Predicting Quantum Potentials by Deep Neural Network and Metropolis
Sampling
- URL: http://arxiv.org/abs/2106.03126v1
- Date: Sun, 6 Jun 2021 14:03:17 GMT
- Title: Predicting Quantum Potentials by Deep Neural Network and Metropolis
Sampling
- Authors: Rui Hong, Peng-Fei Zhou, Bin Xi, Jie Hu, An-Chun Ji and Shi-Ju Ran
- Abstract summary: We propose to solve the potential in the Schrodinger equation provided the eigenstate, by combining Metropolis sampling with deep neural network.
A loss function is proposed to explicitly involve the energy in the optimization for its accurate evaluation.
MPNN shows excellent accuracy and stability on predicting not just the potential to satisfy the Schrodinger equation, but also the eigen-energy.
- Score: 4.924802410009697
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The hybridizations of machine learning and quantum physics have caused
essential impacts to the methodology in both fields. Inspired by quantum
potential neural network, we here propose to solve the potential in the
Schrodinger equation provided the eigenstate, by combining Metropolis sampling
with deep neural network, which we dub as Metropolis potential neural network
(MPNN). A loss function is proposed to explicitly involve the energy in the
optimization for its accurate evaluation. Benchmarking on the harmonic
oscillator and hydrogen atom, MPNN shows excellent accuracy and stability on
predicting not just the potential to satisfy the Schrodinger equation, but also
the eigen-energy. Our proposal could be potentially applied to the ab-initio
simulations, and to inversely solving other partial differential equations in
physics and beyond.
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