机器学习热点预测显著提高晶圆上的捕获率

Wei Yuan, Yifei Lu, Ming Li, Bingyang Pan, Ying Gao, Yu Tian, Zhi-qin Li, Liang Ji, Ying Huang, Hao Chen, Yueliang Yao, Sean Park
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引用次数: 0

摘要

在真实的掩模胶带(MTO)过程中,最终用户通常会使用模拟工具来捕获有可能出现在晶圆上的热点候选物。晶圆厂紧迫的周转时间(TAT)需要一种有效的方法来对这些候选产品进行分类,并在测量前进行抽样。传统上,为了捕获热点,验证工具主要集中在轮廓、局部图像对比度等有限的参数上,以及从全空域和抗阻信息中提取的参数上。这种方法使得难以快速确定高风险热点,特别是当热点数量很大时。相比之下,Newron热点预测是一种利用先进的机器学习技术,充分利用整个模拟图像对每个候选热点生成准确预测信息的创新方法。Newron热点预测能够显著减少所需的输入信息量,提高热点捕获率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Hotspot Prediction Significantly Improve Capture Rate on Wafer
In a real mask tape-out (MTO) process, an end user would typically use simulation tools to capture hotspot candidates which are at risk of appearing on wafers. The tight turn-around-time(TAT) in a fab requires an efficient method to categorize these candidates and sampling before measurement. Traditionally, in order to capture hotspots, verification tools mainly focus on limited parameters such as contours, local image contrast and parameters extracted from the full aerial and resist information. This approach makes it difficult to quickly pinpoint high risk hotspots, especially when the hotspot count is large. In contrast, by using advanced machine learning techniques, Newron hotspot prediction is an innovative method that makes full use of whole simulated images to generate accurate prediction information for every hotspot candidate. Newron hotspot prediction is able to significantly reduce the amount of required input information and improve the hotspot capture rate.
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