Issue 8, 2020

Machine learning-driven new material discovery

Abstract

New materials can bring about tremendous progress in technology and applications. However, the commonly used trial-and-error method cannot meet the current need for new materials. Now, a newly proposed idea of using machine learning to explore new materials is becoming popular. In this paper, we review this research paradigm of applying machine learning in material discovery, including data preprocessing, feature engineering, machine learning algorithms and cross-validation procedures. Furthermore, we propose to assist traditional DFT calculations with machine learning for material discovery. Many experiments and literature reports have shown the great effects and prospects of this idea. It is currently showing its potential and advantages in property prediction, material discovery, inverse design, corrosion detection and many other aspects of life.

Graphical abstract: Machine learning-driven new material discovery

Article information

Article type
Review Article
Submitted
13 May 2020
Accepted
22 Jun 2020
First published
22 Jun 2020
This article is Open Access
Creative Commons BY-NC license

Nanoscale Adv., 2020,2, 3115-3130

Machine learning-driven new material discovery

J. Cai, X. Chu, K. Xu, H. Li and J. Wei, Nanoscale Adv., 2020, 2, 3115 DOI: 10.1039/D0NA00388C

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