An Energy Management System for the Control of Battery Storage in a Grid-Connected Microgrid Using Mixed Integer Linear Programming
<p>Schematic diagram of the EMS with battery storage. The superscript * denotes the battery commands.</p> "> Figure 2
<p>Grid-connected hybrid microgrid model with power flow possibilities.</p> "> Figure 3
<p>Real and predicted PV data (from the LSTM prediction network for selected months of the year).</p> "> Figure 4
<p>Real and predicted load demand (from the LSTM prediction network for selected months of the year).</p> "> Figure 5
<p>Illustration of the RH control strategy.</p> "> Figure 6
<p>EMS flow model for scenario 1 (real-time operation with the RH control strategy). The superscript * denotes the battery commands.</p> "> Figure 7
<p>EMS flow model for scenario 2 (offline optimization using predicted data). The superscript * denotes the battery commands.</p> "> Figure 8
<p>The microgrid dispatch for January, May, August and November respectively, for real-time operation of the microgrid using RH control.</p> "> Figure 9
<p>Optimal cost comparison between the benchmark, real-time and offline optimization.</p> ">
Abstract
:1. Introduction
- Online Optimization—Execution every hour in real-time using a receding horizon of 24 h.
- Offline Optimization—Execution once a day using a single set of LSTM-predicted data.
2. Optimal Operation of Battery Using MILP
2.1. The MILP Formulation
2.2. Background of LSTM Prediction Networks
3. Receding Horizon Control
4. Simulations and Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Description | |
ESS state of charge (SoC) | |
ESS minimum and maximum SoC | |
ESS capacity | |
Initial energy stored in the ESS (kWh) | |
ESS charge/discharge efficiencies | |
Time interval | |
Operational cost per time step (£) | |
ESS charge/discharge limiting constant | |
The constraint that controls the startup of the ESS charge and discharge | |
Load demand | |
Maximum charge/discharge power (kW) | |
ESS charge/discharge power (kW) | |
Grid power (kW) | |
PV power (kW) | |
Optimization horizon (h) | |
Grid tariff (£/kWh) | |
Number of time steps | |
Total power generated by the microgrid (kW) | |
The coefficient for the conversion of the ESS charge/discharge power to the same unit as the battery SoC | |
Represents a set of constraints for |
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References | Contribution/Application | Method Used |
---|---|---|
[9] | Power management and operating cost minimization | MILP, Tiered Power Management System |
[10] | Economic dispatch and cost minimization | MILP and Heuristic Method |
[11] | Day-ahead optimal operation of microgrid | Mathematical Modeling |
[13] | Real-time operation of microgrids | MILP |
[14] | Optimal energy/power control | Mathematical Modeling |
[15] | Deterministic management model with two-stage energy management model | Rolling horizon-based energy management strategy, MILP |
This paper | Energy management, battery control (charge/discharge cycle) and operating cost minimization. | Offline and online optimization approach using MILP with receding horizon control (LSTM-MILP-RH approach) |
Decision Variable | Variable Type | Description |
---|---|---|
Continuous | Power from the Grid to the Load | |
Continuous | Power from the Grid to the ESS | |
Continuous | Power from PV to the Load | |
Continuous | Power from PV to ESS | |
Binary | On/off state of the ESS charge | |
Binary | On/off state of the ESS discharge | |
Binary | Variable for the charging state of the ESS |
Time of Day | Hour | Price |
---|---|---|
Off-peak time | 22:00–5:00 | 0.05 £/kWh |
Mid-peak time | 12:00–17:00 | 0.08 £/kWh |
Peak time | 6:00–11:00, 18:00–21:00 | 0.17 £/kWh |
Battery Parameters | Typical Values |
---|---|
Rated depth of discharge (DOD) % | 50 |
Maximum charging power (kW) | 300 |
Battery charge efficiency (%) | 100 |
Battery discharge efficiency (%) | 100 |
Maximum state of charge (%) | 100 |
Nominal battery capacity at 100% SoC (kWh) | 2400 |
Months | Optimal Cost (£) (Benchmark) | Optimal Cost (£) (Online Optimization) | Optimal Cost (£) (Offline Optimization) | % Difference between the Two Scenarios |
---|---|---|---|---|
Jan | 2043.30 | 2079.20 | 2086.30 | 0.342 |
Feb | 1870.20 | 1906.20 | 1961.20 | 2.804 |
Mar | 1202.90 | 1216.56 | 1241.80 | 2.033 |
Apr | 1227.11 | 1227.11 | 1306.60 | 6.083 |
May | 524.81 | 534.58 | 632.19 | 15.440 |
Jun | 375.99 | 404.13 | 449.78 | 10.149 |
Jul | 395.75 | 410.54 | 484.39 | 15.246 |
Aug | 363.68 | 370.92 | 386.68 | 4.076 |
Sep | 392.50 | 395.69 | 448.09 | 11.694 |
Oct | 1167.38 | 1167.38 | 1195.80 | 2.376 |
Nov | 2308.70 | 2335.77 | 2345.60 | 0.419 |
Dec | 3404.80 | 3422.77 | 3457.30 | 0.998 |
Total Cost | 15,277.123 | 15,470.853 | 15,995.771 | |
% Closeness to the benchmark | 1.252 | 4.493 | ||
Total Cost % Difference B/W the Two Scenarios | 3.3 |
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Sigalo, M.B.; Pillai, A.C.; Das, S.; Abusara, M. An Energy Management System for the Control of Battery Storage in a Grid-Connected Microgrid Using Mixed Integer Linear Programming. Energies 2021, 14, 6212. https://doi.org/10.3390/en14196212
Sigalo MB, Pillai AC, Das S, Abusara M. An Energy Management System for the Control of Battery Storage in a Grid-Connected Microgrid Using Mixed Integer Linear Programming. Energies. 2021; 14(19):6212. https://doi.org/10.3390/en14196212
Chicago/Turabian StyleSigalo, Marvin Barivure, Ajit C. Pillai, Saptarshi Das, and Mohammad Abusara. 2021. "An Energy Management System for the Control of Battery Storage in a Grid-Connected Microgrid Using Mixed Integer Linear Programming" Energies 14, no. 19: 6212. https://doi.org/10.3390/en14196212
APA StyleSigalo, M. B., Pillai, A. C., Das, S., & Abusara, M. (2021). An Energy Management System for the Control of Battery Storage in a Grid-Connected Microgrid Using Mixed Integer Linear Programming. Energies, 14(19), 6212. https://doi.org/10.3390/en14196212