Title :
A Data-Driven Statistical Approach to Analyzing Process Variation in 65nm SOI Technology
Author :
Cho, Choongyeun ; Kim, Daeik ; Kim, Jonghae ; Plouchart, Jean-Olivier ; Lim, Daihyun ; Cho, Sangyeun ; Trzcinski, Robert
Abstract :
This paper presents a simple yet effective method to analyze process variations using statistics on manufacturing in-line data without assuming any explicit underlying model for process variations. Our method is based on a variant of principal component analysis and is able to reveal systematic variation patterns existing on a die-to-die and wafer-to-wafer level individually. The separation of die variation from wafer variation can enhance the understanding of a nature of the process uncertainty. Our case study based on the proposed decomposition method shows that the dominating die-to-die variation and wafer-to-wafer variation represent 31% and 25% of the total variance of a large set of in-line parameters in 65nm SOI CMOS technology
Keywords :
CMOS integrated circuits; integrated circuit manufacture; integrated circuit measurement; principal component analysis; silicon-on-insulator; 65 nm; SOI CMOS technology; data-driven statistical approach; die-to-die variation; principal component analysis; process variation; systematic variation patterns; wafer-to-wafer variation; CMOS technology; Circuit testing; Electric variables measurement; Integrated circuit modeling; Manufacturing processes; Principal component analysis; Pulp manufacturing; Semiconductor device modeling; Statistical analysis; Vectors;
Conference_Titel :
Quality Electronic Design, 2007. ISQED '07. 8th International Symposium on
Conference_Location :
San Jose, CA
Print_ISBN :
0-7695-2795-7
DOI :
10.1109/ISQED.2007.8