Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression

Ionic liquids are tunable, there are vast combinations of cations and anions and attached substituent groups that can be combined together to achieve a target property. Mathematical equations in which the contributions of each component groups of an ionic liquid are considered in a predictive model...

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Main Author: Nuqui, Jesus Patrick E.
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Language:English
Published: Animo Repository 2023
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Online Access:https://animorepository.dlsu.edu.ph/etdm_chemeng/20
https://animorepository.dlsu.edu.ph/context/etdm_chemeng/article/1020/viewcontent/Prediction_of_ionic_liquid_thermophysical_properties_by_group_contribution_method_using_random_forest_regression.pdf
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spelling oai:animorepository.dlsu.edu.ph:etdm_chemeng-10202024-01-19T08:40:00Z Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression Nuqui, Jesus Patrick E. Ionic liquids are tunable, there are vast combinations of cations and anions and attached substituent groups that can be combined together to achieve a target property. Mathematical equations in which the contributions of each component groups of an ionic liquid are considered in a predictive model are common in literature, however, it encounters limitations in terms of number of input variables that can be accommodated. In this study, the random forest (RF) regression algorithm was used to create a model to predict thermophysical properties, particularly the isobaric heat capacity, viscosity, thermal conductivity, and surface tension of ionic liquids using the group contribution of the main cation, main anion, and their substituent groups as input variables. Hyperparameter tuning was used to identify the optimal parameters for the random forest model for each thermophysical property. It was found that the algorithm is capable of handling multiple input variables and provide accurate predictions based on the obtained R2 and %AAD values. The following were the obtained R2 values of the training and testing data sets at 80-20 split of the RF models for the isobaric heat capacity, viscosity (range limited), surface tension, and thermal conductivity respectively: 0.9964 and 0.9985; 0.9628 and 0.8141; 0.9981 and 0.9906; and 0.9960 and 0.9863. Additionally, the %AAD of the of the training and testing data sets at 80-20 split of the four thermophysical properties following the same sequence as above are as follows: 0.28% and 0.63%; 7.03% and 15.94%; 0.67% and 1.47%; and 0.56% and 1.21%. These favorable performance statistical metrics on top of being able to handle large number of input variables and data points confirmed the competitiveness of the RF regression algorithm in predicting the properties of complex substances such as ILs. 2023-01-01T08:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/etdm_chemeng/20 https://animorepository.dlsu.edu.ph/context/etdm_chemeng/article/1020/viewcontent/Prediction_of_ionic_liquid_thermophysical_properties_by_group_contribution_method_using_random_forest_regression.pdf Chemical Engineering Master's Theses English Animo Repository Materials—Thermal properties Materials—Thermal conductivity Chemical Engineering Engineering Thermodynamics
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
language English
topic Materials—Thermal properties
Materials—Thermal conductivity
Chemical Engineering
Engineering
Thermodynamics
spellingShingle Materials—Thermal properties
Materials—Thermal conductivity
Chemical Engineering
Engineering
Thermodynamics
Nuqui, Jesus Patrick E.
Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
description Ionic liquids are tunable, there are vast combinations of cations and anions and attached substituent groups that can be combined together to achieve a target property. Mathematical equations in which the contributions of each component groups of an ionic liquid are considered in a predictive model are common in literature, however, it encounters limitations in terms of number of input variables that can be accommodated. In this study, the random forest (RF) regression algorithm was used to create a model to predict thermophysical properties, particularly the isobaric heat capacity, viscosity, thermal conductivity, and surface tension of ionic liquids using the group contribution of the main cation, main anion, and their substituent groups as input variables. Hyperparameter tuning was used to identify the optimal parameters for the random forest model for each thermophysical property. It was found that the algorithm is capable of handling multiple input variables and provide accurate predictions based on the obtained R2 and %AAD values. The following were the obtained R2 values of the training and testing data sets at 80-20 split of the RF models for the isobaric heat capacity, viscosity (range limited), surface tension, and thermal conductivity respectively: 0.9964 and 0.9985; 0.9628 and 0.8141; 0.9981 and 0.9906; and 0.9960 and 0.9863. Additionally, the %AAD of the of the training and testing data sets at 80-20 split of the four thermophysical properties following the same sequence as above are as follows: 0.28% and 0.63%; 7.03% and 15.94%; 0.67% and 1.47%; and 0.56% and 1.21%. These favorable performance statistical metrics on top of being able to handle large number of input variables and data points confirmed the competitiveness of the RF regression algorithm in predicting the properties of complex substances such as ILs.
format text
author Nuqui, Jesus Patrick E.
author_facet Nuqui, Jesus Patrick E.
author_sort Nuqui, Jesus Patrick E.
title Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
title_short Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
title_full Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
title_fullStr Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
title_full_unstemmed Prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
title_sort prediction of ionic liquid thermophysical properties by group contribution method using random forest regression
publisher Animo Repository
publishDate 2023
url https://animorepository.dlsu.edu.ph/etdm_chemeng/20
https://animorepository.dlsu.edu.ph/context/etdm_chemeng/article/1020/viewcontent/Prediction_of_ionic_liquid_thermophysical_properties_by_group_contribution_method_using_random_forest_regression.pdf
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