Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network

In recent years, a new class of solvent called ionic liquids had successfully demonstrated potential applications in industrial chemistry and chemical technology due to its desirable properties. To this end, understanding their physico-chemical properties is of high importance. The current study pre...

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Main Authors: Soriano, Allan N., Ornedo-Ramos, Karen Faith P., Muriel, Carla Angela M., Adornado, Adonis P., Bungay, Vergel C., Li, Meng Hui
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Published: Animo Repository 2016
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/1170
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-21692022-11-08T03:18:05Z Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network Soriano, Allan N. Ornedo-Ramos, Karen Faith P. Muriel, Carla Angela M. Adornado, Adonis P. Bungay, Vergel C. Li, Meng Hui In recent years, a new class of solvent called ionic liquids had successfully demonstrated potential applications in industrial chemistry and chemical technology due to its desirable properties. To this end, understanding their physico-chemical properties is of high importance. The current study presents a model for predicting the refractive index of binary ionic liquid system containing alcohol (methanol or ethanol or 1-propanol) using the artificial neural network (ANN) algorithm. The refractive index data were correlated as function of temperature, mole fraction, number of carbon atoms in the cation, number of atoms in the anion, number of hydrogen atoms in the anion and number of carbon atoms in the alcohol. Refractive index data from ThermoIL Database were used. Using ANN, a total of 752 data points were used in the calculation and to obtain the optimum neural network parameters. The 6-6-9-1 neural network architecture was found to be the best network using two hidden layers as shown by mean absolute error of 0.00783 and an overall average percentage error of 0.55%. The obtained correlation satisfactorily represents the experimental refractive index data and can be reliably used to predict the refractive index of other binary systems containing the considered cation and anions and the studied alcohols. © 2016 Taiwan Institute of Chemical Engineers. 2016-08-01T07:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/1170 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2169/type/native/viewcontent Faculty Research Work Animo Repository Ionic solutions Refractive index Neural networks (Computer science) Chemical Engineering
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Ionic solutions
Refractive index
Neural networks (Computer science)
Chemical Engineering
spellingShingle Ionic solutions
Refractive index
Neural networks (Computer science)
Chemical Engineering
Soriano, Allan N.
Ornedo-Ramos, Karen Faith P.
Muriel, Carla Angela M.
Adornado, Adonis P.
Bungay, Vergel C.
Li, Meng Hui
Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
description In recent years, a new class of solvent called ionic liquids had successfully demonstrated potential applications in industrial chemistry and chemical technology due to its desirable properties. To this end, understanding their physico-chemical properties is of high importance. The current study presents a model for predicting the refractive index of binary ionic liquid system containing alcohol (methanol or ethanol or 1-propanol) using the artificial neural network (ANN) algorithm. The refractive index data were correlated as function of temperature, mole fraction, number of carbon atoms in the cation, number of atoms in the anion, number of hydrogen atoms in the anion and number of carbon atoms in the alcohol. Refractive index data from ThermoIL Database were used. Using ANN, a total of 752 data points were used in the calculation and to obtain the optimum neural network parameters. The 6-6-9-1 neural network architecture was found to be the best network using two hidden layers as shown by mean absolute error of 0.00783 and an overall average percentage error of 0.55%. The obtained correlation satisfactorily represents the experimental refractive index data and can be reliably used to predict the refractive index of other binary systems containing the considered cation and anions and the studied alcohols. © 2016 Taiwan Institute of Chemical Engineers.
format text
author Soriano, Allan N.
Ornedo-Ramos, Karen Faith P.
Muriel, Carla Angela M.
Adornado, Adonis P.
Bungay, Vergel C.
Li, Meng Hui
author_facet Soriano, Allan N.
Ornedo-Ramos, Karen Faith P.
Muriel, Carla Angela M.
Adornado, Adonis P.
Bungay, Vergel C.
Li, Meng Hui
author_sort Soriano, Allan N.
title Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
title_short Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
title_full Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
title_fullStr Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
title_full_unstemmed Prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
title_sort prediction of refractive index of binary solutions consisting of ionic liquids and alcohols (methanol or ethanol or 1-propanol) using artificial neural network
publisher Animo Repository
publishDate 2016
url https://animorepository.dlsu.edu.ph/faculty_research/1170
https://animorepository.dlsu.edu.ph/context/faculty_research/article/2169/type/native/viewcontent
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