Physics-Informed Neural Networks for Discovering Localised Eigenstates in Disordered Media

05/11/2023
by   Liam Harcombe, et al.
0

The Schrödinger equation with random potentials is a fundamental model for understanding the behaviour of particles in disordered systems. Disordered media are characterised by complex potentials that lead to the localisation of wavefunctions, also called Anderson localisation. These wavefunctions may have similar scales of eigenenergies which poses difficulty in their discovery. It has been a longstanding challenge due to the high computational cost and complexity of solving the Schrödinger equation. Recently, machine-learning tools have been adopted to tackle these challenges. In this paper, based upon recent advances in machine learning, we present a novel approach for discovering localised eigenstates in disordered media using physics-informed neural networks (PINNs). We focus on the spectral approximation of Hamiltonians in one dimension with potentials that are randomly generated according to the Bernoulli, normal, and uniform distributions. We introduce a novel feature to the loss function that exploits known physical phenomena occurring in these regions to scan across the domain and successfully discover these eigenstates, regardless of the similarity of their eigenenergies. We present various examples to demonstrate the performance of the proposed approach and compare it with isogeometric analysis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/06/2023

An Analysis of Physics-Informed Neural Networks

Whilst the partial differential equations that govern the dynamics of ou...
research
09/29/2021

Residual-based adaptivity for two-phase flow simulation in porous media using Physics-informed Neural Networks

This paper aims to provide a machine learning framework to simulate two-...
research
05/16/2022

Scalable algorithms for physics-informed neural and graph networks

Physics-informed machine learning (PIML) has emerged as a promising new ...
research
07/23/2023

Physics-Informed Machine Learning of Argon Gas-Driven Melt Pool Dynamics

Melt pool dynamics in metal additive manufacturing (AM) is critical to p...
research
06/20/2023

Implicit neural representation with physics-informed neural networks for the reconstruction of the early part of room impulse responses

Recently deep learning and machine learning approaches have been widely ...
research
07/20/2023

Boundary integrated neural networks (BINNs) for acoustic radiation and scattering

This paper presents a novel approach called the boundary integrated neur...
research
07/09/2020

Discovering Phase Field Models from Image Data with the Pseudo-spectral Physics Informed Neural Networks

In this paper, we introduce a new deep learning framework for discoverin...

Please sign up or login with your details

Forgot password? Click here to reset