利用混合深度学习和增量迁移学习实现加工过程的自适应故障诊断

IF 8.2 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers in Industry Pub Date : 2025-02-14 DOI:10.1016/j.compind.2025.104262
Yuchen Liang , Yuqi Wang , Weidong Li , Duc Truong Pham , Jinzhong Lu
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Adaptive fault diagnosis of machining processes enabled by hybrid deep learning and incremental transfer learning
Faults occurring during machining processes can severely impact productivity and product quality. Deep learning models have been actively used to develop fault diagnosis approaches. However, it is challenging for industries to adopt the approaches due to their inability to adapt to varying machining conditions. To address the issue, a novel diagnostic approach is designed based on a hybrid convolutional neural network (CNN)-long short-term memory (LSTM) model and an incremental transfer learning strategy. Based on the incremental transfer learning, the CNN-LSTM model can acquire knowledge from previous machining conditions (source domain) and effectively apply it to new conditions (target domain). In the diagnostic approach, instance-based transfer learning, knowledge-based transfer learning, and incremental transfer learning are combined to improve the training efficiency and overcome the issue of forgetting previously learned knowledge. The CNN-LSTM-attention model is designed as a supplementary model when the data complexity is high. Experimental results show that the approach increased the average training accuracy from 88.63 % to 97.10 %, and required training datasets were reduced by 96.97 %. In addition, the incremental transfer learning reduced false detections for 71.24 %.
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来源期刊
Computers in Industry
Computers in Industry 工程技术-计算机:跨学科应用
CiteScore
18.90
自引率
8.00%
发文量
152
审稿时长
22 days
期刊介绍: The objective of Computers in Industry is to present original, high-quality, application-oriented research papers that: • Illuminate emerging trends and possibilities in the utilization of Information and Communication Technology in industry; • Establish connections or integrations across various technology domains within the expansive realm of computer applications for industry; • Foster connections or integrations across diverse application areas of ICT in industry.
期刊最新文献
An evaluation scheme incorporating digital characteristics for transient tribological behaviours under complex loading conditions for the hot stamping process UGP-KD: An unsupervised generalized prediction framework for robot machining quality under historical task knowledge distillation for new tasks Physics-informed digital twin design for supporting the selection of process settings in continuous manufacturing, with a focus in fiberboard production DFSDNet: A dual-branch multi-scale feature fusion network for surface defect detection of copper strips and plates Intelligent chatter detection in high-speed milling using successive variational mode decomposition and a multi-channel feature fusion network
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