Title :
Advanced simulation of statistical variability and reliability in nano CMOS transistors
Author :
Asenov, A. ; Roy, S. ; Brown, R.A. ; Roy, G. ; Alexander, C. ; Riddet, C. ; Millar, C. ; Cheng, B. ; Martinez, A. ; Seoane, N. ; Reid, D. ; Bukhori, M.F. ; Wang, X. ; Kovac, U.
Author_Institution :
Dept. Electron. & Electr. Eng., Univ. of Glasgow, Glasgow
Abstract :
Increasing CMOS device variability has become one of the most acute problems facing the semiconductor manufacturing and design industries at, and beyond, the 45 nm technology generation. Most problematic of all is the statistical variability introduced by the discreteness of charge and granularity of matter in transistors with features already of molecular dimensions [i]. Two transistors next to each other on the chip with exactly the same geometries and strain distributions may have characteristics from each end of a wide statistical distribution. In conjunction with statistical variability [ii], negative bias temperature instability (NBTI) and/or hot carrier degradation can result in acute statistical reliability problems. It already profoundly affects SRAM design, and in logic circuits causes statistical timing problems and is increasingly leading to hard digital faults. In both cases, statistical variability restricts supply voltage scaling, adding to power dissipation problems [iii]. In this invited paper we describe recent advances in predictive physical simulation of statistical variability using drift diffusion (DD), Monte Carlo (MC) and quantum transport (QT) simulation techniques.
Keywords :
CMOS integrated circuits; Monte Carlo methods; SRAM chips; logic circuits; nanoelectronics; statistical analysis; transistors; Monte Carlo; SRAM design; drift diffusion; logic circuits; nano CMOS transistors; negative bias temperature instability; predictive physical simulation; quantum transport simulation; statistical distribution; statistical reliability; statistical timing; statistical variability; CMOS technology; Capacitive sensors; Geometry; Manufacturing industries; Negative bias temperature instability; Niobium compounds; Predictive models; Semiconductor device manufacture; Statistical distributions; Transistors;
Conference_Titel :
Electron Devices Meeting, 2008. IEDM 2008. IEEE International
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4244-2377-4
Electronic_ISBN :
8164-2284
DOI :
10.1109/IEDM.2008.4796712