4.6 Review

Materials discovery through machine learning formation energy

期刊

JOURNAL OF PHYSICS-ENERGY
卷 3, 期 2, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/2515-7655/abe425

关键词

machine learning; intermetallics; neural network; support vector machine; random forrest; phase diagram; materials informatics

资金

  1. University of Houston Division of Research through a High Priority Area Research Seed Grant
  2. National Science Foundation [DMR-1847701]
  3. Welch Foundation [E-1981]
  4. Texas Center for Superconductivity at the University of Houston (TcSUH)

向作者/读者索取更多资源

The emerging field of materials informatics is utilizing artificial intelligence to discover new solid-state compounds and develop data-driven models for predicting physical properties. Machine learning methods have shown success in identifying materials with ideal properties, but data-guided discovery of entirely new compounds remains limited. Density functional theory data has become widely available for developing machine learning models to predict formation energy.
The budding field of materials informatics has coincided with a shift towards artificial intelligence to discover new solid-state compounds. The steady expansion of repositories for crystallographic and computational data has set the stage for developing data-driven models capable of predicting a bevy of physical properties. Machine learning methods, in particular, have already shown the ability to identify materials with near ideal properties for energy-related applications by screening crystal structure databases. However, examples of the data-guided discovery of entirely new, never-before-reported compounds remain limited. The critical step for determining if an unknown compound is synthetically accessible is obtaining the formation energy and constructing the associated convex hull. Fortunately, this information has become widely available through density functional theory (DFT) data repositories to the point that they can be used to develop machine learning models. In this Review, we discuss the specific design choices for developing a machine learning model capable of predicting formation energy, including the thermodynamic quantities governing material stability. We investigate several models presented in the literature that cover various possible architectures and feature sets and find that they have succeeded in uncovering new DFT-stable compounds and directing materials synthesis. To expand access to machine learning models for synthetic solid-state chemists, we additionally present MatLearn. This web-based application is intended to guide the exploration of a composition diagram towards regions likely to contain thermodynamically accessible inorganic compounds. Finally, we discuss the future of machine-learned formation energy and highlight the opportunities for improved predictive power toward the synthetic realization of new energy-related materials.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.6
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

暂无数据
暂无数据