Machine fault diagnosis based on Frequency-Domain Blind Deconvolution

Nan Pan, Xing Wu, Y. Chi, Xiao-qin Liu, Chang Liu
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引用次数: 3

Abstract

On the basis of introducing the model of Frequency-Domain Blind Deconvolution (FDBD), key techniques in mechanical signal extraction were comprehensively related and analyzed in this paper, which include the methods of suppressing the difference between circular and partial convolution by coordinating the relationship between FFT size and length of each frequency bin or Modified Discrete Fourier Transform, the methods of removing the permutation indeterminacy (methods based on consistency of filter coefficients, DOA methods, Split Spectrum methods, methods based on Nonlinear Function, etc.), the applications of Complex-Domain Blind Separation Algorithms which based on explicit tensor eigenvalue decomposition and nonlinear functions. Aimed at vibration and acoustic signal feature extraction in complex environment and equipment with complex mechanical structures, the application values of FDBD and its research status in machinery condition monitoring and fault diagnosis were reviewed and summarized. Finally, the main problems which need to be studied further in this area were pointed out.
基于频域盲反卷积的机械故障诊断
本文在介绍频域盲反卷积(FDBD)模型的基础上,对机械信号提取中的关键技术进行了全面的阐述和分析,包括通过协调FFT大小与各频域长度的关系或改进离散傅里叶变换抑制圆卷积和部分卷积差异的方法;消除排列不确定性的方法(基于滤波系数一致性的方法、DOA方法、分割谱方法、基于非线性函数的方法等),基于显式张量特征值分解和非线性函数的复域盲分离算法的应用。针对复杂环境和复杂机械结构设备中的振动和声信号特征提取,综述了FDBD在机械状态监测和故障诊断中的应用价值及其研究现状。最后,指出了该领域有待进一步研究的主要问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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