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Convex Optimization of Integrated Power-Gas Energy Flow Model With Applications to Probabilistic Energy Flow

Wenhao Jia, Tao Ding, Can Huang, Zekai Wang, Quan Zhou, Mohammad Shahidehpour

2020IEEE Transactions on Power Systems63 citationsDOIOpen Access PDF

Abstract

Energy flow calculation is a fundamental problem of the integrated power and gas system (IPGS) operation and planning. However, the nonlinear gas flow model introduces major challenges to the energy flow calculation. In this paper, we propose a tractably convex optimization model to solve the energy flow problem in IPGSs. It is demonstrated that the proposed optimization model has the same optimal solution as the original nonlinear steady energy flow model. Also, piecewise linearization is adopted to tightly linearize the nonlinear objective function of the model, which transforms the formulated convex optimization into a linear program one. Thus, the computation complexity of the proposed energy flow model is significantly reduced as compared with the existing methods. In addition, the proposed model can be extended to probabilistic energy flow estimation. Extensive case studies are conducted to validate the effectiveness of the proposed energy flow model using three IPGSs.

Topics & Concepts

Mathematical optimizationConvex optimizationLinearizationProbabilistic logicEnergy flowFlow (mathematics)Energy (signal processing)Nonlinear programmingNonlinear systemOptimization problemComputer scienceControl theory (sociology)MathematicsRegular polygonGeometryArtificial intelligenceControl (management)Quantum mechanicsStatisticsPhysicsIntegrated Energy Systems OptimizationOptimal Power Flow DistributionHybrid Renewable Energy Systems
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