Hierarchical indices to detect equipment condition changes with high dimensional data for semiconductor manufacturing

被引:0
|
作者
Hui-Chun Yu
Kuo-Yi Lin
Chen-Fu Chien
机构
[1] National Cheng Kung University,Department of Statistics
[2] National Tsing Hua University,Department of Industrial Engineering and Engineering Management
来源
关键词
Equipment condition; Tool health; Preventive maintenance (PM); Fault detection and classification (FDC); Real-time monitoring; Manufacturing intelligence; Semiconductor manufacturing;
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学科分类号
摘要
During semiconductor manufacturing process, massive and various types of interrelated equipment data are automatically collected for fault detection and classification. Indeed, unusual wafer measurements may reflect a wafer defect or a change in equipment conditions. Early detection of equipment condition changes assists the engineer with efficient maintenance. This study aims to develop hierarchical indices for equipment monitoring. For efficiency, only the highest level index is used for real-time monitoring. Once the index decreases, the engineers can use the drilled down indices to identify potential root causes. For validation, the proposed approach was tested in a leading semiconductor foundry in Taiwan. The results have shown that the proposed approach and associated indices can detect equipment condition changes after preventive maintenance efficiently and effectively.
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页码:933 / 943
页数:10
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