Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network
The present work reported a method for removal of benzeneacetic acid from water solution using CaO2 nanoparticle as adsorbent and modeling the adsorption process using artificial neural network (ANN). CaO2 nanoparticles were synthesized by a chemical precipitation technique. The characterization and...
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Tomsk Polytechnic University
2016-12-01
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doaj-e18ac21af8184f2b95d37ec845ce70b32020-11-25T02:01:43ZengTomsk Polytechnic UniversityResource-Efficient Technologies2405-65372016-12-012S1S53S6210.1016/j.reffit.2016.10.004Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural networkSapana S. Madan0Kailas L. Wasewar1S.L. Pandharipande2Advanced Separation and Analytical Laboratory, Department of Chemical Engineering, Visvesvaraya National Institute of Technology (VNIT), Nagpur, Maharashtra 440010, IndiaAdvanced Separation and Analytical Laboratory, Department of Chemical Engineering, Visvesvaraya National Institute of Technology (VNIT), Nagpur, Maharashtra 440010, IndiaDepartment of Chemical Engineering, LIT, RTMNU, Nagpur, Maharashtra 440010, IndiaThe present work reported a method for removal of benzeneacetic acid from water solution using CaO2 nanoparticle as adsorbent and modeling the adsorption process using artificial neural network (ANN). CaO2 nanoparticles were synthesized by a chemical precipitation technique. The characterization and confirmation of nanoparticles have been done by using different techniques such as X-ray powder diffraction (XRD), high resolution field emission scanning electron microscope (HR-FESEM),transmittance electron microscopy (TEM) and high-resolution TEM (HRTEM) analysis. ANN model was developed by using elite-ANN software. The network was trained using experimental data at optimum temperature and time with different CaO2 nanoparticle dosage (0.002–0.05 g) and initial benzeneacetic acid concentration (0.03–0.099 mol/L). Root mean square error (RMS) of 3.432, average percentage error (APE) of 5.813 and coefficient of determination (R2) of 0.989 were found for prediction and modeling of benzeneacetic acid removal. The trained artificial neural network is employed to predict the output of the given set of input parameters. The single-stage batch adsorber design of the adsorption of benzeneacetic acid onto CaO2 nanoparticles has been studied with well fitted Langmuir isotherm equation which is homogeneous and has monolayer sorption capacity.http://www.sciencedirect.com/science/article/pii/S2405653716300574Feed forward neural networkSingle-stage batchBenzeneacetic acidCaO2 nanoparticlesAdsorption |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sapana S. Madan Kailas L. Wasewar S.L. Pandharipande |
spellingShingle |
Sapana S. Madan Kailas L. Wasewar S.L. Pandharipande Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network Resource-Efficient Technologies Feed forward neural network Single-stage batch Benzeneacetic acid CaO2 nanoparticles Adsorption |
author_facet |
Sapana S. Madan Kailas L. Wasewar S.L. Pandharipande |
author_sort |
Sapana S. Madan |
title |
Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network |
title_short |
Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network |
title_full |
Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network |
title_fullStr |
Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network |
title_full_unstemmed |
Modeling the adsorption of benzeneacetic acid on CaO2 nanoparticles using artificial neural network |
title_sort |
modeling the adsorption of benzeneacetic acid on cao2 nanoparticles using artificial neural network |
publisher |
Tomsk Polytechnic University |
series |
Resource-Efficient Technologies |
issn |
2405-6537 |
publishDate |
2016-12-01 |
description |
The present work reported a method for removal of benzeneacetic acid from water solution using CaO2 nanoparticle as adsorbent and modeling the adsorption process using artificial neural network (ANN). CaO2 nanoparticles were synthesized by a chemical precipitation technique. The characterization and confirmation of nanoparticles have been done by using different techniques such as X-ray powder diffraction (XRD), high resolution field emission scanning electron microscope (HR-FESEM),transmittance electron microscopy (TEM) and high-resolution TEM (HRTEM) analysis. ANN model was developed by using elite-ANN software. The network was trained using experimental data at optimum temperature and time with different CaO2 nanoparticle dosage (0.002–0.05 g) and initial benzeneacetic acid concentration (0.03–0.099 mol/L). Root mean square error (RMS) of 3.432, average percentage error (APE) of 5.813 and coefficient of determination (R2) of 0.989 were found for prediction and modeling of benzeneacetic acid removal. The trained artificial neural network is employed to predict the output of the given set of input parameters. The single-stage batch adsorber design of the adsorption of benzeneacetic acid onto CaO2 nanoparticles has been studied with well fitted Langmuir isotherm equation which is homogeneous and has monolayer sorption capacity. |
topic |
Feed forward neural network Single-stage batch Benzeneacetic acid CaO2 nanoparticles Adsorption |
url |
http://www.sciencedirect.com/science/article/pii/S2405653716300574 |
work_keys_str_mv |
AT sapanasmadan modelingtheadsorptionofbenzeneaceticacidoncao2nanoparticlesusingartificialneuralnetwork AT kailaslwasewar modelingtheadsorptionofbenzeneaceticacidoncao2nanoparticlesusingartificialneuralnetwork AT slpandharipande modelingtheadsorptionofbenzeneaceticacidoncao2nanoparticlesusingartificialneuralnetwork |
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