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首页> 外文期刊>Mechanical systems and signal processing >Enhancement of signal denoising and multiple fault signatures detecting in rotating machinery using dual-tree complex wavelet transform
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Enhancement of signal denoising and multiple fault signatures detecting in rotating machinery using dual-tree complex wavelet transform

机译:使用双树复小波变换增强旋转机械中的信号去噪和多个故障信号检测

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摘要

In order to enhance the desired features related to some special type of machine fault, a technique based on the dual-tree complex wavelet transform (DTCWT) is proposed in this paper. It is demonstrated that DTCWT enjoys better shift invariance and reduced spectral aliasing than second-generation wavelet transform (SGWT) and empirical mode decomposition by means of numerical simulations. These advantages of the DTCWT arise from the relationship between the two dual-tree wavelet basis functions, instead of the matching of the used single wavelet basis function to the signal being analyzed. Since noise inevitably exists in the measured signals, an enhanced vibration signals denoising algorithm incorporating DTCWT with NeighCoeff shrinkage is also developed. Denoising results of vibration signals resulting from a crack gear indicate the proposed denoising method can effectively remove noise and retain the valuable information as much as possible compared to those DWT- and SGWT-based NeighCoeff shrinkage denoising methods. As is well known, excavation of comprehensive signatures embedded in the vibration signals is of practical importance to clearly clarify the roots of the fault, especially the combined faults. In the case of multiple features detection, diagnosis results of rolling element bearings with combined faults and an actual industrial equipment confirm that the proposed DTCWT-based method is a powerful and versatile tool and consistently outperforms SGWT and fast kurtogram, which are widely used recently. Moreover, it must be noted, the proposed method is completely suitable for on-line surveillance and diagnosis due to its good robustness and efficient algorithm.
机译:为了增强与某些特殊类型的机器故障相关的期望特征,本文提出了一种基于双树复小波变换(DTCWT)的技术。通过数值模拟证明,与第二代小波变换(SGWT)和经验模态分解相比,DTCWT具有更好的移位不变性和减少的频谱混叠。 DTCWT的这些优点来自两个双树小波基函数之间的关系,而不是所使用的单个小波基函数与要分析的信号的匹配。由于在测量信号中不可避免地存在噪声,因此还开发了一种结合了DTCWT和NeighCoeff收缩的增强型振动信号去噪算法。裂纹齿轮产生的振动信号的去噪结果表明,与基于DWT和SGWT的NeighCoeff收缩去噪方法相比,提出的去噪方法可以有效地去除噪声并尽可能保留有价值的信息。众所周知,挖掘嵌入在振动信号中的综合特征对于明确弄清断层的根源,特别是组合断层的根源具有实际意义。在进行多特征检测的情况下,具有组合故障的滚动轴承的诊断结果和实际的工业设备证实,基于DTCWT的方法是一种功能强大且用途广泛的工具,始终优于SGWT和快速峰图,后者已被广泛使用。此外,必须指出的是,该方法具有良好的鲁棒性和高效的算法,完全适合于在线监测和诊断。

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