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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >An improved Laplacian Eigenmaps method for machine nonlinear fault feature extraction
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An improved Laplacian Eigenmaps method for machine nonlinear fault feature extraction

机译:一种改进的机器非线性故障特征提取方法

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摘要

In the feature extraction of mechanical fault detection field, manifold learning is one of the effective nonlinear techniques. In this paper, aiming for the situations of noise sensitivity to manifold learning algorithms, an improved Laplacian Eigenmap (I-LapEig) algorithm is proposed and applied to the process of fault feature extraction. The new method takes advantage of local principal component analysis to eliminate the influence of noise points by reconstructing the neighborhood relation amongst the samples, and maintain the global intrinsic manifold structure, which enhances the performance of the feature extraction. To determine the parameters of I-LapEig algorithm, an adaptive neighborhood choose approach is presented. The K-nearest neighbor classifier is also adopted to implement feature classification and recognition. The experimental results on S-curve, rotor bed data, and compressor fault data show that the new method can effectively improve the performance of noise reduction in the feature extraction process when compared with the conventional local linear embedding and Laplacian Eigenmaps.
机译:在机械故障检测场的特征提取中,歧管学习是一种有效的非线性技术之一。在本文中,针对噪声敏感性对歧管学习算法的情况,提出了一种改进的Laplacian EigenMap(I-LAPEIG)算法并应用于故障特征提取的过程。新方法利用本地主成分分析,以通过重建样品之间的邻域关系来消除噪声点的影响,并保持全局内在歧管结构,这增强了特征提取的性能。为了确定I-LAPEIG算法的参数,提出了一种自适应邻域选择方法。还采用了K-最近邻分类来实现特征分类和识别。 S曲线,转子床数据和压缩机故障数据上的实验结果表明,与传统的局部线性嵌入和拉普拉斯eIgenmaps相比,新方法可以有效地提高特征提取过程的降噪性能。

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