Solving parametric elliptic interface problems via interfaced operator network

08/28/2023
by   Sidi Wu, et al.
0

Learning operator mapping between infinite-dimensional Banach spaces via neural networks has attracted a considerable amount of attention in recent years. In this work, we propose an interfaced operator network (IONet) to solve parametric elliptic interface PDEs, where different coefficients, source terms and boundary conditions are considered as input features. To capture the discontinuities of both input functions and output solutions across the interface, IONet divides the entire domain into several separate sub-domains according to the interface, and leverages multiple branch networks and truck networks. Each branch network extracts latent representations of input functions at a fixed number of sensors on a specific sub-domain, and each truck network is responsible for output solutions on one sub-domain. In addition, tailored physics-informed loss of IONet is proposed to ensure physical consistency, which greatly reduces the requirement for training datasets and makes IONet effective without any paired input-output observations in the interior of the computational domain. Extensive numerical studies show that IONet outperforms existing state-of-the-art deep operator networks in terms of accuracy, efficiency, and versatility.

READ FULL TEXT
research
08/09/2023

Finite Element Operator Network for Solving Parametric PDEs

Partial differential equations (PDEs) underlie our understanding and pre...
research
09/02/2023

On the training and generalization of deep operator networks

We present a novel training method for deep operator networks (DeepONets...
research
09/26/2022

Variationally Mimetic Operator Networks

Operator networks have emerged as promising deep learning tools for appr...
research
12/15/2021

Exponential Convergence of Deep Operator Networks for Elliptic Partial Differential Equations

We construct deep operator networks (ONets) between infinite-dimensional...
research
04/15/2023

Learning in latent spaces improves the predictive accuracy of deep neural operators

Operator regression provides a powerful means of constructing discretiza...
research
05/07/2020

Model Reduction and Neural Networks for Parametric PDEs

We develop a general framework for data-driven approximation of input-ou...
research
08/11/2023

Size Lowerbounds for Deep Operator Networks

Deep Operator Networks are an increasingly popular paradigm for solving ...

Please sign up or login with your details

Forgot password? Click here to reset