A Cross Domain Feature Extraction Method for Bearing Fault diagnosis based on Balanced Distribution Adaptation

Jiawei Gu, Yanxue Wang
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引用次数: 4

Abstract

Traditional intelligent fault diagnosis techniques for rotating machines have two limitations: 1) Big data with fault information is not available in some cases; 2) The training and testing data are often drawn under discrepant distribution. Thus, transfer component analysis (TCA) has been designed to reduce the distance of marginal distribution between domains. The joint distribution adaptation (JDA) was proposed to simultaneously reduced the difference between the conditional distribution and marginal distribution in source or target domains. However, these two distributions are often treated equally in these existing methods, which will lead to poor performance in practical applications. Therefore, a cross-domain feature extraction method based on balanced distribution adaptation algorithm(BDA) has been proposed, which can adaptively utilize the importance of difference between marginal distribution and conditional distribution. It should be noted that several existing cross domain feature extraction methods can be treated as special cases of BDA. As a new method in the field of transfer learning, BDA is an effective cross-domain feature extraction method. The validity of the BDA algorithm has been successfully evaluated in the actual data set in this paper.
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基于平衡分布自适应的轴承故障诊断跨域特征提取方法
传统的旋转机械智能故障诊断技术存在两大局限性:1)在某些情况下无法获得包含故障信息的大数据;2)训练和测试数据通常是在差异分布下绘制的。因此,转移分量分析(TCA)被设计用于减小域间边际分布的距离。提出联合分布自适应(JDA)方法,同时减小源域和目标域条件分布与边际分布之间的差异。然而,在这些现有的方法中,这两种分布往往被同等对待,这将导致在实际应用中的性能不佳。为此,提出了一种基于平衡分布自适应算法(BDA)的跨域特征提取方法,该方法可以自适应地利用边缘分布与条件分布之间差异的重要性。需要注意的是,现有的几种跨域特征提取方法可以作为BDA的特殊情况。作为迁移学习领域的一种新方法,BDA是一种有效的跨域特征提取方法。本文在实际数据集中成功地评价了BDA算法的有效性。
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