提高基于主成分分析(PCA)的早期故障检测信噪比

M. Hamadache, Dongik Lee
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引用次数: 11

摘要

在大多数工业环境中,早期故障检测对故障分类精度要求很高,但信噪比较低。振动信号分析方法广泛应用于轴承故障检测。为了保证在低信噪比下提高性能,基于统计参数的无高斯噪声特征提取成为必然。为了提高信噪比,提出了一种基于主成分分析(PCA)的特征提取框架。基于PCA提取的特征有减轻非高斯噪声影响的趋势。PCA算法对振动等非平稳信号的频谱内容随时间变化提供了有用的时域分析。对滚珠轴承故障引起的振动进行了实验研究,结果表明,在信噪比较低的情况下,该算法在分类精度上有较大的提高。
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Improving signal-to-noise ratio (SNR) for inchoate fault detection based on principal component analysis (PCA)
Detection of inchoate fault demands high level of fault classification accuracy under poor signal-to-noise ratio (SNR) which appears in most industrial environment. Vibration signal analysis methods are widely used for bearing fault detection. In order to guarantee improved performance under poor SNR, feature extraction based on statistical parameters which are free from Gaussian noise become inevitable. This paper proposes a feature extraction framework based on principal component analysis (PCA) for improving SNR. Features extracted based on PCA have the tendency to alleviate the impact of non-Gaussian noise. PCA algorithm provides useful time domains analysis for no-stationary signals such as vibration in which spectral contents vary with respect to time. Experimental studies on vibration caused by ball bearing faults show that the proposed algorithm demonstrates the improvements in term of classification accuracy under poor signal-to-noise ratio (SNR).
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