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A comparison of large scale extraction methods in the study of annular wake flow

机译:环形尾流研究中大规模提取方法的比较

摘要

Large scale periodic structures can exist in selected flow fields. Examples are the Precessing Vortex Core in swirling flows, vortex shedding behind a cylinder or the wake of an annular jet. A number of techniques are available to extract these large scales from the turbulent fluctuations in the flow field. In this paper, an analysis is made of three such methods: Eulerian Time Filtering (ETF), Proper Orthogonal Decomposition (POD) and non-linear least-squares regression POD (NLSR-POD). The accuracy of the three different extraction methods is compared quantitatively with phase averaged data of an annular wake flow. This flow was chosen as a test case, since it is widely used in industrial applications, such as for example bluff-body burners. It was shown that all three methods were able to reconstruct the flow field with reasonable accuracy. These techniques are therefore applicable to a number of periodic flows. The big advantage of these extraction methods is that they require 20 times less experimental data compared to phase averaging. All three methods require more or less the same computational time and since the computational time is a few orders of magnitude lower than the measurement time, application of these techniques results in a very large reduction in the total time to obtain the flow field characteristics. This results in a significant reduction of time in the design process of such flows.
机译:大型周期性结构可以存在于选定的流场中。例如旋流中的旋进涡旋核,在圆柱体后方涡旋脱落或环形射流的尾流。有多种技术可用于从流场中的湍流波动中提取这些大尺度。本文对三种方法进行了分析:欧拉时间滤波(ETF),适当正交分解(POD)和非线性最小二乘回归POD(NLSR-POD)。将三种不同提取方法的准确性与环形尾流的相位平均数据进行定量比较。选择该流作为测试用例,因为它已广泛用于工业应用,例如钝体燃烧器。结果表明,这三种方法均能够以合理的精度重建流场。因此,这些技术适用于许多周期性流。这些提取方法的最大优点是,与相位平均相比,它们需要的实验数据少20倍。所有这三种方法或多或少都需要相同的计算时间,并且由于计算时间比测量时间低几个数量级,因此这些技术的应用导致获得流场特性的总时间大大减少。这样可以大大减少此类流程的设计时间。

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