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Heat dissipation analysis and multi-objective optimization of a permanent magnet synchronous motor using surrogate assisted method

机译:替代辅助方法散热分析与永磁同步电动机的多目标优化

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Permanent magnet synchronous motors (PMSM) have been substantially used in electric vehicles (EVs) due to their advantages such as low loss, large torque, and high power density. With the continuous improvement of the PMSM performance requirements, its heat dissipation has also attracted increasing attention. This paper proposes a cooling system to realize the heat dissipation of the motor through internal oil circulation and external water circulation. Meanwhile, to obtain the best cooling system parameters, an optimization framework is developed for heat dissipation optimization of the motor. First, the most suitable Latin hypercube sampling (LHS) method is selected for sampling through the Coordinates exchange algorithm. Second, we separately study the modeling accuracy of thirteen surrogate models and finally select the back propagation (BP) neural network model. Then, we use six multi-objective optimization algorithms (MOOAs) to optimize the model, and select the optimal solution via the utopian point method. Finally, the motor heat dissipation situation is effectively improved, and the effectiveness and reliability of the optimization framework are proved, which provides an alternative mean for the heat dissipation design optimization of the motor and has prominent practical significance.
机译:由于它们的优点如低损失,大的扭矩和高功率密度,永磁同步电动机(PMSM)基本上用于电动车辆(EVS)。随着PMSM性能要求的不断提高,其散热也引起了越来越长的关注。本文提出了一种冷却系统,实现通过内部油循环和外部水循环的电动机的散热。同时,为了获得最佳的冷却系统参数,开发了优化框架以进行电动机的散热优化。首先,选择最合适的拉丁式超级采样(LHS)方法来通过坐标交换算法进行采样。其次,我们分别研究十三替代模型的建模精度,最后选择后传播(BP)神经网络模型。然后,我们使用六种多目标优化算法(Mooas)来优化模型,并通过乌托邦点方法选择最佳解决方案。最后,有效地改善了电动机散热情况,并证明了优化框架的有效性和可靠性,为电动机的散热设计优化提供了一种替代方案,并且具有突出的实​​际意义。

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