A Deep Learning Method for Computing Eigenvalues of the Fractional Schr\"odinger Operator
Numerical Analysis
2023-08-29 v1 Numerical Analysis
Abstract
We present a novel deep learning method for computing eigenvalues of the fractional Schr\"odinger operator. Our approach combines a newly developed loss function with an innovative neural network architecture that incorporates prior knowledge of the problem. These improvements enable our method to handle both high-dimensional problems and problems posed on irregular bounded domains. We successfully compute up to the first 30 eigenvalues for various fractional Schr\"odinger operators. As an application, we share a conjecture to the fractional order isospectral problem that has not yet been studied.
Cite
@article{arxiv.2308.13986,
title = {A Deep Learning Method for Computing Eigenvalues of the Fractional Schr\"odinger Operator},
author = {Yixiao Guo and Pingbing Ming},
journal= {arXiv preprint arXiv:2308.13986},
year = {2023}
}