volume 418 pages 126707

Machine learning-driven prediction of deep eutectic solvents’ heat capacity for sustainable process design

Publication typeJournal Article
Publication date2025-01-01
scimago Q1
wos Q1
SJR0.935
CiteScore10.5
Impact factor5.2
ISSN01677322, 18733166
Abstract
Heat capacity, a crucial physical property for chemical processes, is often understudied in Deep Eutectic Solvents (DESs), which in turn are promising green alternatives to environmentally hazardous conventional solvents. This work addresses this gap by developing a machine learning model to predict DES heat capacity and identify key structural features influencing it. We employed a dataset of 530 DESs with corresponding experimental heat capacity values. Quantum-chemical COSMO-RS-based descriptors, capturing detailed information about DES structures, were calculated for each data point. Various machine learning algorithms, namely k-Nearest Neighbours (kNN), Random Forests (RF), Neural Network Multilayer Perceptron (MLP), and Support Vector Machines (SVM) were explored alongside a linear model (Multiple Linear Regression, MLR). Hyperparameter optimisation ensured all models were fine-tuned for optimal performance. The most successful model, based on the MLP technique, achieved remarkably low Average Absolute Relative Deviation (AARD) values of 0.500 % and 3.999 % for the training and test sets, respectively. This signifies a significant improvement in prediction accuracy compared to traditional methods. Furthermore, by applying a SHapley Additive exPlanations (SHAP) analysis, we identified the most crucial structural factors within DES components that govern their heat capacity. This comprehensive investigation offers valuable insights that can pave the way for an efficient design of novel DESs in the future.
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GOST Copy
Halder A. K. et al. Machine learning-driven prediction of deep eutectic solvents’ heat capacity for sustainable process design // Journal of Molecular Liquids. 2025. Vol. 418. p. 126707.
GOST all authors (up to 50) Copy
Halder A. K., Haghbakhsh R., Ferreira E. S. C., Duarte A. R. C., Cordeiro M. N. D. S. Machine learning-driven prediction of deep eutectic solvents’ heat capacity for sustainable process design // Journal of Molecular Liquids. 2025. Vol. 418. p. 126707.
RIS |
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RIS Copy
TY - JOUR
DO - 10.1016/j.molliq.2024.126707
UR - https://linkinghub.elsevier.com/retrieve/pii/S0167732224027685
TI - Machine learning-driven prediction of deep eutectic solvents’ heat capacity for sustainable process design
T2 - Journal of Molecular Liquids
AU - Halder, Amit Kumar
AU - Haghbakhsh, Reza
AU - Ferreira, Elisabete S C
AU - Duarte, Ana Rita C
AU - Cordeiro, M. Natália D. S.
PY - 2025
DA - 2025/01/01
PB - Elsevier
SP - 126707
VL - 418
SN - 0167-7322
SN - 1873-3166
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2025_Halder,
author = {Amit Kumar Halder and Reza Haghbakhsh and Elisabete S C Ferreira and Ana Rita C Duarte and M. Natália D. S. Cordeiro},
title = {Machine learning-driven prediction of deep eutectic solvents’ heat capacity for sustainable process design},
journal = {Journal of Molecular Liquids},
year = {2025},
volume = {418},
publisher = {Elsevier},
month = {jan},
url = {https://linkinghub.elsevier.com/retrieve/pii/S0167732224027685},
pages = {126707},
doi = {10.1016/j.molliq.2024.126707}
}