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The Optimization of Control Parameters for Hybrid Electric Vehicles based on Genetic Algorithm
Technical Paper
2014-01-1894
ISSN: 0148-7191, e-ISSN: 2688-3627
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English
Abstract
The traditional vehicle design methods of hybrid electric vehicles are based on the rule-based control strategy, which often adopt the trial and error methods and the model-based numerical optimization methods. But these methods require a large number of repeated tests and a longer-term development cycle. In this paper, approximately the global optimization algorithm was used in control parameters designing through rational design of the penalty weights of objective function. But the optimized parameters apply only to vehicles that operating in the special drive cycle to get better fuel economy. Therefore, a drive cycle recognition algorithm was proposed to identify types of drive cycles in real-time, then an off-line genetic algorithm was adopted to acquire the optimization of control parameters under the various drive cycles, through drive cycle recognition results to choose the best control parameters. The simulation results demonstrate that adaptive energy strategy can improves the fuel-economy of hybrid electric vehicle and guarantees the vehicle power performance, driving performance.
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Jun, W., Wang, Q., Wang, P., and Han, B., "The Optimization of Control Parameters for Hybrid Electric Vehicles based on Genetic Algorithm," SAE Technical Paper 2014-01-1894, 2014, https://doi.org/10.4271/2014-01-1894.Also In
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