Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods

The effect of pH, initial concentration of 2,4-D and the activated carbon content toward the adsorption process of 2,4-D by the modified hydrogel (AC/PDMAEMA hydrogel) were analysed. The experimental data taken from previous study was used to predict the removal of 2,4-D and the adsorption capacity....

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Main Author: Azhar, Emillia Eizleen Md
Format: Monograph
Language:English
Published: Universiti Sains Malaysia 2022
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Online Access:http://eprints.usm.my/55169/1/Statistical%20Modeling%20And%20Optimization%20Of%20Process%20Parameters%20For%202%2C4-Dichlorophenoxyacetic%20Acid%20Removal%20By%20Using%20Ac%20Pdmaema%20Hydrogel%20Adsorbent%20Comparison%20Of%20Different%20Rsm%20Designs%20And%20Ann%20Training%20Methods.pdf
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spelling my.usm.eprints.55169 http://eprints.usm.my/55169/ Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods Azhar, Emillia Eizleen Md T Technology TP155-156 Chemical engineering The effect of pH, initial concentration of 2,4-D and the activated carbon content toward the adsorption process of 2,4-D by the modified hydrogel (AC/PDMAEMA hydrogel) were analysed. The experimental data taken from previous study was used to predict the removal of 2,4-D and the adsorption capacity. The simulation was done with Design Expert V12.0 and Matlab R2021a, where different design of response surface methodology (RSM) and training methods of Artificial Neural Network (ANN) were used. RSM was used to analyse the effect of the process parameter toward the adsorption process of 2,4-D as well as to build an empirical model which display the relationship between the factors and the responses. The analysis of the empirical model build by the two level factorial, face centred composite and custom designs were done with the analysis of variance (ANOVA) and compared. Apart from performance of empirical model, the optimum condition for the maximum removal of 2, 4-D and adsorption capacity was also obtained with the RSM simulation. It was found that among these three design, the optimal design has the highest accuracy in predicting the responses. The maximum removal of 2, 4-D and adsorption capacity at 65.01 % and 65.29 mg/g respectively were obtained at pH of 3, initial concentration of 2,4-D of 94.52 mg/L and 2.5 wt% of activated carbon. Apart from optimization of process parameter, the neural network architecture was also optimized by trial and error with different number of hidden neurons in the layers to obtain the best performance of the response. The optimization of the neural network was done with different training methods and compared. It was found that among the three training methods of ANN model, Bayesian Regularization methods had the highest R2 and lowest MSE with optimum network architecture of 3:9:2. The optimum condition obtained from RSM was also simulated with the optimized neural network architecture to validate the responses and adequacy of the RSM model. Universiti Sains Malaysia 2022-07-01 Monograph NonPeerReviewed application/pdf en http://eprints.usm.my/55169/1/Statistical%20Modeling%20And%20Optimization%20Of%20Process%20Parameters%20For%202%2C4-Dichlorophenoxyacetic%20Acid%20Removal%20By%20Using%20Ac%20Pdmaema%20Hydrogel%20Adsorbent%20Comparison%20Of%20Different%20Rsm%20Designs%20And%20Ann%20Training%20Methods.pdf Azhar, Emillia Eizleen Md (2022) Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods. Project Report. Universiti Sains Malaysia, Pusat Pengajian Kejuruteraan Kimia. (Submitted)
institution Universiti Sains Malaysia
building Hamzah Sendut Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sains Malaysia
content_source USM Institutional Repository
url_provider http://eprints.usm.my/
language English
topic T Technology
TP155-156 Chemical engineering
spellingShingle T Technology
TP155-156 Chemical engineering
Azhar, Emillia Eizleen Md
Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
description The effect of pH, initial concentration of 2,4-D and the activated carbon content toward the adsorption process of 2,4-D by the modified hydrogel (AC/PDMAEMA hydrogel) were analysed. The experimental data taken from previous study was used to predict the removal of 2,4-D and the adsorption capacity. The simulation was done with Design Expert V12.0 and Matlab R2021a, where different design of response surface methodology (RSM) and training methods of Artificial Neural Network (ANN) were used. RSM was used to analyse the effect of the process parameter toward the adsorption process of 2,4-D as well as to build an empirical model which display the relationship between the factors and the responses. The analysis of the empirical model build by the two level factorial, face centred composite and custom designs were done with the analysis of variance (ANOVA) and compared. Apart from performance of empirical model, the optimum condition for the maximum removal of 2, 4-D and adsorption capacity was also obtained with the RSM simulation. It was found that among these three design, the optimal design has the highest accuracy in predicting the responses. The maximum removal of 2, 4-D and adsorption capacity at 65.01 % and 65.29 mg/g respectively were obtained at pH of 3, initial concentration of 2,4-D of 94.52 mg/L and 2.5 wt% of activated carbon. Apart from optimization of process parameter, the neural network architecture was also optimized by trial and error with different number of hidden neurons in the layers to obtain the best performance of the response. The optimization of the neural network was done with different training methods and compared. It was found that among the three training methods of ANN model, Bayesian Regularization methods had the highest R2 and lowest MSE with optimum network architecture of 3:9:2. The optimum condition obtained from RSM was also simulated with the optimized neural network architecture to validate the responses and adequacy of the RSM model.
format Monograph
author Azhar, Emillia Eizleen Md
author_facet Azhar, Emillia Eizleen Md
author_sort Azhar, Emillia Eizleen Md
title Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
title_short Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
title_full Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
title_fullStr Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
title_full_unstemmed Statistical Modeling And Optimization Of Process Parameters For 2,4-Dichlorophenoxyacetic Acid Removal By Using Ac Pdmaema Hydrogel Adsorbent Comparison Of Different Rsm Designs And Ann Training Methods
title_sort statistical modeling and optimization of process parameters for 2,4-dichlorophenoxyacetic acid removal by using ac pdmaema hydrogel adsorbent comparison of different rsm designs and ann training methods
publisher Universiti Sains Malaysia
publishDate 2022
url http://eprints.usm.my/55169/1/Statistical%20Modeling%20And%20Optimization%20Of%20Process%20Parameters%20For%202%2C4-Dichlorophenoxyacetic%20Acid%20Removal%20By%20Using%20Ac%20Pdmaema%20Hydrogel%20Adsorbent%20Comparison%20Of%20Different%20Rsm%20Designs%20And%20Ann%20Training%20Methods.pdf
http://eprints.usm.my/55169/
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score 13.18916