计算机科学
瓶颈
机器学习
人工智能
趋同(经济学)
GSM演进的增强数据速率
过程(计算)
理论(学习稳定性)
数据挖掘
经济
嵌入式系统
经济增长
操作系统
作者
Jiao Chen,Jianhua Tang,Weihua Li
出处
期刊:IEEE Transactions on Network Science and Engineering
[Institute of Electrical and Electronics Engineers]
日期:2023-01-01
卷期号:: 1-13
被引量:10
标识
DOI:10.1109/tnse.2023.3266942
摘要
The scarcity of fault samples has been the bottleneck for the large-scale application of mechanical fault diagnosis (FD) methods in the industrial Internet of Things (IIoT). Traditional few-shot FD methods are fundamentally limited in that the models can only learn from the direct dataset, i.e., a limited number of local data samples. Federated learning (FL) has recently shown the capacity of collaborative artificial intelligence and privacy preservation. Based on these capabilities, we propose a novel approach to solve the few-shot FD problem, which includes a generic framework (i.e., FedMeta-FFD) and an easy-to-implement enhancement technique (i.e., AILR). The FedMeta-FFD framework allows clients to learn from indirect datasets owned by other collaborators while training a global meta-learner to solve the few-shot problem directly. More concretely, with only a few labeled examples and training iterations, the global meta-learner can quickly adapt to a new client (e.g., a machine under different operating conditions) or a newly encountered fault category. Adopting AILR can significantly improve the performance of the FedMeta-FFD framework while also increasing the stability of the learning process. Further, we conduct a theoretical analysis of the proposed framework's convergence in a non-convex setting. We thoroughly evaluate the proposed FedMeta-FFD on two fault diagnosis datasets and also perform the practical validation on real-world IIoT scenarios. They demonstrate that our proposed approach achieves significantly faster convergence and higher accuracy than the existing approaches.
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