Litcius/Paper detail

Machine Learning for Perovskite Solar Cells and Component Materials: Key Technologies and Prospects

Yiming Liu, Xinyu Tan, Jie Liang, Hongwei Han, Peng Xiang, Wensheng Yan

2023Advanced Functional Materials155 citationsDOIOpen Access PDF

Abstract

Abstract Data‐driven epoch, the development of machine learning (ML) in materials and device design is an irreversible trend. Its ability and efficiency to handle nonlinear and game‐playing problems is unmatched by traditional simulation computing software and trial‐error experiments. Perovskite solar cells are complex physicochemical devices (systems) that consist of perovskite materials, transport layer materials, and electrodes. Predicting the physicochemical properties and screening the component materials related to perovskite solar cells is the strong point of ML. However, the applications of ML in perovskite solar cells and component materials has only begun to boom in the last two years, so it is necessary to provide a review of the involved ML technologies, the application status, the facing urgent challenges and the development blueprint.

Topics & Concepts

Perovskite (structure)Component (thermodynamics)BlueprintMaterials scienceKey (lock)BoomNanotechnologyEngineering physicsComputer scienceProcess engineeringMechanical engineeringChemical engineeringEngineeringThermodynamicsPhysicsEnvironmental engineeringComputer securityPerovskite Materials and ApplicationsMachine Learning in Materials ScienceAdvanced Memory and Neural Computing