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Concurrent Optimization for Parameters of Powertrain and Control System of Hybrid Electric Vehicle Based on Multi-Objective Genetic Algorithms

机译:基于多目标遗传算法的混合动力电动车动力系统和控制系统的参数并发优化

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The optimizing design of hybrid electric vehicle (HEV) aims at improving fuel economy and decreasing emissions subject to the satisfaction of its drivability. The concurrent optimization for main parameters of powertrain components and control system is the key to implement this objective. However, this problem is challenging due to the large amount of coupling design parameters, conflicting design objectives and nonlinear constraints. Thus, it is necessary to employ an effective strategy and algorithms to solve this problem. In this paper, an approach of optimization is developed based on the multi-objective genetic algorithms, which can realize the optimization to parameters of powertrain and control system simultaneously and find the Pareto-optimal solution set successfully subject to user-selectable performance constraints. This optimal parameter set provides a wide range of choices for the design, which can improve the fuel economy and reduce emissions without sacrificing vehicle performance. A case simulation is carried out and simulated by ADVISOR, the results demonstrate the effectiveness of the approach proposed in this paper.
机译:混合动力电动汽车(HEV)的优化设计旨在提高燃油经济性和减少排放,对其驾驶性满意度进行满意。动力总成组件和控制系统的主要参数的并发优化是实现此目标的关键。但是,由于大量耦合设计参数,相互冲突的设计目标和非线性约束,这个问题是挑战。因此,有必要采用有效的策略和算法来解决这个问题。在本文中,基于多目标遗传算法开发了一种优化方法,可以同时实现对动力总成和控制系统的参数的优化,并找到成功的Pareto-Optimal解决方案,经过用户可选的性能约束。这种最佳参数集提供了各种设计,可以改善燃油经济性,并在不牺牲车辆性能的情况下降低排放。通过顾问执行和模拟案例仿真,结果表明了本文提出的方法的有效性。

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