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Predicting the multiple parameters of organic acceptors through machine learning using RDkit descriptors: An easy and fast pipeline.

Authors :
Katubi, Khadijah Mohammedsaleh
Saqib, Muhammad
Mubashir, Tayyaba
Tahir, Mudassir Hussain
Halawa, Mohamed Ibrahim
Akbar, Alveena
Basha, Beriham
Sulaman, Muhammad
Alrowaili, Z. A.
Al‐Buriahi, M. S.
Source :
International Journal of Quantum Chemistry. 12/5/2023, Vol. 123 Issue 23, p1-13. 13p.
Publication Year :
2023

Abstract

Machine learning (ML) analysis has gained huge importance among researchers for predicting multiple parameters and designing efficient donor and acceptor materials without experimentation. Data are collected from literature and subsequently used for predicting impactful properties of organic solar cells such as power conversion efficiency (PCE) and energy levels (HOMO/LUMO). Importantly, out of various tested models, hist gradient boosting (HGB) and the light gradient boosting (LGBM) regression models revealed better predictive capabilities. To achieve the prediction effectively, the selected (best) ML regression models are further tuned. For the prediction of PCE (test set), the LGBM shows the coefficient of determination (R2) value of 0.787, which is higher than HGB (R2 = 0.680). For the prediction of HOMO (test set), the LGBM shows R2 value of 0.566, which is higher than HGB (R2 = 0.563). However, for the prediction of LUMO (test set), the LGBM shows R2 value of 0.605, which is lower than HGB (R2 = 0.606). Among the three predicted properties, prediction ability is higher for PCE. These models help to predict the efficient acceptors in a short time and less computational cost. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00207608
Volume :
123
Issue :
23
Database :
Academic Search Index
Journal :
International Journal of Quantum Chemistry
Publication Type :
Academic Journal
Accession number :
173011976
Full Text :
https://doi.org/10.1002/qua.27230