Iranian Journal of Hydrogen and Fuel Cell, Volume (8), No (2), Year (2021-5) , Pages (61-68)

Title : ( Prediction of the hydrogen adsorption isotherm on nickel decorated carbon nanotubes by applying artificial neural network modeling )

Authors: Mohammad Javad Tavakkoli Heravi , Elham Yasari , Nafishe Farhadian ,

Access to full-text not allowed by authors

Citation: BibTeX | EndNote

Abstract

The design and production of new materials to safely store hydrogen are challenging in hydrogen storage technology. Porous carbon materials such as carbon nanotubes (CNTs) are novel candidates for this aim. Predicting the hydrogen adsorption isotherm on these new materials can be done very effectively. Artificial neural network modeling (ANN) is a helpful tool for this aim. In this study, a feed-forward ANN with one hidden layer was constructed and tested to model the equilibrium data of hydrogen adsorption onto Ni-decorated CNTs. CNT properties like surface area, pore volume, and experimental conditions are used as inputs to predict the corresponding hydrogen uptake in equilibrium conditions. The constructed ANN was found to be precise in modeling the hydrogen adsorption isotherms for all inputs during the training process. The trained network successfully simulates the hydrogen adsorption isotherm for new inputs, which are kept unaware of the ANN during the training process. This shows the power of the created ANN model to determine adsorption isotherms for any operating conditions under the studied constraints

Keywords

Hydrogen adsorption Carbon Nanotube Isotherm Artificial neural network
برای دانلود از شناسه و رمز عبور پرتال پویا استفاده کنید.

@article{paperid:1085493,
author = {Tavakkoli Heravi, Mohammad Javad and Yasari, Elham and Farhadian, Nafishe},
title = {Prediction of the hydrogen adsorption isotherm on nickel decorated carbon nanotubes by applying artificial neural network modeling},
journal = {Iranian Journal of Hydrogen and Fuel Cell},
year = {2021},
volume = {8},
number = {2},
month = {May},
issn = {2383-160X},
pages = {61--68},
numpages = {7},
keywords = {Hydrogen adsorption Carbon Nanotube Isotherm Artificial neural network},
}

[Download]

%0 Journal Article
%T Prediction of the hydrogen adsorption isotherm on nickel decorated carbon nanotubes by applying artificial neural network modeling
%A Tavakkoli Heravi, Mohammad Javad
%A Yasari, Elham
%A Farhadian, Nafishe
%J Iranian Journal of Hydrogen and Fuel Cell
%@ 2383-160X
%D 2021

[Download]