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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence / AAAI-21 Special Programs and Special Track

Topological Machine Learning Methods for Power System Responses to Contingencies

February 1, 2023

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Authors

Brian Bush

National Renewable Energy Laboratory


Yuzhou Chen

Southern Methodist University Lawrence Berkeley National Laboratory


Dorcas Ofori-Boateng

Portland State University


Yulia R. Gel

University of Texas at Dallas Lawrence Berkeley National Laboratory


DOI:

10.1609/aaai.v35i17.17791


Abstract:

While deep learning tools, coupled with the emerging machinery of topological data analysis, are proven to deliver various performance gains in a broad range of applications, from image classification to biosurveillance to blockchain fraud detection, their utility in areas of high societal importance such as power system modeling and, particularly, resilience quantification in the energy sector yet remains untapped. To provide fast acting synthetic regulation and contingency reserve services to the grid while having minimal disruptions on customer quality of service, we propose a new topology-based system that depends on a neural network architecture for impact metric classification and prediction in power systems. This novel topology-based system allows one to evaluate the impact of three power system contingency types, in conjunction with transmission lines, transformers, and transmission lines combined with transformers. We show that the proposed new neural network architecture equipped with local topological measures facilitates more accurate classification of unserved load as well as the amount of unserved load. In addition, we are able to learn more about the complex relationships between electrical properties and local topological measurements on their simulated response to contingencies for the NREL-SIIP power system.

Topics: AAAI

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HOW TO CITE:

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel Topological Machine Learning Methods for Power System Responses to Contingencies Proceedings of the AAAI Conference on Artificial Intelligence (2021) 15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel Topological Machine Learning Methods for Power System Responses to Contingencies AAAI 2021, 15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel (2021). Topological Machine Learning Methods for Power System Responses to Contingencies. Proceedings of the AAAI Conference on Artificial Intelligence, 15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. Topological Machine Learning Methods for Power System Responses to Contingencies. Proceedings of the AAAI Conference on Artificial Intelligence 2021 p.15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. 2021. Topological Machine Learning Methods for Power System Responses to Contingencies. "Proceedings of the AAAI Conference on Artificial Intelligence". 15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. (2021) "Topological Machine Learning Methods for Power System Responses to Contingencies", Proceedings of the AAAI Conference on Artificial Intelligence, p.15262-15269

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel, "Topological Machine Learning Methods for Power System Responses to Contingencies", AAAI, p.15262-15269, 2021.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. "Topological Machine Learning Methods for Power System Responses to Contingencies". Proceedings of the AAAI Conference on Artificial Intelligence, 2021, p.15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. "Topological Machine Learning Methods for Power System Responses to Contingencies". Proceedings of the AAAI Conference on Artificial Intelligence, (2021): 15262-15269.

Brian Bush||Yuzhou Chen||Dorcas Ofori-Boateng||Yulia R. Gel. Topological Machine Learning Methods for Power System Responses to Contingencies. AAAI[Internet]. 2021[cited 2023]; 15262-15269.


ISSN: 2374-3468


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