1. Multi-Objective Design Optimization of a Novel Dual-Mode Power-Split Hybrid Powertrain.
- Author
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Tang, Xiaolin, Zhang, Jieming, Cui, Xiangyang, Lin, Xianke, Grzesiak, Lech M., and Hu, Xiaosong
- Subjects
- *
DYNAMIC programming , *EVOLUTIONARY algorithms , *HYBRID systems , *ALGORITHMS - Abstract
This paper aims to explore the performance potential of a novel dual-mode power-split hybrid powertrain. First, the steady-state power split characteristics for the proposed hybrid powertrain in different modes are analyzed. The mode switching strategy is developed to maximize powertrain efficiency, which is verified by using dynamic programming based on direct transmit points (DTPs). Moreover, a novel multi-objective evolutionary algorithm based on the decomposition (MOEA/D) method used in a nested way with dynamic programming is proposed to solve the multi-objective optimization of the PS-HEVs for the first time, and the computational efficiency and superiority of the proposed algorithm is compared with the commonly used NSGA-II algorithm. The results show that the MOEA/D based multi-objective optimization framework has similar performance in the search for the Pareto frontier but significantly higher computational efficiency than that of the NSGA-II algorithm. The obtained Pareto frontier provides optimal design candidates for hybrid powertrain systems. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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