计算机科学
学习迁移
断层(地质)
人工智能
传输(计算)
可靠性工程
工程类
操作系统
地震学
地质学
作者
Jie Shen,Shusen Yang,Cong Zhao,Xuebin Ren,Peng Zhao,Yuqian Yang,Qing Han,S. Felix Wu
标识
DOI:10.1109/tim.2024.3352702
摘要
Intelligent equipment fault diagnosis based on federated transfer learning (FTL) attracts considerable attention from both academia and industry. It allows real-world industrial agents with limited samples to construct a fault diagnosis model without jeopardizing their raw data privacy. The existing approaches, however, can neither address the intense sample heterogeneity caused by different working conditions of practical agents nor the extreme fault label scarcity, even zero, of newly deployed equipment. To address these issues, we present FedLED, the first unsupervised vertical FTL equipment fault diagnosis method, where knowledge of the unlabeled target domain is further exploited for effective unsupervised model transfer. The results of extensive experiments using data of real equipment monitoring demonstrate that FedLED obviously outperforms SOTA approaches in terms of both diagnosis accuracy (up to $4.13\times $ ) and generality. We expect our work to inspire further study on label-free equipment fault diagnosis systematically enhanced by target-domain knowledge.
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