Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study

The discovery of carbon nanotubes (CNT) by 5umio Iijima in 1991 has attracted many researchers worldwide to study and explore the newly found materials. The unique characteristics that CNT possess include excellent properties for energy production and hydrogen storage. Currently, there are 4 technol...

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Main Authors: Razak, N.A., Arshad, K.A., Ismail , A.F., Aziz, M., Sanip, S.M.
Format: Article
Language:en
Published: 2003
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Online Access:http://eprints.utm.my/745/1/AhmadFauziIsmail2003_SimulationOfCarbonNanotubesFor.pdf
http://eprints.utm.my/745/
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author Razak, N.A.
Arshad, K.A.
Ismail , A.F.
Aziz, M.
Sanip, S.M.
author_facet Razak, N.A.
Arshad, K.A.
Ismail , A.F.
Aziz, M.
Sanip, S.M.
author_sort Razak, N.A.
building UTM Library
collection Institutional Repository
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
continent Asia
country Malaysia
description The discovery of carbon nanotubes (CNT) by 5umio Iijima in 1991 has attracted many researchers worldwide to study and explore the newly found materials. The unique characteristics that CNT possess include excellent properties for energy production and hydrogen storage. Currently, there are 4 technologies available for hydrogen storage: compressed gas, liquefaction, metal hydrides and physisorption. It has been claimed that physisorption is the most promising hydrogen storage method for meeting the goals of the US Department of Energy (DOE) Hydrogen Plan for fuel cell powered vehicles. CNT are considered for hydrogen storage due to their low density, high strength, and hydrogen adsorption characteristics. A number of theoretical and experimental investigations have been made in this area mainly to study whether CNT can reach the benchmark of gravimetric density of 6.5 wt% and volumetric density of 62 kg H2/m3 set by the DOE Hydrogen Plan. Based on previous researches, a numerical simulation of CNT for hydrogen storage using Artificial Neural Network (ANN) will be developed.
format Article
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institution Universiti Teknologi Malaysia
language en
publishDate 2003
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spelling my.utm.eprints-7452010-06-01T02:47:43Z http://eprints.utm.my/745/ Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study Razak, N.A. Arshad, K.A. Ismail , A.F. Aziz, M. Sanip, S.M. TP Chemical technology The discovery of carbon nanotubes (CNT) by 5umio Iijima in 1991 has attracted many researchers worldwide to study and explore the newly found materials. The unique characteristics that CNT possess include excellent properties for energy production and hydrogen storage. Currently, there are 4 technologies available for hydrogen storage: compressed gas, liquefaction, metal hydrides and physisorption. It has been claimed that physisorption is the most promising hydrogen storage method for meeting the goals of the US Department of Energy (DOE) Hydrogen Plan for fuel cell powered vehicles. CNT are considered for hydrogen storage due to their low density, high strength, and hydrogen adsorption characteristics. A number of theoretical and experimental investigations have been made in this area mainly to study whether CNT can reach the benchmark of gravimetric density of 6.5 wt% and volumetric density of 62 kg H2/m3 set by the DOE Hydrogen Plan. Based on previous researches, a numerical simulation of CNT for hydrogen storage using Artificial Neural Network (ANN) will be developed. 2003 Article PeerReviewed application/pdf en http://eprints.utm.my/745/1/AhmadFauziIsmail2003_SimulationOfCarbonNanotubesFor.pdf Razak, N.A. and Arshad, K.A. and Ismail , A.F. and Aziz, M. and Sanip, S.M. (2003) Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study. Proceedings of Advances in Malaysian Fuel Cell Research and Development . pp. 179-186.
spellingShingle TP Chemical technology
Razak, N.A.
Arshad, K.A.
Ismail , A.F.
Aziz, M.
Sanip, S.M.
Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title_full Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title_fullStr Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title_full_unstemmed Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title_short Simulation Of Carbon Nanotubes For Hydrogen Storage Using Neural Network: A Preliminary Study
title_sort simulation of carbon nanotubes for hydrogen storage using neural network: a preliminary study
topic TP Chemical technology
url http://eprints.utm.my/745/1/AhmadFauziIsmail2003_SimulationOfCarbonNanotubesFor.pdf
http://eprints.utm.my/745/
url_provider http://eprints.utm.my/