LGAINAOct 7, 2023

PMNN:Physical Model-driven Neural Network for solving time-fractional differential equations

arXiv:2310.04788v125 citationsh-index: 4
Originality Incremental advance
AI Analysis

This is an incremental improvement for researchers in computational mathematics and physics, addressing the specific problem of solving time-fractional differential equations.

The paper tackles solving time-fractional differential equations by proposing a Physical Model-driven Neural Network (PMNN) method that integrates deep neural networks with interpolation approximation of fractional derivatives, resulting in validated efficiency and accuracy through numerical experiments.

In this paper, an innovative Physical Model-driven Neural Network (PMNN) method is proposed to solve time-fractional differential equations. It establishes a temporal iteration scheme based on physical model-driven neural networks which effectively combines deep neural networks (DNNs) with interpolation approximation of fractional derivatives. Specifically, once the fractional differential operator is discretized, DNNs are employed as a bridge to integrate interpolation approximation techniques with differential equations. On the basis of this integration, we construct a neural-based iteration scheme. Subsequently, by training DNNs to learn this temporal iteration scheme, approximate solutions to the differential equations can be obtained. The proposed method aims to preserve the intrinsic physical information within the equations as far as possible. It fully utilizes the powerful fitting capability of neural networks while maintaining the efficiency of the difference schemes for fractional differential equations. Moreover, we validate the efficiency and accuracy of PMNN through several numerical experiments.

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