TY - JOUR
T1 - Real-Time Energy Management Strategy Based on Driver-Action-Impact MPC for Series Hybrid Electric Vehicles
AU - Ruan, Shumin
AU - Ma, Yue
N1 - Publisher Copyright:
© 2020 Shumin Ruan and Yue Ma.
PY - 2020
Y1 - 2020
N2 - Precise prediction of future vehicle information can improve the control efficiency of hybrid electric vehicles. Nowadays, most prediction models use previous information of vehicles to predictfuture driving velocity, which cannot reflect the impact of the driver and the environment. In thispaper, a real-time energy management strategy (EMS) based on driver-action-impact MPC is proposed for series hybrid electric vehicles. The proposed EMS consists of two modules: the velocity prediction module and the real-time MPC module. In the velocity prediction module, a long short-term memory(LSTM) neural network model, which is trained by the traffic data derived from a VR-based driving simulator, is adopted to predict the future driving information by using driver action information and current vehicle's velocity. The obtained future driving velocity is treated as the inputs of thereal-time MPC module, which outputs the control variables to act on the underlying controllers of power components by solving a standard quadratic programming (QP) problem. Compared with the rule-based strategy, a 5.6% average reduction of fuel consumption is obtained. The effectiveness of real-time computation of the EMS is validated and verified through a hardware-in-the-loop test platform.
AB - Precise prediction of future vehicle information can improve the control efficiency of hybrid electric vehicles. Nowadays, most prediction models use previous information of vehicles to predictfuture driving velocity, which cannot reflect the impact of the driver and the environment. In thispaper, a real-time energy management strategy (EMS) based on driver-action-impact MPC is proposed for series hybrid electric vehicles. The proposed EMS consists of two modules: the velocity prediction module and the real-time MPC module. In the velocity prediction module, a long short-term memory(LSTM) neural network model, which is trained by the traffic data derived from a VR-based driving simulator, is adopted to predict the future driving information by using driver action information and current vehicle's velocity. The obtained future driving velocity is treated as the inputs of thereal-time MPC module, which outputs the control variables to act on the underlying controllers of power components by solving a standard quadratic programming (QP) problem. Compared with the rule-based strategy, a 5.6% average reduction of fuel consumption is obtained. The effectiveness of real-time computation of the EMS is validated and verified through a hardware-in-the-loop test platform.
UR - http://www.scopus.com/inward/record.url?scp=85098179668&partnerID=8YFLogxK
U2 - 10.1155/2020/8843168
DO - 10.1155/2020/8843168
M3 - Article
AN - SCOPUS:85098179668
SN - 1076-2787
VL - 2020
JO - Complexity
JF - Complexity
M1 - 8843168
ER -