采用大面积缺陷检测和取样的晶圆光学检测

S. Riley
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引用次数: 7

摘要

在没有在线电气测试监视器的情况下,半导体制造商必须依靠光学检查的数据来识别和控制缺陷。为了有效,光学检测必须简化为对工艺工程师具有物理意义的术语。数据必须能够显示随时间推移的趋势,对产品造成最大危害的缺陷类型的分布,以及消除缺陷后的净变化。此外,它必须能够高度一致地预测产品的健康状况。本文描述了光学缺陷检测如何使用大面积检测和一致的自动采样算法来监测和控制产品的缺陷水平。这种方法对IBM 16mb DRAM生产线上的快速缺陷学习做出了重要贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical inspection of wafers using large-area defect detection and sampling
In the absence of in-line electrical test monitors, semiconductor manufacturers must rely on data from optical inspections to identify and control defects. To be effective, optical inspection must be reduced to terms which have physical significance to the process engineer. The data must be able to show trends over time, distributions of defect types causing the most harm to the product, and net change after elimination of defects. Further, it must be able to predict the health of product with a high degree of consistency. This paper describes how optical defect inspection, using large-area detection and a consistent automatic sampling algorithm, can be used to monitor and control defect levels on product. This method has been a significant contributor to rapid defect learning on the 16-Mb DRAM manufacturing line at IBM.<>
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