4.8 Article

Physics-Based Feature Makes Machine Learning Cognizing Crystal Properties Simple

期刊

JOURNAL OF PHYSICAL CHEMISTRY LETTERS
卷 12, 期 35, 页码 8521-8527

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.jpclett.1c02273

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资金

  1. National Natural Science Foundation of China [51861145315, 11929401, 12074241]
  2. Independent Research and Development Project of State Key Laboratory of Advanced Special Steel, Shanghai Key Laboratory of Advanced Ferro Metallurgy, Shanghai University [SKLASS 2020-Z07]
  3. Science and Technology Commission of Shanghai Municipality [19DZ2270200, 19010500500, 20501130600, 18520723500]
  4. High Performance Computing Center, Shanghai University

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The proposed low-cost electron probability waves (EPW) descriptor based on electronic structures shows promise in distinguishing materials and determining electronic structure properties, providing a new method for rational design and discovery of materials.
Machine learning (ML) accelerates the rational design and discovery of materials, where the feature plays a critical role in the ML model training. We propose a low-cost electron probability waves (EPW) descriptor based on electronic structures, which is extracted from highsymmetry points in the Brillouin zone. In the task of distinguishing ferromagnetic or antiferromagnetic material, it achieves an accuracy (ACC) at 0.92 and an area under the receiver operating characteristic curve (AUC) at 0.83 by 10-fold cross-validation. Furthermore, EPW excels at classifying metal/semiconductors and judging the direct/indirect bandgap of semiconductors. The distribution of electron clouds is an essential criterion for the origin of ferromagnetism, and EPW acts as an emulation of the electronic structure, which is the key to the achievements. Our EPW-based ML model obtains ACC and AUC equivalent to crystal graph features-based deep learning models for tasks with physical recognitions in electronic states.

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