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Motor fault detection using vibration patterns

机译:电机故障检测使用振动模式

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摘要

This work presents a novel method for fault detection of electrical motors using vibration signal. Most of the motor faults generate specific patterns in the motor vibration that can be captured and analyzed for diagnosis. Early detection of motor faults can save the motor from subsequent deteriorations into more severe conditions, and thus can save lot of maintenance costs. In our work, an optical mouse was used to capture decently accurate information of the motor-vibration. Features are extracted in time and frequency domain using which an Artificial Neural Network (ANN) called Multi-Layer Perceptron (MLP) was trained to learn different motor conditions such as healthy and faulty. A MATLAB-based user interface was developed to record, monitor, analyze and classify the motor vibration data. This study shows that using simple features and ANN structure can effectively and efficiently classify different types of motor faults. The use of low-cost mouse sensor has made this method very attractive to wide range of applications where a cost-effective solution is desired.
机译:这项工作提出了一种使用振动信号的电动机故障检测的新方法。大多数电机故障在电机振动中产生特定模式,可以捕获和分析诊断。电机故障的早期检测可以将电机从随后的劣化中保存到更严重的条件下,因此可以节省大量的维护成本。在我们的工作中,使用光学鼠标捕获运动振动的体面准确。在使用该特征和频域中提取,使用该特征和频域用哪个称为多层Perceptron(MLP)的人工神经网络(ANN)训练,以学习不同的电动机条件,例如健康和故障。开发了基于MATLAB的用户界面以记录,监控,分析和分类电机振动数据。本研究表明,使用简单的特征和ANN结构可以有效且有效地分类不同类型的电机故障。低成本鼠标传感器的使用使得该方法非常有吸引力,适用于需要具有成本效益的解决方案。

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