Cargando…

A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon

The adsorption of dyes using 39 adsorbents (16 kinds of agro-wastes) were modeled using random forest (RF), decision tree (DT), and gradient boosting (GB) models based on 350 sets of adsorption experimental data. In addition, the correlation between variables and their importance was applied. After...

Descripción completa

Detalles Bibliográficos
Autores principales: Moosavi, Seyedehmaryam, Manta, Otilia, El-Badry, Yaser A., Hussein, Enas E., El-Bahy, Zeinhom M., Mohd Fawzi, Noor fariza Binti, Urbonavičius, Jaunius, Moosavi, Seyed Mohammad Hossein
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8540925/
https://www.ncbi.nlm.nih.gov/pubmed/34685171
http://dx.doi.org/10.3390/nano11102734
_version_ 1784589104881598464
author Moosavi, Seyedehmaryam
Manta, Otilia
El-Badry, Yaser A.
Hussein, Enas E.
El-Bahy, Zeinhom M.
Mohd Fawzi, Noor fariza Binti
Urbonavičius, Jaunius
Moosavi, Seyed Mohammad Hossein
author_facet Moosavi, Seyedehmaryam
Manta, Otilia
El-Badry, Yaser A.
Hussein, Enas E.
El-Bahy, Zeinhom M.
Mohd Fawzi, Noor fariza Binti
Urbonavičius, Jaunius
Moosavi, Seyed Mohammad Hossein
author_sort Moosavi, Seyedehmaryam
collection PubMed
description The adsorption of dyes using 39 adsorbents (16 kinds of agro-wastes) were modeled using random forest (RF), decision tree (DT), and gradient boosting (GB) models based on 350 sets of adsorption experimental data. In addition, the correlation between variables and their importance was applied. After comprehensive feature selection analysis, five important variables were selected from nine variables. The RF with the highest accuracy (R(2) = 0.9) was selected as the best model for prediction of adsorption capacity of agro-waste using the five selected variables. The results suggested that agro-waste characteristics (pore volume, surface area, agro-waste pH, and particle size) accounted for 50.7% contribution for adsorption efficiency. The pore volume and surface area are the most important influencing variables among the agro-waste characteristics, while the role of particle size was inconspicuous. The accurate ability of the developed models’ prediction could significantly reduce experimental screening efforts, such as predicting the dye removal efficiency of agro-waste activated carbon according to agro-waste characteristics. The relative importance of variables could provide a right direction for better treatments of dyes in the real wastewater.
format Online
Article
Text
id pubmed-8540925
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-85409252021-10-24 A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon Moosavi, Seyedehmaryam Manta, Otilia El-Badry, Yaser A. Hussein, Enas E. El-Bahy, Zeinhom M. Mohd Fawzi, Noor fariza Binti Urbonavičius, Jaunius Moosavi, Seyed Mohammad Hossein Nanomaterials (Basel) Article The adsorption of dyes using 39 adsorbents (16 kinds of agro-wastes) were modeled using random forest (RF), decision tree (DT), and gradient boosting (GB) models based on 350 sets of adsorption experimental data. In addition, the correlation between variables and their importance was applied. After comprehensive feature selection analysis, five important variables were selected from nine variables. The RF with the highest accuracy (R(2) = 0.9) was selected as the best model for prediction of adsorption capacity of agro-waste using the five selected variables. The results suggested that agro-waste characteristics (pore volume, surface area, agro-waste pH, and particle size) accounted for 50.7% contribution for adsorption efficiency. The pore volume and surface area are the most important influencing variables among the agro-waste characteristics, while the role of particle size was inconspicuous. The accurate ability of the developed models’ prediction could significantly reduce experimental screening efforts, such as predicting the dye removal efficiency of agro-waste activated carbon according to agro-waste characteristics. The relative importance of variables could provide a right direction for better treatments of dyes in the real wastewater. MDPI 2021-10-15 /pmc/articles/PMC8540925/ /pubmed/34685171 http://dx.doi.org/10.3390/nano11102734 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Moosavi, Seyedehmaryam
Manta, Otilia
El-Badry, Yaser A.
Hussein, Enas E.
El-Bahy, Zeinhom M.
Mohd Fawzi, Noor fariza Binti
Urbonavičius, Jaunius
Moosavi, Seyed Mohammad Hossein
A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title_full A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title_fullStr A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title_full_unstemmed A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title_short A Study on Machine Learning Methods’ Application for Dye Adsorption Prediction onto Agricultural Waste Activated Carbon
title_sort study on machine learning methods’ application for dye adsorption prediction onto agricultural waste activated carbon
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8540925/
https://www.ncbi.nlm.nih.gov/pubmed/34685171
http://dx.doi.org/10.3390/nano11102734
work_keys_str_mv AT moosaviseyedehmaryam astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT mantaotilia astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT elbadryyasera astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT husseinenase astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT elbahyzeinhomm astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT mohdfawzinoorfarizabinti astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT urbonaviciusjaunius astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT moosaviseyedmohammadhossein astudyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT moosaviseyedehmaryam studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT mantaotilia studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT elbadryyasera studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT husseinenase studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT elbahyzeinhomm studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT mohdfawzinoorfarizabinti studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT urbonaviciusjaunius studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon
AT moosaviseyedmohammadhossein studyonmachinelearningmethodsapplicationfordyeadsorptionpredictionontoagriculturalwasteactivatedcarbon