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A New Fuzzy Logic Classifier Based on Multiscale Permutation Entropy and Its Application in Bearing Fault Diagnosis

机译:一种基于MultiSscale置换熵的新模糊逻辑分类器及其在轴承故障诊断中的应用

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摘要

The self-organizing fuzzy (SOF) logic classifier is an efficient and non-parametric classifier. Its classification process is divided into an offline training stage, an online training stage, and a testing stage. Representative samples of different categories are obtained through the first two stages, and these representative samples are called prototypes. However, in the testing stage, the classification of testing samples is completely dependent on the prototype with the maximum similarity, without considering the influence of other prototypes on the classification decision of testing samples. Aiming at the testing stage, this paper proposed a new SOF classifier based on the harmonic mean difference (HMDSOF). In the testing stage of HMDSOF, firstly, each prototype was sorted in descending order according to the similarity between each prototype in the same category and the testing sample. Secondly, multiple local mean vectors of the prototypes after sorting were calculated. Finally, the testing sample was classified into the category with the smallest harmonic mean difference. Based on the above new method, in this paper, the multiscale permutation entropy (MPE) was used to extract fault features, linear discriminant analysis (LDA) was used to reduce the dimension of fault features, and the proposed HMDSOF was further used to classify the features. At the end of this paper, the proposed fault diagnosis method was applied to the diagnosis examples of two groups of different rolling bearings. The results verify the superiority and generalization of the proposed fault diagnosis method.
机译:自组织模糊(SOF)逻辑分类器是一种有效和非参数分类器。其分类过程分为离线培训阶段,在线培训阶段和测试阶段。通过前两个阶段获得不同类别的代表性样本,这些代表性样本称为原型。然而,在测试阶段,测试样本的分类完全取决于具有最大相似性的原型,而不考虑其他原型对测试样本的分类决定的影响。旨在测试阶段,本文提出了一种基于谐波平均差异(HMDSOF)的新的SOF分类器。在HMDSOF的测试阶段,首先,根据同一类别中的每个原型与测试样品之间的每个原型之间的相似性以降序对每个原型进行分类。其次,计算了分类后原型的多个局部平均载体。最后,将测试样本分为谐波平均差异最小的类别。基于上述方法,本文采用了多尺度置换熵(MPE)来提取故障特征,线性判别分析(LDA)用于减少故障特征的维度,并且提出的HMDSOF进一步用于分类特点。在本文末尾,将所提出的故障诊断方法应用于两组不同滚动轴承的诊断例。结果验证了所提出的故障诊断方法的优越性和泛化。

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