Physics-Informed Machine Learning for Electricity Markets: A NYISO Case Study

Robert Ferrando;Laurent Pagnier;Robert Mieth;Zhirui Liang;Yury Dvorkin;Daniel Bienstock;Michael Chertkov
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Abstract

This article addresses the challenge of efficiently recovering exact solutions to the optimal power flow problem in real-time electricity markets. The proposed solution, named Physics-Informed Market-Aware Active Set learning OPF (PIMA-AS-OPF), leverages physical constraints and market properties to ensure physical and economic feasibility of market-clearing outcomes. Specifically, PIMA-AS-OPF employs the active set learning technique and expands its capabilities to account for curtailment in load or renewable power generation, which is a common challenge in real-world power systems. The core of PIMA-AS-OPF is a fully-connected neural network that takes the net load and the system topology as input. The outputs of this neural network include active constraints such as saturated generators and transmission lines, as well as non-zero load shedding and wind curtailments. These outputs allow for reducing the original market-clearing optimization to a system of linear equations, which can be solved efficiently and yield both the dispatch decisions and the locational marginal prices (LMPs). The dispatch decisions and LMPs are then tested for their feasibility with respect to the requirements for efficient market- clearing results. The accuracy and scalability of the proposed method is tested on a realistic 1814-bus NYISO system with current and future renewable energy penetration levels.
电力市场的物理信息机器学习:NYISO 案例研究
本文探讨了在实时电力市场中有效恢复最优电力流问题精确解的难题。所提出的解决方案名为物理信息市场感知主动集学习 OPF(PIMA-AS-OPF),它利用物理约束和市场属性来确保市场清算结果的物理和经济可行性。具体来说,PIMA-AS-OPF 采用了主动集学习技术,并扩展了其功能,以考虑负载或可再生能源发电的削减,这是现实世界电力系统中的一个常见挑战。PIMA-AS-OPF 的核心是一个全连接的神经网络,它将净负荷和系统拓扑结构作为输入。该神经网络的输出包括饱和发电机和输电线路等有源约束,以及非零甩负荷和风力削减。通过这些输出,可以将原始的市场清算优化简化为线性方程组,从而高效地求解并得出调度决策和本地边际价格(LMP)。然后,根据高效市场清算结果的要求,测试调度决策和 LMP 的可行性。所提方法的准确性和可扩展性在一个现实的 1814 总线 NYISO 系统上进行了测试,该系统具有当前和未来的可再生能源渗透水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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