论文标题
宽带湍流的随机孢子 - 加密金模型
A stochastic SPOD-Galerkin model for broadband turbulent flows
论文作者
论文摘要
探索了光谱正确的正交分解(SPOD)来构建用于宽带湍流流的低阶模型。 SPOD模式作为基础向量的选择是由于它们的最佳和时空连贯性能的统计固定流。这项工作遵循建模范式,即可以将复杂的非线性流体动力学作为随机强制的线性系统近似。提出的随机两级蜘蛛网模型控制了由模态扩展系数和强迫系数组成的复合状态。在第一级,在线性时间不变的假设下,强制线性化的Navier-Stokes运算符提出了模态膨胀系数。第二级控制强迫系数,该系数补偿了线性近似和真实状态之间的偏移。在此级别上,最小二乘回归用于通过对模式之间的非线性相互作用进行建模来实现闭合。剩余残留物的统计数据用于构建一个去滤滤器,以促进使用白噪声来驱动模型。如果将数据残基用作唯一输入,则该模型会一直准确恢复原始流动轨迹。如果将残基建模为随机输入,则该模型会生成替代数据,以准确地重现原始数据的二阶统计和动力学。随机模型的不确定性,可预测性和稳定性通过分析和蒙特卡洛模拟进行量化。该模型在Mach数字$ M = 0.9 $的湍流喷气机的大型涡模拟数据上得到了证明,雷诺数为$ re_d \ of_d \大约10^6 $。
The use of spectral proper orthogonal decomposition (SPOD) to construct low-order models for broadband turbulent flows is explored. The choice of SPOD modes as basis vectors is motivated by their optimality and space-time coherence properties for statistically stationary flows. This work follows the modeling paradigm that complex nonlinear fluid dynamics can be approximated as stochastically forced linear systems. The proposed stochastic two-level SPOD-Galerkin model governs a compound state consisting of the modal expansion coefficients and forcing coefficients. In the first level, the modal expansion coefficients are advanced by the forced linearized Navier-Stokes operator under the linear time-invariant assumption. The second level governs the forcing coefficients, which compensate for the offset between the linear approximation and the true state. At this level, least squares regression is used to achieve closure by modeling nonlinear interactions between modes. The statistics of the remaining residue are used to construct a dewhitening filter that facilitates the use of white noise to drive the model. If the data residue is used as the sole input, the model accurately recovers the original flow trajectory for all times. If the residue is modeled as stochastic input, then the model generates surrogate data that accurately reproduces the second-order statistics and dynamics of the original data. The stochastic model uncertainty, predictability, and stability are quantified analytically and through Monte Carlo simulations. The model is demonstrated on large eddy simulation data of a turbulent jet at Mach number $M=0.9$ and Reynolds number of $Re_D\approx 10^6$.