Journal of Natural Gas Science and Engineering, ( ISI ), Volume (20), No (2014), Year (2014-8) , Pages (414-421)

Title : ( Practical use of statistical learning theory for modeling freezing point depression of electrolyte solutions: LSSVM model )

Authors: Hamidreza Yarveicy , Ali Karimn Moghaddam , Mohammad M. Ghiasi ,

Citation: BibTeX | EndNote

Abstract

Electrolyte solutions are mixtures comprising a substance with the capability of forming strong associating bonding interactions between molecules. Hence, the predictions of van der Waals based equations of state for properties of these systems are poor. In these cases, employment of an equation of state (EoS) combined with the association term from the statistical associating fluid theory (SAFT) has been recommended in the literature. In this communication, a robust type of learning method developed based on statistical learning theory namely least squares support vector machine (LSSVM) has been employed for calculating the freezing point depression (FPD) of different electrolyte solutions. The predictions of the developed model are compared to the results of cubic-plus-association (CPA) EoS combined with the DebyeeHückel electrostatic term. It is found that the proposed smart technique gives more accurate estimations than CPA EoS that enjoys SAFT for the association part.

Keywords

Freezing point depression; Electrolyte solution; CPA EoS; LSSVM; Clathrate hydrate
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@article{paperid:1107393,
author = {حمیدرضا یارویسی and Ali Karimn Moghaddam, and محمدمهدی قیاثی},
title = {Practical use of statistical learning theory for modeling freezing point depression of electrolyte solutions: LSSVM model},
journal = {Journal of Natural Gas Science and Engineering},
year = {2014},
volume = {20},
number = {2014},
month = {August},
issn = {1875-5100},
pages = {414--421},
numpages = {7},
keywords = {Freezing point depression; Electrolyte solution; CPA EoS; LSSVM; Clathrate hydrate},
}

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%0 Journal Article
%T Practical use of statistical learning theory for modeling freezing point depression of electrolyte solutions: LSSVM model
%A حمیدرضا یارویسی
%A Ali Karimn Moghaddam,
%A محمدمهدی قیاثی
%J Journal of Natural Gas Science and Engineering
%@ 1875-5100
%D 2014

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