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使用本征正交分解和动态模态分解对反应流动力学进行反卷积

Deconvolution of reacting-flow dynamics using proper orthogonal and dynamic mode decompositions.

作者信息

Roy Sukesh, Hua Jia-Chen, Barnhill Will, Gunaratne Gemunu H, Gord James R

机构信息

Spectral Energies, LLC, Dayton, Ohio 45431, USA.

Department of Physics, University of Houston, Houston, Texas 77204, USA.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Jan;91(1):013001. doi: 10.1103/PhysRevE.91.013001. Epub 2015 Jan 6.

Abstract

Analytical and computational studies of reacting flows are extremely challenging due in part to nonlinearities of the underlying system of equations and long-range coupling mediated by heat and pressure fluctuations. However, many dynamical features of the flow can be inferred through low-order models if the flow constituents (e.g., eddies or vortices) and their symmetries, as well as the interactions among constituents, are established. Modal decompositions of high-frequency, high-resolution imaging, such as measurements of species-concentration fields through planar laser-induced florescence and of velocity fields through particle-image velocimetry, are the first step in the process. A methodology is introduced for deducing the flow constituents and their dynamics following modal decomposition. Proper orthogonal (POD) and dynamic mode (DMD) decompositions of two classes of problems are performed and their strengths compared. The first problem involves a cellular state generated in a flat circular flame front through symmetry breaking. The state contains two rings of cells that rotate clockwise at different rates. Both POD and DMD can be used to deconvolve the state into the two rings. In POD the contribution of each mode to the flow is quantified using the energy. Each DMD mode can be associated with an energy as well as a unique complex growth rate. Dynamic modes with the same spatial symmetry but different growth rates are found to be combined into a single POD mode. Thus, a flow can be approximated by a smaller number of POD modes. On the other hand, DMD provides a more detailed resolution of the dynamics. Two classes of reacting flows behind symmetric bluff bodies are also analyzed. In the first, symmetric pairs of vortices are released periodically from the two ends of the bluff body. The second flow contains von Karman vortices also, with a vortex being shed from one end of the bluff body followed by a second shedding from the opposite end. The way in which DMD can be used to deconvolve the second flow into symmetric and von Karman vortices is demonstrated. The analyses performed illustrate two distinct advantages of DMD: (1) Unlike proper orthogonal modes, each dynamic mode is associated with a unique complex growth rate. By comparing DMD spectra from multiple nominally identical experiments, it is possible to identify "reproducible" modes in a flow. We also find that although most high-energy modes are reproducible, some are not common between experimental realizations; in the examples considered, energy fails to differentiate between reproducible and nonreproducible modes. Consequently, it may not be possible to differentiate reproducible and nonreproducible modes in POD. (2) Time-dependent coefficients of dynamic modes are complex. Even in noisy experimental data, the dynamics of the phase of these coefficients (but not their magnitude) are highly regular. The phase represents the angular position of a rotating ring of cells and quantifies the downstream displacement of vortices in reacting flows. Thus, it is suggested that the dynamical characterizations of complex flows are best made through the phase dynamics of reproducible DMD modes.

摘要

反应流的分析和计算研究极具挑战性,部分原因在于基础方程组的非线性以及由热和压力波动介导的长程耦合。然而,如果能够确定流的组成部分(例如涡旋或涡流)及其对称性,以及各组成部分之间的相互作用,那么就可以通过低阶模型推断出该流的许多动力学特征。高频、高分辨率成像的模态分解,例如通过平面激光诱导荧光测量物种浓度场以及通过粒子图像测速法测量速度场,是该过程的第一步。本文介绍了一种在模态分解后推导流的组成部分及其动力学的方法。对两类问题进行了适当正交分解(POD)和动态模态分解(DMD),并比较了它们的优势。第一个问题涉及通过对称破缺在扁平圆形火焰前沿产生的细胞状态。该状态包含两个以不同速率顺时针旋转的细胞环。POD和DMD都可用于将该状态解卷积为两个环。在POD中,使用能量来量化每个模态对流动的贡献。每个DMD模态都可以与一个能量以及一个独特的复增长率相关联。发现具有相同空间对称性但不同增长率的动态模态被组合成一个单一的POD模态。因此,可以用较少数量的POD模态来近似流。另一方面,DMD提供了更详细的动力学分辨率。还分析了对称钝体后方的两类反应流。在第一类中,对称的涡旋对从钝体的两端周期性释放。第二类流也包含冯·卡门涡旋,一个涡旋从钝体的一端脱落,随后从另一端脱落第二个涡旋。展示了如何使用DMD将第二类流解卷积为对称涡旋和冯·卡门涡旋。所进行的分析说明了DMD的两个明显优势:(1)与适当正交模态不同,每个动态模态都与一个独特的复增长率相关联。通过比较多个名义上相同实验的DMD谱,可以识别流中的“可重复”模态。我们还发现,尽管大多数高能模态是可重复的,但有些在实验实现之间并不常见;在考虑的示例中,能量无法区分可重复和不可重复的模态。因此,在POD中可能无法区分可重复和不可重复的模态。(2)动态模态的时间相关系数是复数。即使在有噪声的实验数据中,这些系数相位的动力学(而非其幅度)也是高度规则的。相位表示细胞旋转环的角位置,并量化反应流中涡旋的下游位移。因此,建议通过可重复DMD模态的相位动力学来最好地进行复杂流的动力学表征。

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