Decoding Phases of Matter by Machine-Learning Raman Spectroscopy

Anyang Cui (崔安阳), Kai Jiang (姜凯), Minhong Jiang (江民红), Liyan Shang (商丽燕), Liangqing Zhu (朱亮清), Zhigao Hu (胡志高), Guisheng Xu (许桂生), and Junhao Chu (褚君浩)
Phys. Rev. Applied 12, 054049 – Published 21 November 2019
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Abstract

Phase transitions of condensed matter have long been a spotlight issue studied by extensive theoretical and experimental investigations. Machine learning can build an integral model-dominant workflow to statistically analyze the collective dynamics of materials and deduce the structure. We use a support-vector-machine algorithm to propose an effective method to recognize the orthorhombic, tetragonal, and cubic phases as well as to construct the phase diagram in ferroelectric crystals by mining and learning the behavioral vectors of the phonon vibrations in a crystalline lattice from Raman scattering, which is a tool typically used to detect structural properties at the molecular level. This study creates a unifying framework including material synthesis and characterization, feature engineering and principal-component analysis, learner evaluation and optimization, structure prediction, and future development of the model. It paves the way to the application of a generic approach for predicting unexplored structures and materials in the future.

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  • Received 15 May 2019
  • Revised 26 September 2019

DOI:https://doi.org/10.1103/PhysRevApplied.12.054049

© 2019 American Physical Society

Physics Subject Headings (PhySH)

Condensed Matter, Materials & Applied Physics

Authors & Affiliations

Anyang Cui (崔安阳)1, Kai Jiang (姜凯)1, Minhong Jiang (江民红)2, Liyan Shang (商丽燕)1, Liangqing Zhu (朱亮清)1, Zhigao Hu (胡志高)1,3,4,*, Guisheng Xu (许桂生)5, and Junhao Chu (褚君浩)1,3,4

  • 1Technical Center for Multifunctional Magneto-Optical Spectroscopy (Shanghai), Department of Materials, School of Physics and Electronic Science, East China Normal University, 200241 Shanghai, China
  • 2Guangxi Key Laboratory of Information Materials, Department of Materials Science and Engineering, Guilin University of Electronic Technology, Guilin, 541004 Guangxi, China
  • 3Collaborative Innovation Center of Extreme Optics, Shanxi University, Taiyuan, 030006 Shanxi, China
  • 4Shanghai Institute of Intelligent Electronics & Systems, Fudan University, 200433 Shanghai, China
  • 5Key Laboratory of Transparent Opto-Functional Advanced Inorganic Materials, Shanghai Institute of Ceramics, Chinese Academy of Sciences, 201899 Shanghai, China

  • *zghu@ee.ecnu.edu.cn

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Vol. 12, Iss. 5 — November 2019

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