Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass

Abstract Background Conservation of the ecosystem is a prime concern of human communities. Industrial development should adopt this concern. Unfortunately, various related activities release lots of noxious materials concurrently with significant leakage of renewable resources. This work presents a...

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Main Authors: Samar A. El-Mekkawi, Rehab A. Abdelghaffar, Fatma Abdelghaffar, S. A. Abo El-Enin
Format: Article
Language:English
Published: SpringerOpen 2021-04-01
Series:Bulletin of the National Research Centre
Subjects:
Online Access:https://doi.org/10.1186/s42269-021-00542-w
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spelling doaj-33f3572f9c964138b48e316251c9876f2021-04-25T11:03:22ZengSpringerOpenBulletin of the National Research Centre2522-83072021-04-0145111010.1186/s42269-021-00542-wApplication of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomassSamar A. El-Mekkawi0Rehab A. Abdelghaffar1Fatma Abdelghaffar2S. A. Abo El-Enin3Chemical Engineering and Pilot Plant Department, Engineering Research Division, National Research CentreDyeing, Printing and Textile Auxiliaries Department, Textile Industries Research Division, National Research CentreDyeing, Printing and Textile Auxiliaries Department, Textile Industries Research Division, National Research CentreChemical Engineering and Pilot Plant Department, Engineering Research Division, National Research CentreAbstract Background Conservation of the ecosystem is a prime concern of human communities. Industrial development should adopt this concern. Unfortunately, various related activities release lots of noxious materials concurrently with significant leakage of renewable resources. This work presents a new biosorbent activated de-oiled microalgae, Chlorella vulgaris, (AC) for biosorption of Acid Red 1 (AR1) from aqueous solution simulated to textile dyeing effluent. The biosorption characteristics of AC were explored as a function of the process parameters, namely pH, time, and initial dye concentration using response surface methodology (RSM). Results Optimization is carried out using the desirability approach of the process parameters for maximum dye removal%. The ANOVA analysis of the predicted quadratic model elucidated significant model terms with a regression coefficient value of 0.97, F value of 109.66, and adequate precision of 34.32 that emphasizes the applicability of the model to navigate the design space. The optimization depends on the priority of minimizing the time of the process to save energy and treating high concentrated effluent resulted in removal % up to 83.5%. The chemical structure and surface morphology of AC, and the dye-loaded biomass (AB) were characterized by Fourier transform infrared spectroscopy (FTIR), scanning electron microscopy (SEM), energy-dispersive X-ray analysis (EDX), and transmission electron microscope (TEM). The activation process transforms the biomass surface into a regular and small homogeneous size that increases the surface area and ultimately enhances its adsorption capacity Conclusion The optimization of the process parameters simultaneously using RSM performs a high-accurate model which describes the relationship between the parameters and the response through minimum number of experiments. This study performed a step towards an integrated sustainable solution applicable for treating industrial effluents through a zero-waste process. Using the overloaded biomass is going into further studies as micronutrients for agricultural soil.https://doi.org/10.1186/s42269-021-00542-wDe-fated microalgaeActivated biosorbentEffluent treatmentDye removalDesirability function
collection DOAJ
language English
format Article
sources DOAJ
author Samar A. El-Mekkawi
Rehab A. Abdelghaffar
Fatma Abdelghaffar
S. A. Abo El-Enin
spellingShingle Samar A. El-Mekkawi
Rehab A. Abdelghaffar
Fatma Abdelghaffar
S. A. Abo El-Enin
Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
Bulletin of the National Research Centre
De-fated microalgae
Activated biosorbent
Effluent treatment
Dye removal
Desirability function
author_facet Samar A. El-Mekkawi
Rehab A. Abdelghaffar
Fatma Abdelghaffar
S. A. Abo El-Enin
author_sort Samar A. El-Mekkawi
title Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
title_short Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
title_full Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
title_fullStr Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
title_full_unstemmed Application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
title_sort application of response surface methodology for color removing from dyeing effluent using de-oiled activated algal biomass
publisher SpringerOpen
series Bulletin of the National Research Centre
issn 2522-8307
publishDate 2021-04-01
description Abstract Background Conservation of the ecosystem is a prime concern of human communities. Industrial development should adopt this concern. Unfortunately, various related activities release lots of noxious materials concurrently with significant leakage of renewable resources. This work presents a new biosorbent activated de-oiled microalgae, Chlorella vulgaris, (AC) for biosorption of Acid Red 1 (AR1) from aqueous solution simulated to textile dyeing effluent. The biosorption characteristics of AC were explored as a function of the process parameters, namely pH, time, and initial dye concentration using response surface methodology (RSM). Results Optimization is carried out using the desirability approach of the process parameters for maximum dye removal%. The ANOVA analysis of the predicted quadratic model elucidated significant model terms with a regression coefficient value of 0.97, F value of 109.66, and adequate precision of 34.32 that emphasizes the applicability of the model to navigate the design space. The optimization depends on the priority of minimizing the time of the process to save energy and treating high concentrated effluent resulted in removal % up to 83.5%. The chemical structure and surface morphology of AC, and the dye-loaded biomass (AB) were characterized by Fourier transform infrared spectroscopy (FTIR), scanning electron microscopy (SEM), energy-dispersive X-ray analysis (EDX), and transmission electron microscope (TEM). The activation process transforms the biomass surface into a regular and small homogeneous size that increases the surface area and ultimately enhances its adsorption capacity Conclusion The optimization of the process parameters simultaneously using RSM performs a high-accurate model which describes the relationship between the parameters and the response through minimum number of experiments. This study performed a step towards an integrated sustainable solution applicable for treating industrial effluents through a zero-waste process. Using the overloaded biomass is going into further studies as micronutrients for agricultural soil.
topic De-fated microalgae
Activated biosorbent
Effluent treatment
Dye removal
Desirability function
url https://doi.org/10.1186/s42269-021-00542-w
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