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Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics

This study focuses on the probable use of municipal organic solid waste charcoal (MOSWC) as an adsorbent for Methyl orange (MO) adsorption. The prepared MOSWC is characterized by FE-SEM and FT-IR. Batch adsorption experiments were conducted with the influencing of different operational conditions na...

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Autores principales: Chakraborty, Tapos Kumar, Ghosh, Snigdha, Islam, Md Shahnul, Nice, Md Simoon, Islam, Khandakar Rashedul, Netema, Baytune Nahar, Rahman, Md Sozibur, Habib, Ahsan, Zaman, Samina, Chandra Ghosh, Gopal, Hossain, Md Ripon, Tul-Coubra, Khadiza, Adhikary, Keya, Munna, Asadullah, Haque, Md Muhaiminul, Bosu, Himel, Halder, Monishanker
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10493414/
https://www.ncbi.nlm.nih.gov/pubmed/37701407
http://dx.doi.org/10.1016/j.heliyon.2023.e18856
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author Chakraborty, Tapos Kumar
Ghosh, Snigdha
Islam, Md Shahnul
Nice, Md Simoon
Islam, Khandakar Rashedul
Netema, Baytune Nahar
Rahman, Md Sozibur
Habib, Ahsan
Zaman, Samina
Chandra Ghosh, Gopal
Hossain, Md Ripon
Tul-Coubra, Khadiza
Adhikary, Keya
Munna, Asadullah
Haque, Md Muhaiminul
Bosu, Himel
Halder, Monishanker
author_facet Chakraborty, Tapos Kumar
Ghosh, Snigdha
Islam, Md Shahnul
Nice, Md Simoon
Islam, Khandakar Rashedul
Netema, Baytune Nahar
Rahman, Md Sozibur
Habib, Ahsan
Zaman, Samina
Chandra Ghosh, Gopal
Hossain, Md Ripon
Tul-Coubra, Khadiza
Adhikary, Keya
Munna, Asadullah
Haque, Md Muhaiminul
Bosu, Himel
Halder, Monishanker
author_sort Chakraborty, Tapos Kumar
collection PubMed
description This study focuses on the probable use of municipal organic solid waste charcoal (MOSWC) as an adsorbent for Methyl orange (MO) adsorption. The prepared MOSWC is characterized by FE-SEM and FT-IR. Batch adsorption experiments were conducted with the influencing of different operational conditions namely time of contact (1–180 min), adsorbate concentration (60–140 mg/L), adsorbent dose (1–5 g/L), pH (3–11), and temperature (25–60 °C). The high coefficient value (R(2) = 0.96) of the process optimization model suggests that this model was significant, where pH and adsorbent dose expressively stimulus adsorption efficiency including 40.11 mg/g at pH (3), MO concentration (100 mg/L), and MOSWC dose (1 g/L). Furthermore, the machine learning approaches (ANN and BB-RSM) revealed a good association between the tested and projected values. The highest monolayer adsorption capacity of MO was 90.909 mg/g. Pseudo-second-order was the well-suited kinetics, where Langmuir isotherm could explain better for equilibrium adsorption data. Thermodynamic study shows MO adsorption is favourable, exothermic, and spontaneous. Finally, this study indicates that MOSWC could be a potential candidate for the adsorption of MO from wastewater.
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spelling pubmed-104934142023-09-12 Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics Chakraborty, Tapos Kumar Ghosh, Snigdha Islam, Md Shahnul Nice, Md Simoon Islam, Khandakar Rashedul Netema, Baytune Nahar Rahman, Md Sozibur Habib, Ahsan Zaman, Samina Chandra Ghosh, Gopal Hossain, Md Ripon Tul-Coubra, Khadiza Adhikary, Keya Munna, Asadullah Haque, Md Muhaiminul Bosu, Himel Halder, Monishanker Heliyon Research Article This study focuses on the probable use of municipal organic solid waste charcoal (MOSWC) as an adsorbent for Methyl orange (MO) adsorption. The prepared MOSWC is characterized by FE-SEM and FT-IR. Batch adsorption experiments were conducted with the influencing of different operational conditions namely time of contact (1–180 min), adsorbate concentration (60–140 mg/L), adsorbent dose (1–5 g/L), pH (3–11), and temperature (25–60 °C). The high coefficient value (R(2) = 0.96) of the process optimization model suggests that this model was significant, where pH and adsorbent dose expressively stimulus adsorption efficiency including 40.11 mg/g at pH (3), MO concentration (100 mg/L), and MOSWC dose (1 g/L). Furthermore, the machine learning approaches (ANN and BB-RSM) revealed a good association between the tested and projected values. The highest monolayer adsorption capacity of MO was 90.909 mg/g. Pseudo-second-order was the well-suited kinetics, where Langmuir isotherm could explain better for equilibrium adsorption data. Thermodynamic study shows MO adsorption is favourable, exothermic, and spontaneous. Finally, this study indicates that MOSWC could be a potential candidate for the adsorption of MO from wastewater. Elsevier 2023-08-06 /pmc/articles/PMC10493414/ /pubmed/37701407 http://dx.doi.org/10.1016/j.heliyon.2023.e18856 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Article
Chakraborty, Tapos Kumar
Ghosh, Snigdha
Islam, Md Shahnul
Nice, Md Simoon
Islam, Khandakar Rashedul
Netema, Baytune Nahar
Rahman, Md Sozibur
Habib, Ahsan
Zaman, Samina
Chandra Ghosh, Gopal
Hossain, Md Ripon
Tul-Coubra, Khadiza
Adhikary, Keya
Munna, Asadullah
Haque, Md Muhaiminul
Bosu, Himel
Halder, Monishanker
Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title_full Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title_fullStr Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title_full_unstemmed Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title_short Removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: Kinetics, isotherm, and thermodynamics
title_sort removal of hazardous textile dye from simulated wastewater by municipal organic solid waste charcoal using machine learning approaches: kinetics, isotherm, and thermodynamics
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10493414/
https://www.ncbi.nlm.nih.gov/pubmed/37701407
http://dx.doi.org/10.1016/j.heliyon.2023.e18856
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