DocumentCode
18582
Title
Modeling MOSFET Drain Current Non-Gaussian Distribution With Power-Normal Probability Density Function
Author
Bo Yu ; Yu Yuan ; Mahmood, Kasim ; Wang, Jiacheng ; Ping Liu ; Ying Chen ; Wing Sy ; Lixin Ge ; Ken Liao ; Han, Myungjin
Author_Institution
Qualcomm Technol. Inc., San Diego, CA, USA
Volume
35
Issue
2
fYear
2014
fDate
Feb. 2014
Firstpage
154
Lastpage
156
Abstract
In this letter, a family of power-normal probability density functions is proposed for the asymmetric non-Gaussian distribution of drain current. The results of the proposed methodology are compared against both statistical silicon data and SPICE model Monte Carlo simulation results. Excellent agreement is observed for the power-normal distribution with order of 2. With this proposed distribution, drain current at non-Gaussian high-sigma tail can be predicted by only median and variance extracted from statistical data of a small set of samples (e.g., 1 k). For the first time, a simple analytic model is presented to capture memory read current non-Gaussian tail distribution near -6σ or even beyond, which is a major challenge in memory design for 28 nm technology node and below.
Keywords
MOS memory circuits; Monte Carlo methods; SRAM chips; elemental semiconductors; normal distribution; silicon; MOSFET; Monte Carlo simulation; SPICE model; Si; asymmetric non-Gaussian distribution; drain current; memory read current; non-Gaussian high sigma tail; power normal probability density function; statistical silicon data; Approximation methods; Data mining; MOSFET; Monte Carlo methods; Random access memory; SPICE; Silicon; MOSFET; drain current; memory read current; non-Gaussian distribution;
fLanguage
English
Journal_Title
Electron Device Letters, IEEE
Publisher
ieee
ISSN
0741-3106
Type
jour
DOI
10.1109/LED.2013.2292297
Filename
6680637
Link To Document