断层(地质)
过程(计算)
计算机科学
故障检测与隔离
学习迁移
深度学习
数据建模
人工智能
数据挖掘
卷积神经网络
机器学习
实时计算
工程类
可靠性工程
数据库
执行机构
地质学
操作系统
地震学
作者
Chongdang Liu,Linxuan Zhang,Jinyi Li,Jinghao Zheng,Cheng Wu
出处
期刊:IEEE Transactions on Semiconductor Manufacturing
[Institute of Electrical and Electronics Engineers]
日期:2021-05-01
卷期号:34 (2): 185-193
被引量:16
标识
DOI:10.1109/tsm.2021.3059025
摘要
Fault prognosis under multiple fault modes is critical to predictive maintenance of complex tools in semiconductor manufacturing. However, the inherent data discrepancy among different tools and data imbalance with limited fault data coexist in real industrial scenario, making the task quite challenging. Therefore, this article proposes a novel two-stage deep transfer learning-based framework for prognosis under multiple fault modes, which aims at accurately predicting the time-to-failure of an Ion mill etching process. In the first stage, a base fault mode is selected and data alignment on condition monitoring data from multiple tools is performed via domain adversarial learning, wherein the temporal convolutional network is embedded to learn temporal representations from time-series sensor data. The second stage handles the prognostic tasks with remaining fault modes, the well-trained deep model from the first stage is employed as a pre-trained model, which will be fine-tuned with a relatively small amount of data from other fault modes, further accelerating the training process and enhancing the prediction performance. Comprehensive experiments are carried out on a real-world IME dataset, and the results show that the proposed model not only achieves better prediction accuracy but also saves much time for training compared with other existing methods.
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