Title :
Remembrance of transistors past: Compact model parameter extraction using bayesian inference and incomplete new measurements
Author :
Li Yu ; Saxena, Shanky ; Hess, Christopher ; Elfadel, Abe ; Antoniadis, D. ; Boning, D.
Author_Institution :
Massachusetts Inst. of Technol., Cambridge, MA, USA
Abstract :
In this paper, we propose a novel MOSFET parameter extraction method to enable early technology evaluation. The distinguishing feature of the proposed method is that it enables the extraction of an entire set of MOSFET model parameters using limited and incomplete IV measurements from on-chip monitor circuits. An important step in this method is the use of maximum-a-posteriori estimation where past measurements of transistors from various technologies are used to learn a prior distribution and its uncertainty matrix for the parameters of the target technology. The framework then utilizes Bayesian inference to facilitate extraction using a very small set of additional measurements. The proposed method is validated using various past technologies and post-silicon measurements for a commercial 28-nm process. The proposed extraction could also be used to characterize the statistical variations of MOSFETs with the significant benefit that some constraints required by the backward propagation of variance (BPV) method are relaxed.
Keywords :
MOSFET; elemental semiconductors; maximum likelihood estimation; semiconductor device measurement; semiconductor device models; silicon; Bayesian inference; IV measurements; MOSFET; Si; maximum-a-posteriori estimation; on-chip monitor circuits; parameter extraction; post-silicon measurements; size 28 nm; target technology; transistors; variance backward propagation; Current measurement; Mathematical model; Measurement uncertainty; Parameter extraction; Semiconductor device modeling; Transistors; Uncertainty; Bayesian inference; MIT Virtual Source (MVS) MOSFET model; maximum-a-posteriori (MAP) estimation; parameter extraction;
Conference_Titel :
Design Automation Conference (DAC), 2014 51st ACM/EDAC/IEEE
Conference_Location :
San Francisco, CA
DOI :
10.1145/2593069.2593201