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Intelligent Diagnosis Method for Rotating Machinery Using Dictionary Learning and Singular Value Decomposition

机译:基于字典学习和奇异值分解的旋转机械智能诊断方法

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摘要

Rotating machinery is widely used in industrial applications. With the trend towards more precise and more critical operating conditions, mechanical failures may easily occur. Condition monitoring and fault diagnosis (CMFD) technology is an effective tool to enhance the reliability and security of rotating machinery. In this paper, an intelligent fault diagnosis method based on dictionary learning and singular value decomposition (SVD) is proposed. First, the dictionary learning scheme is capable of generating an adaptive dictionary whose atoms reveal the underlying structure of raw signals. Essentially, dictionary learning is employed as an adaptive feature extraction method regardless of any prior knowledge. Second, the singular value sequence of learned dictionary matrix is served to extract feature vector. Generally, since the vector is of high dimensionality, a simple and practical principal component analysis (PCA) is applied to reduce dimensionality. Finally, the K-nearest neighbor (KNN) algorithm is adopted for identification and classification of fault patterns automatically. Two experimental case studies are investigated to corroborate the effectiveness of the proposed method in intelligent diagnosis of rotating machinery faults. The comparison analysis validates that the dictionary learning-based matrix construction approach outperforms the mode decomposition-based methods in terms of capacity and adaptability for feature extraction.
机译:旋转机械广泛用于工业应用。随着趋向于更精确和更关键的操作条件的趋势,容易发生机械故障。状态监视和故障诊断(CMFD)技术是提高旋转机械的可靠性和安全性的有效工具。提出了一种基于字典学习和奇异值分解(SVD)的智能故障诊断方法。首先,字典学习方案能够生成自适应字典,其原子揭示原始信号的基础结构。本质上,与任何先验知识无关,词典学习被用作自适应特征提取方法。其次,将学习字典矩阵的奇异值序列用于提取特征向量。通常,由于矢量是高维的,因此应用简单实用的主成分分析(PCA)来降低维数。最后,采用K最近邻算法(KNN)对故障模式进行自动识别和分类。研究了两个实验案例研究,以证实所提出的方法在旋转机械故障智能诊断中的有效性。比较分析验证了基于字典学习的矩阵构建方法在特征提取的能力和适应性方面优于基于模式分解的方法。

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