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

Author:

Katubi Khadijah Mohammedsaleh1,Saqib Muhammad2ORCID,Mubashir Tayyaba3,Tahir Mudassir Hussain4,Halawa Mohamed Ibrahim56,Akbar Alveena2,Basha Beriham7,Sulaman Muhammad8ORCID,Alrowaili Z. A.9,Al‐Buriahi M. S.10

Affiliation:

1. Department of Chemistry, College of Science Princess Nourah bint Abdulrahman University Riyadh Saudi Arabia

2. Institute of Chemistry Khwaja Fareed University of Engineering & Information Technology Rahim Yar Khan Pakistan

3. Institute of Chemistry University of Sargodha Sargodha Pakistan

4. Research Faculty of Agriculture; Field Science Center for Northern Biosphere Hokkaido University Sapporo Hokkaido Japan

5. Department of Pharmaceutical Analytical Chemistry, Faculty of Pharmacy Mansoura University Mansoura Egypt

6. Guangdong Laboratory of Artificial Intelligence & Digital Economy (SZ) Shenzhen University Shenzhen China

7. Department of Physics, College of Sciences Princess Nourah bint Abdulrahman University Riyadh Saudi Arabia

8. Beijing Key Lab of Nanophotonics and Ultrafine Optoelectronic Systems, Center for Micro‐Nanotechnology; Key Lab of Advanced Optoelectronic Quantum Design and Measurement, Ministry of Education, School of Physics Beijing Institute of Technology Beijing People's Republic of China

9. Department of Physics, College of Science Jouf University Sakaka Saudi Arabia

10. Department of Physics Sakarya University Sakarya Turkey

Abstract

AbstractMachine 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.

Funder

Princess Nourah Bint Abdulrahman University

Publisher

Wiley

Subject

Physical and Theoretical Chemistry,Condensed Matter Physics,Atomic and Molecular Physics, and Optics

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