Condition monitoring of brushless DC motors with non-stationary dynamic conditions

Jose F. Zubizarreta-Rodriguez, Shrihari Vasudevan
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引用次数: 4

Abstract

This work introduces a new multi-sensor measurement framework for condition monitoring of brushless DC motors (BLDCM) with bearings. An experimental platform for equipment health monitoring is used for producing different faults on BLDCMs and log the measurement data. This work is oriented to maximize the life-cycle of industrial machinery and prevent catastrophic failures and their environmental consequences through reliable behavior classification. A public benchmark data set containing key failure scenarios is being built based on this work. This data set will be unique with respect to other available data sets due to the different sensors used and include more extensive scenarios such as non-stationary (time varying) conditions. A BLDCM with a bearing is tested under non-stationary conditions, and the scenario for their failure is developed. Supervised learning classifiers such as back propagation neural network and support vector machine are used to identify the fault state in the equipment.
非平稳动态条件下无刷直流电机的状态监测
本文介绍了一种新的多传感器测量框架,用于带轴承的无刷直流电机(BLDCM)的状态监测。利用无刷直流电机健康监测实验平台对不同故障进行检测并记录检测数据。这项工作旨在通过可靠的行为分类,最大限度地延长工业机械的生命周期,防止灾难性故障及其环境后果。基于这项工作,正在构建包含关键故障场景的公共基准数据集。由于使用的传感器不同,该数据集与其他可用数据集相比将是独特的,并且包括更广泛的场景,例如非平稳(时变)条件。在非平稳条件下对带轴承的无刷直流电机进行了测试,并建立了其失效场景。利用反向传播神经网络和支持向量机等监督学习分类器来识别设备的故障状态。
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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