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A new feature extraction approach using improved symbolic aggregate approximation for machinery intelligent diagnosis

机译:一种新的特征提取方法,利用改进的机械智能诊断象征近似

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Feature extraction from vibration signals is considerably significant for condition monitoring and fault diagnosis. The Symbolic Aggregate approXimation (SAX) technique essentially transforming a real-valued time series into a symbol sequence, has been proven as a potential tool of feature extraction for machinery intelligent diagnosis. However, challenge still exists that the SAX cannot fulfill feature extraction tasks well since it is carried out only on the basis of mean value in time domain. To overcome this limitation, an improved SAX (ISAX) is proposed in this paper. This new method substitutes the feature of mean value in time domain with multiple features extracted from time, frequency and time-frequency domains in order to obtain comprehensive fault information. With the ISAX transformation, a vibration signal can be transformed into various symbol sequences according to the multi-domain features. Next the Shannon entropy technique is conducted on a symbol sequence to capture sequential patterns in local signals and then the Shannon entropy value is used as the eigenvalue of the symbol sequence. Various eigenvalues are obtained to describe a vibration signal from different perspectives, which leads to a better feature extraction. These eigenvalues are then fed into the Kernel Principal Component Analysis (KPCA) to reduce dimensions and extract principal features for classification tasks. Compared with SAX, the most significant advantage of ISAX is extracting comprehensive signal characteristics from multi-domain. Moreover, the ISAX captures fault information better considering the local fault patterns. The effectiveness and superiority of ISAX were validated by experimental studies using the fault signals of rolling bearings and reciprocating compressor valves with remarkably high classification rates. (C) 2018 Elsevier Ltd. All rights reserved.
机译:振动信号的特征提取对于条件监测和故障诊断而言显着显着。已经证明了基本上将实值时间序列转化为符号序列的符号聚合近似(SAX)技术,被证明是机械智能诊断的特征提取的潜在工具。然而,挑战仍然存在SAX不能满足特征提取任务,因为它仅基于时域的平均值进行。为了克服这种限制,本文提出了一种改进的萨克斯(ISAX)。该新方法替换时域中平均值的特征,其中从时间,频率和时频域中提取多个特征,以获得综合故障信息。利用ISAX变换,可以根据多域特征将振动信号转换为各种符号序列。接下来,在符号序列上进行Shannon熵技术以捕获局部信号中的顺序图案,然后使用Shannon熵值作为符号序列的特征值。获得各种特征值以描述来自不同视角的振动信号,这导致更好的特征提取。然后将这些特征值送入内核主成分分析(KPCA)中以减少尺寸并提取分类任务的主要特征。与SAX相比,ISAX最显着的优势是从多域中提取综合信号特性。此外,考虑到本地故障模式,ISAX更好地捕获故障信息。通过使用滚动轴承的故障信号和往复式压缩机阀的实验研究验证了isax的有效性和优越性,具有显着的高分类速率。 (c)2018年elestvier有限公司保留所有权利。

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