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Research and Application of ICA Technique in Fault Diagnosis for Equipments

机译:ICA技术在设备故障诊断中的研究与应用

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In order to overcome the difficulty of feature signal extraction from mixed vibration signals, a new method based on Independent Component Analysis (ICA) is proposed to realize separation and filtering for multi-source vibration signals. ICA technique develops from blind source separation (BSS), which solves the problems of information fusion and feature extraction of multi-sensor signals. In this paper, firstly the principle of ICA was briefly introduced and then a good algorithm of independent component analysis, FastICA was presented. Secondly, application in signal separation and filtering with FastICA is studied in fault diagnosis of big petrochemical equipments. Imitation examples and field experiments show that it is feasible to separate and extract feature signal from multi-source vibration signals and indicated that ICA technique is an effective method in signal preprocessing in fault diagnosis of equipments.
机译:为了克服从混合振动信号中提取特征信号的困难,提出了一种基于独立分量分析(ICA)的新方法来实现多源振动信号的分离和滤波。 ICA技术是从盲源分离(BSS)技术发展而来的,它解决了信息融合和多传感器信号特征提取的问题。本文首先简要介绍了ICA的原理,然后提出了一种很好的独立分量分析算法,即FastICA。其次,研究了FastICA在信号分离与滤波中的应用在大型石化设备故障诊断中的应用。算例和现场实验表明,从多源振动信号中分离和提取特征信号是可行的,并表明ICA技术是设备故障诊断中信号预处理的有效方法。

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