Litcius/Paper detail

Hybrid Machine Learning Forecasting for Online MPC of Work Place Electric Vehicle Charging

Graham McClone, Avik Ghosh, Adil Khurram, B. Washom, Jan Kleissl

2023IEEE Transactions on Smart Grid26 citationsDOIOpen Access PDF

Abstract

This work proposes a novel EV forecasting technique that predicts each EV’s arrival time (AT), energy demand (ED) and plug duration (PD) over the course of a calendar day using a hybrid machine learning (ML) forecast. The ML forecasts as well as persistence forecasts are then input in a model predictive control (MPC) algorithm that minimizes the electricity costs incurred by the charging provider. The MPC with the hybrid ML forecast reduced peak loads and monthly electricity costs over a base case scenario that determined costs for uncontrolled L2 charging: Reductions in weekday mean peak load during a 30 day summer time case study were 46.7% and 2.8% from the base case to ML MPC and persistence to ML MPC, respectively. Reductions in utility costs during the summer case study were 20.9% and 0.1% from base case to ML MPC and persistence to ML MPC respectively. Results are similar for a 30 day winter case study.

Topics & Concepts

ElectricityModel predictive controlWork (physics)Persistence (discontinuity)Computer scienceDuration (music)Automotive engineeringControl theory (sociology)EngineeringControl (management)Artificial intelligenceElectrical engineeringMechanical engineeringGeotechnical engineeringLiteratureArtElectric Vehicles and InfrastructureAdvanced Battery Technologies ResearchEnergy, Environment, and Transportation Policies
Hybrid Machine Learning Forecasting for Online MPC of Work Place Electric Vehicle Charging | Litcius