带域偏差的广义零样本工业故障诊断

IF 9.4 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Reliability Engineering & System Safety Pub Date : 2024-10-10 DOI:10.1016/j.ress.2024.110571
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引用次数: 0

摘要

广义零样本故障诊断(GZSFD)是一项极具挑战性的任务,它涉及对所有样本进行诊断,这些样本既包括以前出现过的故障,也包括未出现过的故障。然而,用于训练的未见样本的稀缺性导致现有方法受到领域偏差的阻碍,未见故障更有可能被误判为已见故障。本文提出了一种有效的解决方案,即为具有领域偏差的 GZSFD 中的测试样本构建未见故障检测器,利用检测到的未见样本知识提高诊断性能。具体来说,设计了一个基于 ResNet 的一维卷积神经网络,用于高质量特征提取。此外,还构建了基于库尔贝-莱布勒发散的分布阈值检测器,用于识别测试样本。然后,检测测试样本并将其区分为可见类和未见类。在检测到的未见类中,要解决零样本故障诊断(ZSFD)问题,而在检测到的可见类中,要解决子 ZSFD 问题。在零样本故障诊断任务中,为了充分利用测试集中的未见样本,对检测到的未见故障采用了基于聚类的方案,但没有预定义的聚类数量。对于子 ZSFD 任务,结合 ZSFD 任务中的分类结果,提出了两种嵌入策略,以进一步减轻领域偏差。它们分别从特征空间到语义嵌入空间学习语义属性的共享权重和最优权重。利用共享的细粒度语义属性描述作为辅助信息,可以确定最终的故障类别。实验结果表明,所提出的策略能有效缓解 GZSFD 任务中的领域偏差。
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Generalized zero-sample industrial fault diagnosis with domain bias
Generalized zero-sample fault diagnosis (GZSFD) is a challenging task involving the diagnosis of all samples from both previously seen and unseen faults. However, the scarcity of unseen samples for training causes that existing methods are hindered by domain bias, where unseen faults are more likely to be misclassified as seen faults. In this article, an efficacious solution is proposed by constructing an unseen fault detector for test samples in GZSFD with domain bias, which utilizes the detected unseen-sample knowledge to enhance the diagnosis performance. Specifically, a ResNet-based one-dimensional convolutional neural network is designed for high-quality feature extraction. Also, a Kullback–Leibler divergence-based distribution threshold detector is constructed for the identification of test samples. Afterwards, test samples are detected and distinguished into seen or unseen classes. In detected unseen classes, a zero-sample fault diagnosis (ZSFD) problem is undertaken, while in detected seen classes, a sub-GZSFD problem is addressed. For ZSFD tasks, to leverage the unseen samples in the test set, a clustering-based scheme without a predefined cluster number is used for the detected unseen fault. For sub-GZSFD tasks, combined with classification results in the ZSFD task, two embedding strategies are proposed to further mitigate the domain bias. They learn a shared weight and the optimal weights of semantic attributes from the feature space to the semantic embedding space, respectively. Using the shared fine-grained semantic attribute descriptions as auxiliary information, the final fault category can be determined. Experimental results showcase that the proposed strategies effectively alleviate the domain bias in GZSFD tasks.
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来源期刊
Reliability Engineering & System Safety
Reliability Engineering & System Safety 管理科学-工程:工业
CiteScore
15.20
自引率
39.50%
发文量
621
审稿时长
67 days
期刊介绍: Elsevier publishes Reliability Engineering & System Safety in association with the European Safety and Reliability Association and the Safety Engineering and Risk Analysis Division. The international journal is devoted to developing and applying methods to enhance the safety and reliability of complex technological systems, like nuclear power plants, chemical plants, hazardous waste facilities, space systems, offshore and maritime systems, transportation systems, constructed infrastructure, and manufacturing plants. The journal normally publishes only articles that involve the analysis of substantive problems related to the reliability of complex systems or present techniques and/or theoretical results that have a discernable relationship to the solution of such problems. An important aim is to balance academic material and practical applications.
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