Artificial neural network based induction motor design

T. Hiyama, M. Ikeda, T. Nakayama
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引用次数: 6

Abstract

This paper presents an artificial neural network based designing for induction motors. Based on the actual design data for various types of induction motors, three-layered artificial neural networks have been trained to give better solutions for the fundamental quantities and parameters of individual induction motor. After training, selected quantities have been estimated quite accurately from the input data which is the specification of an individual induction motor. The proposed neural network based designing system is efficient to reduce the designing process and also to have the near optimal design in a restricted time period without expert designer's knowledge.
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基于人工神经网络的感应电机设计
提出了一种基于人工神经网络的异步电动机设计方法。基于各类感应电机的实际设计数据,训练了三层人工神经网络,对单个感应电机的基本量和参数进行了较好的求解。经过训练后,从单个感应电动机的规格输入数据中相当准确地估计出选定的数量。所提出的基于神经网络的设计系统可以有效地减少设计过程,并且在不需要专家设计人员的情况下,在有限的时间内实现接近最优设计。
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