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Kim, Youngdae
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Frequency Recovery in Power Grids using High-Performance Computing

Author(s)
Rao, V.Subramanyam, A.Schanen, M.Kim, YoungdaeSatkauskas, I.Anitescu, M.
Issued Date
2022-82-09
DOI
10.1145/3547276.3548632
URI
https://scholarworks.unist.ac.kr/handle/201301/83436
Citation
51st International Conference on Parallel Processing, ICPP 2022
Abstract
Maintaining electric power system stability is paramount, especially in extreme contingencies involving unexpected outages of multiple generators or transmission lines that are typical during severe weather events. Such outages often lead to large supply-demand mismatches followed by subsequent system frequency deviations from their nominal value. The extent of frequency deviations is an important metric of system resilience, and its timely mitigation is a central goal of power system operation and control. This paper develops a novel nonlinear model predictive control (NMPC) method to minimize frequency deviations when the grid is affected by an unforeseen loss of multiple components. Our method is based on a novel multi-period alternating current optimal power flow (ACOPF) formulation that accurately models both nonlinear electric power flow physics and the primary and secondary frequency response of generator control mechanisms. We develop a distributed parallel Julia package for solving the large-scale nonlinear optimization problems that result from our NMPC method and thereby address realistic test instances on existing high-performance computing architectures. Our method demonstrates superior performance in terms of frequency recovery over existing industry practices, where generator levels are set based on the solution of single-period classical ACOPF models. © 2022 ACM.
Publisher
Association for Computing Machinery

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