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On Multi-Event Co-Calibration of Dynamic Model Parameters Using Soft Actor-Critic

Siqi Wang, Ruisheng Diao, Chunlei Xu, Di Shi, Zhiwei Wang

2020IEEE Transactions on Power Systems57 citationsDOI

Abstract

Maintaining good quality of transient stability models for power system planning and operational analysis is of great importance. Identification and calibration of bad parameters using PMU measurements that work well for multiple events remains a challenging problem. In this letter, we present a novel parameter calibration method based on off-policy deep reinforcement learning (DRL) algorithm with maximum entropy, soft actor critic (SAC), to automatically tune incorrect parameter sets considering multiple events simultaneously, which can save tremendous labor efforts for maintaining model accuracy and complying with industry standards. The effectiveness of the proposed approach is verified through numerical experiments conducted on a realistic power plant model.

Topics & Concepts

CalibrationReinforcement learningComputer scienceElectric power systemIdentification (biology)Entropy (arrow of time)Transient (computer programming)Principle of maximum entropyStability (learning theory)Control theory (sociology)Control engineeringPower (physics)EngineeringReliability engineeringArtificial intelligenceMachine learningMathematicsControl (management)Operating systemPhysicsBotanyQuantum mechanicsBiologyStatisticsPower System Optimization and StabilityOptimal Power Flow DistributionSmart Grid Security and Resilience
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