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Abnormal Chamber Detection in the Etching Process Using Time-Series Data Augmentation and Soft Labeling

Authors
Lee, Gyeong TaekKim, Kangjin
Issue Date
Mar-2023
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Keywords
Etching; Sensors; Data models; Labeling; Semiconductor device measurement; Feature extraction; Deep learning; Abnormal chamber detection; etching process; semiconductor manufacturing; time-series data augmentation
Citation
IEEE SENSORS JOURNAL, v.23, no.5, pp 5084 - 5093
Pages
10
Journal Title
IEEE SENSORS JOURNAL
Volume
23
Number
5
Start Page
5084
End Page
5093
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/90767
DOI
10.1109/JSEN.2023.3237621
ISSN
1530-437X
1558-1748
Abstract
In the semiconductor manufacturing etching process, a considerable amount of good-quality data can be obtained by the measurement process. As the etching process has an impact on subsequent processes and to check and control the condition of the wafer, the measurement process should be performed as much as possible. However, with the rapid development of technology in manufacturing, the process recipe has undergone frequent changes. Accordingly, the amount of data available in the field is limited, and the effective utilization of measured data is needed to improve the model's performance in abnormal chamber detection. In this article, we propose to augment time-series data that are collected from equipment sensors in the etching process to improve the model's performance. To accomplish this task, we utilize dynamic time-warping barycenter averaging (DBA) and soft labeling. DBA is applied to calculate the average of the time series, and the new label is given in the form of a soft label. To verify the efficiency of the proposed method, we compared several regression models with the proposed method and with several benchmark methods. In addition, we compared the proposed method with soft labeling and hard labeling. The experimental results show that the model with the proposed method is superior to the model with its other benchmark methods.
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Lee, GyeongTaek
Engineering (Department of Mechanical, Smart and Industrial Engineering (Smart Factory Major))
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