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首页> 外文期刊>Advances in Mechanical Engineering >Fault feature extraction method based on local mean decomposition Shannon entropy and improved kernel principal component analysis model:
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Fault feature extraction method based on local mean decomposition Shannon entropy and improved kernel principal component analysis model:

机译:基于局部均值分解香农熵和改进核主成分分析模型的故障特征提取方法:

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摘要

To effectively extract the typical features of the bearing, a new method that related the local mean decomposition Shannon entropy and improved kernel principal component analysis model was proposed. First, the features are extracted by time–frequency domain method, local mean decomposition, and using the Shannon entropy to process the original separated product functions, so as to get the original features. However, the features been extracted still contain superfluous information; the nonlinear multi-features process technique, kernel principal component analysis, is introduced to fuse the characters. The kernel principal component analysis is improved by the weight factor. The extracted characteristic features were inputted in the Morlet wavelet kernel support vector machine to get the bearing running state classification model, bearing running state was thereby identified. Cases of test and actual were analyzed.
机译:为了有效地提取轴承的典型特征,提出了一种将局部均值分解香农熵与改进的核主成分分析模型联系起来的新方法。首先,通过时频域方法,局部均值分解并使用香农熵对原始分离的乘积函数进行处理,从而提取出特征。但是,提取的特征仍然包含多余的信息。引入非线性多特征处理技术,即核主成分分析,以融合特征。加权因子改进了内核主成分分析。将提取的特征特征输入到Morlet小波核支持向量机中,得到轴承的运行状态分类模型,从而确定轴承的运行状态。分析了测试案例和实际案例。

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