Stochastic Range Estimation Algorithms for Electric Vehicles using Data-Driven Learning Models
Abstract
This work aims at improving the energy consumption forecast of electric vehicles by enhancing the prediction with a notion of uncertainty. The algorithm itself learns from driver and traffic data in a training set to generate accurate, driver-individual energy consumption forecasts.
Keywords
Elektromobilität; Vorhersagen; Algorithmen; Fahrzeugtechnik; Energiemanagement; E-Mobility; Forecasting; Algorithms; Vehicle Technology; Energy ManagementDOI
10.5445/KSP/1000143200ISBN
9783731511663, 9783731511663Publisher
KIT Scientific PublishingPublisher website
https://www.ksp.kit.edu/index.php?link=shop&sort=allPublication date and place
Karlsruhe, 2022Imprint
KIT Scientific PublishingSeries
Karlsruher Schriftenreihe Fahrzeugsystemtechnik, 6Classification
Mechanical engineering & materials