Title :
Spatial estimation of wafer measurement parameters using Gaussian process models
Author :
Kupp, Nathan ; Huang, Kejie ; Carulli, J. ; Makris, Yiorgos
Author_Institution :
Dept. of Electr. Eng., Yale Univ., New Haven, CT, USA
Abstract :
In the course of semiconductor manufacturing, various e-test measurements (also known as inline or kerf measurements) are collected to monitor the health-of-line and to make wafer scrap decisions preceding final test. These measurements are typically sampled spatially across the surface of the wafer from between-die scribe line sites, and include a variety of measurements that characterize the wafer´s position in the process distribution. However, these measurements are often only used for wafer-level characterization by process and test teams, as the sampling can be quite sparse across the surface of the wafer. In this work, we introduce a novel methodology for extrapolating sparsely sampled e-test measurements to every die location on a wafer using Gaussian process models. Moreover, we introduce radial variation modeling to address variation along the wafer center-to-edge radius. The proposed methodology permits process and test engineers to examine e-test measurement outcomes at the die level, and makes no assumptions about wafer-to-wafer similarity or stationarity of process statistics over time. Using high volume manufacturing (HVM) data from industry, we demonstrate highly accurate cross-wafer spatial predictions of e-test measurements on more than 8,000 wafers.
Keywords :
Gaussian processes; extrapolation; integrated circuit manufacture; integrated circuit testing; semiconductor technology; Gaussian process models; die location; e-test measurements; health-of-line; high volume manufacturing; kerf measurement; radial variation model; semiconductor manufacturing; sparsely sampled e-test measurement extrapolation; spatial estimation; wafer center-to-edge radius; wafer level characterization; wafer measurement parameter; wafer scrap decisions; wafer-to-wafer similarity; Data models; Gaussian processes; Kernel; Manufacturing; Mathematical model; Semiconductor device measurement; Semiconductor device modeling;
Conference_Titel :
Test Conference (ITC), 2012 IEEE International
Conference_Location :
Anaheim, CA
Print_ISBN :
978-1-4673-1594-4
DOI :
10.1109/TEST.2012.6401545