Diagnosis of inverter-fed induction motors in short time windows using physics-assisted deep learning framework

S. Kandukuri, H. Van Khang, K. Robbersmyr
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Abstract

This article presents a framework for accurate fault diagnostics in inverter-fed induction machinery operating under variable speed and load conditions within very short time windows. Condition indicators based on fault characteristic frequencies observed over the extended Park's vector modulus are fused with deep features extracted using stacked autoencoders to generate a multidimensional feature space for fault classification using support vector machine. The proposed approach is demonstrated in a laboratory setup to detect the most commonly occurring faults, namely, the stator turns fault, broken rotor bars fault and bearing fault with an accuracy > 98% within a short time window of 2–3 seconds.
基于物理辅助深度学习框架的短时间窗逆变感应电机诊断
本文提出了在极短的时间窗口内,在变转速和负载条件下准确诊断变频感应电机故障的框架。基于扩展Park矢量模量上观察到的故障特征频率的状态指标与使用堆叠自编码器提取的深度特征融合,生成用于支持向量机故障分类的多维特征空间。在一个实验室装置中,该方法在2-3秒的短时间内检测出最常见的故障,即定子匝数故障、转子断条故障和轴承故障,准确率> 98%。
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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