Physics-informed neural networks approach for 1D and 2D Gray-Scott systems

Giampaolo, Fabio, De Rosa, Mariapia, Qi, Pian, Izzo, Stefano, Cuomo, Salvatore
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引用次数: 9

Abstract

Nowadays, in the Scientific Machine Learning (SML) research field, the traditional machine learning (ML) tools and scientific computing approaches are fruitfully intersected for solving problems modelled by Partial Differential Equations (PDEs) in science and engineering applications. Challenging SML methodologies are the new computational paradigms named Physics-Informed Neural Networks (PINNs). PINN has revolutionized the classical adoption of ML in scientific computing, representing a novel class of promising algorithms where the learning process is constrained to satisfy known physical laws described by differential equations. In this paper, we propose a PINN-based computational study to deal with a non-linear partial differential equations system. In particular, using this approach, we solve the Gray-Scott model, a reaction–diffusion system that involves an irreversible chemical reaction between two reactants. In the unstable region of the model, we consider some a priori information related to dynamical behaviors, i. e. a supervised approach that relies on a finite difference method (FDM). Finally, simulation results show that PINNs can successfully provide an approximated Grey-Scott system solution, reproducing the characteristic Turing patterns for different parameter configurations.
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一维和二维Gray-Scott系统的物理信息神经网络方法
目前,在科学机器学习(SML)研究领域,传统的机器学习(ML)工具和科学计算方法在解决科学和工程应用中的偏微分方程(PDEs)建模问题方面取得了丰硕的成果。具有挑战性的SML方法是新的计算范式,称为物理信息神经网络(pinn)。PINN彻底改变了ML在科学计算中的经典应用,代表了一类新的有前途的算法,其中学习过程受到约束,以满足由微分方程描述的已知物理定律。本文提出了一种基于pup的非线性偏微分方程组的计算方法。特别是,使用这种方法,我们解决了Gray-Scott模型,这是一个涉及两个反应物之间不可逆化学反应的反应扩散系统。在模型的不稳定区域,我们考虑了一些与动力学行为相关的先验信息,即依赖于有限差分法(FDM)的监督方法。最后,仿真结果表明,pinn可以成功地提供近似的gray - scott系统解,再现不同参数配置下的特征图灵模式。
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来源期刊
Advanced Modeling and Simulation in Engineering Sciences
Advanced Modeling and Simulation in Engineering Sciences Engineering-Engineering (miscellaneous)
CiteScore
6.80
自引率
0.00%
发文量
22
审稿时长
30 weeks
期刊介绍: The research topics addressed by Advanced Modeling and Simulation in Engineering Sciences (AMSES) cover the vast domain of the advanced modeling and simulation of materials, processes and structures governed by the laws of mechanics. The emphasis is on advanced and innovative modeling approaches and numerical strategies. The main objective is to describe the actual physics of large mechanical systems with complicated geometries as accurately as possible using complex, highly nonlinear and coupled multiphysics and multiscale models, and then to carry out simulations with these complex models as rapidly as possible. In other words, this research revolves around efficient numerical modeling along with model verification and validation. Therefore, the corresponding papers deal with advanced modeling and simulation, efficient optimization, inverse analysis, data-driven computation and simulation-based control. These challenging issues require multidisciplinary efforts – particularly in modeling, numerical analysis and computer science – which are treated in this journal.
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