Please use this identifier to cite or link to this item: http://dspace.univ-bouira.dz:8080/jspui/handle/123456789/16190
Title: Ultrasound assisted extraction of phenolic compounds from P. lentiscus L. leaves: Comparative study of artificial neural network (ANN) versus degree of experiment for prediction ability of phenolic compounds recovery
Authors: Remini, Hocine
Dahmoune, Farid
Madani, Khodir
Mouni, Lotfi
Nayake, Balunkeswar
Kadrib, Nabil
Boughani, Lhadi
Bouaoudia-Madia, Nadia
Adjerouda, Nawel
Keywords: Antioxidant activity
Phenolic compounds
Pistacia leaves
Ultrasound extraction
DOE
Artificial neural networks
Issue Date: 29-Aug-2015
Publisher: Université Akli Mohend Oulhadj Bouira
Citation: Université Akli Mohend Oulhadj Bouira
Abstract: Design of experiments (DOE) based on central composite design (CCD) and artificial neural networks (ANNs) were efficaciously applied for the study of the operating parameters of ultrasound assisted extraction (UAE) in the recovery of phenolic compounds from P. lentiscus leaves. These models were used to evaluate the effects of process variables and their interaction toward the attainment of their optimum conditions. Under the optimal conditions (13.79 min extraction time, 33.82 % amplitude and 30.99 % ethanol proportion), DOE and ANN models predicted a maximum response of 140.55 and 138.3452 mgGAE/gdw, respectively. A mean value of 142.76 ± 19.98 mgGAE/gdw, obtained from real experiments, demonstrated the validation of the extraction models. A comparison between the model results and experimental data gave high correlation coefficients (R2 ANN = 0.999, R2 RSM = 0.981), adjusted coefficients (RadjANN = 0.999, RadjRSM = 0.967) and low root mean square errors (RMSEANN = 0.37 and RMSERSM = 4.65) and showed that the two models were able to predict a total phenolic compounds (TPC) by green extraction ultrasound process. The results of ANN were found to be more consistent than DOE since better statistical parameters were obtained
URI: http://dspace.univ-bouira.dz:8080/jspui/handle/123456789/16190
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