Automatic Defect Cluster Extraction for Semiconductor Wafers

Instrumentation and Measurement Technology Conference(2010)

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摘要
Defects on fabricated semiconductor wafers tend to cluster in distinguishable patterns. The ability to accurately identify these patterns allows manufacturers to trace their root causes to a specific process step or equipment. This paper deals with an algorithm that automatically extracts defect clusters. The algorithm performs cluster segmentation and detection by employing two separate and parallel processes. This increases robustness while maintaining high accuracy and speed of data processing. In this paper a new method that allows users to select a tradeoff threshold point between the acceptable false alarm and false rejection rates to suit their applications is introduced.
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关键词
data mining,defect states,semiconductor device manufacture,automatic defect cluster extraction,cluster segmentation,data processing,distinguishable patterns,semiconductor wafers,defect clusters,detection,segmentation,semiconductor wafer,labeling,parallel processing,robustness,clustering algorithms,classification algorithms,space technology,artificial neural networks,integrated circuits,manufacturing
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