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Published March 8, 2024 | Accepted
Journal Article Open

Unsupervised Learning for Solving AC Optimal Power Flows: Design, Analysis, and Experiment

  • 1. ROR icon California Institute of Technology

Abstract

With the increasing penetration of renewables, AC optimal power flow (AC-OPF) problems need to be solved more frequently for reliable and economic power system operation. Supervised learning approaches have been developed to solve AC-OPF problems fast and accurately. However, due to the non-convexity of AC-OPF problems, it is non-trivial and computationally expensive to prepare a large training dataset, and multiple load-solution mappings may exist to impair learning even if the dataset is available. In this paper, we develop an unsupervised learning approach ( DeepOPF-NGT ) that does not require ground truths. DeepOPF-NGT utilizes a properly designed loss function to guide neural networks in directly learning a legitimate load-solution mapping. Kron reduction is used to remove the zero-injection buses from the prediction. To tackle the unbalanced gradient pathologies known to deteriorate the learning performance, we develop an adaptive learning rate algorithm to dynamically balance the gradient contributions from different loss terms during training. Further, we derive conditions for unsupervised learning to learn a legitimate load-solution mapping and avoid the multiple mapping issue in supervised learning. Results of the 39/118/300/1354- bus systems show that DeepOPF-NGT achieves optimality, feasibility, and speedup performance comparable to the state-of-the-art supervised approaches and better than the unsupervised ones, and a few ground truths can further improve its performance.

Copyright and License

© 2024 IEEE.

Acknowledgement

This work is supported in part by a General Research Fund from Research Grants Council, Hong Kong (Project No. 11200223), an InnoHK initiative, The Government of the HKSAR, Laboratory for AI-Powered Financial Technologies, and a Shenzhen-Hong Kong-Macau Science & Technology Project (Category C, Project No. SGDX20220530111203026). The authors would also like to thank the anonymous reviewers for their helpful comments.

Files

Unsupervised_Learning_for_Solving_AC_Optimal_Power_Flows_Design_Analysis_and_Experiment.pdf

Additional details

Created:
April 23, 2024
Modified:
April 23, 2024