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Assessment of hybrid transfer learning method for forecasting EV profile and system voltage using limited EV charging data

Paul Banda, Muhammed A. Bhuiyan, Kazi N. Hasan, Kevin Zhang

2023Sustainable Energy Grids and Networks23 citationsDOIOpen Access PDF

Abstract

The number of electric vehicles (EV) is increasing exponentially, significantly affecting the planning and operation of future electricity grids, albeit the availability of EV data is very limited to perform power system studies. To overcome the poor forecasting accuracy associated with limited available data, this research proposes a time-series-based hybrid transfer learning forecasting approach, namely CNN-BiLSTM (Convolutional Neural Network – Bidirectional Long Short-Term Memory) to forecast EV charging profile. Additionally, the proposed algorithm has been applied to forecast network voltage from the EV data without performing power flow. EV charging demand datasets collected over a year for residential, slow commercial, and fast commercial charging stations and their corresponding voltage profiles have been used to test the effectiveness of the proposed hybrid transfer learning framework. The results confirm the improved accuracy of the proposed hybrid CNN-BiLSTM model compared to the conventional CNN model, newly created models in predicting the EV charging demand and voltage profiles.

Topics & Concepts

Transfer of learningComputer scienceVoltageMaximum power transfer theoremConvolutional neural networkTransfer (computing)Artificial neural networkPower (physics)ElectricityArtificial intelligenceMachine learningEngineeringElectrical engineeringQuantum mechanicsParallel computingPhysicsElectric Vehicles and InfrastructureAdvanced Battery Technologies ResearchEnergy Load and Power Forecasting
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