论文标题

球形唤醒的基于轨迹优化的基于群集的网络模型

Trajectory-optimized cluster-based network model for the sphere wake

论文作者

Hou, Chang, Deng, Nan, Noack, Bernd R.

论文摘要

我们提出了一种新型的基于轨迹优化的基于群集网络模型(TCNM),以减少Li等人的时间分辨数据,以减少非线性模型阶。 [“基于群集的网络模型”,J。FluidMech。 906,A21(2021)],并提高给定数量的质心的精度。起点是K-均值++聚类,它通过最接近的质心最大程度地减少了快照的表示误差。动力学是通过质心之间的“飞行”提出的。所提出的轨迹优化聚类旨在通过将质心移动到快照轨迹和使用轨迹支撑点来提炼状态传播来进一步减少运动学表示误差。因此,弯曲的轨迹更好地解决了。在三个流动方案中,在球体唤醒中证明了所得的TCNM,包括周期性,准周期性和混乱动力学。与最接近的质心相比,TCNM的表示误差小5倍。因此,与相同顺序的正交分解(POD)相同的级别的误差。然而,TCNM比POD建模具有明显的优势:通过少数一致的结构及其过渡来代表动力学,它是人类可以解释的。它通过设计(即稳定的长期行为)显示出强大的动态。它的开发是完全可自动的,即,它不需要可调的辅助封闭和其他模型。

We propose a novel trajectory-optimized Cluster-based Network Model (tCNM) for nonlinear model order reduction from time-resolved data following Li et al. ["Cluster-based network model, " J. Fluid Mech. 906, A21 (2021)] and improving the accuracy for a given number of centroids. The starting point is k-means++ clustering which minimizes the representation error of the snapshots by their closest centroids. The dynamics is presented by 'flights' between the centroids. The proposed trajectory-optimized clustering aims to reduce the kinematic representation error further by shifting the centroids closer to the snapshot trajectory and refining state propagation with trajectory support points. Thus, curved trajectories are better resolved. The resulting tCNM is demonstrated for the sphere wake for three flow regimes, including the periodic, quasi-periodic, and chaotic dynamics. The representation error of tCNM is 5 times smaller as compared to the approximation by the closest centroid. Thus, the error at the same level as Proper Orthogonal Decomposition (POD) of same order. Yet, tCNM has distinct advantages over POD modeling: it is human interpretable by representing dynamics by a handful of coherent structures and their transitions; it shows robust dynamics by design, i.e., stable long-time behavior; and its development is fully automatable, i.e., it does not require tuneable auxiliary closure and other models.

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