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Robust Data-Driven Linear Power Flow Model With Probability Constrained Worst-Case Errors

Yitong Liu, Zhengshuo Li, Junbo Zhao

2022IEEE Transactions on Power Systems19 citationsDOI

Abstract

To limit the probability of unacceptable worst-case linearization errors that might yield risks for power system operations, this letter proposes a robust data-driven linear power flow (RD-LPF) model. It applies to both transmission and distribution systems and can achieve better robustness than the recent data-driven models. The key idea is to probabilistically constrain the worst-case errors through distributionally robust chance-constrained programming. It also allows guaranteeing the linearization accuracy for a chosen operating point. Comparison results with three recent LPF models demonstrate that the worst-case error of the RD-LPF model is significantly reduced over 2- to 70-fold while reducing the average error. A compromise between computational efficiency and accuracy can be achieved through different ambiguity sets and conversion methods.

Topics & Concepts

Robustness (evolution)LinearizationControl theory (sociology)Electric power systemPower flowComputer scienceMathematical optimizationRobust controlLinear programmingOperating pointProbability distributionAlgorithmPower (physics)MathematicsNonlinear systemControl systemEngineeringControl (management)StatisticsPhysicsArtificial intelligenceQuantum mechanicsBiochemistryGeneElectrical engineeringChemistryOptimal Power Flow DistributionElectric Power System OptimizationPower System Optimization and Stability
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