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Revista mexicana de física

Print version ISSN 0035-001X

Rev. mex. fis. vol.59 n.6 México Nov./Dec. 2013

 

Investigación

 

Gas-solid phase equilibrium of biosubstances by two biological algorithms

 

J.A. Lazzús and M. Rivera

 

Departamento de Física, Universidad de La Serena, Casilla 554, La Serena, Chile. e-mail: jlazzus@dfuls.cl

 

Received 8 May 2013
Accepted 14 August 2013

 

Abstract

Particle swarm optimization (PSO) and genetic algorithm (GA) are applied to the gas-solid phase equilibrium of biosubstances and to estimate their sublimation pressures (Ps). Four binary systems of supercritical carbon dioxide + biosubstances are considered in this study. The Peng-Robinson equation-of-state with the Wong-Sandler mixing rules, are used as a thermodynamic model to evaluate the fugacity coefficients in the classical solubility equation, and the van Laar model was incorporated to evaluate the excess Gibbs free energy included in the mixing rules. Then, the Ps is calculated from regression analysis of solubility data (y). Ps is usually small for most solid biosubstances and in many cases available experimental techniques cannot be used to obtain accurate values. Therefore, estimation methods must be used to obtain these data. PSO and GA are used for minimize the difference between calculated and experimental solubility. Comparing PSO with GA, it is shown that the results of PSO are better than that of GA, and provide a preferable method to estimate y and Ps of any biosubstances with high accuracy.

Keywords: Sublimation pressure; biosubstances; gas-solid equilibrium; equation of state; genetic algorithm; particle swarm optimization.

 

PACS: 51.30.+i; 64.75.Cd; 02.60.Pn

 

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Acknowledgments

The authors thank the Direction of Research of the University of La Serena (DIULS), and the Department of Physics of the University of La Serena (DFULS) for the special support that made possible the preparation of this paper.

 

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