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A Bayesian Game Approach for Demand Response Management Considering Incomplete Information

Xiaofeng Liu, Difei Tang, and Zhicheng Dai

2022Journal of Modern Power Systems and Clean Energy21 citationsDOIOpen Access PDF

Abstract

Residential flexible resource is attracting much attention in demand response (DR) for peak load shifting. This paper proposes a scenario for multi-stage DR project to schedule energy consumption of residential communities considering the incomplete information. Communities in the scenario can decide whether to participate in DR in each stage, but the decision is the private information that is unknown to other communities. To optimize the energy consumption, a Bayesian game approach is formulated, in which the probability characteristic of the decision-making of residential communities is described with Markov chain considering human behavior of bounded rationality. Simulation results show that the proposed approach can benefit all residential communities and power grid, but the optimization effect is slightly inferior to that in complete information game approach.

Topics & Concepts

Demand responseBounded rationalityOperations researchScheduleComputer scienceComplete informationConsumption (sociology)Energy consumptionMarkov chainBayesian gameBayesian probabilityMarkov decision processResource (disambiguation)Mathematical optimizationGame theoryMicroeconomicsSequential gameMarkov processEconomicsEngineeringArtificial intelligenceElectricityMachine learningMathematicsOperating systemSocial scienceElectrical engineeringSociologyComputer networkStatisticsSmart Grid Energy ManagementElectric Vehicles and InfrastructureSmart Grid Security and Resilience
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