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Efficient multi-objective optimization of gear ratios and motor torque distribution for electric vehicles with two-motor and two-speed powertrain system

机译:两电机两速动力总成系统的电动汽车的传动比和电机扭矩分配的多目标优化

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摘要

In an electric vehicle (EV), a two-motor and two-speed powertrain system is superior to other powertrain systems in terms of the driving requirements, achieving an excellent dynamic performance and energy efficiency. Because the most important design specifications for a two-motor and two-speed powertrain are the motor torque distribution between the two motors, and the first and second gear ratios, these specifications should be optimized to improve both performance and efficiency as much as possible. To analyze such requirements, an EV model, including two-motor and two-speed powertrain system, was constructed. The acceleration time and energy consumption were employed as the evaluation criteria for the quantification of performance and efficiency, respectively, and the analysis results when changing the gear ratios and the torque distribution, show that these specifications significantly influence on the performance and efficiency. Therefore, an optimization of gear ratios and torque distribution is essential for achieving a superior powertrain system of an EV. Because of the trade-off relationship between the performance and efficiency, a multi-objective optimization problem is formulated to minimize the acceleration time and energy consumption. To decrease the excessive computational effort during a multi-objective optimization process, efficient surrogate models of each objective function were developed using an artificial neural network and an adaptive sampling method. The surrogate model-based optimization was performed, and the optimization results show a Pareto front that provides a variety of optimal solutions between the objective functions, as well as the validity of the surrogate model-based multi-objective optimization.
机译:在电动汽车(EV)中,就驱动要求而言,两电机两速动力总成系统优于其他动力总成系统,实现了出色的动态性能和能效。因为两电机和两速动力总成最重要的设计规格是两个电机之间的电机扭矩分配以及第一和第二齿轮比,所以这些规格应该进行优化以尽可能提高性能和效率。为了分析这些需求,构建了包括两电机和两速动力总成系统的电动汽车模型。加速时间和能量消耗分别用作性能和效率量化的评估标准,并且在改变齿轮比和扭矩分布时的分析结果表明,这些规格对性能和效率有显着影响。因此,优化传动比和扭矩分配对于实现电动汽车的高级动力总成系统至关重要。由于性能和效率之间存在折衷关系,因此制定了一个多目标优化问题以最小化加速时间和能耗。为了减少多目标优化过程中的过多计算工作量,使用人工神经网络和自适应采样方法开发了每个目标函数的有效替代模型。进行了基于替代模型的优化,优化结果显示了Pareto前沿,它在目标函数之间提供了多种最优解,以及基于替代模型的多目标优化的有效性。

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