M. Carbone, V. J. Peterhans, A. S. Ecker, M. Wilczek
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引用次数: 0
摘要
小尺度湍流可以用速度梯度进行全面描述,这使其成为低维建模的一个有吸引力的起点。典型模型包括基于非局部压力和粘性贡献闭合的随机方程。所得模型的保真度取决于基本建模假设的准确性。在此,我们将讨论另一种数据驱动方法,即利用机器学习来推导速度梯度模型,通过构建模型来捕捉其统计数据。我们使用归一化流量,从不可压缩湍流的直接数值模拟(DNS)中学习速度梯度概率密度函数(PDF)。然后,通过使用速度梯度单次概率密度函数方程,我们构建了一个确定但混乱的动态系统,其特点是通过设计学习到稳态概率密度函数。最后,我们利用速度梯度单次统计的规整项,根据 DNS 数据优化了从我们的模型中获得的时间相关性。结果,模型的时间变现与 DNS 的时间序列在统计上非常相似。
Tailor-Designed Models for the Turbulent Velocity Gradient through Normalizing Flow
Small-scale turbulence can be comprehensively described in terms of velocity gradients, which makes them an appealing starting point for low-dimensional modeling. Typical models consist of stochastic equations based on closures for nonlocal pressure and viscous contributions. The fidelity of the resulting models depends on the accuracy of the underlying modeling assumptions. Here, we discuss an alternative data-driven approach leveraging machine learning to derive a velocity gradient model which captures its statistics by construction. We use a normalizing flow to learn the velocity gradient probability density function (PDF) from direct numerical simulation (DNS) of incompressible turbulence. Then, by using the equation for the single-time PDF of the velocity gradient, we construct a deterministic, yet chaotic, dynamical system featuring the learned steady-state PDF by design. Finally, utilizing gauge terms for the velocity gradient single-time statistics, we optimize the time correlations as obtained from our model against the DNS data. As a result, the model time realizations resemble the time series from DNS statistically closely.
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