Ārtap框架中基于代理模型的电机优化

Attila Nyitrai, M. Kuczmann, T. Orosz
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引用次数: 0

摘要

为了对电机进行精确建模,需要同时求解多个物理场的三维模型。因此,这些机器的优化是一个计算昂贵的优化问题。基于自适应有限元技术的新型人工智能方法和替代建模技术可以显著降低计算成本。在齿槽转矩或转矩脉动计算的情况下,为了准确估计单个量,需要进行多次模拟。通过使用代理建模技术可以减少计算次数。然而,基于代理模型的模型的极值可能与原始任务的最优值不同。提出了一种基于代理模型的轴向磁通永磁同步电机齿槽转矩最小化方法。该优化的目标函数为齿槽扭矩,探索了全解空间,以检验和展示不同类型解的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate Model-based Optimization of Electrical Machines in Ārtap Framework
For accurate modeling of electrical machines the solution multiple physical fields simultaneously in 3D is necessary. Therefore, the optimization of these machines is an computationally expensive optimization problem. The novel artificial intelligence methods and surrogate modeling techniques based on hp-adaptive FEM techniques can significantly reduce the computational cost. In case of a cogging torque or a torque ripple calculation, many simulations should be performed to make an accurate estimation of a single quantity. The number of calculations can be reduced by using surrogate modeling techniques. However, the surrogate model-based model’s extrema can differ from the original task’s optima. This paper presents a surrogate-model based cogging torque minimization of an axial flux permanent magnet synchronous machine. The objective function of this optimization is the cogging torque, the full solution space is explored to examine and show the robustness of the different kind of solutions.
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