利用SyMSpace减少电机开发时间

S. Silber, Werner Koppelstätter, Gunther Weidenholzer, Gordan Segon, G. Bramerdorfer
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引用次数: 35

摘要

本文介绍了利用SyMSpace软件工具加速电机优化的方法。由于软磁材料的非线性特性,有限元分析(FEA)通常用于电机的仿真。为了进行完整的优化,需要进行数百到数千次的有限元计算,这在计算上是非常昂贵的。简单的措施,如考虑几何中的对称性,更复杂的技术,如生成代理电机模型,可以很容易地显著减少计算工作量。利用专为电机设计的新颖优化算法,可以实现Pareto前沿更快的收敛。为了进一步加快优化速度,在优化运行过程中推导了基于人工神经网络的优化变量与目标之间的非线性映射,从而大大缩短了仿真时间。一旦优化得到收敛,就可以从Paret前面选择最适合特定应用的机器进行进一步的详细分析。例如,可以以功能模型单元(FMU)的形式生成精确的电机模型,以进行进一步的动态仿真。此外,还可以完全自动地为快速原型创建数据文件。这包括,例如,用于激光切割的数据文件,用于3D打印绝缘部件的STL文件和用于绕针机的程序代码生成。
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Reducing Development Time of Electric Machines with SyMSpace
This paper presents methods to accelerate the optimization of electrical machines using the software tool SyMSpace. Due to the nonlinear properties of soft magnetic materials, finite element analysis (FEA) is typically used for the simulation of electrical machines. For a complete optimization run hundreds to several thousand FEA calculations are required, which are computationally very expensive. Simple measures such as consideration of symmetries in the geometry to more sophisticated techniques like generation of a surrogate motor model can easily achieve a significant reduction in the calculation effort. By means of novel optimization algorithms specially designed for electrical machines, it is possible to achieve faster convergence of the Pareto front. To further speed-up the optimization a nonlinear mapping between the optimization variables and objectives based on artificial neural networks (ANNs) is derived during the optimization run to cut down the simulation time significantly. Once the optimization has converged, the most suitable machine for the particular application can be selected from the Paret front for further detailed analysis. For example, it is possible to generate an accurate motor model for further dynamic simulations in the form of a functional mock-up unit (FMU). Additionally, it is also possible to create data files for rapid prototyping fully automatically. This comprises, for example, data files for laser cutting, STL files for 3D printing of insulation parts and generation of program code for a needle winding machine.
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