4.7 Article

Toward Distributed Energy Services: Decentralizing Optimal Power Flow With Machine Learning

期刊

IEEE TRANSACTIONS ON SMART GRID
卷 11, 期 2, 页码 1296-1306

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSG.2019.2935711

关键词

Machine learning; optimal power flow; power systems control; distribution system operation

资金

  1. NSF CPS FORCES Grant [CNS-1239166]
  2. UC-Philippine-California Advanced Research Institute [IIID-2015-10]
  3. NSF CAREER [1351900]

向作者/读者索取更多资源

The implementation of optimal power flow (OPF) methods to perform voltage and power flow regulation in electric networks is generally believed to require extensive communication. We consider distribution systems with multiple controllable Distributed Energy Resources (DERs) and present a data-driven approach to learn control policies for each DER to reconstruct and mimic the solution to a centralized OPF problem from solely locally available information. Collectively, all local controllers closely match the centralized OPF solution, providing near-optimal performance and satisfaction of system constraints. A rate distortion framework enables the analysis of how well the resulting fully decentralized control policies are able to reconstruct the OPF solution. The methodology provides a natural extension to decide what nodes a DER should communicate with to improve the reconstruction of its individual policy. The method is applied on both single- and three-phase test feeder networks using data from real loads and distributed generators, focusing on DERs that do not exhibit intertemporal dependencies. It provides a framework for Distribution System Operators to efficiently plan and operate the contributions of DERs to achieve Distributed Energy Services in distribution networks.

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