A Surrogate-Based Strategy for Multi-objective Tolerance Analysis in Electrical Machine Design

Alexandru-Ciprian Zavoianu, E. Lughofer, G. Bramerdorfer, W. Amrhein, Susanne Saminger-Platz
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引用次数: 9

Abstract

By employing state-of-the-art automated design and optimization techniques from the field of evolutionary computation, engineers are able to discover electrical machine designs that are highly competitive with respect to several objectives like efficiency, material costs, torque ripple and others. Apart from being Pareto-optimal, a good electrical machine design must also be quite robust, i.e., it must not be sensitive with regard to its design parameters as this would severely increase manufacturing costs or make the physical machine exhibit characteristics that are very different from those of its computer simulation model. Even when using a modern parallel/distributed computing environment, carrying out a (global) tolerance analysis of an electrical machine design is extremely challenging because of the number of evaluations that must be performed and because each evaluation requires very time-intensive non-linear finite element (FE) simulations. In the present research, we describe how global surrogate models (ensembles of fast-to-train artificial neural networks) that are created in order to speed-up the multi-objective evolutionary search can be easily reused to perform a fast tolerance analysis of the optimized designs. Using two industrial optimization scenarios, we show that the surrogate-based approach can offer very valuable insights regarding the local and global sensitivities of the considered objectives at a fraction of the computational cost required by a FE-based strategy. Encouraged by the good performance on individual designs, we also used the surrogate approach to track the average sensitivity of the Pareto front during the entire optimization procedure. Our results indicate that there is no generalized increase of sensitivity during the runs, i.e., the used evolutionary algorithms do not enter a stage where they discover electrical drive designs that trade robustness for quality.
基于代理的电机多目标公差分析策略
通过采用进化计算领域最先进的自动化设计和优化技术,工程师们能够发现在效率、材料成本、扭矩脉动等几个目标方面具有高度竞争力的电机设计。除了帕累托最优之外,一个好的电机设计还必须具有相当的鲁棒性,也就是说,它必须对其设计参数不敏感,因为这将严重增加制造成本或使物理机器表现出与计算机模拟模型非常不同的特性。即使使用现代并行/分布式计算环境,对电机设计进行(全局)公差分析也是极具挑战性的,因为必须执行大量评估,而且每次评估都需要非常耗时的非线性有限元(FE)模拟。在本研究中,我们描述了如何创建全局代理模型(快速训练人工神经网络的集合),以加速多目标进化搜索,可以很容易地重复使用,以执行优化设计的快速容忍度分析。通过使用两个工业优化场景,我们展示了基于代理的方法可以提供关于所考虑目标的局部和全局敏感性的非常有价值的见解,而基于fe的策略所需的计算成本只是其中的一小部分。由于单个设计的良好性能,我们还使用代理方法跟踪整个优化过程中Pareto前沿的平均灵敏度。我们的研究结果表明,在运行过程中没有普遍的灵敏度增加,即,所使用的进化算法没有进入一个阶段,他们发现电气驱动设计以鲁棒性换取质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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