Transient Stability Preventive Control via Tuning the Parameters of Virtual Synchronous Generators

2023 IEEE Power & Energy Society General Meeting (PESGM)(2023)

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摘要
This paper presents an optimal preventive control (OPC) method to improve the power system transient stability via tuning the transient parameter of virtual synchronous generators. The novelty of this work is that we formulate the preventive control as an optimization problem so that inverter parameters can be adjusted at the pre-contingency stage. A reinforcement learning (RL)-driven method is proposed to solve the OPC problem with the fault energy-based reward function. An ANDES-based RL environment is also developed. Versatile functions included in the proposed environment have been presented in this paper. The proposed OPC formulation, the RL-driven method, and the fault energy-based reward function are verified on several standard test systems.
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关键词
Inverter-based resources,virtual synchronous generators,preventive control,reinforcement learning,training environments
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