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Crack detection in rotating shafts using wavelet analysis, Shannon entropy and multi-class SVM

机译:小波分析,香农熵和多类支持向量机的旋转轴裂纹检测

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摘要

Incipient fault diagnosis is essential to detect potential abnormalities and failures in industrial processes which contributes to the implementation of fault-tolerant operations for minimizing performance degradation. In this paper, an innovative method named Self-adaptive Entropy Wavelet (SEW) is proposed to detect incipient transverse crack faults on rotating shafts. Continuous Wavelet Transform (CWT) is applied to obtain optimized wavelet function using impulse modelling and decompose a signal into multi-scale wavelet coefficients. Dominant features are then extracted from those vectors using Shannon entropy, which can be used to discriminate fault information in different conditions of shafts. Support Vector Machine (SVM) is carried out to classify fault categories which identifies the severity of crack faults. After that, the effectiveness of this proposed approach is investigated in testing phrase by checking the consistency between testing samples with obtained model, the result of which has proved that this proposed approach can be effectively adopted for fault diagnosis of the occurrence of incipient crack failures on shafts in rotating machinery.
机译:早期故障诊断对于检测工业过程中的潜在异常和故障至关重要,这有助于实施容错操作以最大程度地降低性能下降。本文提出了一种名为“自适应熵小波”(SEW)的创新方法来检测旋转轴上的初期横向裂纹。连续小波变换(CWT)用于通过脉冲建模获得优化的小波函数,并将信号分解为多尺度小波系数。然后,使用Shannon熵从这些向量中提取主要特征,该特征可用于区分不同轴中的故障信息。支持向量机(SVM)用于对故障类别进行分类,以识别裂纹故障的严重程度。之后,通过与所获得的模型检验测试样本之间的一致性,检验了该方法的有效性,结果证明该方法可以有效地用于早期裂纹失效的故障诊断。旋转机械中的轴。

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