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Adaptive feature extraction using sparse coding for machinery fault diagnosis

机译:基于稀疏编码的自适应特征提取在机械故障诊断中的应用

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摘要

In the signal processing domain, there has been growing interest in sparse coding with a learned dictionary instead of a predefined one, which is advocated as an effective mathematical description for the underlying principle of mammalian sensory systems in processing information. In this paper, sparse coding is introduced as a feature extraction technique for machinery fault diagnosis and an adaptive feature extraction scheme is proposed based on it. The two core problems of sparse coding, I.e., dictionary learning and coefficients solving, are discussed in detail. A natural extension of sparse coding, shift-invariant sparse coding, is also introduced. Then, the vibration signals of rolling element bearings are taken as the target signals to verify the proposed scheme, and shift-invariant sparse coding is used for vibration analysis. With the purpose of diagnosing the different fault conditions of bearings, features are extracted following the proposed scheme: basis functions are separately learned from each class of vibration signals trying to capture the defective impulses; a redundant dictionary is built by merging all the learned basis functions; based on the redundant dictionary, the diagnostic information is made explicit in the solved sparse representations of vibration signals; sparse features are formulated in terms of activations of atoms. The multidass linear discriminant analysis (LDA) classifier is used to test the discriminability of the extracted sparse features and the adaptability of the learned atoms. The experiments show that sparse coding is an effective feature extraction technique for machinery fault diagnosis.
机译:在信号处理领域,人们越来越关注使用学习词典而不是预定义词典进行稀疏编码,这被提倡作为哺乳动物感觉系统处理信息的基本原理的有效数学描述。介绍了稀疏编码作为机械故障诊断的特征提取技术,并提出了一种基于特征的自适应特征提取方案。详细讨论了稀疏编码的两个核心问题,即字典学习和系数求解。还介绍了稀疏编码的自然扩展,即位移不变稀疏编码。然后,以滚动轴承的振动信号为目标信号,验证了所提方案,并采用位移不变稀疏编码进行振动分析。为了诊断轴承的不同故障状态,按照提出的方案提取特征:从每类振动信号中分别学习基本功能,以捕获有缺陷的脉冲;通过合并所有学习到的基础函数来构建冗余字典;基于冗余字典,在解决的振动信号的稀疏表示中使诊断信息明确。稀疏特征是根据原子的激活来制定的。多达斯线性判别分析(LDA)分类器用于测试提取的稀疏特征的可辨别性和学习到的原子的适应性。实验表明,稀疏编码是一种有效的机械故障诊断特征提取技术。

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