Design of K-W-NET model of turbulence based on K-W/V2-F models with the neural network component

V. V. Pekunov
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Abstract

The subject of this article is the models of turbulence based on introduction of neural network components into the widespread standard semi-empirical models. It is stated that such technique allows achieving significant acceleration of calculation while maintaining sufficient accuracy and stability, by training neural network components based on the data acquires with the use of fairly accurate and advanced models, as well as replacing and complementing separate fragments of the initial models with such components. An overview is give on the existing classical approaches towards modeling of turbulence, which allows determining the V2-F model suggested by Durbin as one of the most advanced, and thereby promising, with regards to subsequent neural network modifications. The author offers the new model of turbulence based on K-W models paired with a neural network component trained in accordance with the V2-F Durbin model. All necessary ratios are provided. The properties of the obtained model are examined in terms of the numerical experiment on the flow over of a single obstacle. The results are compared with data acquired from other semi-empirical models (K-E, K-W), as well as via direct neural network model. It is demonstrated that the proposed model, with less computational labor output in comparison with other models (excluding direct neural network, which, however, is less accurate), provides high precision close to precision of the Durbin model.
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基于带有神经网络成分的K-W/V2-F模型的K-W- net湍流模型设计
本文的主题是基于引入神经网络组件到广泛的标准半经验模型的湍流模型。本文指出,这种技术可以通过使用相当精确和先进的模型来训练基于获取的数据的神经网络组件,以及用这些组件替换和补充初始模型的单独片段,从而在保持足够的准确性和稳定性的同时实现显著的计算加速。对现有的经典湍流建模方法进行了概述,这使得Durbin提出的V2-F模型成为最先进的模型之一,因此对于随后的神经网络修改具有很大的前景。作者提出了基于K-W模型的湍流新模型,该模型与根据V2-F Durbin模型训练的神经网络组件配对。提供了所有必要的比率。通过对单障碍物流动的数值实验,验证了所得模型的性能。结果与其他半经验模型(K-E, K-W)以及直接神经网络模型的数据进行了比较。结果表明,与其他模型(不包括直接神经网络,但其精度较低)相比,所提出的模型的计算劳动输出较少,但提供了接近Durbin模型精度的高精度。
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