A Two-level Method for Modeling Fluid Movement Using a Lattice Boltzmann Model and a Convolutional Neural Network

M.A., Novotarskyi, V.A. Kuzmych
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Abstract

A new two-level method for modeling fluid movement in closed surfaces is proposed. The metod simulates an unsteady hydrodynamic process and includes two levels of description of the modeling process. The first level supports the development of the process over time and is implemented based on the Boltzmann lattice model. At the second level, for each time layer, based on the obtained velocity field, the pressure distribution is refined by modeling the solution of the Poisson equation in the working area using a convolutional neural network, which is pre-trained on a training data set formed for a given set of typical problems. A method combi¬ning both technologies is proposed, taking into account the compensation of the compressibi¬lity characteristic. The structure and features of neural network training are described. Experiments were conducted on models simulating the human digestive tract in various states. The performance of the developed method is compared with the numerical way of solving the Poisson equation.
基于晶格玻尔兹曼模型和卷积神经网络的两级流体运动建模方法
提出了一种新的模拟封闭表面流体运动的两能级方法。该方法模拟非定常水动力过程,并包括对建模过程的两级描述。第一级支持随着时间的推移过程的发展,并基于玻尔兹曼晶格模型实现。在第二层,对于每个时间层,基于得到的速度场,使用卷积神经网络对工作区域的泊松方程的解进行建模,从而细化压力分布,该神经网络是在给定的一组典型问题形成的训练数据集上进行预训练的。提出了一种考虑可压缩性特性补偿的两种技术相结合的方法。介绍了神经网络训练的结构和特点。在模拟人体消化道不同状态的模型上进行了实验。将该方法的性能与泊松方程的数值求解方法进行了比较。
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