Title :
Modeling double gate FinFETs by using artificial neural network
Author :
Abtin, Milad ; Keshavarzi, Parviz ; Jaferzadeh, Keyvan ; Naderi, Ali
Author_Institution :
Islamic Azad Univ., Masjed Soleyman, Iran
Abstract :
The minimum feature size of the transistors will be decreases in the future years as predicted by the international technology roadmap for semiconductors. Multi-gate FETs such as FinFETs have emerged as the most promising candidates to extend the CMOS scaling into the sub-25nm regime when considering the low scale effects is important for decreasing the scale. Solving and simulating the equations of these devices are so complicated and time consuming. In this paper we use RBF network for simulating the I-V characteristics of common symmetric multi gate FinFETs by using some BSIM-CMG data as a database for training. The results show a good agreement between RBF network and BSIM-CMG. The maximum error between BSIM-CMG and RBF is only 1%. The RBF is used for simulating or predicting I-V curve for different inputs without solving the complicated equations.
Keywords :
MOSFET; circuit simulation; neural nets; semiconductor device models; BSIM-CMG data; CMOS scaling; I-V characteristics; RBF network; artificial neural network; double gate FinFET; low scale effects; multigate FET; Artificial neural networks; CMOS technology; Computer networks; FETs; FinFETs; MOSFET circuits; Poisson equations; Predictive models; Radial basis function networks; Semiconductor process modeling;
Conference_Titel :
Semiconductor Electronics (ICSE), 2010 IEEE International Conference on
Conference_Location :
Melaka
Print_ISBN :
978-1-4244-6608-5
DOI :
10.1109/SMELEC.2010.5549475