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Data-driven evaluation of electric vehicle energy consumption for generalizing standard testing to real-world driving

Xinmei Yuan, Jiangbiao He, Yutong Li, Yu Liu, Yifan Ma, Bo Bao, Leqi Gu, Lili Li, Hui Zhang, Yucheng Jin, Long Sun

2024Patterns14 citationsDOIOpen Access PDF

Abstract

Standard energy-consumption testing, providing the only publicly available quantifiable measure of battery electric vehicle (BEV) energy consumption, is crucial for promoting transparency and accountability in the electrified automotive industry; however, significant discrepancies between standard testing and real-world driving have hindered energy and environmental assessments of BEVs and their broader adoption. In this study, we propose a data-driven evaluation method for standard testing to characterize BEV energy consumption. By decoupling the impact of the driving profile, our evaluation approach is generalizable to various driving conditions. In experiments with our approach for estimating energy consumption, we achieve a 3.84% estimation error for 13 different multiregional standardized test cycles and a 7.12% estimation error for 106 diverse real-world trips. Our results highlight the great potential of the proposed approach for promoting public awareness of BEV energy consumption through standard testing while also providing a reliable fundamental model of BEVs.

Topics & Concepts

Energy consumptionAutomotive industryDecoupling (probability)Transparency (behavior)Battery electric vehicleComputer scienceConsumption (sociology)Automotive engineeringReliability engineeringElectric vehicleEngineeringComputer securityControl engineeringAerospace engineeringSocial sciencePhysicsElectrical engineeringQuantum mechanicsSociologyPower (physics)Electric Vehicles and InfrastructureAdvanced Battery Technologies ResearchVehicle emissions and performance
Data-driven evaluation of electric vehicle energy consumption for generalizing standard testing to real-world driving | Litcius