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Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach

Water scarcity is a growing global issue, particularly in areas with limited freshwater sources, urging for sustainable water management practices to insure equitable access for all people. One way to address this problem is to implement advanced methods for treating existing contaminated water to o...

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Autores principales: Younes, Khaled, Kharboutly, Yahya, Antar, Mayssara, Chaouk, Hamdi, Obeid, Emil, Mouhtady, Omar, Abu-samha, Mahmoud, Halwani, Jalal, Murshid, Nimer
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10137516/
https://www.ncbi.nlm.nih.gov/pubmed/37102939
http://dx.doi.org/10.3390/gels9040327
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author Younes, Khaled
Kharboutly, Yahya
Antar, Mayssara
Chaouk, Hamdi
Obeid, Emil
Mouhtady, Omar
Abu-samha, Mahmoud
Halwani, Jalal
Murshid, Nimer
author_facet Younes, Khaled
Kharboutly, Yahya
Antar, Mayssara
Chaouk, Hamdi
Obeid, Emil
Mouhtady, Omar
Abu-samha, Mahmoud
Halwani, Jalal
Murshid, Nimer
author_sort Younes, Khaled
collection PubMed
description Water scarcity is a growing global issue, particularly in areas with limited freshwater sources, urging for sustainable water management practices to insure equitable access for all people. One way to address this problem is to implement advanced methods for treating existing contaminated water to offer more clean water. Adsorption through membranes technology is an important water treatment technique, and nanocellulose (NC)-, chitosan (CS)-, and graphene (G)- based aerogels are considered good adsorbents. To estimate the efficiency of dye removal for the mentioned aerogels, we intend to use an unsupervised machine learning approach known as “Principal Component Analysis”. PCA showed that the chitosan-based ones have the lowest regeneration efficiencies, along with a moderate number of regenerations. NC2, NC9, and G5 are preferred where there is high adsorption energy to the membrane, and high porosities could be tolerated, but this allows lower removal efficiencies of dye contaminants. NC3, NC5, NC6, and NC11 have high removal efficiencies even with low porosities and surface area. In brief, PCA presents a powerful tool to unravel the efficiency of aerogels towards dye removal. Hence, several conditions need to be considered when employing or even manufacturing the investigated aerogels.
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spelling pubmed-101375162023-04-28 Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach Younes, Khaled Kharboutly, Yahya Antar, Mayssara Chaouk, Hamdi Obeid, Emil Mouhtady, Omar Abu-samha, Mahmoud Halwani, Jalal Murshid, Nimer Gels Article Water scarcity is a growing global issue, particularly in areas with limited freshwater sources, urging for sustainable water management practices to insure equitable access for all people. One way to address this problem is to implement advanced methods for treating existing contaminated water to offer more clean water. Adsorption through membranes technology is an important water treatment technique, and nanocellulose (NC)-, chitosan (CS)-, and graphene (G)- based aerogels are considered good adsorbents. To estimate the efficiency of dye removal for the mentioned aerogels, we intend to use an unsupervised machine learning approach known as “Principal Component Analysis”. PCA showed that the chitosan-based ones have the lowest regeneration efficiencies, along with a moderate number of regenerations. NC2, NC9, and G5 are preferred where there is high adsorption energy to the membrane, and high porosities could be tolerated, but this allows lower removal efficiencies of dye contaminants. NC3, NC5, NC6, and NC11 have high removal efficiencies even with low porosities and surface area. In brief, PCA presents a powerful tool to unravel the efficiency of aerogels towards dye removal. Hence, several conditions need to be considered when employing or even manufacturing the investigated aerogels. MDPI 2023-04-12 /pmc/articles/PMC10137516/ /pubmed/37102939 http://dx.doi.org/10.3390/gels9040327 Text en © 2023 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
Younes, Khaled
Kharboutly, Yahya
Antar, Mayssara
Chaouk, Hamdi
Obeid, Emil
Mouhtady, Omar
Abu-samha, Mahmoud
Halwani, Jalal
Murshid, Nimer
Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title_full Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title_fullStr Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title_full_unstemmed Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title_short Application of Unsupervised Learning for the Evaluation of Aerogels’ Efficiency towards Dye Removal—A Principal Component Analysis (PCA) Approach
title_sort application of unsupervised learning for the evaluation of aerogels’ efficiency towards dye removal—a principal component analysis (pca) approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10137516/
https://www.ncbi.nlm.nih.gov/pubmed/37102939
http://dx.doi.org/10.3390/gels9040327
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