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Preprint article ยท Conference paper

Learning Optimal Power Flow: Worst-Case Guarantees for Neural Networks

In Proceedings of 2020 Ieee International Conference on Communications, Control, and Computing Technologies for Smart Grids โ€” 2020, pp. 1-7
From

Department of Electrical Engineering, Technical University of Denmark1

Center for Electric Power and Energy, Centers, Technical University of Denmark2

Energy Analytics and Markets, Center for Electric Power and Energy, Centers, Technical University of Denmark3

California Institute of Technology4

This paper introduces for the first time a framework to obtain provable worst-case guarantees for neural network performance, using learning for optimal power flow (OPF) problems as a guiding example. Neural networks have the potential to substantially reduce the computing time of OPF solutions. However, the lack of guarantees for their worst-case performance remains a major barrier for their adoption in practice.

This work aims to remove this barrier. We formulate mixed-integer linear programs to obtain worst-case guarantees for neural network predictions related to (i) maximum constraint violations, (ii) maximum distances between predicted and optimal decision variables, and (iii) maximum sub-optimality. We demonstrate our methods on a range of PGLib-OPF networks up to 300 buses.

We show that the worst-case guarantees can be up to one order of magnitude larger than the empirical lower bounds calculated with conventional methods. More importantly, we show that the worst-case predictions appear at the boundaries of the training input domain, and we demonstrate how we can systematically reduce the worst-case guarantees by training on a larger input domain than the domain they are evaluated on.

Language: English
Publisher: IEEE
Year: 2020
Pages: 1-7
Proceedings: 2020 IEEE International Conference on Communications, Control, and Computing Technologies for Smart Grids
ISBN: 1728161266 , 1728161274 , 1728163595 , 9781728161266 , 9781728161273 and 9781728163598
Types: Preprint article and Conference paper
DOI: 10.1109/SmartGridComm47815.2020.9302963
ORCIDs: Venzke, Andreas and Chatzivasileiadis, Spyros

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