Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization

This study is aimed at modelling and optimization of phenolic compound extraction from Azadirica Indica Leaves (AIL) using Response Surface Methodology (RSM), Adaptive Neuro-Fuzzy Inference System (ANFIS) and Cuckoo Search algorithm (CSA). The extraction experiments were conducted at Extraction Temp...

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Main Authors: E.O. Oke, O. Adeyi, B.I. Okolo, J.A. Adeyi, J. Ayanyemi, K.A. Osoh, T.S. Adegoke
Format: Article
Language:English
Published: Elsevier 2020-12-01
Series:Results in Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2590123020300669
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spelling doaj-180f401e5f924c51ab0c8a43323df67f2021-01-02T05:13:19ZengElsevierResults in Engineering2590-12302020-12-018100160Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimizationE.O. Oke0O. Adeyi1B.I. Okolo2J.A. Adeyi3J. Ayanyemi4K.A. Osoh5T.S. Adegoke6Chemical Engineering Department, Michael Okpara University of Agriculture, Nigeria; Corresponding author.Chemical Engineering Department, Michael Okpara University of Agriculture, NigeriaChemical Engineering Department, Michael Okpara University of Agriculture, NigeriaMechanical Engineering Department, Ladoke Akintola University of Technology, NigeriaChemical Engineering Department, Michael Okpara University of Agriculture, NigeriaDepartment of Chemistry, Akwa Ibom State College of Science and Technology, NigeriaOromitope Herbal Enterprises (Ajawesola), Ogbomoso, NigeriaThis study is aimed at modelling and optimization of phenolic compound extraction from Azadirica Indica Leaves (AIL) using Response Surface Methodology (RSM), Adaptive Neuro-Fuzzy Inference System (ANFIS) and Cuckoo Search algorithm (CSA). The extraction experiments were conducted at Extraction Temperature (ET): (33.79–76.21oC), Process Time (PT): (2.79–4.21 ​h) and Solid-Liquid Concentration (SLC): (0.007929–0.018355 ​g/ml) with Total Phenolic Content (TPC) and Total Flavonoid Content (TFC) as dependent variables. Predictive Regression models (RM) for AIL extraction were developed from RSM in Design Expert software and compared with ANFIS model in Matlab environment. Multi-objective optimization of AIL extraction conditions was performed using CSA and Numerical Desirability Function (NDF) techniques; while sensitivity analysis of the process was performed using Monte Carlo Simulation (MCS). RM correlation coefficients (R2) of TFC and TPC are 0.988 and 0.949 respectively; whereas ANFIS model R2 for TFC and TPC gave 0.997 and 0.982 accordingly. MCS sensitivity analysis show the contribution of input variables (SLC: -56.3%; PT: 39.2% and ET: -4.59%) on TPC and (SLC: -0.9%; PT: -78.6% and ET 18.5%) on TFC respectively. The CSA optimum conditions gave 2.79 ​h, 40.540C, 0.01 ​g/ml with TFC 27.7 and TPC 1.06; while NDF optimum results gave 2.79 ​h, 40.540C, SLC 0.01 ​g/ml, with TFC 26.09 and TPC 1.272. The RSM and ANFIS models are satisfactorily predicted the process. The optimum conditions results obtained from the two methodologies are analogous. Therefore, the optimum results from this study could be used for AIL extract production plant design and techno-economic evaluation.http://www.sciencedirect.com/science/article/pii/S2590123020300669ModellingOptimizationExtractionSimulation
collection DOAJ
language English
format Article
sources DOAJ
author E.O. Oke
O. Adeyi
B.I. Okolo
J.A. Adeyi
J. Ayanyemi
K.A. Osoh
T.S. Adegoke
spellingShingle E.O. Oke
O. Adeyi
B.I. Okolo
J.A. Adeyi
J. Ayanyemi
K.A. Osoh
T.S. Adegoke
Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
Results in Engineering
Modelling
Optimization
Extraction
Simulation
author_facet E.O. Oke
O. Adeyi
B.I. Okolo
J.A. Adeyi
J. Ayanyemi
K.A. Osoh
T.S. Adegoke
author_sort E.O. Oke
title Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
title_short Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
title_full Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
title_fullStr Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
title_full_unstemmed Phenolic compound extraction from Nigerian Azadirachta Indica leaves: Response surface and neuro-fuzzy modelling performance evaluation with Cuckoo Search multi-objective optimization
title_sort phenolic compound extraction from nigerian azadirachta indica leaves: response surface and neuro-fuzzy modelling performance evaluation with cuckoo search multi-objective optimization
publisher Elsevier
series Results in Engineering
issn 2590-1230
publishDate 2020-12-01
description This study is aimed at modelling and optimization of phenolic compound extraction from Azadirica Indica Leaves (AIL) using Response Surface Methodology (RSM), Adaptive Neuro-Fuzzy Inference System (ANFIS) and Cuckoo Search algorithm (CSA). The extraction experiments were conducted at Extraction Temperature (ET): (33.79–76.21oC), Process Time (PT): (2.79–4.21 ​h) and Solid-Liquid Concentration (SLC): (0.007929–0.018355 ​g/ml) with Total Phenolic Content (TPC) and Total Flavonoid Content (TFC) as dependent variables. Predictive Regression models (RM) for AIL extraction were developed from RSM in Design Expert software and compared with ANFIS model in Matlab environment. Multi-objective optimization of AIL extraction conditions was performed using CSA and Numerical Desirability Function (NDF) techniques; while sensitivity analysis of the process was performed using Monte Carlo Simulation (MCS). RM correlation coefficients (R2) of TFC and TPC are 0.988 and 0.949 respectively; whereas ANFIS model R2 for TFC and TPC gave 0.997 and 0.982 accordingly. MCS sensitivity analysis show the contribution of input variables (SLC: -56.3%; PT: 39.2% and ET: -4.59%) on TPC and (SLC: -0.9%; PT: -78.6% and ET 18.5%) on TFC respectively. The CSA optimum conditions gave 2.79 ​h, 40.540C, 0.01 ​g/ml with TFC 27.7 and TPC 1.06; while NDF optimum results gave 2.79 ​h, 40.540C, SLC 0.01 ​g/ml, with TFC 26.09 and TPC 1.272. The RSM and ANFIS models are satisfactorily predicted the process. The optimum conditions results obtained from the two methodologies are analogous. Therefore, the optimum results from this study could be used for AIL extract production plant design and techno-economic evaluation.
topic Modelling
Optimization
Extraction
Simulation
url http://www.sciencedirect.com/science/article/pii/S2590123020300669
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