Machine Learning-Based Process-Level Fault Detection and Part-Level Fault Classification in Semiconductor Etch Equipment

被引:28
|
作者
Kim, Sun Ho [1 ]
Kim, Chan Young [1 ]
Seol, Da Hoon [1 ]
Choi, Jeong Eun [1 ]
Hong, Sang Jeen [1 ]
机构
[1] Myongji Univ, Dept Elect Engn, Yongin 17058, South Korea
关键词
Process control; Fault detection; Silicon; Semiconductor device manufacture; Principal component analysis; Etching; Temperature sensors; Etch equipment; multi-collinearity; OC-SVM; machine learning; decision tree; importance rate; FDC;
D O I
10.1109/TSM.2022.3161512
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In the semiconductor manufacturing, which consists of significantly precise and diverse unit processes, minute defects can cause significantly large risk, which is directly related to the yield. Through fault detection and classification (FDC), the equipment status is monitored, and the potential causes of faults can be investigated. In the mass production process, unbalanced data problems are also important, including preprocessing methods for data analysis in real time. This study proposes a stepwise FDC method with a process fault detection (FD) and faulty equipment part classification. Fault detection (FD) is proposed using a oneclass support vector machine (OC-SVM) to determine anomalies that occur during a process, and fault classification (FC) is followed by the importance between variables that determine whether a fault exists is extracted using extreme gradient boosting (XGBoost). Variables whose importance has been confirmed, are reclassified to a part-level based on the variable name, and defects are notified to the part-level level. An empirical study to validate the proposed data-based framework for fault detection and diagnosis was performed under the scenario of unexpected failure of two SF6/O-2 mass flow controllers (MFCs). The experimental results confirmed that the application-oriented proposed framework performed well in FDC operations and showed that it can provide part-level notification to engineers.
引用
收藏
页码:174 / 185
页数:12
相关论文
共 50 条
  • [41] Introduction of equipment level FDC system for semiconductor wet-cleaning equipment optimization and real-time fault detection
    Kim, NamJin
    Choi, HoJin
    Chun, JaeHo
    Jeong, JongPil
    2022 33RD ANNUAL SEMI ADVANCED SEMICONDUCTOR MANUFACTURING CONFERENCE (ASMC), 2022,
  • [42] Part-Level Relationship Learning for Fine-Grained Few-Shot Image Classification
    Wang, Chuanming
    Fu, Huiyuan
    Liu, Peiye
    Ma, Huadong
    IEEE TRANSACTIONS ON MULTIMEDIA, 2025, 27 : 1448 - 1460
  • [43] An EKF-SVM machine learning-based approach for fault detection and classification in three-phase power transformers
    Kazemi, Zahra
    Naseri, Farshid
    Yazdi, Mehran
    Farjah, Ebrahim
    IET SCIENCE MEASUREMENT & TECHNOLOGY, 2021, 15 (02) : 130 - 142
  • [44] Machine Learning-based Predictive Maintenance for Fault Detection in Rotating Machinery: A Case Study
    Khalil, Ardalan F.
    Rostam, Sarkawt
    ENGINEERING TECHNOLOGY & APPLIED SCIENCE RESEARCH, 2024, 14 (02) : 13181 - 13189
  • [45] Machine Learning-Based Fault Detection and Diagnosis of Faulty Power Connections of Induction Machines
    Gonzalez-Jimenez, David
    del-Olmo, Jon
    Poza, Javier
    Garramiola, Fernando
    Sarasola, Izaskun
    ENERGIES, 2021, 14 (16)
  • [46] Machine learning-based fault estimation of nonlinear descriptor systems
    Patel, Tigmanshu
    Rao, M. S.
    Gandhi, Dhrumil
    Purohit, Jalesh L.
    Shah, V. A.
    INTERNATIONAL JOURNAL OF AUTOMATION AND CONTROL, 2024, 18 (01) : 1 - 29
  • [47] Fault Detection in LDPE Process using Machine Learning Techniques
    Lee, Changsong
    Lee, Kyu-Hwang
    Lee, Hokyung
    KOREAN CHEMICAL ENGINEERING RESEARCH, 2020, 58 (02): : 224 - 229
  • [48] A Multimodal Deep Learning-Based Fault Detection Model for a Plastic Injection Molding Process
    Kim, Gyeongho
    Choi, Jae Gyeong
    Ku, Minjoo
    Cho, Hyewon
    Lim, Sunghoon
    IEEE ACCESS, 2021, 9 : 132455 - 132467
  • [49] Development for Electrical Fault Detection and Classification Analysis Model based on Machine Learning Algorithms
    Kim, Junho
    Sim, Sunhwa
    Kim, Seokjun
    Cho, Seokheon
    Han, Changhee
    2024 IEEE CONFERENCE ON TECHNOLOGIES FOR SUSTAINABILITY, SUSTECH, 2024, : 50 - 56
  • [50] Fault detection in power grids based on improved supervised machine learning binary classification
    Wadi, Mohammed
    JOURNAL OF ELECTRICAL ENGINEERING-ELEKTROTECHNICKY CASOPIS, 2021, 72 (05): : 315 - 322