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首页> 外文期刊>IEEE Transactions on Magnetics >Artificial Intelligence Combined with Hybrid FEM-BE Techniques for Global Transformer Optimization
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Artificial Intelligence Combined with Hybrid FEM-BE Techniques for Global Transformer Optimization

机译:人工智能结合混合FEM-BE技术进行全局变压器优化

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摘要

The aim of the transformer design optimization is to define the dimensions of all the parts of the transformer, based on the given specification, using available materials economically in order to achieve lower cost, lower weight, reduced size, and better operating performance. In this paper, a hybrid artificial intelligenceumerical technique is proposed for the selection of winding material in power transformers. The technique uses decision trees and artificial neural networks for winding material classification, along with finite-element/boundary element modeling of the transformer for the calculation of the performance characteristics of each considered design. The efficiency and accuracy provided by the hybrid numerical model render it particularly suitable for use with optimization algorithms. The accuracy of this method is 96% (classification success rate for the winding material on an unknown test set), which makes it very efficient for industrial use.
机译:变压器设计优化的目的是根据给定的规格,经济地使用可用的材料来定义变压器所有零件的尺寸,以实现更低的成本,更轻的重量,更小的尺寸以及更好的运行性能。本文提出了一种混合的人工智能/数字技术来选择电力变压器的绕组材料。该技术将决策树和人工神经网络用于绕组材料的分类,以及变压器的有限元/边界元建模,以计算每种设计的性能特征。混合数值模型提供的效率和准确性使其特别适合与优化算法一起使用。该方法的准确性为96%(未知测试集上绕组材料的分类成功率),使其在工业上非常有效。

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