Comparison of general rate model with a new model—artificial neural network model in describing chromatographic kinetics of solanesol adsorption in packed column by macroporous resins

Herein, two models, the general rate model taking into account convection, axial dispersion, external and intra-particle mass transfer resistances and particle size distribution (PSD) and the artificial neural network model (ANN) were developed to describe solanesol adsorption process in packed colu...

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Veröffentlicht in:Journal of Chromatography A 2007-03, Vol.1145 (1), p.165-174
Hauptverfasser: Du, Xueling, Yuan, Qipeng, Zhao, Jinsong, Li, Ye
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creator Du, Xueling
Yuan, Qipeng
Zhao, Jinsong
Li, Ye
description Herein, two models, the general rate model taking into account convection, axial dispersion, external and intra-particle mass transfer resistances and particle size distribution (PSD) and the artificial neural network model (ANN) were developed to describe solanesol adsorption process in packed column using macroporous resins. First, Static equilibrium experiments and kinetic experiments in packed column were carried out respectively to obtain experimental data. By fitting static experimental data, Langmuir isotherm and Freundlich isotherm were estimated, and the former one was used in simulation coupled with general rate model considering better correlative coefficients. The simulated results showed that theoretical predictions of general rate model with PSD were well consistent with experimental data. Then, a new model, the ANN model, was developed to describe present adsorption process in packed column. The encouraging simulated results showed that ANN model could describe present system even better than general rate model. At last, by using the predictive ability of ANN model, the influence of each experimental parameter was investigated. Predicted results showed that with the increases of particle porosity and the ratio of bed height to inner column diameter (ROHD), the breakthrough time was delayed. On the contrary, an increase in feed concentration, flow rate, mean particle diameter and bed porosity decreased the breakthrough time.
doi_str_mv 10.1016/j.chroma.2007.01.065
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On the contrary, an increase in feed concentration, flow rate, mean particle diameter and bed porosity decreased the breakthrough time.</description><subject>Adsorption</subject><subject>Algorithms</subject><subject>Analytical chemistry</subject><subject>Analytical, structural and metabolic biochemistry</subject><subject>Artificial neural network model</subject><subject>Biological and medical sciences</subject><subject>Chemistry</subject><subject>Chromatographic kinetics</subject><subject>Chromatographic methods and physical methods associated with chromatography</subject><subject>Chromatography - instrumentation</subject><subject>Chromatography - methods</subject><subject>Exact sciences and technology</subject><subject>Fundamental and applied biological sciences. Psychology</subject><subject>General rate model</subject><subject>Kinetics</subject><subject>Macroporous resin</subject><subject>Neural Networks (Computer)</subject><subject>Other biological molecules</subject><subject>Other chromatographic methods</subject><subject>Porosity</subject><subject>Resins, Synthetic - chemistry</subject><subject>Solanesol</subject><subject>Terpenes - chemistry</subject><subject>Terpenes, steroids. 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subjects Adsorption
Algorithms
Analytical chemistry
Analytical, structural and metabolic biochemistry
Artificial neural network model
Biological and medical sciences
Chemistry
Chromatographic kinetics
Chromatographic methods and physical methods associated with chromatography
Chromatography - instrumentation
Chromatography - methods
Exact sciences and technology
Fundamental and applied biological sciences. Psychology
General rate model
Kinetics
Macroporous resin
Neural Networks (Computer)
Other biological molecules
Other chromatographic methods
Porosity
Resins, Synthetic - chemistry
Solanesol
Terpenes - chemistry
Terpenes, steroids. Hormones
title Comparison of general rate model with a new model—artificial neural network model in describing chromatographic kinetics of solanesol adsorption in packed column by macroporous resins
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