Gyu-Hee Kim, Keonho Yoon, Chihyung Lee, Minwoo Nam, Doo-Hyun Ko
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引用次数: 0
摘要
尽管有机光伏(OPV)在过去二十年中不断发展,但发现新材料和优化高性能设备的诸多考虑因素仍然充满挑战。为了减少这些费力的过程并加快 OPV 的发展,我们构建了机器学习 (ML) 模型来预测光伏参数。我们设计了一种独特的描述符,可将分子结构划分为更小的单元,并将其转化为简洁的矩阵。这使得 ML 模型能够轻松跟踪结构单元,并了解哪些单元对预测目标性能非常重要,从而使 ML 模型能够优先考虑关键单元。因此,无需额外的测量或计算数据,ML 模型就能从分子结构信息中提取化学特性,并准确预测光伏参数。预测光伏参数(包括开路电压、短路电流密度、填充因子和功率转换效率)的 ML 模型均显示出显著的预测性能,皮尔逊相关系数超过 0.68。因此,在本文中,我们提出了一个高度精确和可靠的 OPV-ML 预测平台,该平台可以有力地筛选不必要的实验,加速 OPV 的开发。
Molecular structural descriptor-assisted machine learning for organic photovoltaics with perylenediimide acceptors
Although organic photovoltaics (OPVs) have evolved over the last two decades, the discovery of new materials and optimization of numerous considerations for high-performance devices remain challenging. To reduce these laborious processes and expedite the advancement of OPVs, we constructed machine learning (ML) models that predict photovoltaic parameters. We designed a unique descriptor that divides the molecular structure into smaller units and translates them into a concise matrix. This allows the ML model to easily track structural units and understand which units are important for predicting target performance, enabling the ML model to prioritize crucial units. Therefore, without requiring additional data from measurements or calculations, the ML models can extract chemical properties from molecular structural information and accurately predict the photovoltaic parameters. The ML models that predict the photovoltaic parameters, including the open-circuit voltage, short-circuit current density, fill factor, and power conversion efficiency, all show remarkably superior prediction performance, with Pearson correlation coefficients exceeding 0.68. Consequently, in this article, we propose a highly precise and reliable predictive OPV-ML platform that can robustly screen for unnecessary experiments and accelerate OPV development.
期刊介绍:
The Bulletin of the Korean Chemical Society is an official research journal of the Korean Chemical Society. It was founded in 1980 and reaches out to the chemical community worldwide. It is strictly peer-reviewed and welcomes Accounts, Communications, Articles, and Notes written in English. The scope of the journal covers all major areas of chemistry: analytical chemistry, electrochemistry, industrial chemistry, inorganic chemistry, life-science chemistry, macromolecular chemistry, organic synthesis, non-synthetic organic chemistry, physical chemistry, and materials chemistry.