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Bearing fault detection in induction motors using MCSA and statistical analysis

机译:使用MCSA和统计分析的感应电动机轴承故障检测

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Due to its straightforward installation, operation and low cost, the Induction Motor (IM) is widely used in industry. Because of its constant service, there is a growing necessity of fault detection techniques for IM. Bearings fault (BF) is a common fault that may appear in an induction motor, and it may cause severe damage to the device. Thus, early detection is necessary to program the corresponding maintenance and extend the service of the machine and to reduce expenses for maintenance service or replacement. In literature, different techniques have been proposed to detect this fault involving a signal preprocessing step and applying time or frequency domain approaches, which require time and resource consumption. In this paper, a technique to detect BF based on Motor Current Signal Analysis (MCSA) via a statistical analysis named Kolmogorov-Smirnov Test (K-S test), is presented. K-S test determines if two samples come from the same distribution by measuring the maximum distance between them. We compared signals of two motor conditions, no damage (ND) and BF. We applied the test to the raw current signal.
机译:由于感应电机(IM)的安装,操作简单和成本低廉,因此在工业中得到了广泛的应用。由于其持续的服务,因此针对IM的故障检测技术的需求日益增长。轴承故障(BF)是感应电动机中可能出现的常见故障,可能会严重损坏设备。因此,必须进行早期检测以对相应的维护进行编程并扩展机器的服务,并减少维护服务或更换的费用。在文献中,已经提出了不同的技术来检测该故障,该技术涉及信号预处理步骤并应用时域或频域方法,这需要时间和资源消耗。本文提出了一种基于电动机电流信号分析(MCSA)并通过名为Kolmogorov-Smirnov检验(K-S检验)的统计分析的BF检测技术。 K-S测试通过测量两个样本之间的最大距离来确定两个样本是否来自同一分布。我们比较了两种电机状态(无损坏(ND)和高炉)的信号。我们将测试应用于原始电流信号。

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