Probabilistic Deep Learning for Electric-Vehicle Energy-Use Prediction
Linas Petkevičius, Simonas Šaltenis, Alminas Čivilis, Kristian Torp
Abstract
The continued spread of electric vehicles raises new challenges for the supporting digital infrastructure. For example, long-distance route planning for such vehicles relies on the prediction of both the expected travel time as well as energy use. We envision a two-tier architecture to produce such predictions. First, a routing and travel-time-prediction subsystem generates a suggested route and predicts how the speed will vary along the route. Next, the expected energy use is predicted from the speed profile and other contextual characteristics, such as weather information and slope.
Topics & Concepts
Probabilistic logicArtificial intelligenceComputer scienceDeep learningMachine learningEnergy (signal processing)StatisticsMathematicsElectric Vehicles and InfrastructureAdvanced Battery Technologies ResearchEnergy Load and Power Forecasting