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Numerical solution of unsteady advection dispersion equation arising in contaminant transport through porous media using neural networks

机译:利用神经网络求解污染物通过多孔介质迁移时产生的非对流扩散方程的数值解。

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摘要

A soft computing approach based on artificial neural network (ANN) and optimization is presented for the numerical solution of the unsteady one-dimensional advection-dispersion equation (ADE) arising in contaminant transport through porous media. A length factor ANN method, based on automatic satisfaction of arbitrary boundary conditions (BCs) was chosen for the numerical solution of ADE. The strength of ANN is exploited to construct a trial approximate solution (TAS) for ADE in a way that it satisfies the initial or BCs exactly. An unsupervised error is constructed in approximating the solution of ADE which is minimized by training ANN using gradient descent algorithm (GDA). Two challenging test problems of ADE are considered in this paper, in which, the first problem has steep boundary layers near x = 1 and many numerical methods create non-physical oscillation near steep boundaries. Also for the second problem many numerical schemes suffer from computational noise and instability issues. The proposed method is advantageous as it does not require temporal discretization for the solution of the ADEs as well as it does not suffer from numerical instability. The reliability and effectiveness of the presented algorithm is investigated by sufficient large number of independent runs and comparison of results with other existing numerical methods. The results show that the present method removes the difficulties arising in the solution of the ADEs and provides solution with good accuracy. (C) 2016 Elsevier Ltd. All rights reserved.
机译:提出了一种基于人工神经网络(ANN)和优化算法的软计算方法,用于求解污染物通过多孔介质传输时产生的非稳态一维对流扩散方程(ADE)的数值解。选择了基于任意边界条件(BCs)自动满足的长度因子ANN方法进行ADE的数值求解。利用ANN的强度来构建ADE的试验近似解决方案(TAS),使其完全满足初始值或BC。通过近似ADE的解来构造无监督误差,该误差可以通过使用梯度下降算法(GDA)训练ANN来最小化。本文考虑了两个具有挑战性的ADE测试问题,其中,第一个问题在x = 1附近具有陡峭的边界层,许多数值方法在陡峭的边界附近产生了非物理振荡。同样对于第二个问题,许多数值方案也受到计算噪声和不稳定性问题的困扰。所提出的方法是有利的,因为它不需要用于解决ADE的时间离散化,并且它没有数值不稳定性。通过足够大量的独立运行并将结果与​​其他现有数值方法进行比较,研究了所提出算法的可靠性和有效性。结果表明,该方法消除了求解ADEs时遇到的困难,并提供了精度较高的解决方案。 (C)2016 Elsevier Ltd.保留所有权利。

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