intensity and load status.</p>
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<p>24-hour load trend in Jiangsu.</p>
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<p>Charging and discharging schematic of energy storage devices across five scenarios.</p>
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<p>Active power loss over time across five scenarios.</p>
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21 pages, 27468 KiB  
Article
Modeling and Suppression of Conducted Interference in Flyback Power Supplies Based on GaN Devices
by Jichi Yan, Haoyuan Wu, Xueliang Fu, Mingtong Li and Yannan Yu
Electronics 2024, 13(12), 2360; https://doi.org/10.3390/electronics13122360 - 16 Jun 2024
Cited by 1 | Viewed by 1115
Abstract
The application of GaN power devices has significantly increased the power density of flyback power supplies but has also caused severe electromagnetic interference (EMI) issues. To address the challenge of conducted interference in flyback power supplies, a comprehensive analysis of the transmission mechanism [...] Read more.
The application of GaN power devices has significantly increased the power density of flyback power supplies but has also caused severe electromagnetic interference (EMI) issues. To address the challenge of conducted interference in flyback power supplies, a comprehensive analysis of the transmission mechanism of conducted common-mode noise is undertaken. This analysis involves simplifying the equivalent model of conducted interference and leveraging the circuit characteristics of conducted noise to propose a solution for attenuating common-mode noise. Considering the constraints of external compensation capacitors, a balanced winding is further introduced to mitigate the impact of noise. To enhance the efficacy of conducted interference suppression, it is suggested to change the winding structure of the transformer and incorporate a shielding winding. This configuration aims to minimize the generation and propagation of common-mode noise within the transformer. Finally, experimental verification is carried out using a 150 W GaN flyback power supply prototype. The experimental results demonstrate that the proposed method effectively suppresses common-mode noise in the circuit. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Conducted interference transmission model of the flyback converter.</p>
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<p>Common-mode noise transmitted from the primary side to the secondary side of the transformer.</p>
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<p>Common-mode noise transmitted from the secondary side to the primary side of the transformer.</p>
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<p>Common-mode noise flowing through the heatsink.</p>
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<p>Conducted interference equivalent model.</p>
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<p>Circuit model with compensation capacitor added (<span class="html-italic">C</span><sub>Y5</sub> or <span class="html-italic">C</span><sub>Y6</sub>).</p>
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<p>Transformer circuit model with balanced winding added.</p>
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<p>Winding arrangement of the transformer with balanced winding added.</p>
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<p>Winding potential distribution diagram (at x = 0).</p>
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<p>Different winding structures and their corresponding winding voltage differences.</p>
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<p>Winding arrangement structure corresponding to the two different winding methods for the transformer: (<b>a</b>) the ordinary winding method; (<b>b</b>) the sandwich winding method.</p>
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<p>Common-mode noise transmission path with shielding layer added.</p>
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<p>Equivalent model of conducted interference with shielding layer added.</p>
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<p>Two forms of transformer shielding layers: (<b>a</b>) transformer with copper foil shielding; (<b>b</b>) transformer with shielding winding.</p>
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<p>The order of the sandwich-structure transformer’s windings and the correct winding points for the shielding winding.</p>
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<p>Common-mode interference transmission path with shielding winding added.</p>
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<p>Structural parameters between the primary and secondary windings of the transformer.</p>
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<p>Structural parameters between the shield winding and the secondary winding of the transformer.</p>
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<p>Electrical connection block diagram of the experimental platform.</p>
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<p>Experimental environment and noise testing instruments.</p>
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<p>Original EMI spectrum.</p>
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<p>EMI spectrum with compensation capacitor added (5 pF).</p>
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<p>EMI spectrum with compensation capacitor added (20 pF).</p>
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<p>The EMI spectrum of the transformer with the balanced winding added.</p>
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<p>The EMI spectrum of the transformer with sandwich structure and additional shielding winding.</p>
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15 pages, 7440 KiB  
Article
Exploring Motion Stability of a Novel Semi-Submersible Platform for Offshore Wind Turbines
by Hongxu Zhao, Xiang Wu and Zhou Zhou
Energies 2024, 17(10), 2313; https://doi.org/10.3390/en17102313 - 10 May 2024
Cited by 1 | Viewed by 1214
Abstract
The stability of offshore floating wind turbine foundation platforms is a fundamental requirement for the efficiency and safety of wind power generation systems. This paper proposes a novel small-diameter float-type semi-submersible platform to improve system stability. To evaluate the superior motion stability of [...] Read more.
The stability of offshore floating wind turbine foundation platforms is a fundamental requirement for the efficiency and safety of wind power generation systems. This paper proposes a novel small-diameter float-type semi-submersible platform to improve system stability. To evaluate the superior motion stability of the proposed floating platform, a comprehensive frequency–domain response analysis and experimental study were conducted in comparison with the OC4-DeepCwind platform developed by the National Renewable Energy Laboratory (NREL). The respective comparison of the frequency–domain response analysis and the experimental results demonstrated that the proposed floating wind turbine platform shows better hydrodynamic characteristics and resonance avoidance capability. This not only reduces the Response Amplitude Operators (RAOs), but also enhances the system stability, namely, effectively avoiding the regions of concentrated wave loading and low-frequency ranges. Furthermore, the proposed small-diameter semi-submersible platform has the potential to reduce manufacturing costs, providing valuable insights for the manufacturing of offshore floating wind turbine systems. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Flowchart of research approach and methodology.</p>
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<p>The OC4-DeepCwind platform and the proposed platform.</p>
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<p>Schematic diagram of the two floating platforms.</p>
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<p>The schematic diagram of the mooring system.</p>
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<p>Meshing results of the two types of floating platforms.</p>
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<p>Second-order mean drift forces in the surge direction.</p>
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<p>RAOs of the OFWT were obtained before and after considering additional viscous damping.</p>
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<p>RAOs of the OFWT were obtained before and after considering additional viscous damping.</p>
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<p>RAOs of the OFWT when supported by the proposed floating platform.</p>
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<p>RAOs of the OFWT when supported by the proposed floating platform.</p>
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<p>Comparison of the RAOs when the OFWT is supported by the two types of platform.</p>
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<p>Water tank used for the model tests.</p>
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<p>Water tank used for the model tests.</p>
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<p>Qualisys motion capture system.</p>
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<p>The scaled models of the OFWT.</p>
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<p>Test results were obtained under pure wave excitation.</p>
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<p>Test results obtained under wind–wave combined excitation.</p>
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25 pages, 3600 KiB  
Article
A Novel Improved Variational Mode Decomposition-Temporal Convolutional Network-Gated Recurrent Unit with Multi-Head Attention Mechanism for Enhanced Photovoltaic Power Forecasting
by Hua Fu, Junnan Zhang and Sen Xie
Electronics 2024, 13(10), 1837; https://doi.org/10.3390/electronics13101837 - 9 May 2024
Cited by 5 | Viewed by 1231
Abstract
Photovoltaic (PV) power forecasting plays a crucial role in optimizing renewable energy integration into the grid, necessitating accurate predictions to mitigate the inherent variability of solar energy generation. We propose a novel forecasting model that combines improved variational mode decomposition (IVMD) with the [...] Read more.
Photovoltaic (PV) power forecasting plays a crucial role in optimizing renewable energy integration into the grid, necessitating accurate predictions to mitigate the inherent variability of solar energy generation. We propose a novel forecasting model that combines improved variational mode decomposition (IVMD) with the temporal convolutional network-gated recurrent unit (TCN-GRU) architecture, enriched with a multi-head attention mechanism. By focusing on four key environmental factors influencing PV output, the proposed IVMD-TCN-GRU framework targets a significant research gap in renewable energy forecasting methodologies. Initially, leveraging the sparrow search algorithm (SSA), we optimize the parameters of VMD, including the mode component K-value and penalty factor, based on the minimum envelope entropy principle. The optimized VMD then decomposes PV power, while the TCN-GRU model harnesses TCN’s proficiency in learning local temporal features and GRU’s capability in rapidly modeling sequence data, while leveraging multi-head attention to better utilize the global correlation information within sequence data. Through this design, the model adeptly captures the correlations within time series data, demonstrating superior performance in prediction tasks. Subsequently, the SSA is employed to optimize GRU parameters, and the decomposed PV power mode components and environmental feature attributes are inputted into the TCN-GRU neural network. This facilitates dynamic temporal modeling of multivariate feature sequences. Finally, the predicted values of each component are summed to realize PV power forecasting. Validation using real data from a PV station corroborates that the novel model demonstrates a substantial reduction in RMSE and MAE of up to 55.1% and 54.5%, respectively, particularly evident in instances of pronounced photovoltaic power fluctuations during inclement weather conditions. The proposed method exhibits marked improvements in accuracy compared to traditional PV power prediction methods, underscoring its significance in enhancing forecasting precision and ensuring the secure scheduling and stable operation of power systems. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Structure diagram of dilated causal convolution network.</p>
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<p>TCN residual unit structure diagram.</p>
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<p>Structure diagram of GRU.</p>
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<p>Diagram of multi-head attention GRU.</p>
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<p>The framework of improved TCN-GRU network forecasting.</p>
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<p>The flowchart of IVMD-SSA-TCN-GRU photovoltaic power forecasting.</p>
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<p>Envelope entropy iteration process. (<b>a</b>) Envelope entropy on sunny days. (<b>b</b>) Envelope entropy on cloudy days. (<b>c</b>) Envelope entropy on rainy days.</p>
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<p>Photovoltaic power in IVMD decomposition. (<b>a</b>) Photovoltaic power IVMD decomposition on sunny days. (<b>b</b>) Photovoltaic power IVMD decomposition on cloudy days. (<b>c</b>) Photovoltaic power IVMD decomposition on rainy days.</p>
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<p>Photovoltaic power in IVMD decomposition. (<b>a</b>) Photovoltaic power IVMD decomposition on sunny days. (<b>b</b>) Photovoltaic power IVMD decomposition on cloudy days. (<b>c</b>) Photovoltaic power IVMD decomposition on rainy days.</p>
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<p>IVMD-TCN-GRU forecasting results. (<b>a</b>) Comparison diagram on sunny days. (<b>b</b>) Comparison diagram on cloudy days. (<b>c</b>) Comparison diagram on rainy days.</p>
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<p>Comparison of photovoltaic power forecasting on sunny days. (<b>a</b>) The iteration of SSA-TCN-GRU on sunny days. (<b>b</b>) Photovoltaic power forecasting on sunny days. (<b>c</b>) The forecasting error on sunny days.</p>
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<p>Comparison of photovoltaic power forecasting in cloudy days. (<b>a</b>) The iteration of SSA-TCN-GRU in cloudy days. (<b>b</b>) Photovoltaic power forecasting on cloudy days. (<b>c</b>) The forecasting error on cloudy days.</p>
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<p>Comparison of photovoltaic power forecasting on rainy days. (<b>a</b>) The iteration of SSA-TCN-GRU on rainy days. (<b>b</b>) Photovoltaic power forecasting on rainy days. (<b>c</b>) The forecasting error in rainy days.</p>
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31 pages, 3994 KiB  
Article
Collaborative Optimization Scheduling of Multi-Microgrids Incorporating Hydrogen-Doped Natural Gas and P2G–CCS Coupling under Carbon Trading and Carbon Emission Constraints
by Yuzhe Zhao and Jingwen Chen
Energies 2024, 17(8), 1954; https://doi.org/10.3390/en17081954 - 19 Apr 2024
Cited by 4 | Viewed by 851
Abstract
In the context of “dual carbon”, restrictions on carbon emissions have attracted widespread attention from researchers. In order to solve the issue of the insufficient exploration of the synergistic emission reduction effects of various low-carbon policies and technologies applied to multiple microgrids, we [...] Read more.
In the context of “dual carbon”, restrictions on carbon emissions have attracted widespread attention from researchers. In order to solve the issue of the insufficient exploration of the synergistic emission reduction effects of various low-carbon policies and technologies applied to multiple microgrids, we propose a multi-microgrid electricity cooperation optimization scheduling strategy based on stepped carbon trading, a hydrogen-doped natural gas system and P2G–CCS coupled operation. Firstly, a multi-energy microgrid model is developed, coupled with hydrogen-doped natural gas system and P2G–CCS, and then carbon trading and a carbon emission restriction mechanism are introduced. Based on this, a model for multi-microgrid electricity cooperation is established. Secondly, design optimization strategies for solving the model are divided into the day-ahead stage and the intraday stage. In the day-ahead stage, an improved alternating direction multiplier method is used to distribute the model to minimize the cooperative costs of multiple microgrids. In the intraday stage, based on the day-ahead scheduling results, an intraday scheduling model is established and a rolling optimization strategy to adjust the output of microgrid equipment and energy purchases is adopted, which reduces the impact of uncertainties in new energy output and load forecasting and improves the economic and low-carbon operation of multiple microgrids. Setting up different scenarios for experimental validation demonstrates the effectiveness of the introduced low-carbon policies and technologies as well as the effectiveness of their synergistic interaction. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Structure of multi-microgrids.</p>
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<p>Multi-energy microgrid model construction diagram.</p>
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<p>P2G–CCS coupling and hydrogen-doped natural gas subsystem structure.</p>
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<p>Flowchart of the model solution.</p>
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<p>Forecast of renewable energy.</p>
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<p>Forecast of electricity load.</p>
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<p>Forecast of heat load.</p>
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<p>Multi-microgrid cost iteration and residual iteration case diagrams.</p>
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<p>Interaction power between microgrids.</p>
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<p>Electric power balance of each microgrid under scenario 2.</p>
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<p>Heat power balance of each microgrid in scenario 2.</p>
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<p>Hydrogen power balance of each microgrid in scenario 2.</p>
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16 pages, 10751 KiB  
Technical Note
An Intelligent Controller of LED Street Light Based on Discrete Devices
by Zhan Wang, Dehua Zhang, Jishen Li and Wei Zhang
Energies 2024, 17(8), 1838; https://doi.org/10.3390/en17081838 - 11 Apr 2024
Cited by 2 | Viewed by 1290
Abstract
To combat global environmental deterioration and energy scarcities, it is crucial to implement energy-saving upgrades for urban road lighting. Comparatively, LEDs have emerged as an advanced and eco-friendly lighting option due to their low energy consumption, excellent performance, high color rendering index, and [...] Read more.
To combat global environmental deterioration and energy scarcities, it is crucial to implement energy-saving upgrades for urban road lighting. Comparatively, LEDs have emerged as an advanced and eco-friendly lighting option due to their low energy consumption, excellent performance, high color rendering index, and prolonged lifespan. By incorporating solar cell technology, a smart LED street light controller based on small-scale integrated circuits was developed to enable intelligent control for various lighting needs such as dimming, timing, automatic detection, and sound and light control. Through circuit simulations and experimental outcomes, it has been validated that the controller’s structure and performance parameters align with the design specifications. This design encompasses knowledge from diverse fields, including fundamentals of circuit and electronic technology, photovoltaic cell technology, power electronics, and sensor technology, showcasing robust engineering and practicality. Its utilization in the experimental course for second-year college students majoring in electrical engineering contributes to the grooming of professionals and expands the perspectives of future talents, enriching their application of knowledge and practical innovation capabilities. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Structure of intelligent controller.</p>
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<p>PIR sensing signal processing circuit.</p>
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<p>Sound detection and processing circuit.</p>
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<p>Light detection and processing circuit.</p>
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<p>PWM generation circuit.</p>
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<p>Timing circuit.</p>
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<p>Implementation of intelligent logic based on 74 Series IC.</p>
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<p>LED driver circuit.</p>
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<p>Battery charging circuit.</p>
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<p>Boost circuit.</p>
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<p>Negative voltage generation circuit.</p>
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<p>(<b>a</b>) Quiescent point analysis of PIR sensing signal processing circuit; (<b>b</b>) transient analysis of PIR sensing signal processing circuit.</p>
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<p>(<b>a</b>) Quiescent point analysis of sound detection and processing circuit; (<b>b</b>) transient analysis of sound detection and processing circuit.</p>
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<p>Quiescent point analysis of light detection and processing circuit.</p>
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<p>(<b>a</b>) Quiescent point analysis of PWM generation circuit; (<b>b</b>) transient analysis of PWM generation circuit.</p>
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<p>(<b>a</b>) Quiescent point analysis of timing circuit; (<b>b</b>) transient analysis of timing circuit.</p>
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<p>ModelSim simulation based on Intel MAX 10 Series FPGA.</p>
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<p>Testing platform of intelligent controller.</p>
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<p>SW pin of LED driver circuit.</p>
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<p>SW pin after starting the timing circuit.</p>
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<p>LED control triggered by sound detection circuit.</p>
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<p>LED control triggered by PIR detection circuit.</p>
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<p>LED control triggered by manual switch.</p>
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<p>LED control triggered by light detection circuit.</p>
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16 pages, 5316 KiB  
Article
Optimization Operation Strategy for Shared Energy Storage and Regional Integrated Energy Systems Based on Multi-Level Game
by Yulong Yang, Tao Chen, Han Yan, Jiaqi Wang, Zhongwen Yan and Weiyang Liu
Energies 2024, 17(7), 1770; https://doi.org/10.3390/en17071770 - 8 Apr 2024
Cited by 2 | Viewed by 981
Abstract
Regional Integrated Energy Systems (RIESs) and Shared Energy Storage Systems (SESSs) have significant advantages in improving energy utilization efficiency. However, establishing a coordinated optimization strategy between RIESs and SESSs is an urgent problem to be solved. This paper constructs an operational framework for [...] Read more.
Regional Integrated Energy Systems (RIESs) and Shared Energy Storage Systems (SESSs) have significant advantages in improving energy utilization efficiency. However, establishing a coordinated optimization strategy between RIESs and SESSs is an urgent problem to be solved. This paper constructs an operational framework for RIESs considering the participation of SESSs. It analyzes the game relationships between various entities based on the dual role of energy storage stations as both energy consumers and suppliers, and it establishes optimization models for each stakeholder. Finally, the improved Differential Evolution Algorithm (JADE) combined with the Gurobi solver is employed on the MATLAB 2021a platform to solve the cases, verifying that the proposed strategy can enhance the investment willingness of energy storage developers, balance the interests among the Integrated Energy Operator (IEO), Energy Storage Operator (ESO) and the user, and improve the overall economic efficiency of RIESs. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>The RIES system structure with an SESS.</p>
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<p>Multi-stakeholder leader–follower game framework.</p>
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<p>Multi-level game solving process.</p>
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<p>Predicted curves of the electricity and heat loads on the user side, along with the photovoltaic output.</p>
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<p>Optimization results of the selling prices by IEO and ESO.</p>
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<p>Variation in the SESS’s capacity.</p>
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<p>Supply-demand balance of the electricity load.</p>
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<p>Before and after optimization of the heat load.</p>
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<p>Comparison of the SESS capacity changes between Scenarios 1 and 2.</p>
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<p>Comparison of the user-side electrical load curves in the three scenarios.</p>
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22 pages, 9244 KiB  
Article
Control Strategies of Thrust Ripple Suppression for Electromagnetic Microgravity Facility
by Yuman Li, Wenbo Dong, Congmin Lv, Zhe Wang and Yongkang Zhang
Electronics 2024, 13(7), 1247; https://doi.org/10.3390/electronics13071247 - 27 Mar 2024
Cited by 1 | Viewed by 763
Abstract
This paper presents an innovative solution that is able to suppress the thrust ripple in a high-power asynchronous linear induction motor (LIM) used in a microgravity experiment facility electromagnetic launch (MEFEL) system. By addressing the crucial need for low levels of thrust ripple [...] Read more.
This paper presents an innovative solution that is able to suppress the thrust ripple in a high-power asynchronous linear induction motor (LIM) used in a microgravity experiment facility electromagnetic launch (MEFEL) system. By addressing the crucial need for low levels of thrust ripple in MEFEL applications, we propose a dynamic model-based adaptive controller (MAC) and an enhanced quasi-proportional-resonant (PR) controller. The MAC is designed to compensate for the inherent impedance asymmetry of the linear motor. The PR controller minimizes thrust ripple by eliminating harmonics within the current loop. A comparative analysis indicates that both MAC and PR control are effective in reducing harmonics, suppressing the thrust ripple, and maintaining system stability. Computer simulations show a noteworthy 75% reduction in the thrust ripple and a decrease in the negative current. Partial tests on the MEFEL device validate the practical efficacy of the proposed control methods, emphasizing the method’s ability to enhance the quality of microgravity in real-world scenarios significantly. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Microgravity electromagnetic catapult experimental system.</p>
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<p>Linear induction motor.</p>
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<p>T-type equivalent circuit.</p>
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<p>Vector diagram of voltages and currents.</p>
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<p>Current controllers for the adaptation of the quasi-PR controller.</p>
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<p>Framework of the control system.</p>
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<p>Simulation result of reference and measured speed.</p>
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<p>Thrust simulation results: (<b>a</b>) thrust results overview; (<b>b</b>) thrust results under FOC; (<b>c</b>) thrust results under FOC+MAC; and (<b>d</b>) Thrust results under FOC+MAC+PR.</p>
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<p>Current simulation results overview: (<b>a</b>) stator currents; (<b>b</b>) positive-sequence stator currents; (<b>c</b>) negative-sequence stator currents; and (<b>d</b>) zero-sequence stator currents.</p>
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<p>Current simulation results overview: (<b>a</b>) stator currents; (<b>b</b>) positive-sequence stator currents; (<b>c</b>) negative-sequence stator currents; and (<b>d</b>) zero-sequence stator currents.</p>
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<p>Negative-sequence current: (<b>a</b>) negative-sequence currents overview; (<b>b</b>) negative-sequence currents under FOC; (<b>c</b>) negative-sequence currents under FOC+MAC; and (<b>d</b>) negative-sequence currents under FOC+MAC+PR.</p>
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<p>Amplitude of negative sequence current.</p>
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<p>Simulation results for <span class="html-italic">i<sub>d</sub></span> and <span class="html-italic">i<sub>q</sub></span>.</p>
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<p>Phase calculation results.</p>
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<p>LIM experimental platform.</p>
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<p>MEFEL experimental platform with vertical LIM.</p>
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<p>Stator current: (<b>a</b>) no compensation method; (<b>b</b>) MAC and PR employed.</p>
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<p>Speed results of MEFEL.</p>
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<p>Acceleration results of MEFEL.</p>
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<p>T-type equivalent circuit.</p>
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<p>Voltage vectors.</p>
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<p>Voltage vectors and current vectors.</p>
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22 pages, 3126 KiB  
Article
Interval State Estimation of Electricity-Gas Systems Considering Measurement Correlations
by Yan Huang and Lin Feng
Energies 2024, 17(3), 755; https://doi.org/10.3390/en17030755 - 5 Feb 2024
Cited by 1 | Viewed by 850
Abstract
The popularization of electricity-gas systems leads to increasing demand for state management of systems. However, the existence of neglected measurement correlations brings uncertainties to the electricity-gas systems state estimation. In this paper, an interval state estimation method that considers measurement correlations existing in [...] Read more.
The popularization of electricity-gas systems leads to increasing demand for state management of systems. However, the existence of neglected measurement correlations brings uncertainties to the electricity-gas systems state estimation. In this paper, an interval state estimation method that considers measurement correlations existing in the electricity-gas systems is presented. We derive the linear measurement model for the electricity-gas systems through Taylor series expansion and estimate the measurement variance-covariance matrix with measurement correlations. The system parameter matrix and the measurement variance-covariance matrix containing measurement correlations are combined into an interval, and the interval state matrix considering measurement correlations is constructed. Then, the linear equations for the state estimation interval considering measurement correlations are established based on the measurement containing correlations and interval state matrix; as a result, the electricity-gas system state estimation model containing measurement correlations is established. In addition, a method for determining the range of state estimation intervals is proposed. Numerical tests on an integrated electricity-gas system comprising a 10-node natural gas network and IEEE 30-bus system indicate that the proposed approach has more advantages over the UT+KO approach in computation accuracy and computation efficiency. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Schematic diagram of natural gas flow inside the pipeline.</p>
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<p>The integrated electricity-gas system comprising 10-node natural gas network and IEEE 30-bus system. (<b>a</b>) Topology of 10-node natural gas network; (<b>b</b>) Topology of IEEE 30-bus system.</p>
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<p>State estimation interval bound of the natural gas system, considering the measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <mi mathvariant="sans-serif">Δ</mi> <msubsup> <mi>π</mi> <mi>j</mi> <mi>t</mi> </msubsup> <mo>,</mo> <mi mathvariant="sans-serif">Δ</mi> <msubsup> <mover accent="true"> <mi>G</mi> <mo>˙</mo> </mover> <mi>j</mi> <mi>t</mi> </msubsup> </mrow> </msub> <mo>=</mo> <mn>0.15</mn> </mrow> </semantics></math>. (<b>a</b>) Gas flow demand variation; (<b>b</b>) Pressure change.</p>
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<p>State estimation interval bound of IEEE 30-bus system with measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <msub> <mi>P</mi> <mi>i</mi> </msub> <mo>,</mo> <msub> <mi>Q</mi> <mi>i</mi> </msub> </mrow> </msub> <mo>=</mo> <mn>0.15</mn> </mrow> </semantics></math>. (<b>a</b>) Voltage magnitude; (<b>b</b>) Interval width of voltage magnitude.</p>
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<p>State estimation interval bound of IEEE 30-bus system with measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <msub> <mi>P</mi> <mi>i</mi> </msub> <mo>,</mo> <msub> <mi>Q</mi> <mi>i</mi> </msub> </mrow> </msub> <mo>=</mo> <mn>0.15</mn> </mrow> </semantics></math>. (<b>a</b>) Voltage angle; (<b>b</b>) Interval width of voltage angle.</p>
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<p>State estimation interval bound of natural gas system with measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <mi mathvariant="sans-serif">Δ</mi> <msubsup> <mi>π</mi> <mi>j</mi> <mi>t</mi> </msubsup> <mo>,</mo> <mi mathvariant="sans-serif">Δ</mi> <msubsup> <mover accent="true"> <mi>G</mi> <mo>˙</mo> </mover> <mi>j</mi> <mi>t</mi> </msubsup> </mrow> </msub> <mo>=</mo> <mn>0.3</mn> </mrow> </semantics></math>. (<b>a</b>) Gas flow demand variation; (<b>b</b>) Pressure change.</p>
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<p>State estimation interval bound of IEEE 30-bus system with measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <msub> <mi>P</mi> <mi>i</mi> </msub> <mo>,</mo> <msub> <mi>Q</mi> <mi>i</mi> </msub> </mrow> </msub> <mo>=</mo> <mn>0.3</mn> </mrow> </semantics></math>. (<b>a</b>) Voltage magnitude; (<b>b</b>) Interval width of voltage magnitude.</p>
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<p>State estimation interval bound of IEEE 30-bus system with measurement correlation coefficient <math display="inline"><semantics> <mrow> <msub> <mi>ρ</mi> <mrow> <msub> <mi>P</mi> <mi>i</mi> </msub> <mo>,</mo> <msub> <mi>Q</mi> <mi>i</mi> </msub> </mrow> </msub> <mo>=</mo> <mn>0.3</mn> </mrow> </semantics></math>. (<b>a</b>) Voltage angle; (<b>b</b>) Interval width of voltage angle.</p>
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15 pages, 3772 KiB  
Article
A Layered Parallel Equaliser Based on Flyback Transformer Multiplexed for Lithium-Ion Battery System
by Hongrui Liu, Xiangyang Wei, Junjie Ai and Xudong Yang
Energies 2024, 17(3), 754; https://doi.org/10.3390/en17030754 - 5 Feb 2024
Cited by 1 | Viewed by 995
Abstract
An effective equaliser is crucial for eliminating inconsistencies in the connected serial batteries and extending the life of the battery system. The current equalisers generally have the problems of low equalisation efficiency, slow equalisation speed, and complex switching control. A layered parallel equaliser [...] Read more.
An effective equaliser is crucial for eliminating inconsistencies in the connected serial batteries and extending the life of the battery system. The current equalisers generally have the problems of low equalisation efficiency, slow equalisation speed, and complex switching control. A layered parallel equaliser based on a flyback transformer multiplexed for a lithium-ion battery system is proposed. The equaliser employs both hierarchical and parallel equalisation techniques, allowing for simultaneous processing of multiple objectives. This enhances both the efficiency and speed of the equalisation process. The efficiency of equalisation can be further improved by implementing PWM control with deadband complement. Additionally, the flyback transformer serves as an energy storage component for both layers of the equalisation module, resulting in a significant reduction in the size and cost of the equaliser. The circuit topology of the equaliser is presented, and its operational principle, switching control, and equalisation control strategy are analysed in detail. Finally, an experimental platform consisting of six lithium-ion batteries is constructed, and equalisation experiments are conducted to verify the advantages of the proposed equaliser in terms of equalisation speed, efficiency, and cost. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>The architecture of the proposed equaliser.</p>
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<p>The circuit topology of the proposed equaliser.</p>
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<p>The key waveforms in the first-layer equalisation.</p>
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<p>Operational states of the first−layer equalisation. (<b>a</b>) State I. (<b>b</b>) State II. (<b>c</b>) State III. (<b>d</b>) State IV.</p>
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<p>Operational states of the second-layer equalisation. (<b>a</b>) State I. (<b>b</b>) State II.</p>
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<p>The equalisation strategy of the proposed equaliser.</p>
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<p>Experiment platform.</p>
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<p>Experimental waveforms of the first-layer equalisation. (<b>a</b>) PWM signal waveforms of M11, M14 and discharging current waveform of B11. (<b>b</b>) PWM signal waveforms of M11, M14 and charging current waveform of B12.</p>
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<p>Experimental waveforms of the second-layer equalisation. (<b>a</b>) PWM signal waveforms of and discharge current waveform of BU1. (<b>b</b>) PWM signal waveforms of M11 and charge current waveform of E.</p>
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<p>SOC curves of the battery string during the equalisation experiment.</p>
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18 pages, 2182 KiB  
Article
Hierarchical Blocking Control for Mitigating Cascading Failures in Power Systems with Wind Power Integration
by Lun Cheng, Tao Wang, Yuhang Wu, Zeming Gao and Ning Ji
Energies 2024, 17(2), 442; https://doi.org/10.3390/en17020442 - 16 Jan 2024
Cited by 1 | Viewed by 886
Abstract
The increasing uncertainty of wind power brings greater challenges to the control for mitigation of cascading failures. In order to minimize the risk of cascading failures in large-scale wind power systems at a lower economic cost, a multi-stage blocking control model is proposed [...] Read more.
The increasing uncertainty of wind power brings greater challenges to the control for mitigation of cascading failures. In order to minimize the risk of cascading failures in large-scale wind power systems at a lower economic cost, a multi-stage blocking control model is proposed based on sensitivity analysis. Firstly, the propagation mechanism of cascading failures in power systems with wind power integration is analyzed, and the propagation path of such failures is predicted. Subsequently, sensitive lines that are prone to failure are identified using the power sensitivity matrix, taking into account the effects of blocking control on the propagation path. By constraining the power flow of these sensitive lines, a multi-stage blocking control model for the predicted cascading failure path is proposed with the objective of minimizing the control cost and cascading failure probability. Based on probabilistic optimal power flow calculations, the constraints related to wind power uncertainty are transformed into opportunity constraints. To validate the effectiveness of the proposed model, the IEEE 39-node system is used as an example, and the results show that the obtained control method is able to balance economy and safety. In addition, the control costs for the same initial failure are higher as the wind power penetration rates and confidence levels increase. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Interactive impact diagram of wind power, control measures, and cascading failure propagation process.</p>
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<p>Flowchart of the proposed method.</p>
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<p>Diagram of IEEE 39 system.</p>
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<p>Probability distribution of power flow on line 4–14.</p>
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<p>Sensitive lines of IEEE 39 system.</p>
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<p>Control effect of Model 1 and Model 2.</p>
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<p>Control cost of Model 1 and Model 2.</p>
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<p>Control costs under different wind power penetration rates.</p>
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<p>Control costs under different confidence levels.</p>
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18 pages, 3393 KiB  
Article
Key Technologies of Intelligent Question-Answering System for Power System Rules and Regulations Based on Improved BERTserini Algorithm
by Ming Gao, Mengshi Li, Tianyao Ji, Nanfang Wang, Guowu Lin and Qinghua Wu
Processes 2024, 12(1), 58; https://doi.org/10.3390/pr12010058 - 26 Dec 2023
Cited by 2 | Viewed by 1115
Abstract
With the continuous breakthrough of natural language processing, the application of intelligent question-answering technology in electric power systems has attracted wide attention. However, at present, the traditional question-answering system has poor performance and is difficult to apply in engineering practice. This paper proposes [...] Read more.
With the continuous breakthrough of natural language processing, the application of intelligent question-answering technology in electric power systems has attracted wide attention. However, at present, the traditional question-answering system has poor performance and is difficult to apply in engineering practice. This paper proposes an improved BERTserini algorithm for the intelligent answering of electric power regulations based on a BERT model. The proposed algorithm is implemented in two stages. The first stage is the text-segmentation stage, where a multi-document long text preprocessing technique is utilized that accommodates the rules and regulations text, and then Anserini is used to extract paragraphs with high relevance to the given question. The second stage is the answer-generation and source-retrieval stage, where a two-step fine-tuning based on the Chinese BERT model is applied to generate precise answers based on given questions, while the information regarding documents, chapters, and page numbers of these answers are also output simultaneously. The algorithm proposed in this paper eliminates the necessity for the manual organization of professional question–answer pairs, thereby effectively reducing the manual labor cost compared to traditional question-answering systems. Additionally, this algorithm exhibits a higher degree of exact match rate and a faster response time for providing answers. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>The flowchart of the Anserini algorithm.</p>
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<p>Architecture of BERT.</p>
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<p>Transformer encoder principle.</p>
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<p>Architecture of BERTserini.</p>
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<p>Flowchart of the proposed algorithm.</p>
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<p>Document preprocessing of the Anserini module.</p>
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<p>UI interface of intelligent question-answering system based on improved BERTserini algorithm. (<b>a</b>) Multi-turn interactive question-answering interface. (<b>b</b>) Knowledge details page. (<b>c</b>) Full-text source page.</p>
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<p>English explanation of UI interface in intelligent question-answering system based on improved BERTserini algorithm. (<b>a</b>) Multi-turn interactive question-answering interface. (<b>b</b>) Knowledge details page. (<b>c</b>) Full-text source page.</p>
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16 pages, 6409 KiB  
Article
New Equipment for Determining Friction Parameters in External Conditions: Measurements for the Design
by Martin Zidek, Filip Vanek, Lucie Jezerska, Rostislav Prokes and Daniel Gelnar
Processes 2023, 11(12), 3348; https://doi.org/10.3390/pr11123348 - 1 Dec 2023
Cited by 1 | Viewed by 1108
Abstract
Friction parameters such as the angle of internal friction and the external friction of soils (bulk materials) show the possibilities of further material use. These are, for example, possibilities for soil processing, handling, and storage. The determination of friction parameters is usually carried [...] Read more.
Friction parameters such as the angle of internal friction and the external friction of soils (bulk materials) show the possibilities of further material use. These are, for example, possibilities for soil processing, handling, and storage. The determination of friction parameters is usually carried out under laboratory conditions. For the possibility of determining the properties of soils outside the laboratory in terms of immediate material response, a laboratory prototype was developed. The main objective for its development was to determine the effect of the shape of the friction surface when “sliding” on the soil. This was achieved with the help of validation equipment designed to measure, test, and validate the processes of raking, material piling, material transfer and removal, and tool movement or sliding on or in a material. It was found that by using an appropriate speed and normal load, the Jenike method can be applied to determine the angle of external friction over a shorter distance with an error of about 6–7.5% from the values measured on a calibrated shear machine. The results also showed that the method can be applied to detect the shear stresses that arise when a tool is plunged into a material, and thus predict the possible increase in energy loss during the process. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Jenike shear tester.</p>
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<p>Validation system, (<b>a</b>) axonometric view, and (<b>b</b>) details of the device for alternative measurement of friction parameters.</p>
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<p>Basic geometric parameters for experimental measurements, trough width, wall height, height of material in the trough, direction, and length of movement (mm).</p>
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<p>(<b>a</b>) Tool geometry, (<b>b</b>) rake plate geometry (mm).</p>
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<p>Equipment for measuring dynamic effects.</p>
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<p>Calibration graph of diaphragm force transducer (MEG30, 500 N).</p>
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<p>Comparison of weighted (I), static (II), and dynamic (III) normal loads.</p>
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<p>Shear stress versus time for 1 weight at 10 Hz.</p>
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<p>Evaluation of the initial shear stress for 2 tested materials and 3 transport speeds.</p>
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<p>Evaluation of dynamic shear stresses for 2 tested materials and 3 transport speeds (start and end).</p>
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26 pages, 8500 KiB  
Article
Research on Optimal Scheduling of Multi-Energy Microgrid Based on Stackelberg Game
by Bo Li, Yang Li, Ming-Tong Li, Dan Guo, Xin Zhang, Bo Zhu, Pei-Ru Zhang and Li-Di Wang
Processes 2023, 11(10), 2820; https://doi.org/10.3390/pr11102820 - 24 Sep 2023
Cited by 1 | Viewed by 1214
Abstract
In recent years, rapid industrialization has driven higher energy demand, depleting fossil-fuel reserves and causing excessive emissions. China’s “dual carbon” strategy aims to balance development and sustainability. This study optimizes microgrid efficiency with a tiered carbon-priced economy. A Stackelberg game establishes microgrid-user equilibrium, [...] Read more.
In recent years, rapid industrialization has driven higher energy demand, depleting fossil-fuel reserves and causing excessive emissions. China’s “dual carbon” strategy aims to balance development and sustainability. This study optimizes microgrid efficiency with a tiered carbon-priced economy. A Stackelberg game establishes microgrid-user equilibrium, solved iteratively with a multi-population algorithm (MPGA). Comparative analysis can be obtained without considering demand response scenarios, and the optimization cost of microgrid operation considering price-based demand response scenarios was reduced by 5%; that is 668.95 yuan. In addition, the cost of electricity purchase was decreased by 23.8%, or 778.6 yuan. The model promotes user-driven energy use, elevating economic and system benefits, and therefore, the scheduling expectation of “peak shaving and valley filling” is effectively realized. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Microgrid Stackelberg game structure.</p>
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<p>Simplified flowchart of multi-population genetic algorithm.</p>
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<p>Electricity and gas prices.</p>
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<p>Initial electricity price.</p>
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<p>Typical daily electricity, heat, gas load forecasting, and wind power output forecasting.</p>
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<p>Game equilibrium comparison. (<b>a</b>) Microgrid revenue iteration. (<b>b</b>) User revenue iteration.</p>
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<p>Electricity sales plan for microgrid users.</p>
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<p>Electricity load of users after electricity price demand response.</p>
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<p>Algorithm convergence curve comparison chart.</p>
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<p>Device operation after demand response. (<b>a</b>) Power balance. (<b>b</b>) Natural gas energy balance.</p>
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<p>Device operation after demand response. (<b>a</b>) Thermal balance. (<b>b</b>) Hydrogen balance.</p>
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<p>Device operation without demand response. (<b>a</b>) Power balance. (<b>b</b>) Natural gas energy balance.</p>
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<p>Device operation without demand response. (<b>a</b>) Thermal balance. (<b>b</b>) Hydrogen balance.</p>
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19 pages, 5238 KiB  
Article
Massive Multi-Source Joint Outbound and Benefit Distribution Model Based on Cooperative Game
by Wang He, Min Liu, Chaowen Zuo and Kai Wang
Energies 2023, 16(18), 6590; https://doi.org/10.3390/en16186590 - 13 Sep 2023
Cited by 3 | Viewed by 994
Abstract
In light of the challenges posed by the widespread distribution of new energy sources in China and their distance from load centers, the power system must effectively integrate both new energy and thermal power transmission. To address this issue, we propose a dynamic [...] Read more.
In light of the challenges posed by the widespread distribution of new energy sources in China and their distance from load centers, the power system must effectively integrate both new energy and thermal power transmission. To address this issue, we propose a dynamic coordinated scheduling model that combines wind, photovoltaic, and thermal power to optimize the profit of the energy complementary delivery system. Additionally, we present an improved ant lion optimization algorithm to investigate the coordinated scheduling and benefit distribution of these three power sources. This paper introduces a cooperative mode for benefit distribution and utilizes an enhanced Shapley value method to allocate the benefits of joint operation among the three parties. The distribution of benefits is based on the contribution of each party to the joint proceeds, considering the profit levels of joint outbound and independent outbound modes. Through our analysis, we demonstrate that the upgraded ant lion optimization algorithm facilitates finding the global optimal solution more effectively within the feasible zone. Furthermore, our suggested three-party combined scheduling model and profit-sharing approach are shown to be superior and feasible. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Foraging behavior of ant lions.</p>
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<p>Logarithmic spiral.</p>
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<p>Real-time output of three-party combined thermal power unit.</p>
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<p>The system transmits power in several modes. (<b>a</b>) Independent wind power transmission. (<b>b</b>) Photovoltaic independent delivery. (<b>c</b>) Thermal power independent delivery. (<b>d</b>) Joint delivery of wind and photovoltaic. (<b>e</b>) Combined delivery of thermal and wind. (<b>f</b>) Photovoltaic and thermal power joint delivery. (<b>g</b>) Tripartite joint delivery.</p>
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<p>The system transmits power in several modes. (<b>a</b>) Independent wind power transmission. (<b>b</b>) Photovoltaic independent delivery. (<b>c</b>) Thermal power independent delivery. (<b>d</b>) Joint delivery of wind and photovoltaic. (<b>e</b>) Combined delivery of thermal and wind. (<b>f</b>) Photovoltaic and thermal power joint delivery. (<b>g</b>) Tripartite joint delivery.</p>
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<p>Comparison of ant lion algorithm and improved ant lion iteration diagram.</p>
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30 pages, 11943 KiB  
Article
Generalized Regression Neural Network Based Meta-Heuristic Algorithms for Parameter Identification of Proton Exchange Membrane Fuel Cell
by Peng He, Xin Zhou, Mingqun Liu, Kewei Xu, Xian Meng and Bo Yang
Energies 2023, 16(14), 5290; https://doi.org/10.3390/en16145290 - 10 Jul 2023
Cited by 2 | Viewed by 1121
Abstract
An accurate parameter extraction of the proton exchange membrane fuel cell (PEMFC) is crucial for establishing a reliable cell model, which is also of great significance for subsequent research on the PEMFC. However, because the parameter identification of the PEMFC is a nonlinear [...] Read more.
An accurate parameter extraction of the proton exchange membrane fuel cell (PEMFC) is crucial for establishing a reliable cell model, which is also of great significance for subsequent research on the PEMFC. However, because the parameter identification of the PEMFC is a nonlinear optimization problem with multiple variables, peaks, and a strong coupling, it is difficult to solve this problem using traditional numerical methods. Furthermore, because of insufficient current and voltage data measured by the PEMFC, the precision rate of cell parameter extraction is also very low. The study proposes a parameter extraction method using a generalized regression neural network (GRNN) and meta-heuristic algorithms (MhAs). First of all, a GRNN is used to de-noise and predict the data to solve the problems in the field of PEMFC, which include insufficient data and excessive noise data of the measured data. After that, six typical algorithms are used to extract the parameters of the PEMFC under three operating conditions, namely high temperature and low pressure (HTLP), medium temperature and medium pressure (MTMP), and low temperature and high pressure (LTHP). The last results demonstrate that the application of GRNN can prominently decrease the influence of data noise on parameter identification, and after data prediction, it can greatly enhance the precision rate and reliability of MhAs parameter identification, specifically, under HTLP conditions, the V-I fitting accuracy achieved 99.39%, the fitting accuracy was 99.07% on MTMP, and the fitting accuracy was 98.70%. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Structure diagram of the GRNN.</p>
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<p>Schematic diagram of PEMFC parameter identification structure.</p>
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<p>The extraction steps of GRNN-MhAs for the PEMFC.</p>
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<p>Data de-noise result under HTLP operating conditions.</p>
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<p>Data de-noise result under MTMP operating conditions.</p>
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<p>Data de-noise results under LTHP operating conditions.</p>
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<p>Data prediction result under HTLP operating conditions.</p>
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<p>Data prediction result under MTMP operating conditions.</p>
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<p>Data prediction result under LTHP operating conditions.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on noise data and de-noised data under HTLP. (<b>a</b>) noise data and (<b>b</b>) de-noised data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on noise data and de-noised data under HTLP.</p>
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<p>GRNN for <span class="html-italic">V</span>-<span class="html-italic">I</span> curve fitting based on de-noised data under HTLP of MPA.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on original data and predicted data under HTLP. (<b>a</b>) original data and (<b>b</b>) predicted data.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on original data and predicted data under HTLP. (<b>a</b>) original data and (<b>b</b>) predicted data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on original data and predicted data under HTLP.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on noise data and de-noised data under MTMP. (<b>a</b>) noise data and (<b>b</b>) de-noised data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on noise data and de-noised data under MTMP.</p>
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<p>GRNN for <span class="html-italic">V</span>-<span class="html-italic">I</span> curve fitting based on de-noised data under MTMP of GWO.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on original data and predicted data under MTMP. (<b>a</b>) original data and (<b>b</b>) predicted data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on original data and predicted data under MTMP.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on noise data and de-noised data under LTHP. (<b>a</b>) noise data and (<b>b</b>) de-noised data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on noise data and de-noised data under LTHP.</p>
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<p>GRNN for <span class="html-italic">V</span>-<span class="html-italic">I</span> curve fitting based on de-noised data under LTHP of MFO.</p>
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<p>Convergence curves of RMSEs obtained by MhAs on original data and predicted data under LTHP. (<b>a</b>) original data and (<b>b</b>) predicted data.</p>
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<p>Boxplot of RMSEs obtained by MhAs on original data and predicted data under LTHP.</p>
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17 pages, 13408 KiB  
Article
Vibration Scale Model of a Converter Transformer Based on the Finite Element and Similarity Principle and Its Preparation
by Hao Wang, Li Zhang, Youliang Sun and Liang Zou
Processes 2023, 11(7), 1969; https://doi.org/10.3390/pr11071969 - 29 Jun 2023
Cited by 3 | Viewed by 1489
Abstract
A similarity criterion suitable for studying the vibration characteristics of converter transformers is proposed based on comprehensive consideration of geometric dimensions, electric field, magnetic field, force field, sound field, and coupling field interface interactions. By comparing the magnetic field, stress, displacement, sound field [...] Read more.
A similarity criterion suitable for studying the vibration characteristics of converter transformers is proposed based on comprehensive consideration of geometric dimensions, electric field, magnetic field, force field, sound field, and coupling field interface interactions. By comparing the magnetic field, stress, displacement, sound field distribution, and vibration characteristics of the scale model of the converter transformer with the initial model, the reliability of the similarity criterion was determined. Based on the vibration similarity criterion of the converter transformer, a prototype of the proportional model was designed and manufactured, and vibration signals under no-load and load conditions were tested. These signals correspond to the vibration signals of the iron core and winding in the finite element model, respectively. Through comparative analysis, the reliability of the prototype and the vibration similarity model of the converter transformer has been proven, which can provide an accurate and effective laboratory research platform for in-depth research on the vibration and noise of the converter transformer and equipment protection. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Finite element model of multi-field coupling for converter transformer.</p>
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<p>Determination of B-H curve of silicon steel sheet corresponding to reference converter transformer.</p>
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<p>Entangled winding-wire turn arrangement.</p>
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<p>Field–circuit coupling method.</p>
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<p>Current sequence of entangled winding.</p>
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<p>Single-phase winding model.</p>
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<p>Modal distribution of iron core and winding: (<b>a</b>) original model winding; (<b>b</b>) 1/2 model winding; (<b>c</b>) 1/5 model winding; (<b>d</b>) Original model iron core; (<b>e</b>) 1/2 model iron core; (<b>f</b>) 1/5 model iron core.</p>
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<p>Magnetic flux density distribution of (<b>a</b>) initial model and (<b>b</b>) scale model.</p>
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<p>Leakage flux density of (<b>a</b>) initial model and (<b>b</b>) scale model.</p>
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<p>Stress distribution of (<b>a</b>) iron core of initial model and (<b>b</b>) scale model.</p>
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<p>Force distribution of winding of (<b>a</b>) initial model and (<b>b</b>) scale model.</p>
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<p>Core displacement distribution of (<b>a</b>) initial model and (<b>b</b>) scale model.</p>
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<p>Winding displacement distribution of (<b>a</b>) initial model and (<b>b</b>) scale model.</p>
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<p>(<b>a</b>) Initial model sound pressure distribution; (<b>b</b>) Sound pressure distribution of Scale model; (<b>c</b>) Initial model sound pressure level distribution; (<b>d</b>) Scale model sound pressure level distribution.</p>
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<p>Design drawing of scale prototype.</p>
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<p>Prototype preparation and vibration characteristics testing: (<b>a</b>) Winding preparation; (<b>b</b>) Assembly of iron core winding; (<b>c</b>) Complete prototype appearance; (<b>d</b>) Refer to converter transformer.</p>
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<p>Distribution of measuring points.</p>
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<p>Frequency domain diagram of vibration signal of prototype and simulation model: (<b>a</b>) prototype no-load; (<b>b</b>) prototype load; (<b>c</b>) simulated no-load; (<b>d</b>) simulated load.</p>
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19 pages, 4087 KiB  
Article
Receding Galerkin Optimal Control with High-Order Sliding Mode Disturbance Observer for a Boiler-Turbine Unit
by Gang Zhao, Yuge Sun, Zhi-Gang Su and Yongsheng Hao
Sustainability 2023, 15(13), 10129; https://doi.org/10.3390/su151310129 - 26 Jun 2023
Cited by 3 | Viewed by 1144
Abstract
The control of the boiler-turbine unit is important for its sustainable and robust operation in power plants, which faces great challenges due to the control unit’s serious nonlinearity, unmeasurable states, variable constraints, and unknown time-varying lumped disturbances. To address the above issues, this [...] Read more.
The control of the boiler-turbine unit is important for its sustainable and robust operation in power plants, which faces great challenges due to the control unit’s serious nonlinearity, unmeasurable states, variable constraints, and unknown time-varying lumped disturbances. To address the above issues, this paper proposes a receding Galerkin optimal controller with a high-order sliding mode disturbance observer in a composite scheme, in which a high-order sliding mode disturbance observer is first employed to estimate the lumped disturbances based on a deviation form of the mathematical model of the boiler-turbine unit. Subsequently, under the hypothesis of state constraint, a receding Galerkin optimal controller is designed to compensate the lumped disturbances by embedding their estimates into the mathematically based predictive model at each sampling time instant. With the help of an interpolation polynomial, Gauss integration, and nonlinear solvers, an optimal control law is then obtained based on a Galerkin optimization algorithm. Consequently, disturbance rejection, target tracking, and constraint handling performance of a controlled closed-loop system are improved. Some simulation cases are conducted on a mathematical boiler-turbine unit model to demonstrate the effectiveness of the proposed method, which is supported by the quantitative result analysis, such as tracking and disturbance rejection performance indexes. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Structure of a 160 MW boiler-turbine unit in a thermal power plant.</p>
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<p>Block diagram of the receding Galerkin optimal controller with high-order sliding mode disturbance observer.</p>
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<p>Outputs of the unit in the case of tracking large-scale load references.</p>
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<p>Control inputs of the unit in the case of tracking large-scale load references.</p>
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<p>Estimates of lumped disturbances.</p>
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<p>Output trajectories in presence of lumped disturbances.</p>
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<p>Control inputs curves.</p>
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<p>Control outputs in presence of lumped disturbances.</p>
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<p>Control inputs in presence of lumped disturbances.</p>
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<p>The comparison results of <span class="html-italic">y</span><sub>1</sub> between the two controllers.</p>
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<p>The comparison results of <span class="html-italic">y</span><sub>2</sub> between the two controllers.</p>
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<p>The comparison results of <span class="html-italic">y</span><sub>3</sub> between the two controllers.</p>
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<p>The comparison results of <span class="html-italic">u</span><sub>1</sub> between the two controllers.</p>
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<p>The comparison results of <span class="html-italic">u</span><sub>2</sub> between the two controllers.</p>
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<p>The comparison results of <span class="html-italic">u</span><sub>3</sub> between the two controllers.</p>
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28 pages, 10095 KiB  
Article
Design of Intelligent Nonlinear H2/H Robust Control Strategy of Diesel Generator-Based CPSOGSA Optimization Algorithm
by Yidong Zou, Boyi Xiao, Jing Qian and Zhihuai Xiao
Processes 2023, 11(7), 1867; https://doi.org/10.3390/pr11071867 - 21 Jun 2023
Cited by 1 | Viewed by 2032
Abstract
In today’s human society, diesel generators (DGs) are widely applied in the human energy and electricity supply system due to its technical, operational, and economic advantages. This paper proposes an intelligent nonlinear H2/H robust controller based on the chaos [...] Read more.
In today’s human society, diesel generators (DGs) are widely applied in the human energy and electricity supply system due to its technical, operational, and economic advantages. This paper proposes an intelligent nonlinear H2/H robust controller based on the chaos particle swarm gravity search optimization algorithm (CPSOGSA), which controls the speed and excitation of a DG. In this method, firstly, establish the nonlinear mathematical model of the DG, and then design the nonlinear H2/H robust controller based on this. The direct feedback linearization and the H2/H robust control theory are combined and applied. Based on the design of the integrated controller for DG speed and excitation, the system’s performance requirements are transformed into a standard robust H2/H control problem. The parameters of the proposed solution controller are optimized by using the proposed CPSOGSA. The introduction of CPSOGSA completes the design of an intelligent nonlinear H2/H robust controller for DG. The simulation is implemented in MATLAB/Simulink, and the results are compared with the PID control method. The obtained results prove that the proposed method can effectively improve the dynamic accuracy of the system and the ability to suppress disturbances and improve the stability of the system. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Widely used energy power device—diesel generator.</p>
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<p>Principle diagram of DE speed regulation system.</p>
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<p>Flywheel of diesel.</p>
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<p>State-feedback control.</p>
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<p>Principle diagram of diesel-generator set synthetic control system.</p>
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<p>Curves of chaotic maps.</p>
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<p>The flowchart of proposed CPSOGSA.</p>
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<p>Diesel generator and its microgrid Simulink model.</p>
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<p>The flowchart of optimization process.</p>
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<p>Iterative graph of the optimization process.</p>
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<p>Variation curve of speed at no-load start-up.</p>
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<p>Variation curve of voltage at no-load start-up.</p>
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<p>Speed response of system on suddenly increasing static load.</p>
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<p>Voltage dynamic response of system on suddenly static load.</p>
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<p>Speed response of system on suddenly increasing dynamic load.</p>
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<p>Voltage dynamic response of system on suddenly dynamic load.</p>
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16 pages, 660 KiB  
Article
Optimizing Power Demand Side Response Strategy: A Study Based on Double Master–Slave Game Model of Multi-Objective Multi-Universe Optimization
by Diandian Hu and Tao Wang
Energies 2023, 16(10), 4009; https://doi.org/10.3390/en16104009 - 10 May 2023
Cited by 3 | Viewed by 1418
Abstract
In the pilot provinces of China’s electricity spot market, power generation companies usually adopt the separate bidding mode, which leads to a low willingness of demand-side response and poor flexibility in the interaction mechanism between supply and demand. Based on the analysis of [...] Read more.
In the pilot provinces of China’s electricity spot market, power generation companies usually adopt the separate bidding mode, which leads to a low willingness of demand-side response and poor flexibility in the interaction mechanism between supply and demand. Based on the analysis of the demand response mechanism of the power day-ahead market with the participation of power sales companies, this paper abstracted the game process of the “power grid-sales company-users” tripartite competition in the electricity market environment into a two-layer (purchase layer/sales layer) game model and proposed a master–slave game equilibrium optimization strategy for the day-ahead power market under the two-layer game. The multi-objective multi-universe optimization algorithm was used to find the Pareto optimal solution of the game model, a comprehensive evaluation was constructed, and the optimal strategy of the demand response was determined considering the peak cutting and valley filling quantity of the power grid, the profit of the electricity retailers, the cost of the consumers, and the comfort degree. Examples are given to simulate the day-ahead electricity market participated in by the electricity retailers, analyze and compare the benefits of each market entity participating in the demand response, and verify the effectiveness of the proposed model. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Tripartite demand response decision model of “power grid, electricity retailers and consumers”.</p>
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<p>The algorithm’s internal loop structure’s logical flow.</p>
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<p>Real-time electricity price forecast value of power grid.</p>
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<p>Convergence process of the optimal response quantity of the electricity retailers in Scenario 1.</p>
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<p>The optimal response quantity and subsidy unit price of users during 20:00–21:00.</p>
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<p>Convergence process of the optimal response quantity of the electricity retailers in Scenario 2.</p>
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<p>Load change before and after users participate in demand response.</p>
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<p>Response income with the participation of power grid and electricity retailers with the change of income weight of power grid.</p>
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19 pages, 3851 KiB  
Article
A Preventive Control Approach for Power System Vulnerability Assessment and Predictive Stability Evaluation
by Ersen Akdeniz and Mustafa Bagriyanik
Sustainability 2023, 15(8), 6691; https://doi.org/10.3390/su15086691 - 15 Apr 2023
Cited by 2 | Viewed by 1852
Abstract
Early detection of cascading failures phenomena is a vital process for the sustainable operation of power systems. Within the scope of this work, a preventive control approach implementing an algorithm for selecting critical contingencies by a dynamic vulnerability analysis and predictive stability evaluation [...] Read more.
Early detection of cascading failures phenomena is a vital process for the sustainable operation of power systems. Within the scope of this work, a preventive control approach implementing an algorithm for selecting critical contingencies by a dynamic vulnerability analysis and predictive stability evaluation is presented. The analysis was carried out using a decision tree with a multi-parameter knowledge base. After the occurrence of an initial contingency, probable future contingencies are foreseen according to several vulnerability perspectives created by an adaptive vulnerability search module. Then, for cases identified as critical, a secure operational system state is proposed through a vulnerability-based, security-constrained, optimal power flow algorithm. The modular structure of the proposed algorithm enables the evaluation of possible vulnerable scenarios and proposes a strategy to alleviate the technical and economic impacts due to prospective cascading failures. The presented optimization methodology was tested using the IEEE-39 bus test network and a benchmark was performed between the proposed approach and a time domain analysis software model (EMTP). The obtained results indicate the potential of analysis approach in evaluating low-risk but high-impact vulnerabilities in power systems. Full article
(This article belongs to the Topic Advances in Power Science and Technology)
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<p>Proposed N-k contingency evaluation algorithm based on BVE, SVE, and C3-RLS modules.</p>
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<p>Proposed C3-RLS module flow chart.</p>
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<p>Dataset generation module developed in MATLAB-GUI.</p>
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<p>Classification tree for IEEE-39 security boundary definition (0: fail, 1: success).</p>
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<p>CSC-OPF module GUI.</p>
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<p>Performance indices distribution for IEEE-39 test network.</p>
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<p>Decision support module GUI.</p>
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<p>Performance indicators with respect to N-k contingencies (k = 1 to 10).</p>
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<p>IEEE-39 bus system connectivity diagram indicating most vulnerable points according to OPI, AWI, and TAI indices.</p>
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<p>Active power variation of generators during foreseen cascaded failures.</p>
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<p>Generator rotational speed deviations during cascading failure.</p>
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<p>Convergence of VB-OPF algorithm for IEEE-39 bus test system.</p>
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<p>Cost comparison of SST operation with base (not applied) case in IEEE-39 network for the applied contingency scenario.</p>
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