Model order reduction for parameterized electromagnetic problems using matrix decomposition and deep neural networks

07/16/2022
by   Xiao-Feng He, et al.
0

A non-intrusive model order reduction (MOR) method for solving parameterized electromagnetic scattering problems is proposed in this paper. A database collecting snapshots of high-fidelity solutions is built by solving the parameterized time-domain Maxwell equations for some values of the material parameters using a fullwave solver based on a high order discontinuous Galerkin time-domain (DGTD) method. To perform a prior dimensionality reduction, a set of reduced basis (RB) functions are extracted from the database via a two-step proper orthogonal decomposition (POD) method. Projection coefficients of the reduced basis functions are further compressed through a convolutional autoencoder (CAE) network. Singular value decomposition (SVD) is then used to extract the principal components of the reduced-order matrices generated by CAE, and a cubic spline interpolation-based (CSI) approach is employed for approximating the dominating time- and parameter-modes of the reduced-order matrices. The generation of the reduced basis and the training of the CAE and CSI are accomplished in the offline stage, thus the RB solution for given time/parameter values can be quickly recovered via outputs of the interpolation model and decoder network. In particular, the offline and online stages of the proposed RB method are completely decoupled, which ensures the validity of the method. The performance of the proposed CAE-CSI ROM is illustrated with numerical experiments for scattering of a plane wave by a 2-D dielectric disk and a multi-layer heterogeneous medium.

READ FULL TEXT

page 14

page 16

page 17

page 21

page 22

research
03/23/2021

Non-intrusive reduced order modeling of parametric electromagnetic scattering problems through Gaussian process regression

This paper is concerned with the design of a non-intrusive model order r...
research
08/15/2020

An autoencoder-based reduced-order model for eigenvalue problems with application to neutron diffusion

Using an autoencoder for dimensionality reduction, this paper presents a...
research
01/28/2021

Non-intrusive reduced order modeling of poroelasticity of heterogeneous media based on a discontinuous Galerkin approximation

We present a non-intrusive model reduction framework for linear poroelas...
research
11/14/2022

Reduced order modelling of nonaffine problems on parameterized NURBS multipatch geometries

This contribution explores the combined capabilities of reduced basis me...
research
02/15/2023

A New Reduced Basis Method for Parabolic Equations Based on Single-Eigenvalue Acceleration

In this paper, we develop a new reduced basis (RB) method, named as Sing...
research
11/06/2022

Principled interpolation of Green's functions learned from data

We present a data-driven approach to mathematically model physical syste...

Please sign up or login with your details

Forgot password? Click here to reset