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Research on Measurement Methods of Transferability between Different Domains in Transfer Learning

机译:迁移学习中不同领域间迁移能力的度量方法研究

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If transfer learning can be used in fault diagnosis of rotating machinery, the transferability between different fault domains should be measured first. A certain degree of similarity between the source domain and the target domain is the prerequisite for the effectiveness of the transfer learning method. In this paper, the transferability measurement results of mahalanobis distance, Kullback-Leibler Divergence and Maximum Mean Discrepancy (MMD) between data domains are compared and analyzed. And the stability and accuracy of mobility measurement results are compared and analyzed by using statistical analysis and anomaly detection. Finally, a case study is carried out using the gearbox data set to verify the effectiveness and superiority of the transferability measurement based on MMD method.
机译:如果可以将传递学习用于旋转机械的故障诊断,则应首先测量不同故障域之间的传递性。源域和目标域之间一定程度的相似性是转移学习方法有效的前提。本文比较和分析了数据域之间马氏距离,Kullback-Leibler散度和最大平均差异(MMD)的可传递性测量结果。并通过统计分析和异常检测对迁移率测量结果的稳定性和准确性进行了比较和分析。最后,使用齿轮箱数据集进行了案例研究,以验证基于MMD方法的可传递性测量的有效性和优越性。

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