Automated Preliminary Design of Induction Machines Aided by Artificial Neural Networks

C. Alteheld, R. Gottkehaskamp
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引用次数: 1

Abstract

$A$ method for an automated preliminary design of induction machines with squirrel-cage rotors is presented. The speciality of this method is the use of artificial n eural networks. Based on input parameters like voltage, frequency, number of pole pairs and output power a motor design is examined. The motor design can be influenced witho ptional p arameters. The design process uses artificial neural networks to determine several geometric quantities e.g. the stator slot geometry as well as the rotor slot geometry. Moreover, different numbers of rotor slots are considered during the design process to evaluate the parasitic behavior with the corresponding number of stator slots. To show the functionality and clarify the benefits o f t his a pproach, two examples are examined and compared to commercially available machines. The automated preliminary design can be a starting point for further optimization.
基于人工神经网络的感应电机自动化初步设计
提出了一种鼠笼式转子感应电机的自动化初步设计方法。该方法的特点是使用了人工神经网络。根据输入参数,如电压、频率、极对数和输出功率,对电机设计进行审查。电机的设计可受可选参数的影响。设计过程中使用人工神经网络来确定几个几何量,例如定子槽的几何形状以及转子槽的几何形状。此外,在设计过程中考虑了不同的转子槽数,以评估相应的定子槽数下的寄生行为。为了展示该方法的功能并阐明其好处,本文将对两个示例进行检查,并将其与市售机器进行比较。自动化初步设计可以作为进一步优化的起点。
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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