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Bias dependent variability of low-frequency noise in single-layer graphene FETs

Low-frequency noise (LFN) variability in graphene transistors (GFETs) is for the first time researched in this work under both experimental and theoretical aspects. LFN from an adequate statistical sample of long-channel solution-gated single-layer GFETs is measured in a wide range of operating cond...

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Autores principales: Mavredakis, Nikolaos, Cortadella, Ramon Garcia, Illa, Xavi, Schaefer, Nathan, Calia, Andrea Bonaccini, Anton-Guimerà-Brunet, Garrido, Jose A., Jiménez, David
Formato: Online Artículo Texto
Lenguaje:English
Publicado: RSC 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9418965/
https://www.ncbi.nlm.nih.gov/pubmed/36132035
http://dx.doi.org/10.1039/d0na00632g
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author Mavredakis, Nikolaos
Cortadella, Ramon Garcia
Illa, Xavi
Schaefer, Nathan
Calia, Andrea Bonaccini
Anton-Guimerà-Brunet,
Garrido, Jose A.
Jiménez, David
author_facet Mavredakis, Nikolaos
Cortadella, Ramon Garcia
Illa, Xavi
Schaefer, Nathan
Calia, Andrea Bonaccini
Anton-Guimerà-Brunet,
Garrido, Jose A.
Jiménez, David
author_sort Mavredakis, Nikolaos
collection PubMed
description Low-frequency noise (LFN) variability in graphene transistors (GFETs) is for the first time researched in this work under both experimental and theoretical aspects. LFN from an adequate statistical sample of long-channel solution-gated single-layer GFETs is measured in a wide range of operating conditions while a physics-based analytical model is derived that accounts for the bias dependence of LFN variance with remarkable performance. LFN deviations in GFETs stem from the variations of the parameters of the physical mechanisms that generate LFN, which are the number of traps (N(tr)) for the carrier number fluctuation effect (ΔN) due to trapping/detrapping process and the Hooge parameter (α(H)) for the mobility fluctuations effect (Δμ). ΔN accounts for an M-shape of normalized LFN variance versus gate bias with a minimum at the charge neutrality point (CNP) as it was the case for normalized LFN mean value while Δμ contributes only near the CNP for both variance and mean value. Trap statistical nature of the devices under test is experimentally shown to differ from classical Poisson distribution noticed at silicon-oxide devices, and this might be caused both by the electrolyte interface in GFETs under study and by the premature stage of the GFET technology development which could permit external factors to influence the performance. This not fully advanced GFET process growth might also cause pivotal inconsistencies affecting the scaling laws in GFETs of the same process.
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spelling pubmed-94189652022-09-20 Bias dependent variability of low-frequency noise in single-layer graphene FETs Mavredakis, Nikolaos Cortadella, Ramon Garcia Illa, Xavi Schaefer, Nathan Calia, Andrea Bonaccini Anton-Guimerà-Brunet, Garrido, Jose A. Jiménez, David Nanoscale Adv Chemistry Low-frequency noise (LFN) variability in graphene transistors (GFETs) is for the first time researched in this work under both experimental and theoretical aspects. LFN from an adequate statistical sample of long-channel solution-gated single-layer GFETs is measured in a wide range of operating conditions while a physics-based analytical model is derived that accounts for the bias dependence of LFN variance with remarkable performance. LFN deviations in GFETs stem from the variations of the parameters of the physical mechanisms that generate LFN, which are the number of traps (N(tr)) for the carrier number fluctuation effect (ΔN) due to trapping/detrapping process and the Hooge parameter (α(H)) for the mobility fluctuations effect (Δμ). ΔN accounts for an M-shape of normalized LFN variance versus gate bias with a minimum at the charge neutrality point (CNP) as it was the case for normalized LFN mean value while Δμ contributes only near the CNP for both variance and mean value. Trap statistical nature of the devices under test is experimentally shown to differ from classical Poisson distribution noticed at silicon-oxide devices, and this might be caused both by the electrolyte interface in GFETs under study and by the premature stage of the GFET technology development which could permit external factors to influence the performance. This not fully advanced GFET process growth might also cause pivotal inconsistencies affecting the scaling laws in GFETs of the same process. RSC 2020-10-26 /pmc/articles/PMC9418965/ /pubmed/36132035 http://dx.doi.org/10.1039/d0na00632g Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Mavredakis, Nikolaos
Cortadella, Ramon Garcia
Illa, Xavi
Schaefer, Nathan
Calia, Andrea Bonaccini
Anton-Guimerà-Brunet,
Garrido, Jose A.
Jiménez, David
Bias dependent variability of low-frequency noise in single-layer graphene FETs
title Bias dependent variability of low-frequency noise in single-layer graphene FETs
title_full Bias dependent variability of low-frequency noise in single-layer graphene FETs
title_fullStr Bias dependent variability of low-frequency noise in single-layer graphene FETs
title_full_unstemmed Bias dependent variability of low-frequency noise in single-layer graphene FETs
title_short Bias dependent variability of low-frequency noise in single-layer graphene FETs
title_sort bias dependent variability of low-frequency noise in single-layer graphene fets
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9418965/
https://www.ncbi.nlm.nih.gov/pubmed/36132035
http://dx.doi.org/10.1039/d0na00632g
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