Integrated Propulsion and Cabin-Cooling Management for Electric Vehicles
Journal article, 2022

This paper presents two nonlinear model predictive control (MPC) methods for the integrated propulsion and cabin-cooling management of electric vehicles. An air-conditioning (AC) model, which has previously been validated on a real system, is used to accomplish system-level optimization. To investigate the optimal solution for the integrated optimal control problem (OCP), we first build an MPC, referred to as a joint MPC, in which the goal is to minimize battery energy consumption while maintaining cabin-cooling comfort. Second, we divide the integrated OCP into two small-scale problems and devise a co-optimization MPC (co-MPC), where speed planning on hilly roads and cabin-cooling management with propulsion power information are addressed successively. Our proposed MPC methods are then validated through two case studies. The results show that both the joint MPC and co-MPC can produce significant energy benefits while maintaining driving and thermal comfort. Compared to regular constant-speed cruise control that is equipped with a proportion integral (PI)-based AC controller, the benefits to the battery energy earned by the joint MPC and co-MPC range from 2.09% to 2.72%. Furthermore, compared with the joint MPC, the co-MPC method can achieve comparable performance in energy consumption and temperature regulation but with reduced computation time.

speed planning

cabin thermal management

electric vehicle

model predictive control

eco-driving

Author

Fei Ju

Nanjing University of Science and Technology

Nikolce Murgovski

Chalmers, Electrical Engineering, Systems and control

Weichao Zhuang

Southeast University

Liangmo Wang

Nanjing University of Science and Technology

Actuators

20760825 (eISSN)

Vol. 11 12 356

Subject Categories

Energy Engineering

Energy Systems

Control Engineering

DOI

10.3390/act11120356

More information

Latest update

1/5/2023 1