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

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          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.

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          Efficiency of ab-initio total energy calculations for metals and semiconductors using a plane-wave basis set

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            Support-vector networks

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              Is Open Access

              SwissADME: a free web tool to evaluate pharmacokinetics, drug-likeness and medicinal chemistry friendliness of small molecules

              To be effective as a drug, a potent molecule must reach its target in the body in sufficient concentration, and stay there in a bioactive form long enough for the expected biologic events to occur. Drug development involves assessment of absorption, distribution, metabolism and excretion (ADME) increasingly earlier in the discovery process, at a stage when considered compounds are numerous but access to the physical samples is limited. In that context, computer models constitute valid alternatives to experiments. Here, we present the new SwissADME web tool that gives free access to a pool of fast yet robust predictive models for physicochemical properties, pharmacokinetics, drug-likeness and medicinal chemistry friendliness, among which in-house proficient methods such as the BOILED-Egg, iLOGP and Bioavailability Radar. Easy efficient input and interpretation are ensured thanks to a user-friendly interface through the login-free website http://www.swissadme.ch. Specialists, but also nonexpert in cheminformatics or computational chemistry can predict rapidly key parameters for a collection of molecules to support their drug discovery endeavours.
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                Author and article information

                Contributors
                Journal
                Advanced Functional Materials
                Adv Funct Materials
                Wiley
                1616-301X
                1616-3028
                April 2023
                February 15 2023
                April 2023
                : 33
                : 17
                Affiliations
                [1 ] College of Electrical Engineering & New Energy Hubei Provincial Collaborative Innovation Center for New Energy Microgrid China Three Gorges University Yichang 443002 China
                [2 ] College of Materials and Chemical Engineering Key Laboratory of Inorganic Nonmetallic Crystalline and Energy Conversion Materials China Tree Gorges University Yichang 443002 China
                [3 ] Wuhan National Laboratory for Optoelectronics Huazhong University of Science and Technology Wuhan 430074 China
                [4 ] Institute of Carbon Neutrality and New Energy School of Electronics and Information Hangzhou Dianzi University Hangzhou 310018 China
                Article
                10.1002/adfm.202214271
                923a5633-4b08-4518-ac24-024ca47cc443
                © 2023

                http://onlinelibrary.wiley.com/termsAndConditions#vor

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