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On the Impact of the Sequence Length on Sequence-to-Sequence and Sequence-to-Point Learning for NILM

Published: 18 November 2020 Publication History

Abstract

The Sequence-to-Sequence (S2S) and Sequence-to-Point (S2P) optimization methods achieve remarkable accuracy results for load disaggregation tasks. Internally, they rely on neural networks, trained to identify the power consumption of a single appliance under consideration from a sequence of aggregate power data. Their most important configuration parameter - the number of input data samples to consider - is, however, mostly set to a fixed value. As a result thereof, the amount of historical data available at the algorithm's input is governed by the sampling interval of the used input data. For example, UK-DALE [5] provides samples every 6 s, so a sequence length of 599 samples (as proposed in [9]) makes approximately 1 h of historical data available to the disaggregation algorithm. No analyses of the impact of the sequence length on the NILM performance have been documented in literature to date. We hence present a methodological assessment of the sensitivity of S2S and S2P to variations of their input sequence length parameter. Our results show that setting a per-device parameter value leads to improved disaggregation results; however, the required values need to be determined empirically, as they are unrelated to the appliances' operational durations. Even if only a single value may be set, an informed choice (rather than using the default value) can drastically improve NILM performance.

References

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N. Batra, J. Kelly, O. Parson, H. Dutta, W. Knottenbelt, A. Rogers, A. Singh, and M. Srivastava. 2014. NILMTK: An Open Source Toolkit for Non-Intrusive Load Monitoring. In Proceedings of the 5th ACM International Conference on Future Energy Systems (e-Energy).
[2]
N. Batra, R. Kukunuri, A. Pandey, R. Malakar, R. Kumar, O. Krystalakos, M. Zhong, P. Meira, and O. Parson. 2019. Towards Reproducible State-of-the-Art Energy Disaggregation. In Proceedings of the 6th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation (BuildSys).
[3]
G. W. Hart. 1992. Nonintrusive Appliance Load Monitoring. Proc. IEEE 80, 12 (1992).
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J. Kelly and W. Knottenbelt. 2015. Neural NILM: Deep Neural Networks Applied to Energy Disaggregation. In Proceedings of the 2nd ACM International Conference on Embedded Systems for Energy-Efficient Built Environments (BuildSys).
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J. Kelly and W. Knottenbelt. 2015. The UK-DALE Dataset, Domestic Appliance-level Electricity Demand and Whole-House Demand from Five UK Homes. Scientific Data 2, 150007 (2015).
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O. Krystalakos, C. Nalmpantis, and D. Vrakas. 2018. Sliding Window Approach for Online Energy Disaggregation Using Artificial Neural Networks. In Proceedings of the 10th Hellenic Conference on Artificial Intelligence (SETN).
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S. N. A. U. Nambi, A. Reyes Lua, and V. R. Prasad. 2015. LocED: Location-Aware Energy Disaggregation Framework. In Proceedings of the 2nd ACM International Conference on Embedded Systems for Energy-Efficient Built Environments (BuildSys).
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A. Reinhardt and C. Klemenjak. 2020. How does Load Disaggregation Performance Depend on Data Characteristics? Insights from a Benchmarking Study. In Proceedings of the 11th ACM International Conference on Future Energy Systems (e-Energy).
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C. Zhang, M. Zhong, Z. Wang, N. Goddard, and C. Sutton. 2018. Sequence-to-Point Learning with Neural Networks for Non-Intrusive Load Monitoring. In Proceedings of the 32nd AAAI Conference on Artificial Intelligence (AAAI).
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Y. Zhang, G. Yang, and S. Ma. 2019. Non-Intrusive Load Monitoring based on Convolutional Neural Network with Differential Input. In Proceedings of the 11th Conference on Industrial Product-Service Systems (CIRP), Vol. 83.

Cited By

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  • (2024)NILMInspector: An Interactive Tool for Data Visualization and Manipulation in Load DisaggregationProceedings of the 11th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation10.1145/3671127.3698794(323-328)Online publication date: 29-Oct-2024
  • (2024)DCML: Boosting Applying Experience of NILM with Dilated Convolution and Multi-Task Learning2024 IEEE/CIC International Conference on Communications in China (ICCC)10.1109/ICCC62479.2024.10681804(991-996)Online publication date: 7-Aug-2024
  • (2024)Multichannel energy monitoring based on the sliding window method in an industrial environmentEnergy and Buildings10.1016/j.enbuild.2024.113915306(113915)Online publication date: Mar-2024
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      NILM'20: Proceedings of the 5th International Workshop on Non-Intrusive Load Monitoring
      November 2020
      109 pages
      ISBN:9781450381918
      DOI:10.1145/3427771
      Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

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      Published: 18 November 2020

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      Author Tags

      1. non-intrusive load monitoring
      2. optimal input sequence length
      3. sequence-to-point learning
      4. sequence-to-sequence learning

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      Cited By

      View all
      • (2024)NILMInspector: An Interactive Tool for Data Visualization and Manipulation in Load DisaggregationProceedings of the 11th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation10.1145/3671127.3698794(323-328)Online publication date: 29-Oct-2024
      • (2024)DCML: Boosting Applying Experience of NILM with Dilated Convolution and Multi-Task Learning2024 IEEE/CIC International Conference on Communications in China (ICCC)10.1109/ICCC62479.2024.10681804(991-996)Online publication date: 7-Aug-2024
      • (2024)Multichannel energy monitoring based on the sliding window method in an industrial environmentEnergy and Buildings10.1016/j.enbuild.2024.113915306(113915)Online publication date: Mar-2024
      • (2024)Generation of meaningful synthetic sensor data — Evaluated with a reliable transferability methodologyEnergy and AI10.1016/j.egyai.2023.10030815(100308)Online publication date: Jan-2024
      • (2023)Unlocking the Full Potential of Neural NILM: On Automation, Hyperparameters, and Modular PipelinesIEEE Transactions on Industrial Informatics10.1109/TII.2022.320632219:5(7002-7010)Online publication date: May-2023
      • (2023)Energformer: A New Transformer Model for Energy DisaggregationIEEE Transactions on Consumer Electronics10.1109/TCE.2023.323786269:3(308-320)Online publication date: Aug-2023
      • (2023)Leveraging sequence-to-sequence learning for online non-intrusive load monitoring in edge deviceInternational Journal of Electrical Power & Energy Systems10.1016/j.ijepes.2022.108910148(108910)Online publication date: Jun-2023
      • (2023)Electric Bicycle Charging Load Identification Technology Based on Non-intrusive Load MonitoringThe proceedings of the 10th Frontier Academic Forum of Electrical Engineering (FAFEE2022)10.1007/978-981-99-3408-9_83(957-965)Online publication date: 24-Aug-2023
      • (2022)Towards Trustworthy Energy Disaggregation: A Review of Challenges, Methods, and Perspectives for Non-Intrusive Load MonitoringSensors10.3390/s2215587222:15(5872)Online publication date: 5-Aug-2022
      • (2022)Efficient neural network representations for energy data analytics on embedded systemsProceedings of the Thirteenth ACM International Conference on Future Energy Systems10.1145/3538637.3538842(81-92)Online publication date: 28-Jun-2022
      • Show More Cited By

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