Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN)
The artificial neural network (ANN) modeling of adsorption of Pb(II) and Cu(II) was carried out for determination of the optimum values of the variables to get the maximum removal efficiency. The input variables were initial ion concentration, adsorbent dosage, and removal time, while the removal ef...
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Format: | Article |
Language: | English |
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Elsevier
2016
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Online Access: | http://psasir.upm.edu.my/id/eprint/54168/1/Enhancement%20of%20heavy%20metals%20sorption%20via%20nanocomposites%20of%20rice%20straw.pdf |
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author | Khandanlou, Roshanak Fard Masoumi, Hamid Reza Ahmad @ Ayob, Mansor Shameli, Kamyar Basri, Mahiran Kalantari, Katayoon |
author_facet | Khandanlou, Roshanak Fard Masoumi, Hamid Reza Ahmad @ Ayob, Mansor Shameli, Kamyar Basri, Mahiran Kalantari, Katayoon |
author_sort | Khandanlou, Roshanak |
collection | UPM |
description | The artificial neural network (ANN) modeling of adsorption of Pb(II) and Cu(II) was carried out for determination of the optimum values of the variables to get the maximum removal efficiency. The input variables were initial ion concentration, adsorbent dosage, and removal time, while the removal efficiency was considered as output. The performed experiments were designed into two data sets including training, and testing sets. To acquire the optimum topologies, ANN was trained by quick propagation (QP), Batch Back Propagation (BBP), Incremental Back Propagation (IBP), genetic algorithm (GA) and Levenberg-Marquardt (LM) algorithms for testing data set. The topologies were defined by the indicator of minimized root mean squared error (RMSE) for each algorithm. According to the indicator, the IBP-3-9-2 was selected as the optimized topologies for heavy metal removal, due to the minimum RMSE and maximum R-squared. |
first_indexed | 2024-03-06T09:19:53Z |
format | Article |
id | upm.eprints-54168 |
institution | Universiti Putra Malaysia |
language | English |
last_indexed | 2024-03-06T09:19:53Z |
publishDate | 2016 |
publisher | Elsevier |
record_format | dspace |
spelling | upm.eprints-541682018-03-02T01:33:49Z http://psasir.upm.edu.my/id/eprint/54168/ Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) Khandanlou, Roshanak Fard Masoumi, Hamid Reza Ahmad @ Ayob, Mansor Shameli, Kamyar Basri, Mahiran Kalantari, Katayoon The artificial neural network (ANN) modeling of adsorption of Pb(II) and Cu(II) was carried out for determination of the optimum values of the variables to get the maximum removal efficiency. The input variables were initial ion concentration, adsorbent dosage, and removal time, while the removal efficiency was considered as output. The performed experiments were designed into two data sets including training, and testing sets. To acquire the optimum topologies, ANN was trained by quick propagation (QP), Batch Back Propagation (BBP), Incremental Back Propagation (IBP), genetic algorithm (GA) and Levenberg-Marquardt (LM) algorithms for testing data set. The topologies were defined by the indicator of minimized root mean squared error (RMSE) for each algorithm. According to the indicator, the IBP-3-9-2 was selected as the optimized topologies for heavy metal removal, due to the minimum RMSE and maximum R-squared. Elsevier 2016-06 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/54168/1/Enhancement%20of%20heavy%20metals%20sorption%20via%20nanocomposites%20of%20rice%20straw.pdf Khandanlou, Roshanak and Fard Masoumi, Hamid Reza and Ahmad @ Ayob, Mansor and Shameli, Kamyar and Basri, Mahiran and Kalantari, Katayoon (2016) Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN). Ecological Engineering, 91. pp. 249-256. ISSN 0925-8574; ESSN: 1872-6992 https://www.sciencedirect.com/science/article/pii/S0925857416301616 Artificial neural network (ANN); Adsorption; Removal efficiency; Heavy metal; Topologies 10.1016/j.ecoleng.2016.03.012 |
spellingShingle | Artificial neural network (ANN); Adsorption; Removal efficiency; Heavy metal; Topologies Khandanlou, Roshanak Fard Masoumi, Hamid Reza Ahmad @ Ayob, Mansor Shameli, Kamyar Basri, Mahiran Kalantari, Katayoon Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title | Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title_full | Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title_fullStr | Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title_full_unstemmed | Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title_short | Enhancement of heavy metals sorption via nanocomposites of rice straw and Fe3O4 nanopeprintss using artificial neural network (ANN) |
title_sort | enhancement of heavy metals sorption via nanocomposites of rice straw and fe3o4 nanopeprintss using artificial neural network ann |
topic | Artificial neural network (ANN); Adsorption; Removal efficiency; Heavy metal; Topologies |
url | http://psasir.upm.edu.my/id/eprint/54168/1/Enhancement%20of%20heavy%20metals%20sorption%20via%20nanocomposites%20of%20rice%20straw.pdf |
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