1. A Predictive Energy Management Strategies for Mining Dump Trucks.
- Author
-
Yixuan Yu, Yulin Wang, Qingcheng Li, and Bowen Jiao
- Subjects
DUMP trucks ,PLUG-in hybrid electric vehicles ,ENERGY management ,HYBRID systems ,TRUCK fuel consumption ,ELECTRIC trucks ,HYBRID electric vehicles ,DYNAMIC programming ,ENERGY consumption - Abstract
The plug-in hybrid vehicles (PHEV) technology can effectively address the issues of poor dynamics and higher energy consumption commonly found in traditional mining dump trucks. Meanwhile, plug-in hybrid electric trucks can achieve excellent fuel economy through efficient energy management strategies (EMS). Therefore, a series hybrid system is constructed based on a 100-ton mining dump truck in this paper. And inspired by the dynamic programming (DP) algorithm, a predictive equivalent consumption minimization strategy (P-ECMS) based on the DP optimization result is proposed. Based on the optimal control manifold and the SOC reference trajectory obtained by the DP algorithm, the P-ECMS strategy performs real-time stage parameter optimization to obtain the optimal equivalent factor (EF). Finally, applying the equivalent consumption minimization strategy (ECMS) realizes real-time control. The simulation results show that the equivalent fuel consumption of the PECMS strategy under the experimentally collected mining cycle conditions is 150.8 L/100 km, which is 10.9% less than that of the common CDCS strategy (169.3 L/100 km), and achieves 99.47% of the fuel saving effect of the DP strategy (150 L/100 km). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF