Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models

In this article, a physics-informed neural network based on the time difference method is developed to solve one-dimensional (1D) and two-dimensional (2D) nonlinear time distributed-order models. The FBN-$ \theta $, which is constructed by combining the fractional second order backward difference fo...

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Published in:Networks and Heterogeneous Media
Main Authors: Wenkai Liu, Yang Liu, Hong Li, Yining Yang
Format: Article
Language:English
Published: AIMS Press 2023-11-01
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/nhm.2023080
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author Wenkai Liu
Yang Liu
Hong Li
Yining Yang
author_facet Wenkai Liu
Yang Liu
Hong Li
Yining Yang
author_sort Wenkai Liu
collection DOAJ
container_title Networks and Heterogeneous Media
description In this article, a physics-informed neural network based on the time difference method is developed to solve one-dimensional (1D) and two-dimensional (2D) nonlinear time distributed-order models. The FBN-$ \theta $, which is constructed by combining the fractional second order backward difference formula (BDF2) with the fractional Newton-Gregory formula, where a second-order composite numerical integral formula is used to approximate the distributed-order derivative, and the time direction at time $ t_{n+\frac{1}{2}} $ is approximated by making use of the Crank-Nicolson scheme. Selecting the hyperbolic tangent function as the activation function, we construct a multi-output neural network to obtain the numerical solution, which is constrained by the time discrete formula and boundary conditions. Automatic differentiation technology is developed to calculate the spatial partial derivatives. Numerical results are provided to confirm the effectiveness and feasibility of the proposed method and illustrate that compared with the single output neural network, using the multi-output neural network can effectively improve the accuracy of the predicted solution and save a lot of computing time.
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spelling doaj-art-2d9dcf9bfbac4ddebe057865df49eec12025-10-29T06:34:38ZengAIMS PressNetworks and Heterogeneous Media1556-18012023-11-011841899191810.3934/nhm.2023080Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order modelsWenkai Liu0Yang Liu1Hong Li2Yining Yang3School of Mathematical Sciences, Inner Mongolia University, Hohhot 010021, ChinaSchool of Mathematical Sciences, Inner Mongolia University, Hohhot 010021, ChinaSchool of Mathematical Sciences, Inner Mongolia University, Hohhot 010021, ChinaSchool of Mathematical Sciences, Inner Mongolia University, Hohhot 010021, ChinaIn this article, a physics-informed neural network based on the time difference method is developed to solve one-dimensional (1D) and two-dimensional (2D) nonlinear time distributed-order models. The FBN-$ \theta $, which is constructed by combining the fractional second order backward difference formula (BDF2) with the fractional Newton-Gregory formula, where a second-order composite numerical integral formula is used to approximate the distributed-order derivative, and the time direction at time $ t_{n+\frac{1}{2}} $ is approximated by making use of the Crank-Nicolson scheme. Selecting the hyperbolic tangent function as the activation function, we construct a multi-output neural network to obtain the numerical solution, which is constrained by the time discrete formula and boundary conditions. Automatic differentiation technology is developed to calculate the spatial partial derivatives. Numerical results are provided to confirm the effectiveness and feasibility of the proposed method and illustrate that compared with the single output neural network, using the multi-output neural network can effectively improve the accuracy of the predicted solution and save a lot of computing time.https://www.aimspress.com/article/doi/10.3934/nhm.2023080multi-output neural networkfbn-$ \theta $ methodcrank-nicolson schemenonlinear time distributed-order models
spellingShingle Wenkai Liu
Yang Liu
Hong Li
Yining Yang
Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
multi-output neural network
fbn-$ \theta $ method
crank-nicolson scheme
nonlinear time distributed-order models
title Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
title_full Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
title_fullStr Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
title_full_unstemmed Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
title_short Multi-output physics-informed neural network for one- and two-dimensional nonlinear time distributed-order models
title_sort multi output physics informed neural network for one and two dimensional nonlinear time distributed order models
topic multi-output neural network
fbn-$ \theta $ method
crank-nicolson scheme
nonlinear time distributed-order models
url https://www.aimspress.com/article/doi/10.3934/nhm.2023080
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