Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach

An artificial neural network (ANN) was built to model the adsorption of nickel on electric arc furnace slag (EAFS). The effect of operating parameters such as pH, the initial metal ion concentration, particle size, and adsorbent dosage were investigated to optimize the sorption process. The operatin...

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Main Authors: Yusuf, Mohammed, Babadei, Farahnaz Eghbali, Balavandy, Sepideh Keshan, Jamnani, Bahador Dastorian, Hosseini, Soraya, Malekbala, Mohamad Rasool, Abdullah, Luqman Chuah
Format: Article
Language:English
Published: American-Eurasian Network for Scientific Information 2013
Online Access:http://psasir.upm.edu.my/id/eprint/28768/1/Removal%20of%20Ni%20%28II%29%20from%20aqueous%20solution%20by%20an%20electric%20arc%20furnace%20slag%20using%20artificial%20neural%20network%20approach.pdf
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spelling my.upm.eprints.287682015-10-23T03:38:56Z http://psasir.upm.edu.my/id/eprint/28768/ Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach Yusuf, Mohammed Babadei, Farahnaz Eghbali Balavandy, Sepideh Keshan Jamnani, Bahador Dastorian Hosseini, Soraya Malekbala, Mohamad Rasool Abdullah, Luqman Chuah An artificial neural network (ANN) was built to model the adsorption of nickel on electric arc furnace slag (EAFS). The effect of operating parameters such as pH, the initial metal ion concentration, particle size, and adsorbent dosage were investigated to optimize the sorption process. The operating variables were used as the input for a neural network, which predicted the nickel (II) ion uptake at any time point as the output. The adsorbent was characterized by SEM and BET measurements. From the experimental results the adsorption capacity of 45% was obtained at pH of 8, also as when the adsorbent dosage increases from 0.1 to 1 g/l there is an increase in the percentage removal of Ni(II) ion from 25% to 37% respectively. Further more from the particle size analysis result, it revealed that as the particle size increases from 0.5µm to 3mm the percentage removal of Ni(II) ion decrease from 52% to 33%. Finally by increasing the initial concentration of Ni(II) ion from 50 to 1000 mg L-1, the adsorption capacity also increase from 24% to 43%. The ANN models present high correlation coefficient (R²=1) was found to perform excellently in predicting the adsorption behaviour of nickel in aqueous solutions onto EAFS. American-Eurasian Network for Scientific Information 2013-09 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/28768/1/Removal%20of%20Ni%20%28II%29%20from%20aqueous%20solution%20by%20an%20electric%20arc%20furnace%20slag%20using%20artificial%20neural%20network%20approach.pdf Yusuf, Mohammed and Babadei, Farahnaz Eghbali and Balavandy, Sepideh Keshan and Jamnani, Bahador Dastorian and Hosseini, Soraya and Malekbala, Mohamad Rasool and Abdullah, Luqman Chuah (2013) Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach. Advances in Environmental Biology, 7 (9). pp. 2303-2310. ISSN 1995-0756; ESSN: 1998-1066 http://www.aensiweb.com/old/aeb_September_2013.html
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description An artificial neural network (ANN) was built to model the adsorption of nickel on electric arc furnace slag (EAFS). The effect of operating parameters such as pH, the initial metal ion concentration, particle size, and adsorbent dosage were investigated to optimize the sorption process. The operating variables were used as the input for a neural network, which predicted the nickel (II) ion uptake at any time point as the output. The adsorbent was characterized by SEM and BET measurements. From the experimental results the adsorption capacity of 45% was obtained at pH of 8, also as when the adsorbent dosage increases from 0.1 to 1 g/l there is an increase in the percentage removal of Ni(II) ion from 25% to 37% respectively. Further more from the particle size analysis result, it revealed that as the particle size increases from 0.5µm to 3mm the percentage removal of Ni(II) ion decrease from 52% to 33%. Finally by increasing the initial concentration of Ni(II) ion from 50 to 1000 mg L-1, the adsorption capacity also increase from 24% to 43%. The ANN models present high correlation coefficient (R²=1) was found to perform excellently in predicting the adsorption behaviour of nickel in aqueous solutions onto EAFS.
format Article
author Yusuf, Mohammed
Babadei, Farahnaz Eghbali
Balavandy, Sepideh Keshan
Jamnani, Bahador Dastorian
Hosseini, Soraya
Malekbala, Mohamad Rasool
Abdullah, Luqman Chuah
spellingShingle Yusuf, Mohammed
Babadei, Farahnaz Eghbali
Balavandy, Sepideh Keshan
Jamnani, Bahador Dastorian
Hosseini, Soraya
Malekbala, Mohamad Rasool
Abdullah, Luqman Chuah
Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
author_facet Yusuf, Mohammed
Babadei, Farahnaz Eghbali
Balavandy, Sepideh Keshan
Jamnani, Bahador Dastorian
Hosseini, Soraya
Malekbala, Mohamad Rasool
Abdullah, Luqman Chuah
author_sort Yusuf, Mohammed
title Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
title_short Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
title_full Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
title_fullStr Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
title_full_unstemmed Removal of Ni (II) from aqueous solution by an electric arc furnace slag using artificial neural network approach
title_sort removal of ni (ii) from aqueous solution by an electric arc furnace slag using artificial neural network approach
publisher American-Eurasian Network for Scientific Information
publishDate 2013
url http://psasir.upm.edu.my/id/eprint/28768/1/Removal%20of%20Ni%20%28II%29%20from%20aqueous%20solution%20by%20an%20electric%20arc%20furnace%20slag%20using%20artificial%20neural%20network%20approach.pdf
http://psasir.upm.edu.my/id/eprint/28768/
http://www.aensiweb.com/old/aeb_September_2013.html
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score 13.211869