薄脆饼
产量(工程)
晶圆制造
生产力
半导体器件建模
半导体器件制造
计算机科学
制作
电子工程
材料科学
人工智能
工程类
光电子学
CMOS芯片
经济
冶金
宏观经济学
医学
替代医学
病理
作者
Sung-Ju Jang,Jee-Hyong Lee,Tae‐Woo Kim,Jong-Seong Kim,Hyun-Jin Lee,Jong-Bae Lee
标识
DOI:10.1109/asmc.2018.8373137
摘要
In semiconductor manufacturing, evaluating the productivity of wafer maps prior to fabrication for designing an optimal wafer map is one of the most effective solutions for enhancing productivity. However, a yield prediction model is required to accurately evaluate the productivity of wafer maps since the design of a wafer map affects yield. In this paper, we propose a novel yield prediction model based on deep learning algorithms. Our approach exploits spatial relationships among positions of dies, sizes of dies, and die-level yield variations collected from a wafer test. By modeling these spatial features, the accuracy of yield prediction significantly increased. Furthermore, experimental results showed that the proposed yield model and approach help to design a wafer map with higher productivity nearly 13%.
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