Unraveling Induction Motor State through Thermal Imaging and Edge Processing: A Step towards Explainable Fault Diagnosis

M. Piechocki, T. Pajchrowski, Marek Kraft, M. Wolkiewicz, P. Ewert
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引用次数: 1

Abstract

Equipment condition monitoring is essential to maintain the reliability of the electromechanical systems. Recently topics related to fault diagnosis have attracted significant interest, rapidly evolving this research area. This study presents a non-invasive method for online state classification of a squirrel-cage induction motor. The solution utilizes thermal imaging for non-contact analysis of thermal changes in machinery. Moreover, used convolutional neural networks (CNNs) streamline extracting relevant features from data and malfunction distinction without defining strict rules. A wide range of neural networks was evaluated to explore the possibilities of the proposed approach and their outputs were verified using model interpretability methods. Besides, the top-performing architectures were optimized and deployed on resource-constrained hardware to examine the system's performance in operating conditions. Overall, the completed tests have confirmed that the proposed approach is feasible, provides accurate results, and successfully operates even when deployed on edge devices.
通过热成像和边缘处理揭示感应电机状态:迈向可解释故障诊断的一步
设备状态监测对维护机电系统的可靠性至关重要。近年来,与故障诊断相关的主题引起了人们的极大兴趣,使这一研究领域迅速发展。提出了一种非侵入式鼠笼式异步电动机在线状态分类方法。该解决方案利用热成像对机械的热变化进行非接触分析。此外,使用卷积神经网络(cnn)简化了从数据中提取相关特征和故障区分的过程,而不需要定义严格的规则。我们对各种神经网络进行了评估,以探索所提出方法的可能性,并使用模型可解释性方法验证了它们的输出。此外,对性能最好的体系结构进行了优化,并将其部署在资源受限的硬件上,以检查系统在运行条件下的性能。总体而言,已完成的测试证实了所提出的方法是可行的,提供了准确的结果,并且即使部署在边缘设备上也能成功运行。
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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