Litcius/Paper detail

Using Bayesian Deep Learning for Electric Vehicle Charging Station Load Forecasting

Dan Zhou, Zhonghao Guo, Yuzhe Xie, Yuheng Hu, Da Jiang, Yibin Feng, Dong Liu

2022Energies70 citationsDOIOpen Access PDF

Abstract

In recent years, replacing internal combustion engine vehicles with electric vehicles has been a significant option for supporting reducing carbon emissions because of fossil fuel shortage and environmental contamination. However, the rapid growth of electric vehicles (EVs) can bring new and uncertain load conditions to the electric network. Precise load forecasting for EV charging stations becomes vital to reduce the negative influence on the grid. To this end, a novel day-ahead load forecasting method is proposed to forecast loads of EV charging stations with Bayesian deep learning techniques. The proposed methodological framework applies long short-term memory (LSTM) network combined with Bayesian probability theory to capture uncertainty in forecasting. Based on the actual operational data of the EV charging station collected on the Caltech campus, the experiment results show the superior performance of the proposed method compared with other methods, indicating significant potential for practical applications.

Topics & Concepts

Economic shortageComputer scienceGridAutomotive engineeringBayesian probabilityBayesian networkElectrical loadElectric vehicleFossil fuelEnvironmental scienceSimulationArtificial intelligenceEngineeringPower (physics)Electrical engineeringMathematicsVoltageQuantum mechanicsLinguisticsGovernment (linguistics)PhilosophyWaste managementPhysicsGeometryElectric Vehicles and InfrastructureAdvanced Battery Technologies ResearchEnergy, Environment, and Transportation Policies