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Uncertain Transport in Unsteady Flows

机译:不稳定流动的运输

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We study uncertainty in the dynamics of time-dependent flows by identifying barriers and enhancers to stochastic transport. This topological segmentation is closely related to the theory of Lagrangian coherent structures and is based on a recently introduced quantity, the diffusion barrier strength (DBS). The DBS is defined similar to the finite-time Lyapunov exponent (FTLE), but incorporates diffusion during flow integration. Height ridges of the DBS indicate stochastic transport barriers and enhancers, i.e. material surfaces that are minimally or maximally diffusive. To apply these concepts to real-world data, we represent uncertainty in a flow by a stochastic differential equation that consists of a deterministic and a stochastic component modeled by a Gaussian. With this formulation we identify barriers and enhancers to stochastic transport, without performing expensive Monte Carlo simulation and with a computational complexity comparable to FTLE. In addition, we propose a complementary visualization to convey the absolute scale of uncertainties in the Lagrangian frame of reference. This enables us to study uncertainty in real-world datasets, for example due to small deviations, data reduction, or estimated from multiple ensemble runs.
机译:我们通过识别障碍和促进,以随机运输研究时间依赖性流动的动态不确定性。这种拓扑分割是密切相关的拉格朗日相干结构的理论是基于最近推出的数量,扩散阻挡强度(DBS)。所述DBS是指类似于有限时间Lyapunov指数(FTLE),但流的整合过程中并入扩散。所述DBS的高度的脊表示随机运输障碍和增强子,即是最低限度地或最大程度地漫射材料的表面。应用这些概念到现实世界的数据,我们通过一个由确定性和高斯建模的随机成分的随机微分方程表示在流动的不确定性。有了这个配方,我们确定的障碍和促进以随机运输,无需进行昂贵的蒙特卡罗模拟,并用计算复杂性堪比FTLE。此外,我们提出了一个互补的可视化,以传达不确定性的绝对标尺在参考拉格朗日帧。这使我们能够研究真实世界的数据集的不确定性,例如,由于小的偏差,数据缩减,或从多个合奏运行估计。

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