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基于守恒约束物理信息神经网络的刚性化学动力学长时模拟

方涵敏 黄文龙 王子寒

空间科学学报2025,Vol.45Issue(2):277-287,11.
空间科学学报2025,Vol.45Issue(2):277-287,11.DOI:10.11728/cjss2025.02.2024-0149

基于守恒约束物理信息神经网络的刚性化学动力学长时模拟

Long-time Simulation of Stiff Chemical Kinetics Using Conservation-constrained Physics-informed Neural Network

方涵敏 1黄文龙 1王子寒1

作者信息

  • 1. 安徽工业大学计算机科学与技术学院 马鞍山 243002
  • 折叠

摘要

Abstract

Long-termsimulationof Partial Differential Equations(PDEs)holdssignificant applica-tions across various fields,including space physics and atmospheric science.Conventional numerical tech-niques,such as the finite difference,finite element,and finite volume methods have been extensively em-ployed to solve PDEs across various disciplines.However,these methods often struggle with dimensional curse and complex geometry.In recent years,Physics-Informed Neural Network(PINN),which inte-grates physical laws within deep learning frameworks,has emerged as a powerful alternative for solving PDEs.Since PINN and its variants are mesh-free,they can avoid dimensional curse to a certain degree.Nonetheless,deep learning related approaches frequently encounter optimization challenges,particularly when applied to multi-time scale issues such as stiff chemical kinetics equations,which involve multiple reactions with different rates,leading to both fast and slow dynamics coexisting.To address these issues,this study introduces a novel Conservation-Constrained Physics-Informed Neural Network(CC-PINN)approach.This method combines shared-branch networks with a segmented sampling strategy.First,the shared-branch networks can effectively deal with coupling equations and reduce the difficulties during the optimization of neural networks.On the other hand,the conservation constraint is embedded into the loss function,ensuring the conservation of physical laws and the accuracy of the simulation results,which significantly improves the performance of PINN.At the same time,according to the dynamics of chemical kinetics in different time intervals,the segmented sampling strategy is adopted,which further improves the accuracy and stability of long-term simulation.In addition,the influence of different ex-pressions of conservation constraints has also been discussed.Experimental results clearly show that,by combining the shared-branch networks and segmented sampling strategy,the new proposed CC-PINN can accurately integrate the stiff chemical kinetics equations in a long-time scale.In summary,this re-search contributes a new tool for solving problems,such as collisionless plasma fluctuations and interstel-lar matter chemical reaction,in space science.

关键词

刚性化学动力学/物理信息神经网络/守恒约束/分段采样/长时模拟

Key words

Stiff chemical kinetics/Physics-informed neural network/Conservation constraint/Segmented sampling/Long-time simulation

分类

计算机与自动化

引用本文复制引用

方涵敏,黄文龙,王子寒..基于守恒约束物理信息神经网络的刚性化学动力学长时模拟[J].空间科学学报,2025,45(2):277-287,11.

基金项目

国家自然科学基金项目(12205005)和安徽省自然科学基金项目(2108085QA34)共同资助 (12205005)

空间科学学报

OA北大核心

0254-6124

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