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Comparative Analysis of Learning-Based Methods for Transient Stability Assessment

Authors :
Wu, Xingjian
Wang, Xiaoting
Wang, Xiaozhe
Caines, Peter E.
Liu, Jingyu
Publication Year :
2024

Abstract

Transient stability and critical clearing time (CCT) are important concepts in power system protection and control. This paper explores and compares various learning-based methods for predicting CCT under uncertainties arising from renewable generation, loads, and contingencies. Specially, we introduce new definitions of transient stability (B-stablilty) and CCT from an engineering perspective. For training the models, only the initial values of system variables and contingency cases are used as features, enabling the provision of protection information based on these initial values. To enhance efficiency, a hybrid feature selection strategy combining the maximal information coefficient (MIC) and Spearman's Correlation Coefficient (SCC) is employed to reduce the feature dimension. The performance of different learning-based models is evaluated on a WSCC 9-bus system.<br />Comment: Accepted for presentation at the 56th North American Power Symposium (NAPS)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.02336
Document Type :
Working Paper