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A Deep Generative Model for Non-Intrusive Identification of EV Charging Profiles

Shengyi Wang, Liang Du, Jin Ye, Dongbo Zhao

2020IEEE Transactions on Smart Grid54 citationsDOIOpen Access PDF

Abstract

The proliferation of electric vehicles (EVs) brings environmental benefits and technical challenges to power grids. An identification algorithm which can accurately extract individual EV charging profiles out of widely available smart meter measurements has attracted great interests. This paper proposes a non-intrusive identification framework for EV charging profile extraction, which is driven by deep generative models (DGM). First, the proposed DGM is designed as a representation layer embedded into the Markov process and used to model the joint probability distribution of available time-series data. A novel contribution is to approximate posterior distributions by neural networks whose parameters are obtained by variational inference and supervised learning. Second, the EV charging status is inferred from the DGM via dynamic programming. Lastly, the desired EV charging profile can be reconstructed by the rated power of EV models and inferred status. Compared with the benchmark Hidden Markov Models, the proposed framework can better handle noise in data with less computational complexity and better overall accuracy performances with smaller recall. The proposed framework is validated by numerical experiments on the Pecan Street dataset.

Topics & Concepts

Computer scienceHidden Markov modelBenchmark (surveying)Generative modelNoise (video)InferenceIdentification (biology)Artificial intelligenceMarkov processElectric vehicleMachine learningAlgorithmPower (physics)Generative grammarMathematicsStatisticsQuantum mechanicsBiologyBotanyImage (mathematics)GeographyGeodesyPhysicsElectric Vehicles and InfrastructureAdvanced Battery Technologies ResearchSmart Grid Energy Management