Litcius/Paper detail

Vehicle-to-grid plug-in forecasting for participation in ancillary services markets

Jemima Graham, Fei Teng

202312 citationsDOI

Abstract

Electric vehicle (EV) charge points (CPs) can be used by aggregators to provide frequency response (FR) ser-vices. Aggregators must have day-ahead half-hourly forecasts of minimum aggregate vehicle-to-grid (V2G) plug-in to produce meaningful bids for the day-ahead ancillary services market. However, there is a lack of understanding on what features should be considered and how complex the forecasting model should be. This paper explores the dependency of aggregate V2G plug-in on historic plug-in levels, calendar variables, and weather conditions. These investigations are used to develop three day-ahead forecasts of minimum aggregate V2G plug-in during 30-minute window. A neural network that considers previous V2G plug-in values the day before, three days before, and seven days before, in addition to day of the week, month, and hour, is found to be the most accurate.

Topics & Concepts

Plug-inGridAggregate (composite)Plug and playVehicle-to-gridComputer scienceSpark plugDependency (UML)Operations researchEconometricsTransport engineeringSimulationElectric vehicleEngineeringEconomicsMathematicsArtificial intelligenceOperating systemMaterials scienceQuantum mechanicsPower (physics)GeometryPhysicsAerospace engineeringComposite materialElectric Vehicles and InfrastructureEnergy, Environment, and Transportation PoliciesAdvanced Battery Technologies Research