动态模态分解
残余物
唤醒
交货地点
本征正交分解
非线性系统
瞬态(计算机编程)
伽辽金法
稳健性(进化)
快照(计算机存储)
振幅
物理
希尔伯特-黄变换
机械
控制理论(社会学)
统计物理学
算法
应用数学
数学
计算机科学
光学
白噪声
电信
湍流
人工智能
化学
生物
操作系统
生物化学
控制(管理)
量子力学
农学
基因
作者
Bernd R. Noack,Witold Stankiewicz,Marek Morzyński,Peter J. Schmid
摘要
A novel data-driven modal decomposition of fluid flow is proposed, comprising key features of proper orthogonal decomposition (POD) and dynamic mode decomposition (DMD). The first mode is the normalized real or imaginary part of the DMD mode that minimizes the time-averaged residual. The $N$ th mode is defined recursively in an analogous manner based on the residual of an expansion using the first $N-1$ modes. The resulting recursive DMD (RDMD) modes are orthogonal by construction, retain pure frequency content and aim at low residual. Recursive DMD is applied to transient cylinder wake data and is benchmarked against POD and optimized DMD (Chen et al. , J. Nonlinear Sci. , vol. 22, 2012, pp. 887–915) for the same snapshot sequence. Unlike POD modes, RDMD structures are shown to have purer frequency content while retaining a residual of comparable order to POD. In contrast to DMD, with exponentially growing or decaying oscillatory amplitudes, RDMD clearly identifies initial, maximum and final fluctuation levels. Intriguingly, RDMD outperforms both POD and DMD in the limit-cycle resolution from the same snapshots. Robustness of these observations is demonstrated for other parameters of the cylinder wake and for a more complex wake behind three rotating cylinders. Recursive DMD is proposed as an attractive alternative to POD and DMD for empirical Galerkin models, in particular for nonlinear transient dynamics.
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