Deep learning—in particular, deep neural networks (DNNs)—as a mesh-free and self-adapting method has demonstrated its great potential in the field of scientific computation. In this work, inspired by the Deep Ritz method proposed by Weinan E et al. to solve a class of variational problems that generally stem from partial differential equations, we present a coupled deep neural network (CDNN) to solve the fourth-order biharmonic equation by splitting it into two well-posed Poisson’s problems, and then design a hybrid loss function for this method that can make efficiently the optimization of DNN easier and reduce the computer resources. In addition, a new activation function based on Fourier theory is introduced for our CDNN method. This act...
Lately, there has been a lot of research on using deep learning as an alternative method to solve PD...
In this paper, a deep learning algorithm based on Deep Galerkin method (DGM) is presented for the ap...
We present a multidimensional deep learning implementation of a stochastic branching algorithm for t...
Deep learning—in particular, deep neural networks (DNNs)—as a mesh-free and self-adapting method has...
High-dimensional PDEs have been a longstanding computational challenge. We propose to solve high-dim...
DoctorThis dissertation is about the neural network solutions of partial differential equations (PDE...
This work presents a method for the solution of partial diferential equations (PDE’s) using neural n...
In this paper, we study deep neural networks (DNNs) for solving high-dimensional evolution equations...
Neural Networks (NNs) can be used to solve Ordinary and Partial Differential Equations (ODEs and PDE...
In this article, a new deep learning architecture, named JDNN, has been proposed to approximate a nu...
The aim of this article is to analyze numerical schemes using two-layer neural networks with infinit...
We develop in this paper a multi-grade deep learning method for solving nonlinear partial differenti...
YesSeeking efficient solutions to nonlinear boundary value problems is a crucial challenge in the ma...
Partial differential equations (PDEs) are essential mathematical models for describing a wide range ...
In this work, we develop an efficient solver based on deep neural networks for the Poisson equation ...
Lately, there has been a lot of research on using deep learning as an alternative method to solve PD...
In this paper, a deep learning algorithm based on Deep Galerkin method (DGM) is presented for the ap...
We present a multidimensional deep learning implementation of a stochastic branching algorithm for t...
Deep learning—in particular, deep neural networks (DNNs)—as a mesh-free and self-adapting method has...
High-dimensional PDEs have been a longstanding computational challenge. We propose to solve high-dim...
DoctorThis dissertation is about the neural network solutions of partial differential equations (PDE...
This work presents a method for the solution of partial diferential equations (PDE’s) using neural n...
In this paper, we study deep neural networks (DNNs) for solving high-dimensional evolution equations...
Neural Networks (NNs) can be used to solve Ordinary and Partial Differential Equations (ODEs and PDE...
In this article, a new deep learning architecture, named JDNN, has been proposed to approximate a nu...
The aim of this article is to analyze numerical schemes using two-layer neural networks with infinit...
We develop in this paper a multi-grade deep learning method for solving nonlinear partial differenti...
YesSeeking efficient solutions to nonlinear boundary value problems is a crucial challenge in the ma...
Partial differential equations (PDEs) are essential mathematical models for describing a wide range ...
In this work, we develop an efficient solver based on deep neural networks for the Poisson equation ...
Lately, there has been a lot of research on using deep learning as an alternative method to solve PD...
In this paper, a deep learning algorithm based on Deep Galerkin method (DGM) is presented for the ap...
We present a multidimensional deep learning implementation of a stochastic branching algorithm for t...