计算机科学
参数化复杂度
监督学习
人工智能
过程(计算)
机器学习
编码器
适应性
人工神经网络
深度学习
模式识别(心理学)
断层(地质)
数据挖掘
自编码
算法
地质学
操作系统
地震学
生物
生态学
作者
Yong Feng,Jinglong Chen,Tianci Zhang,Shuilong He,Enyong Xu,Zitong Zhou
标识
DOI:10.1016/j.isatra.2021.03.013
摘要
In the engineering practice, lacking of data especially labeled data typically hinders the wide application of deep learning in mechanical fault diagnosis. However, collecting and labeling data is often expensive and time-consuming. To address this problem, a kind of semi-supervised meta-learning networks (SSMN) with squeeze-and-excitation attention is proposed for few-shot fault diagnosis in this paper. SSMN consists of a parameterized encoder, a non-parameterized prototype refinement process and a distance function. Based on attention mechanism, the encoder is able to extract distinct features to generate prototypes and enhance the identification accuracy. With semi-supervised few-shot learning, SSMN utilizes unlabeled data to refine original prototypes for better fault recognition. A combinatorial learning optimizer is designed to optimize SSMN efficiently. The effectiveness of the proposed method is demonstrated through three bearing vibration datasets and the results indicate the outstanding adaptability in different situations. Comparison with other approaches is also made under the same setup and the experimental results prove the superiority of the proposed method for few-shot fault diagnosis.
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