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Deep Reinforcement Learning-Based Optimal PMU Placement Considering the Degree of Power System Observability

Xu Zhou, Yuhong Wang, Yunxiang Shi, Qiliang Jiang, Chenyu Zhou, Zongsheng Zheng

2024IEEE Transactions on Industrial Informatics35 citationsDOI

Abstract

A phasor measurement unit (PMU) is the core measurement component of power system monitoring and analysis. The placement of PMUs directly impacts the state estimation confidence, and hence the optimal PMU placement (OPP), that, minimizing the number of PMUs and ensuring system observability, is appealing to power engineers. However, the current observability analysis mostly relies on topological methods, which cannot reflect the influence of the operating environment. Moreover, intricate OPP models are driving higher demand for efficient solvers. Confronting these challenges, we propose a reinforcement learning graph convolutional network-deep deterministic policy gradient algorithm-based OPP strategy, which effectively captures the system graph structure and PMU state, thereby independently identifying the PMUs value. Furthermore, the degree of system observability is considered, and three observability quantitative indicators are proposed in the OPP strategy, which will enhance the confidence of the perceived state under complex operating environment. The effectiveness of the proposed strategy have been validated in multiple test systems.

Topics & Concepts

ObservabilityPhasor measurement unitPhasorElectric power systemComputer scienceReinforcement learningUnits of measurementGraphControl theory (sociology)Mathematical optimizationPower (physics)Artificial intelligenceMathematicsTheoretical computer scienceControl (management)Applied mathematicsQuantum mechanicsPhysicsPower System Optimization and StabilityOptimal Power Flow DistributionPower Systems Fault Detection
Deep Reinforcement Learning-Based Optimal PMU Placement Considering the Degree of Power System Observability | Litcius