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Enhanced DET-Based Fault Signature Analysis for Reliable Diagnosis of Single and Multiple-Combined Bearing Defects

机译:基于增强型DET的故障特征分析,可对单轴承和多轴承组合缺陷进行可靠诊断

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To early identify cylindrical roller bearing failures, this paper proposes a comprehensive bearing fault diagnosis method, which consists of spectral kurtosis analysis for finding the most informative subband signal well representing abnormal symptoms about the bearing failures, fault signature calculation using this subband signal, enhanced distance evaluation technique- (EDET-) based fault signature analysis that outputs the most discriminative fault features for accurate diagnosis, and identification of various single and multiple-combined cylindrical roller bearing defects using the simplified fuzzy adaptive resonance map (SFAM). The proposed comprehensive bearing fault diagnosis methodology is effective for accurate bearing fault diagnosis, yielding an average classification accuracy of 90.35%. In this paper, the proposed EDET specifically addresses shortcomings in the conventional distance evaluation technique (DET) by accurately estimating the sensitivity of each fault signature for each class. To verify the efficacy of the EDET-based fault signature analysis for accurate diagnosis, a diagnostic performance comparison is carried between the proposed EDET and the conventional DET in terms of average classification accuracy. In fact, the proposed EDET achieves up to 106.85% performance improvement over the conventional DET in average classification accuracy.
机译:为了及早发现圆柱滚子轴承故障,本文提出了一种综合的轴承故障诊断方法,该方法包括频谱峰度分析,以找到最能代表轴承故障异常现象的信息量最大的子带信号,使用该子带信号进行故障特征计算,增强距离基于评估技术(EDET-)的故障特征分析,可输出最具判别力的故障特征,以进行准确的诊断,并使用简化的模糊自适应共振图(SFAM)识别各种单个和多个组合的圆柱滚子轴承缺陷。所提出的全面的轴承故障诊断方法可有效地进行准确的轴承故障诊断,平均分类精度为90.35%。在本文中,提出的EDET通过准确估计每个类别的每个故障特征的敏感性,专门解决了传统距离评估技术(DET)中的缺点。为了验证基于EDET的故障特征分析对准确诊断的有效性,就平均分类准确性而言,在建议的EDET和常规DET之间进行了诊断性能比较。实际上,与传统的DET相比,提出的EDET在平均分类精度上可实现高达106.85%的性能提升。

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