Modeling the Turbulent Wake Behind a Wall-Mounted Square Cylinder

C. Amor, J. M. Pérez, P. Schlatter, R. Vinuesa, S. L. Clainche
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引用次数: 6

Abstract

This article introduces some soft computing methods generally used for data analysis and flow pattern detection in fluid dynamics. These techniques decompose the original flow field as an expansion of modes, which can be either orthogonal in time (variants of dynamic mode decomposition), or in space (variants of proper orthogonal decomposition) or in time and space (spectral proper orthogonal decomposition), or they can simply be selected using some sophisticated statistical techniques (empirical mode decomposition). The performance of these methods is tested in the turbulent wake of a wall-mounted square cylinder. This highly complex flow is suitable to show the ability of the aforementioned methods to reduce the degrees of freedom of the original data by only retaining the large scales in the flow. The main result is a reduced-order model of the original flow case, based on a low number of modes. A deep discussion is carried out about how to choose the most computationally efficient method to obtain suitable reduced-order models of the flow. The techniques introduced in this article are data-driven methods that could be applied to model any type of non-linear dynamical system, including numerical and experimental databases.
壁挂式方形圆柱体后湍流尾迹的建模
本文介绍了流体力学中数据分析和流型检测常用的几种软计算方法。这些技术将原始流场分解为模态的展开,这些模态可以在时间上正交(动态模态分解的变体),也可以在空间上正交(固有正交分解的变体),也可以在时间和空间上正交(谱固有正交分解),或者可以简单地使用一些复杂的统计技术(经验模态分解)来选择它们。在壁挂式方形圆柱的湍流尾迹中测试了这些方法的性能。这种高度复杂的流适合显示上述方法通过仅保留流中的大尺度来降低原始数据自由度的能力。主要结果是基于低模态数的原始流态的降阶模型。深入讨论了如何选择计算效率最高的方法来获得合适的流的降阶模型。本文介绍的技术是数据驱动的方法,可以应用于模拟任何类型的非线性动力系统,包括数值和实验数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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