Machine learning aided atomic structure identification of interfacial ionic hydrates from AFM images

Author:

Tang Binze12,Song Yizhi12ORCID,Qin Mian2,Tian Ye12,Wu Zhen Wei3,Jiang Ying12456,Cao Duanyun78,Xu Limei1246

Affiliation:

1. International Center for Quantum Materials, Peking University , Beijing , 100871 , China

2. School of Physics, Peking University , Beijing , 100871 , China

3. Institute of Nonequilibrium Systems, School of Systems Science, Beijing Normal University , 100875 Beijing , China

4. Collaborative Innovation Center of Quantum Matter , Beijing , 100871 , China

5. CAS Center for Excellence in Topological Quantum Computation, University of Chinese Academy of Sciences , Beijing , China

6. Interdisciplinary Institute of Light-Element Quantum Materials and Research Center for Light-Element Advanced Materials, Peking University , Beijing 100871 , China

7. Beijing Key Laboratory of Environmental Science and Engineering, School of Materials Science and Engineering, Beijing Institute of Technology , Beijing , 100081 , China

8. Beijing Institute of Technology Chongqing Innovation Center , Chongqing , 401120 , China

Abstract

Abstract Relevant to broad applied fields and natural processes, interfacial ionic hydrates have been widely studied by ultrahigh-resolution atomic force microscopy (AFM). However, the complex relationship between AFM signal and the investigated system makes it difficult to determine the atomic structure of such a complex system from AFM images alone. Using machine learning, we achieved precise identification of the atomic structures of interfacial water/ionic hydrates based on AFM images, including the position of each atom and the orientations of water molecules. Furthermore, it was found that structure prediction of ionic hydrates can be achieved cost-effectively by transfer learning using neural network (NN) trained with easily available interfacial water data. Thus, this work provides an efficient and economical methodology which not only opens up avenues to determine atomic structures of more complex systems from AFM images, but may also help to interpret other scientific studies involving sophisticated experimental results.

Publisher

Oxford University Press (OUP)

Subject

Multidisciplinary

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