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Addressing the Conditional and Correlated Wind Power Forecast Errors in Unit Commitment by Distributionally Robust Optimization

Xiaodong Zheng, Kaiping Qu, Jiaqing Lv, Zhengmao Li, Bo Zeng

2020IEEE Transactions on Sustainable Energy73 citationsDOI

Abstract

In this paper, a study of the day-ahead unit commitment problem with stochastic wind power generation is presented, which considers conditional, and correlated wind power forecast errors through a distributionally robust optimization approach. Firstly, to capture the characteristics of random wind power forecast errors, the least absolute shrinkage, and selection operator (Lasso) is utilized to develop a robust conditional error estimator, while an unbiased estimator is used to obtain the covariance matrix. The conditional error, and the covariance matrix are then used to construct an enhanced ambiguity set. Secondly, we develop an equivalent mixed integer semidefinite programming (MISDP) formulation of the two-stage distributionally robust unit commitment model with a polyhedral support of random variables. Further, to efficiently solve this problem, a novel cutting plane algorithm that makes use of the extremal distributions identified from the second-stage semidefinite programming (SDP) problems is introduced. Finally, numerical case studies show the advantage of the proposed model in capturing the spatiotemporal correlation in wind power generation, as well as the economic efficiency, and robustness of dispatch decisions.

Topics & Concepts

Mathematical optimizationSemidefinite programmingRobust optimizationCovariance matrixRobustness (evolution)Power system simulationWind powerStochastic programmingEstimatorAmbiguityCovarianceMathematicsInteger programmingOptimization problemComputer scienceElectric power systemAlgorithmPower (physics)StatisticsEngineeringProgramming languageElectrical engineeringQuantum mechanicsChemistryPhysicsGeneBiochemistryElectric Power System OptimizationEnergy Load and Power ForecastingRisk and Portfolio Optimization
Addressing the Conditional and Correlated Wind Power Forecast Errors in Unit Commitment by Distributionally Robust Optimization | Litcius