Statistical modelling of 14nm n-types MOSFET

This paper focuses on virtual modelling and optimization of 14nm n-types planar MOSFET. Here, high-k dielectric and metal gate were used where the high-k material is Hafnium Dioxide (HfO2) and the metal gate is Tungsten Silicide (WSi2). 36 simulations of Taguchi L9 Orthogonal Array method were appli...

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Main Authors: Noor Faizah, Z.A., Ahmad, I., Ker, P.J., Siti Munirah, Y., Mohd Firdaus, R., Mah, S.K., Menon, P.S.
Format: Article
Language:en_US
Published: 2017
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Institution: Universiti Tenaga Nasional
Language: en_US
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spelling my.uniten.dspace-59792018-02-07T02:33:24Z Statistical modelling of 14nm n-types MOSFET Noor Faizah, Z.A. Ahmad, I. Ker, P.J. Siti Munirah, Y. Mohd Firdaus, R. Mah, S.K. Menon, P.S. This paper focuses on virtual modelling and optimization of 14nm n-types planar MOSFET. Here, high-k dielectric and metal gate were used where the high-k material is Hafnium Dioxide (HfO2) and the metal gate is Tungsten Silicide (WSi2). 36 simulations of Taguchi L9 Orthogonal Array method were applied in order to obtain the best parameter design for optimization of both performance parameters which are threshold voltage (VTH) and leakage current (IOFF). The simulation and fabrication for n-type transistor was conducted through Virtual Wafer Fabrication (VWF) Silvaco TCAD Tools named ATHENA and ATLAS for its electrical characterization. For analyzation of the impact parameters on VTH and IOFF, two noise parameters and four process parameters value were varied. From the simulations, the results show the best value were well within ITRS prediction where VTH and IOFF are 0.236737 V and 6.995705 nA/um respectively. 2017-12-08T07:48:12Z 2017-12-08T07:48:12Z 2016 Article https://pure.uniten.edu.my/en/publications/statistical-modelling-of-14nm-n-types-mosfet en_US Statistical modelling of 14nm n-types MOSFET. Journal of Telecommunication, Electronic and Computer Engineering, 8(4), 91-95
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language en_US
description This paper focuses on virtual modelling and optimization of 14nm n-types planar MOSFET. Here, high-k dielectric and metal gate were used where the high-k material is Hafnium Dioxide (HfO2) and the metal gate is Tungsten Silicide (WSi2). 36 simulations of Taguchi L9 Orthogonal Array method were applied in order to obtain the best parameter design for optimization of both performance parameters which are threshold voltage (VTH) and leakage current (IOFF). The simulation and fabrication for n-type transistor was conducted through Virtual Wafer Fabrication (VWF) Silvaco TCAD Tools named ATHENA and ATLAS for its electrical characterization. For analyzation of the impact parameters on VTH and IOFF, two noise parameters and four process parameters value were varied. From the simulations, the results show the best value were well within ITRS prediction where VTH and IOFF are 0.236737 V and 6.995705 nA/um respectively.
format Article
author Noor Faizah, Z.A.
Ahmad, I.
Ker, P.J.
Siti Munirah, Y.
Mohd Firdaus, R.
Mah, S.K.
Menon, P.S.
spellingShingle Noor Faizah, Z.A.
Ahmad, I.
Ker, P.J.
Siti Munirah, Y.
Mohd Firdaus, R.
Mah, S.K.
Menon, P.S.
Statistical modelling of 14nm n-types MOSFET
author_facet Noor Faizah, Z.A.
Ahmad, I.
Ker, P.J.
Siti Munirah, Y.
Mohd Firdaus, R.
Mah, S.K.
Menon, P.S.
author_sort Noor Faizah, Z.A.
title Statistical modelling of 14nm n-types MOSFET
title_short Statistical modelling of 14nm n-types MOSFET
title_full Statistical modelling of 14nm n-types MOSFET
title_fullStr Statistical modelling of 14nm n-types MOSFET
title_full_unstemmed Statistical modelling of 14nm n-types MOSFET
title_sort statistical modelling of 14nm n-types mosfet
publishDate 2017
_version_ 1644493813793685504