Kichev Ilia, Borislavov Lyuben, Tadjer Alia, Stoyanova Radostina
Institute of General and Inorganic Chemistry, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria.
Faculty of Chemistry and Pharmacy, University of Sofia, 1164 Sofia, Bulgaria.
Materials (Basel). 2023 Oct 14;16(20):6687. doi: 10.3390/ma16206687.
The redox properties of quinones underlie their unique characteristics as organic battery components that outperform the conventional inorganic ones. Furthermore, these redox properties could be precisely tuned by using different substituent groups. Machine learning and statistics, on the other hand, have proven to be very powerful approaches for the efficient in silico design of novel materials. Herein, we demonstrated the machine learning approach for the prediction of the redox activity of quinones that potentially can serve as organic battery components. For the needs of the present study, a database of small quinone-derived molecules was created. A large number of quantum chemical and chemometric descriptors were generated for each molecule and, subsequently, different statistical approaches were applied to select the descriptors that most prominently characterized the relationship between the structure and the redox potential. Various machine learning methods for the screening of prospective organic battery electrode materials were deployed to select the most trustworthy strategy for the machine learning-aided design of organic redox materials. It was found that Ridge regression models perform better than Regression decision trees and Decision tree-based ensemble algorithms.
醌类的氧化还原特性是其作为有机电池组件优于传统无机组件的独特特性的基础。此外,这些氧化还原特性可以通过使用不同的取代基进行精确调节。另一方面,机器学习和统计学已被证明是高效进行新型材料计算机辅助设计的非常强大的方法。在此,我们展示了用于预测醌类氧化还原活性的机器学习方法,这些醌类有可能用作有机电池组件。为满足本研究的需要,创建了一个小型醌衍生分子数据库。为每个分子生成了大量量子化学和化学计量学描述符,随后应用不同的统计方法来选择最能显著表征结构与氧化还原电位之间关系的描述符。部署了各种用于筛选潜在有机电池电极材料的机器学习方法,以选择用于有机氧化还原材料机器学习辅助设计的最可靠策略。结果发现,岭回归模型的表现优于回归决策树和基于决策树的集成算法。