On a neural network approach for solving potential control problem of the semiclassical Schrödinger equation

05/30/2023
by   Yating Wang, et al.
0

Robust control design for quantum systems is a challenging and key task for practical technology. In this work, we apply neural networks to learn the control problem for the semiclassical Schrödinger equation, where the control variable is the potential given by an external field that may contain uncertainties. Inspired by a relevant work [29], we incorporate the sampling-based learning process into the training of networks, while combining with the fast time-splitting spectral method for the Schrödinger equation in the semiclassical regime. The numerical results have shown the efficiency and accuracy of our proposed deep learning approach.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/06/2021

Predicting Quantum Potentials by Deep Neural Network and Metropolis Sampling

The hybridizations of machine learning and quantum physics have caused e...
research
03/19/2019

Deep Eikonal Solvers

A deep learning approach to numerically approximate the solution to the ...
research
07/07/2020

A deep learning based nonlinear upscaling method for transport equations

We will develop a nonlinear upscaling method for nonlinear transport equ...
research
02/13/2017

Differential Evolution for Quantum Robust Control: Algorithm, Applications and Experiments

Robust control design for quantum systems has been recognized as a key t...
research
02/19/2022

Numerical study of the logarithmic Schrodinger equation with repulsive harmonic potential

We consider the Schrodinger equation with a logarithmic nonlinearity and...
research
08/09/2022

A Model-Constrained Tangent Manifold Learning Approach for Dynamical Systems

Real time accurate solutions of large scale complex dynamical systems ar...
research
03/25/2020

EikoNet: Solving the Eikonal equation with Deep Neural Networks

The recent deep learning revolution has created an enormous opportunity ...

Please sign up or login with your details

Forgot password? Click here to reset