Renewable energy sources are of great interest to combat global warming, yet promising sources like photovoltaic (PV) cells are not efficient and cheap enough to act as an alternative to traditional energy sources. Perovskite has high potential as a PV material but engineering the right material for a specific application is often a lengthy process. In this paper, ABO3 type perovskites' formability is predicted and its crystal structure is classified using machine learning with high accuracy, which provides a fast screening process. Although the study was done with solar-cell application in mind, the prediction framework is generic enough to be used for other purposes. Formability of perovskite is predicted and its crystal structure is classified with an accuracy of 98.57% and 90.53% respectively using Random Forest after 5-fold cross-validation. Our machine learning model may aid in the accelerated development of a desired perovskite structure by providing a quick mechanism to get insight into the material's properties in advance.
翻译:可再生能源对于抗击全球变暖具有极大的兴趣,然而光电电池等有希望的能源效率不高,价格不高,不足以替代传统能源。 Perovskite作为光电材料具有很高的潜力,但设计适合特定应用的正确材料往往是一个漫长的过程。在本文中,ABO3型的百草枯成形性得到预测,其晶体结构通过机体学习进行分类,从而提供快速筛选过程。虽然研究是在太阳能电池应用方面进行的,但预测框架是通用的,足以用于其他目的。预测百草枯的形成性,其晶体结构在经过5倍交叉校验后,使用随机森林的精确度分别为98.57%和90.53%。我们的机器学习模型可以提供快速机制,提前了解材料的特性,从而帮助加速开发理想的渗透结构。