Maack Jonathan, Turkington Bruce
Department of Mathematics and Statistics, University of Massachusetts Amherst, Amherst, MA 01003, USA.
Entropy (Basel). 2018 Nov 30;20(12):914. doi: 10.3390/e20120914.
Nonequilibrium statistical models of point vortex systems are constructed using an optimal closure method, and these models are employed to approximate the relaxation toward equilibrium of systems governed by the two-dimensional Euler equations, as well as the quasi-geostrophic equations for either single-layer or two-layer flows. Optimal closure refers to a general method of reduction for Hamiltonian systems, in which macroscopic states are required to belong to a parametric family of distributions on phase space. In the case of point vortex ensembles, the macroscopic variables describe the spatially coarse-grained vorticity. Dynamical closure in terms of those macrostates is obtained by optimizing over paths in the parameter space of the reduced model subject to the constraints imposed by conserved quantities. This optimization minimizes a cost functional that quantifies the rate of information loss due to model reduction, meaning that an optimal path represents a macroscopic evolution that is most compatible with the microscopic dynamics in an information-theoretic sense. A near-equilibrium linearization of this method is used to derive dissipative equations for the low-order spatial moments of ensembles of point vortices in the plane. These severely reduced models describe the late-stage evolution of isolated coherent structures in two-dimensional and geostrophic turbulence. For single-layer dynamics, they approximate the relaxation of initially distorted structures toward axisymmetric equilibrium states. For two-layer dynamics, they predict the rate of energy transfer in baroclinically perturbed structures returning to stable barotropic states. Comparisons against direct numerical simulations of the fully-resolved many-vortex dynamics validate the predictive capacity of these reduced models.
利用一种最优闭合方法构建了点涡系统的非平衡统计模型,并将这些模型用于近似由二维欧拉方程以及单层或两层流动的准地转方程所描述系统向平衡态的弛豫过程。最优闭合是指哈密顿系统的一种通用约化方法,其中宏观状态要求属于相空间上的一个参数化分布族。在点涡系综的情况下,宏观变量描述空间粗粒化涡度。通过在约化模型的参数空间中对路径进行优化,并受守恒量所施加的约束,从而得到基于这些宏观状态的动力学闭合。这种优化使一个成本泛函最小化,该成本泛函量化了由于模型约化导致的信息损失率,这意味着最优路径代表了在信息论意义上与微观动力学最兼容的宏观演化。使用该方法的近平衡线性化来推导平面上点涡系综低阶空间矩的耗散方程。这些大幅约化的模型描述了二维和地转湍流中孤立相干结构的后期演化。对于单层动力学,它们近似初始扭曲结构向轴对称平衡态的弛豫。对于两层动力学,它们预测斜压扰动结构恢复到稳定正压状态时的能量转移速率。与完全解析的多涡动力学的直接数值模拟结果的比较验证了这些约化模型的预测能力。