Fault Detection of Wafer Sensors Based on Representation Learning and Isolation Forest

被引:0
作者
Qiu, Haixiang [1 ]
Jiang, Hui [1 ]
机构
[1] Semitronix Corp, Hangzhou, Peoples R China
来源
2024 35TH ANNUAL SEMI ADVANCED SEMICONDUCTOR MANUFACTURING CONFERENCE, ASMC | 2024年
关键词
wafer manufacturing; fault detection; time series; deep learning; representation learning; Isolation Forest;
D O I
10.1109/ASMC61125.2024.10545530
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Wafer manufacturing is a complex process involving hundreds of process steps. Detecting and identifying potential anomalies and malfunctions in sensor parameters are crucial for improving production yield. However, traditional rule-based or statistical methods fail to meet the requirements of accuracy and efficiency. To address this issue, we propose an innovative model that combines deep learning with Isolation Forest. The deep learning module is used to extract multi-dimensional feature vectors at each timestamp, while the Isolation Forest module takes the multi-dimensional feature vectors at each timestamp as input for anomaly detection in the timestamp dimension. We conducted experiments using a real industrial dataset and compared our model with several state-of-the-art models. The results demonstrate that our model exhibits strong learning and representation capabilities, enabling it to learn from large amounts of data and identify complex anomaly patterns.
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页数:5
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共 14 条
  • [1] Redefining Monitoring Rules for Intelligent Fault Detection and Classification via CNN Transfer Learning for Smart Manufacturing
    Chien, Chen-Fu
    Hung, Wei-Tse
    Liao, Eddy Ting-Yi
    [J]. IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING, 2022, 35 (02) : 158 - 165
  • [2] Automatic control in microelectronics manufacturing: Practices, challenges, and possibilities
    Edgar, TF
    Butler, SW
    Campbell, WJ
    Pfeiffer, C
    Bode, C
    Hwang, SB
    Balakrishnan, KS
    Hahn, J
    [J]. AUTOMATICA, 2000, 36 (11) : 1567 - 1603
  • [3] Data-Driven Approach for Fault Detection and Diagnostic in Semiconductor Manufacturing
    Fan, Shu-Kai S.
    Hsu, Chia-Yu
    Tsai, Du-Ming
    He, Fei
    Cheng, Chun-Chung
    [J]. IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING, 2020, 17 (04) : 1925 - 1936
  • [4] Multiple time-series convolutional neural network for fault detection and diagnosis and empirical study in semiconductor manufacturing
    Hsu, Chia-Yu
    Liu, Wei-Chen
    [J]. JOURNAL OF INTELLIGENT MANUFACTURING, 2021, 32 (03) : 823 - 836
  • [5] A Convolutional Neural Network for Fault Classification and Diagnosis in Semiconductor Manufacturing Processes
    Lee, Ki Bum
    Cheon, Sejune
    Kim, Chang Ouk
    [J]. IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING, 2017, 30 (02) : 135 - 142
  • [6] Isolation Forest
    Liu, Fei Tony
    Ting, Kai Ming
    Zhou, Zhi-Hua
    [J]. ICDM 2008: EIGHTH IEEE INTERNATIONAL CONFERENCE ON DATA MINING, PROCEEDINGS, 2008, : 413 - +
  • [7] Machine Learning and Deep Learning Methods for Intrusion Detection Systems: A Survey
    Liu, Hongyu
    Lang, Bo
    [J]. APPLIED SCIENCES-BASEL, 2019, 9 (20):
  • [8] Early Fault Detection of Machine Tools Based on Deep Learning and Dynamic Identification
    Luo, Bo
    Wang, Haoting
    Liu, Hongqi
    Li, Bin
    Peng, Fangyu
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2019, 66 (01) : 509 - 518
  • [9] Online Real-Time Quality Monitoring in Additive Manufacturing Processes Using Heterogeneous Sensors
    Rao, Prahalad K.
    Liu, Jia
    Roberson, David
    Kong, Zhenyu
    Williams, Christopher
    [J]. JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2015, 137 (06):
  • [10] Data-driven smart manufacturing
    Tao, Fei
    Qi, Qinglin
    Liu, Ang
    Kusiak, Andrew
    [J]. JOURNAL OF MANUFACTURING SYSTEMS, 2018, 48 : 157 - 169