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Modelling the dynamics of nonlinear partial differential equations using neural networks

机译:使用神经网络对非线性偏微分方程的动力学建模

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摘要

The dynamics of two nonlinear partial differential equations (PDEs) known as the Kuramoto–Sivashinsky (K–S) equation and the two-dimensional Navier–Stokes (N–S) equations are analyzed using Karhunen–Loéve (K–L) decomposition and artificial neural networks (ANN). For the K–S equation, numerical simulations using a pseudospectral Galerkin method is presented at a bifurcation parameter α=17.75, where a dynamical behavior represented by a heteroclinic connection is obtained. We apply K–L decomposition on the numerical simulation data with the task of reducing the data into a set of data coefficients. Then we use ANN to model, and predict the data coefficients at a future time. It is found that training the neural networks with only the first data coefficient is enough to capture the underlying dynamics, and to predict for the other remaining data coefficients. As for the two-dimensional N–S equation, a quasiperiodic behavior represented in phase space by a torus is analyzed at Re=14.0. Applying the symmetry observed in the two-dimensional N–S equations on the quasiperiodic behavior, eight different tori were obtained. We show that by exploiting the symmetries of the equation and using K–L decomposition in conjunction with neural networks, a smart neural model is obtained.
机译:使用Karhunen-Loéve(K-L)分解分析了两个非线性的偏微分方程(PDE)的动力学,这些方程称为Kuramoto-Sivashinsky(KS)方程和二维Navier-Stokes(NS)方程。人工神经网络(ANN)。对于KS方程,在分叉参数α= 17.75处使用伪谱Galerkin方法进行了数值模拟,并获得了由异斜度连接表示的动力学行为。我们将KL分解应用于数值模拟数据,其任务是将数据简化为一组数据系数。然后,我们使用ANN进行建模,并预测将来的数据系数。发现仅用第一个数据系数训练神经网络就足以捕获基本的动力学,并预测其他剩余的数据系数。至于二维NS方程,在Re = 14.0处分析了一个由圆环表示在相空间中的准周期行为。将二维NS方程中观察到的对称性应用到准周期行为上,获得了八个不同的花托。我们表明,通过利用方程的对称性并结合神经网络使用K–L分解,可以获得智能的神经模型。

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