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Bearing fault diagnosis under different operating conditions based on cross domain feature projection and domain adaptation

机译:基于跨域特征投影和域自适应的不同工况下轴承故障诊断

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This paper focuses on the poor adaptability of fault diagnosis model under different operating conditions and a new transfer learning frame for diagnosis based on Joint Geometrical and Statistical Alignment (JGSA) is presented to solve this problem. Based on the extraction of sub-band energy in frequency, JGSA model is used to create two coupled projecting matrices and map training and test data into two subspaces. Data distribution shift between different domains is reduced statistically and geometrically in projecting spaces. Then Support Vector Machine (SVM) is established on the projecting feature space subsequently. The framework used in this paper is more adaptive for complex industrial process since it can be conducted on different domains without the prior whether they are similar or not. The bearing experiments results under different operating conditions show that the proposed framework based on JGSA works well when data distributions of different domain are similar and it can promote the performance of general classifier when distribution divergence between different domains is large.
机译:本文针对故障诊断模型在不同工况下的适应性较差的问题,提出了一种基于联合几何和统计对准(JGSA)的故障诊断学习转移学习框架。在提取子频带能量的基础上,JGSA模型用于创建两个耦合投影矩阵,并将训练和测试数据映射到两个子空间中。在投影空间中,不同域之间的数据分布偏移在统计上和几何上都得到了减少。然后,在投影特征空间上建立支持向量机(SVM)。本文使用的框架更适合复杂的工业过程,因为它可以在不同的领域进行,而无需事先研究它们是否相似。在不同工作条件下的轴承实验结果表明,基于JGSA的框架在不同领域的数据分布相似时效果很好,当不同领域之间的分布差异较大时,可以提高通用分类器的性能。

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