旋转机械无监督故障诊断的条件自适应动态图神经网络模型

IF 8.9 1区 工程技术 Q1 ENGINEERING, MECHANICAL
Ran Wang , Zhengtai Lyu , Fucheng Yan , Liang Yu , Xiong Hu
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引用次数: 0

摘要

在旋转机械中,不同的操作条件和机器间的差异导致监测数据的显著分布变化,在新的或特定的条件下,标签稀缺性持续存在。这些挑战促使了域自适应技术在跨域故障诊断中的应用。近年来,基于图神经网络的无监督故障诊断方法仍然存在一些局限性。现有的条件分布自适应方法往往忽略了数据分布的几何结构。为了解决这一问题,提出了一种条件自适应对齐动态图神经网络(CA-DGNN)跨域无监督模型。首先,构建了一个集成高斯边缘特征的动态图神经网络,通过动态拓扑结构学习样本间的相关性,并嵌入到图级故障特征表示中。随后,利用条件协方差算子在再现核希尔伯特空间(RKHS)内表述条件最大平均差异(CMMD),明确建立图级故障特征与标签之间的关系。然后利用CMMD测量特征条件分布的域差异,设计条件自适应损失来实现域对齐。与传统的边际对齐相比,班级内的知识转移得到了增强。此外,利用故障特征与预测标签之间的互信息提取判别信息,提高伪标签的可靠性。通过两种不同工况和一种跨机工况的实验,验证了该方法在跨域故障诊断任务中的有效性。CA-DGNN模型代码发布网址:https://github.com/Pear-so/CA-DGNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Conditional Adaption Alignment Dynamic Graph Neural Network model for unsupervised fault diagnosis of rotating machinery
In rotating machinery, the diverse operating conditions and cross-machine discrepancies lead to significant distribution shifts in monitoring data, with label scarcity persisting under new or specific conditions. These challenges motivate the application of domain adaptation techniques in cross-domain fault diagnosis. In recent years, unsupervised fault diagnosis methods based on graph neural networks still face several limitations. The geometric structure of data distributions is often neglected by existing conditional distribution adaptation methods. To address this problem, a Conditional Adaptive Alignment Dynamic Graph Neural Network (CA-DGNN) cross-domain unsupervised model is proposed. First, a Dynamic Graph Neural Network integrated with Gaussian edge features is constructed, where inter-sample correlations are learned through dynamic topological structures and embedded into graph-level fault feature representations. Subsequently, the relationship between graph-level fault features and labels is explicitly established through the Conditional Maximum Mean Discrepancy (CMMD), which is formulated within the Reproducing Kernel Hilbert Space (RKHS) using the conditional covariance operator. The CMMD is then used to measure the domain discrepancy of feature-conditional distributions, and a conditional adaptive loss is designed to realize the domain alignment. The intra-class knowledge transfer is enhanced compared to traditional marginal alignment. Additionally, mutual information between fault features and predicted labels is utilized to extract discriminative information and improve the reliability of pseudo-labels. The proposed method is evaluated through experiments on two varying operational condition cases and one cross-machine case, with the results demonstrating that the model is more effective than other models in cross-domain fault diagnosis tasks. The codes of CA-DGNN model are released at: https://github.com/Pear-so/CA-DGNN.
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来源期刊
Mechanical Systems and Signal Processing
Mechanical Systems and Signal Processing 工程技术-工程:机械
CiteScore
14.80
自引率
13.10%
发文量
1183
审稿时长
5.4 months
期刊介绍: Journal Name: Mechanical Systems and Signal Processing (MSSP) Interdisciplinary Focus: Mechanical, Aerospace, and Civil Engineering Purpose:Reporting scientific advancements of the highest quality Arising from new techniques in sensing, instrumentation, signal processing, modelling, and control of dynamic systems
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