Issue 10, 2016

Neural networks applied to determine the thermophysical properties of amino acid based ionic liquids

Abstract

A series of models based on artificial neural networks (ANNs) have been designed to estimate the thermophysical properties of different amino acid-based ionic liquids (AAILs). Three different databases of AAILs were modeled using these algorithms with the goal set to estimate the density, viscosity, refractive index, ionic conductivity, and thermal expansion coefficient, and requiring only data regarding temperature and electronic polarizability of the chemicals. Additionally, a global model was designed combining all of the databases to determine the robustness of the method. In general, the results were successful, reaching mean prediction errors below 1% in many cases, as well as a statistically reliable and accurate global model. Attaining these successful models is a relevant fact as AAILs are novel biodegradable and biocompatible compounds which may soon make their way into the health sector forming a part of useful biomedical applications. Therefore, understanding the behavior and being able to estimate their thermophysical properties becomes crucial.

Graphical abstract: Neural networks applied to determine the thermophysical properties of amino acid based ionic liquids

Article information

Article type
Paper
Submitted
11 Dec 2015
Accepted
08 Feb 2016
First published
08 Feb 2016

Phys. Chem. Chem. Phys., 2016,18, 7435-7441

Author version available

Neural networks applied to determine the thermophysical properties of amino acid based ionic liquids

J. C. Cancilla, A. Perez, K. Wierzchoś and J. S. Torrecilla, Phys. Chem. Chem. Phys., 2016, 18, 7435 DOI: 10.1039/C5CP07649H

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