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Visualization and Data Mining of Multi-Objective Electric Machine Optimizations with Self-Organizing Maps: A Case Study on Switched Reluctance Machines

机译:自组织映射的多目标电机优化的可视化和数据挖掘:以开关磁阻电机为例

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The traditional methods used for presenting and visualizing the non-dominating solutions in multi-objective electric machine optimization problems mainly include the parallel coordinate plots, the histogram plots and the scatter plots displaying the Pareto fronts approximations. However, their visualization performances degrade with the increase of non-dominating design candidates or the increase in the number of objectives to be optimized. In particular, since the aforementioned methods cannot perform clustering or classification on the input data set, it is very difficult to locate or identify the values of all the objectives for a specific candidate, even after identifying one or two objectives of such candidate favorably meets certain design requirements, which is common in a series of 2-D plots with Pareto fronts. Moreover, the objectives of different design candidates become nearly indistinguishable in a parallel coordinate plot. As an attempt to tackle this problem in the machine design domain, this paper presents a case study that utilizes the self-organizing map (SOM) to visualize the design objectives of a high-speed switched reluctance machine. The results demonstrate that the SOM provides useful information with its intrinsic functionalities including data clustering, component-plane displays and data projections that are not offered by some conventional visualization techniques. Therefore, the SOM visualization can allow better integration of the knowledge and expertise of machine designers into specific electric machine design and optimization problems, and also assist them in the final decision-making process to choose the most appropriate designs.
机译:用于呈现和可视化多目标电机优化问题中非支配解的传统方法主要包括平行坐标图,直方图和散点图,这些图显示了Pareto前沿近似值。但是,它们的可视化性能会随着非主要设计候选对象的增加或要优化的目标数量的增加而降低。特别地,由于前述方法不能对输入数据集执行聚类或分类,因此即使在识别出该候选者的一个或两个目标有利地满足某些目标之后,也很难找到或识别该特定候选者的所有目标的值。设计要求,这在一系列具有Pareto前沿的二维绘图中很常见。此外,在平行坐标图中,不同设计候选对象的目标变得几乎无法区分。为了解决机械设计领域的这一问题,本文提出了一个案例研究,该案例利用自组织映射(SOM)来可视化高速开关磁阻电机的设计目标。结果表明,SOM通过其固有功能提供了有用的信息,包括某些常规可视化技术无法提供的数据聚类,组件平面显示和数据投影。因此,SOM可视化可以将机器设计师的知识和专长更好地集成到特定的电机设计和优化问题中,并且还可以帮助他们在最终决策过程中选择最合适的设计。

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