Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent

Hazelnut shell was used as a green adsorbent and environment-friendly for magnesium ions (Mg2+) adsorption from hard water solution in batch system. The characterization of the biosorbent was entirely evaluated using SEM, XRD and FT-IR analyses. Design of experiments (DOE) decreased the number of no...

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Main Authors: Abedin Raziani, Akbar Mohammadidoust
Format: Article
Language:English
Published: Razi University 2020-06-01
Series:Journal of Applied Research in Water and Wastewater
Subjects:
Online Access:https://arww.razi.ac.ir/article_1422_f082bd03de1144eea800e60a729a5823.pdf
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spelling doaj-1adef7aec9f34fc1a3baee505b47d46a2021-02-12T08:21:57ZengRazi UniversityJournal of Applied Research in Water and Wastewater 2476-62832476-62832020-06-0171778910.22126/arww.2020.4897.11551422Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbentAbedin Raziani0Akbar Mohammadidoust1Department of Chemical Engineering, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.Department of Chemical Engineering, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.Hazelnut shell was used as a green adsorbent and environment-friendly for magnesium ions (Mg2+) adsorption from hard water solution in batch system. The characterization of the biosorbent was entirely evaluated using SEM, XRD and FT-IR analyses. Design of experiments (DOE) decreased the number of non-significant experiments, which resulted in reducing the time and cost of studies. Response surface methodology (RSM) was applied to dynamic assessment of the adsorption process. The effects of variables (pH, adsorbent dosage, Mg2+ concentration, time) and their interactions were investigated by central composite face design (CCFD). In addition, the numerical optimization was also analyzed. The results demonstrated that maximum efficiency, 56.21 %, and adsorbent capacity, 5.729 mg/g, occurred at initial concentration of 200 mg/L, adsorbent dosage of 1 g and pH 10 in duration of 59.816 min which were in good agreement with experimental results. In order to validate of the dynamic model, artificial neural network (ANN) was employed. Although RSM had a superior capability in developing of the model in comparison with ANN, it was acceptable to forecast the magnesium ions removal by both RSM and ANN approaches. Finally, the studies of the adsorption isotherms, kinetic models, reusability tests of the adsorbent and comparison with walnut shell were also done.https://arww.razi.ac.ir/article_1422_f082bd03de1144eea800e60a729a5823.pdfhard waterresponse surface methodology (rsm)optimizationbiosorbentmagnesium ions removal
collection DOAJ
language English
format Article
sources DOAJ
author Abedin Raziani
Akbar Mohammadidoust
spellingShingle Abedin Raziani
Akbar Mohammadidoust
Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
Journal of Applied Research in Water and Wastewater
hard water
response surface methodology (rsm)
optimization
biosorbent
magnesium ions removal
author_facet Abedin Raziani
Akbar Mohammadidoust
author_sort Abedin Raziani
title Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
title_short Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
title_full Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
title_fullStr Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
title_full_unstemmed Modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
title_sort modeling and optimization study by response surface methodology on magnesium ions removal from hard water through a biosorbent
publisher Razi University
series Journal of Applied Research in Water and Wastewater
issn 2476-6283
2476-6283
publishDate 2020-06-01
description Hazelnut shell was used as a green adsorbent and environment-friendly for magnesium ions (Mg2+) adsorption from hard water solution in batch system. The characterization of the biosorbent was entirely evaluated using SEM, XRD and FT-IR analyses. Design of experiments (DOE) decreased the number of non-significant experiments, which resulted in reducing the time and cost of studies. Response surface methodology (RSM) was applied to dynamic assessment of the adsorption process. The effects of variables (pH, adsorbent dosage, Mg2+ concentration, time) and their interactions were investigated by central composite face design (CCFD). In addition, the numerical optimization was also analyzed. The results demonstrated that maximum efficiency, 56.21 %, and adsorbent capacity, 5.729 mg/g, occurred at initial concentration of 200 mg/L, adsorbent dosage of 1 g and pH 10 in duration of 59.816 min which were in good agreement with experimental results. In order to validate of the dynamic model, artificial neural network (ANN) was employed. Although RSM had a superior capability in developing of the model in comparison with ANN, it was acceptable to forecast the magnesium ions removal by both RSM and ANN approaches. Finally, the studies of the adsorption isotherms, kinetic models, reusability tests of the adsorbent and comparison with walnut shell were also done.
topic hard water
response surface methodology (rsm)
optimization
biosorbent
magnesium ions removal
url https://arww.razi.ac.ir/article_1422_f082bd03de1144eea800e60a729a5823.pdf
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