Lukas AckerPeter HofmannJohannes Konrad
Abstract This paper addresses the thermal management of batteries during fast charging of electric vehicles. Using comprehensive measurement data from a state-of-the-art battery electric vehicle (BEV), a control-oriented model of the battery and its thermal system is developed and parameterized. The existing thermal management strategy for fast charging is first analyzed, after which a predictive strategy specifically for this use case is proposed. The approach consists of two steps: offline setpoint optimization via dynamic programming and optimal control allocation using nonlinear model predictive control (NMPC). The strategy’s performance is evaluated using a validated high-fidelity simulation model. Compared to the existing state-of-the-art strategy, the proposed predictive approach reduces energy consumption by up to 0.41 kWh at moderate ambient temperatures through efficient cooling, and shortens charging time by up to 4.5% at low ambient temperatures through aggressive heating.
Victor TomanikPau BaresAndré AronisBenjamín Pla
Yan MaHao DingHongyuan MouJinwu Gao
Qiuhao HuMohammad Reza AminiAshley WieseJulia Buckland SeedsIlya KolmanovskyJing Sun