Accelerated discovery of ultraincompressible, superhard materials physics-enhanced active learning.

Journal: Materials horizons
Published Date:

Abstract

The discovery of ultraincompressible, superhard materials is constrained by the high computational cost of screening vast chemical spaces using density functional theory (DFT). To address this, we introduced a machine learning framework that integrates crystal graph convolutional neural networks (CGCNN) with physics-based atomic stiffness descriptors derived from bond-level mechanical models. This physics-enhanced approach achieves superior accuracy in predicting bulk and shear moduli while maintaining interpretability. By employing active learning to efficiently prioritize candidates from a pool of over 2.7 million inorganic crystals, we reduced the reliance on DFT validation and identified 632 ultraincompressible materials (bulk modulus > 400 GPa) and 15 superhard crystals (Vickers hardness > 40 GPa). Remarkably, over 90% of these ultraincompressible candidates and over 60% of these superhard materials are previously uncharacterized. Structural analysis revealed that ultraincompressibility predominantly emerges in low-symmetry intermetallic compounds showing strong Os/Re/Ir compositional preference, whereas superhard characteristics primarily associate with ceramic-based systems, including covalent compounds formed by light elements and transition metal-light element compounds exhibiting partial covalent bonding. Our methodology not only expands the known family of ultraincompressible, superhard materials but also overcomes a major scalability barrier in computational material discovery. These predictions, rigorously validated through DFT, establish a physics-grounded, data-driven pipeline to accelerate the exploration of extreme-performance materials for industrial applications.

Authors

  • Xiaoang Yuan
    Department of Engineering Mechanics, School of Civil Engineering, Wuhan University, 430072, Wuhan, China. enlaigao@whu.edu.cn.
  • Bo Zhu
    Department of Pharmacy, Suizhou Hospital, Hubei University of Medicine, Suizhou, 441300, Hubei Province, China.
  • Chunbo Zhang
    Department of Engineering Mechanics, School of Civil Engineering, Wuhan University, 430072, Wuhan, China. enlaigao@whu.edu.cn.
  • Qifan Zheng
    Department of Engineering Mechanics, School of Civil Engineering, Wuhan University, 430072, Wuhan, China. enlaigao@whu.edu.cn.
  • Enlai Gao
    Department of Engineering Mechanics, School of Civil Engineering, Wuhan University, 430072, Wuhan, China. enlaigao@whu.edu.cn.
  • Qian Shao
    Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo 315211, China.

Keywords

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