Litcius/Paper detail

Machine learning: Accelerating materials development for energy storage and conversion

An Chen, Xu Zhang, Zhen Zhou

2020InfoMat364 citationsDOIOpen Access PDF

Abstract

Abstract With the development of modern society, the requirement for energy has become increasingly important on a global scale. Therefore, the exploration of novel materials for renewable energy technologies is urgently needed. Traditional methods are difficult to meet the requirements for materials science due to long experimental period and high cost. Nowadays, machine learning (ML) is rising as a new research paradigm to revolutionize materials discovery. In this review, we briefly introduce the basic procedure of ML and common algorithms in materials science, and particularly focus on latest progress in applying ML to property prediction and materials development for energy‐related fields, including catalysis, batteries, solar cells, and gas capture. Moreover, contributions of ML to experiments are involved as well. We highly expect that this review could lead the way forward in the future development of ML in materials science. image

Topics & Concepts

Renewable energyComputer scienceDevelopment (topology)Scale (ratio)Energy storageLead (geology)Solar energyRisk analysis (engineering)Systems engineeringData scienceBiochemical engineeringNanotechnologyProcess engineeringEngineeringMaterials sciencePower (physics)Electrical engineeringBusinessMathematical analysisQuantum mechanicsGeomorphologyGeologyMathematicsPhysicsMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyAdvanced Photocatalysis Techniques