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Deciphering quantum fingerprints in electric conductance

Author

Listed:
  • Shunsuke Daimon

    (The University of Tokyo
    Institute for AI and Beyond, The University of Tokyo)

  • Kakeru Tsunekawa

    (The University of Tokyo)

  • Shinji Kawakami

    (The University of Tokyo)

  • Takashi Kikkawa

    (The University of Tokyo
    WPI Advanced Institute for Materials Research, Tohoku University
    Institute for Materials Research, Tohoku University)

  • Rafael Ramos

    (WPI Advanced Institute for Materials Research, Tohoku University
    Centro de Investigación en Química Biolóxica e Materiais Moleculares (CIQUS), Departamento de Química-Física, Universidade de Santiago de Compostela)

  • Koichi Oyanagi

    (Institute for Materials Research, Tohoku University
    Iwate University)

  • Tomi Ohtsuki

    (Sophia University, Chiyoda)

  • Eiji Saitoh

    (The University of Tokyo
    Institute for AI and Beyond, The University of Tokyo
    WPI Advanced Institute for Materials Research, Tohoku University
    Institute for Materials Research, Tohoku University)

Abstract

When the electric conductance of a nano-sized metal is measured at low temperatures, it often exhibits complex but reproducible patterns as a function of external magnetic fields called quantum fingerprints in electric conductance. Such complex patterns are due to quantum–mechanical interference of conduction electrons; when thermal disturbance is feeble and coherence of the electrons extends all over the sample, the quantum interference pattern reflects microscopic structures, such as crystalline defects and the shape of the sample, giving rise to complicated interference. Although the interference pattern carries such microscopic information, it looks so random that it has not been analysed. Here we show that machine learning allows us to decipher quantum fingerprints; fingerprint patterns in magneto-conductance are shown to be transcribed into spatial images of electron wave function intensities (WIs) in a sample by using generative machine learning. The output WIs reveal quantum interference states of conduction electrons, as well as sample shapes. The present result augments the human ability to identify quantum states, and it should allow microscopy of quantum nanostructures in materials by making use of quantum fingerprints.

Suggested Citation

  • Shunsuke Daimon & Kakeru Tsunekawa & Shinji Kawakami & Takashi Kikkawa & Rafael Ramos & Koichi Oyanagi & Tomi Ohtsuki & Eiji Saitoh, 2022. "Deciphering quantum fingerprints in electric conductance," Nature Communications, Nature, vol. 13(1), pages 1-7, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-30767-w
    DOI: 10.1038/s41467-022-30767-w
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