519 / 2019-03-05 16:05:13
Representation of Quantum States of Two-Dimensional simple Harmonic oscillator by convolution Neural Network
Deep convolution neural network; Two dimensional simple harmonic oscillator; Eigenvalue of ground state energy; Mean absolute error
终稿
Jiqiang He / Xian University of Technology
Jianping Ma / Xian University of Technology
Xin Peng / Xian University of Technology
Yantao Liu / Xian University of Technology
Wenxia Wang / Xian University of Technology
Ying Wang / Xian University of Technology
Dawei Zhang / Northwest University
it is proposed to train a deep convolution neural network (CNN) to learn the mapping relation between two-dimensional electrostatic potential and ground state energy eigenvalue by using the feature extraction and function fitting ability of machine learning (ML), so as to avoid the difficulty of strict solution of Schrodinger equation. The potential energy function is processed by CNN image processing, and the projection of the two-dimensional simple harmonic oscillator potential energy function on the two-dimensional plane is taken as input. Experimental results verify the validity of the method: the average absolute error is 0.0372eV,The Standard Deviation was 0.429eV, and the Relative Error was 1.042%.
重要日期
  • 会议日期

    06月12日

    2019

    06月14日

    2019

  • 06月12日 2019

    初稿截稿日期

  • 06月14日 2019

    注册截止日期

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