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Mechanical fault detection in electric motors measured by a digital signal processing device in an optical mouse

机译:电动机中的机械故障检测在光学鼠标中的数字信号处理装置测量

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The objective of this work is to study the application of a new methodology for diagnosing mechanical faults in electric motors through vibration analysis and using a non-contact approach based on a digital signal processing (DSP) device in an optical computer mouse. The mechanical fault used to test the proposed methodology was related to bearing damage. An experimental bench was set up to test the detection of damage in bearings. The analyses of the measured signals were performed in both time and frequency domains. Pattern recognition methods were used to classify the bearing state as damaged or not damaged. The electric motor was tested with two sets of bearings: a new set and a damaged set. The results demonstrated that the proposal for the prediction and diagnosis of faults was an efficient and promising technique because it is non-destructive and non-invasive due to the absence of contact between the sensor and the motor. Based on the concept of predictive maintenance, the proposed method has the potential to become an efficient and low-cost tool for predicting failures. (C) 2019 Elsevier Ltd. All rights reserved.
机译:这项工作的目的是研究一种通过振动分析和使用基于光学计算机鼠标中的数字信号处理(DSP)设备的非接触方法来诊断电动机中机械故障的新方法。用于测试所提出的方法的机械故障与轴承损坏有关。建立了一个实验台,以测试轴承损坏的检测。在时间和频域中进行测量信号的分析。模式识别方法用于将轴承状态分类为损坏或未损坏。用两组轴承测试电动机:一个新的套装和损坏的集合。结果表明,故障预测和诊断的提议是一种有效和有希望的技术,因为由于没有传感器和电动机之间的接触,它是非破坏性和非侵入性的。基于预测性维护的概念,所提出的方法有可能成为预测失败的有效和低成本的工具。 (c)2019年elestvier有限公司保留所有权利。

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