Dynamic Semi-Supervised Federated Learning Fault Diagnosis Method Based on an Attention Mechanism.

IF 2.1 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
Entropy Pub Date : 2023-10-21 DOI:10.3390/e25101470
Shun Liu, Funa Zhou, Shanjie Tang, Xiong Hu, Chaoge Wang, Tianzhen Wang
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Abstract

In cases where a client suffers from completely unlabeled data, unsupervised learning has difficulty achieving an accurate fault diagnosis. Semi-supervised federated learning with the ability for interaction between a labeled client and an unlabeled client has been developed to overcome this difficulty. However, the existing semi-supervised federated learning methods may lead to a negative transfer problem since they fail to filter out unreliable model information from the unlabeled client. Therefore, in this study, a dynamic semi-supervised federated learning fault diagnosis method with an attention mechanism (SSFL-ATT) is proposed to prevent the federation model from experiencing negative transfer. A federation strategy driven by an attention mechanism was designed to filter out the unreliable information hidden in the local model. SSFL-ATT can ensure the federation model's performance as well as render the unlabeled client capable of fault classification. In cases where there is an unlabeled client, compared to the existing semi-supervised federated learning methods, SSFL-ATT can achieve increments of 9.06% and 12.53% in fault diagnosis accuracy when datasets provided by Case Western Reserve University and Shanghai Maritime University, respectively, are used for verification.

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基于注意力机制的动态半监督联合学习故障诊断方法。
在客户端遭受完全未标记数据的情况下,无监督学习难以实现准确的故障诊断。为了克服这一困难,已经开发了具有标记客户端和未标记客户端之间交互能力的半监督联合学习。然而,现有的半监督联合学习方法可能会导致负迁移问题,因为它们无法从未标记的客户端中过滤出不可靠的模型信息。因此,在本研究中,提出了一种具有注意力机制的动态半监督联邦学习故障诊断方法(SSFL-ATT),以防止联邦模型经历负迁移。设计了一种由注意力机制驱动的联邦策略来过滤隐藏在局部模型中的不可靠信息。SSLL-ATT可以确保联邦模型的性能,并使未标记的客户端能够进行故障分类。在存在未标记客户端的情况下,与现有的半监督联合学习方法相比,当分别使用凯斯西储大学和上海海事大学提供的数据集进行验证时,SSLL-ATT可以实现9.06%和12.53%的故障诊断准确率增量。
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来源期刊
Entropy
Entropy PHYSICS, MULTIDISCIPLINARY-
CiteScore
4.90
自引率
11.10%
发文量
1580
审稿时长
21.05 days
期刊介绍: Entropy (ISSN 1099-4300), an international and interdisciplinary journal of entropy and information studies, publishes reviews, regular research papers and short notes. Our aim is to encourage scientists to publish as much as possible their theoretical and experimental details. There is no restriction on the length of the papers. If there are computation and the experiment, the details must be provided so that the results can be reproduced.
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