Deep Domain Adaptation with Correlation Alignment and Supervised Contrastive Learning for Intelligent Fault Diagnosis in Bearings and Gears of Rotating Machinery

IF 2.2 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Actuators Pub Date : 2024-02-27 DOI:10.3390/act13030093
Bo Zhang, Hai Dong, Hamzah A. A. M. Qaid, Yong Wang
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引用次数: 0

Abstract

Deep domain adaptation techniques have recently been the subject of much research in machinery fault diagnosis. However, most of the work has been focused on domain alignment, aiming to learn cross-domain features by bridging the gap between source and target domains. Despite the success of these methods in achieving domain alignment, they often overlook the class discrepancy present in cross-domain scenarios. This can result in the misclassification of target domain samples that are located near cluster boundaries or far from their associated class centers. To tackle these challenges, a novel approach called deep domain adaptation with correlation alignment and supervised contrastive learning (DCASCL) is proposed, which synchronously realizes both domain distribution alignment and class distribution alignment. Specifically, the correlation alignment loss is used to enforce the model to generate transferable features, facilitating effective domain distribution alignment. Additionally, classifier discrepancy loss and supervised contrastive learning loss are integrated to carry out feature distribution alignment class-wisely. The supervised contrastive learning loss leverages class-specific information of source and target samples, which efficiently promotes the compactness of samples of the same class and the separation of samples from different classes. Moreover, our approach is extensively validated across three diverse datasets, demonstrating its effectiveness in diagnosing machinery faults across different domains.
利用相关性对齐和监督对比学习进行深度领域适应,实现旋转机械轴承和齿轮的智能故障诊断
深度域适应技术是近来机械故障诊断领域大量研究的主题。然而,大部分研究工作都集中在域对齐上,旨在通过弥合源域和目标域之间的差距来学习跨域特征。尽管这些方法在实现域对齐方面取得了成功,但它们往往忽视了跨域场景中存在的类差异。这可能会导致位于聚类边界附近或远离相关类中心的目标域样本被错误分类。为了应对这些挑战,我们提出了一种名为 "具有相关对齐和监督对比学习(DCASCL)的深度域适应 "的新方法,它能同步实现域分布对齐和类分布对齐。具体来说,相关对齐损失用于强制模型生成可转移特征,从而促进有效的领域分布对齐。此外,分类器差异损失和有监督的对比学习损失被整合在一起,以实现特征分布的类对齐。有监督的对比学习损失利用源样本和目标样本的特定类别信息,有效地促进了同类样本的紧凑性和不同类样本的分离。此外,我们的方法在三个不同的数据集上得到了广泛验证,证明了它在不同领域的机械故障诊断中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Actuators
Actuators Mathematics-Control and Optimization
CiteScore
3.90
自引率
15.40%
发文量
315
审稿时长
11 weeks
期刊介绍: Actuators (ISSN 2076-0825; CODEN: ACTUC3) is an international open access journal on the science and technology of actuators and control systems published quarterly online by MDPI.
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