Recent Advances in Machine Learning‐Assisted Multiscale Design of Energy Materials
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Abstract
Abstract This review highlights recent advances in machine learning (ML)‐assisted design of energy materials. Initially, ML algorithms were successfully applied to screen materials databases by establishing complex relationships between atomic structures and their resulting properties, thus accelerating the identification of candidates with desirable properties. Recently, the development of highly accurate ML interatomic potentials and generative models has not only improved the robust prediction of physical properties, but also significantly accelerated the discovery of materials. In the past couple of years, ML methods have enabled high‐precision first‐principles predictions of electronic and optical…
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142
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1Topics & keywords
Topics
Keywords
- Generative grammar
- Transformative learning
- Computer science
- Process (computing)
- Nanotechnology
- Materials science
- Scale (ratio)
- Artificial intelligence
UN Sustainable Development Goals
- Affordable and clean energy
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