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A novel method to classify bearing faults by integrating standard deviation to refined composite multi-scale fuzzy entropy

机译:一种通过将标准偏差集成到精制复合多尺度模糊熵的轴承故障的一种新方法

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摘要

A new method is proposed in the present work for identifying fault severity in the ball bearings. Proposed method named as multi-scale refined composite standard deviation fuzzy entropy is based on the improvement in the existing method called refined composite multi-scale fuzzy entropy. The acquired vibration signal is initially decomposed into numerous mode functions by ensemble empirical mode decomposition method. To investigate the performance of new method, methodology is split into two phases - detection and identification. In detection phase, response of a healthy system in comparison to the faulty system under different operating conditions are examined while estimation of fault severity in the inner and outer race of bearing is analyzed in identification phase. Accuracy of classifying fault severity by the proposed method has been verified by three well-established classifiers. Proposed methodology can be reliably used for fault diagnosis because of the remarkable results obtained. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在目前的工作中提出了一种新方法,用于识别滚珠轴承中的故障严重程度。所提出的方法命名为多尺度精制复合标准偏差模糊熵基于现有方法的改进,称为精制复合多尺度模糊熵。通过集合经验模式分解方法,所获得的振动信号最初被分解成多种模式功能。为了研究新方法的性能,方法论分为两个阶段 - 检测和识别。在检测阶段,在识别阶段分析了在识别阶段的内部和外圈的故障严重程度估计的情况下,检查了与不同操作条件下的故障系统相比的健康系统的响应。通过三种良好的分类器验证了所提出的方法对故障严重性进行分类的准确性。由于获得了显着的结果,所提出的方法可以可靠地用于故障诊断。 (c)2019年elestvier有限公司保留所有权利。

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