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Deep Sigma Point Processes-Assisted Chance-Constrained Power System Transient Stability Preventive Control

Tong Su, Junbo Zhao, Xiao Chen

2023IEEE Transactions on Power Systems24 citationsDOIOpen Access PDF

Abstract

This paper proposes a deep sigma point processes (DSPP)-assisted chance-constrained power system transient stability preventive control method to deal with uncertain renewable energy and loads-induced stability risk. The traditional transient stability-constrained preventive control is reformulated as a chance-constrained optimization problem. To deal with the computational bottleneck of the time-domain simulation-based probabilistic transient stability assessment, the DSPP is developed. DSPP is a parametric Bayesian approach that allows us to predict system transient stability with high computational efficiency while accurately quantifying the confidence intervals of the predictions that can be used to inform system instability risk. To this end, with a given preset confidence probability, we embed DSPP into the primal dual interior point method to help solve the chance-constrained preventive control problem, where the corresponding Jacobian and Hessian matrices are derived. Comparison results with other existing methods show that the proposed method can significantly speed up preventive control while maintaining high accuracy and convergence.

Topics & Concepts

Control theory (sociology)Mathematical optimizationElectric power systemTransient (computer programming)Computer scienceStability (learning theory)Jacobian matrix and determinantProbabilistic logicParametric statisticsMathematicsPower (physics)Control (management)Applied mathematicsArtificial intelligenceMachine learningOperating systemStatisticsQuantum mechanicsPhysicsPower System Optimization and StabilityOptimal Power Flow DistributionSmart Grid Energy Management
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