Title : ( Analytic, neural network, and hybrid modeling of supercritical extraction of α-pinene )
Authors: Seyed Mahmoud Mousavi ,Access to full-text not allowed by authors
Abstract
This paper addresses thermodynamic modeling of supercritical extraction process. Extraction of -pinene using supercritical carbon dioxide (CO2) is employed as a case-study. Three modeling approaches including the dense gas model with Peng–Robinson equation of state as an analytical model, a three layers feed forward neural network and a hybrid analytical–neural network structure are described and compared. Although the parameters of Peng–Robinson equation in dense gas model are optimized, the results of this model were not satisfactory. The optimized structure of neural network is made based on minimum mean square error (MSE) of training and testing data. The prediction of process using the neural network is almost proper in training region but the results are not suitable for extrapolating region. Combining two latter models in hybrid structure, predictions can be satisfactory in both training and exploratory regions.
Keywords
, Analytic, neural network, and hybrid modeling of supercritical extraction of α-pinene@article{paperid:1006903,
author = {Mousavi, Seyed Mahmoud},
title = {Analytic, neural network, and hybrid modeling of supercritical extraction of α-pinene},
journal = {Journal of Supercritical Fluids},
year = {2008},
volume = {47},
month = {November},
issn = {0896-8446},
pages = {168--173},
numpages = {5},
keywords = {Analytic; neural network; and hybrid modeling of supercritical extraction of α-pinene},
}
%0 Journal Article
%T Analytic, neural network, and hybrid modeling of supercritical extraction of α-pinene
%A Mousavi, Seyed Mahmoud
%J Journal of Supercritical Fluids
%@ 0896-8446
%D 2008