Federated Multi-Model Transfer Learning-Based Fault Diagnosis with Peer-to-Peer Network for Wind Turbine Cluster

Yang, Wanqian and Yu, Gang (2022) Federated Multi-Model Transfer Learning-Based Fault Diagnosis with Peer-to-Peer Network for Wind Turbine Cluster. Machines, 10 (11). p. 972. ISSN 2075-1702

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Abstract

Intelligent fault diagnosis for a single wind turbine is hindered by the lack of sufficient useful data, while multi-turbines have various faults, resulting in complex distributions. Collaborative intelligence can better solve these problems. Therefore, a peer-to-peer network is constructed with one node corresponding to one wind turbine in a cluster. Each node is equivalent and functional replicable with a new federated transfer learning method, including model transfer based on multi-task learning and model fusion based on dynamic adaptive weight adjustment. Models with convolutional neural networks are trained locally and transmitted among the nodes. A solution for the processes of data management, information transmission, model transfer and fusion is provided. Experiments are conducted on a fault signal testing bed and bearing dataset of Case Western Reserve University. The results show the excellent performance of the method for fault diagnosis of a gearbox in a wind turbine cluster.

Item Type: Article
Uncontrolled Keywords: collaborative intelligence; deep learning; fault diagnosis; group technology; peer-to-peer computing; transfer learning; wind energy
Subjects: STM Repository > Engineering
Depositing User: Managing Editor
Date Deposited: 29 Oct 2022 04:04
Last Modified: 17 Feb 2024 04:05
URI: http://classical.goforpromo.com/id/eprint/218

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