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A length factor artificial neural network method for the numerical solution of the advection dispersion equation characterizing the mass balance of fluid flow in a chemical reactor

机译:一种长度因子人工神经网络方法,用于表征化学反应器中流体流体质量平衡的平流分散方程的数值求解

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摘要

In this article, a length factor artificial neural network (ANN) method is proposed for the numerical solution of the advection dispersion equation (ADE) in steady state that is used extensively in fluid dynamics and in the mass balance of a chemical reactor. An approximate trial solution of the ADE is constructed in terms of ANN using the concept of the length factor in a way that automatically satisfies the desired boundary conditions, regardless of the ANN output. The mathematical model of ADE is presented adopting a first-order reaction, and the steady-state case for the same is examined by estimating the numerical solution using the ANN technique. Numerical simulations are performed by choosing the best ANN ensemble, based on a combination of numerous design parameters, random starting weights, and biases. The solution obtained using the ANN method is compared to the existing finite difference method (FDM) to test the reliability and effectiveness of the proposed approach. Three cases of ADE are considered in this study for different values of advection and dispersion. The numerical results show that the ANN method exhibits a higher accuracy than the FDM, even for the smaller number of training points in the domain, and eliminates the instability issues for the case where advection dominates dispersion.
机译:在本文中,提出了一种长度因子人工神经网络(ANN)方法,用于稳定状态下的平流分散方程(ADE)的数值溶液,其广泛用于流体动力学和化学反应器的质量平衡。根据ANN输出,使用长度因子的概念以自动满足所需边界条件的方式构建ADE的近似试验解决方案。提出了采用一阶反应的ADE的数学模型,通过使用ANN技术估计数值解决方案来检查相同的稳态壳体。基于许多设计参数,随机起始权重和偏置的组合,通过选择最佳ANN集合来执行数值模拟。使用ANN方法获得的溶液与现有的有限差分方法(FDM)进行比较,以测试所提出的方法的可靠性和有效性。本研究考虑了三种含量的Ade,用于不同的平流和分散的价值。数值结果表明,ANN方法表现出比FDM更高的精度,即使对于域中的较少数量的训练点,并且消除了平流占据分散的情况的不稳定问题。

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