物理
模式(计算机接口)
动态模态分解
领域(数学)
分解
分辨率(逻辑)
计算物理学
算法
机械
人工智能
计算机科学
生态学
数学
生物
操作系统
纯数学
作者
Xinwang Liu,Xu Sun,Zhaojin Rong,Luyao Wang,Haitao Ma
摘要
As an important technology in ocean engineering and aerospace engineering fields, the development of flow field super-resolution reconstruction technology stems from the urgent need for high-fidelity flow field analysis. In order to avoid the randomness and the difficulty of parameter adjustment caused by machine-learning-based methods for flow field reconstruction, this paper uses the idea of dynamic mode decomposition (DMD), introduces the numerical method Schur–Padé for the real power of the matrix, and proposes a temporal super-resolution flow field prediction method DMD-α, which only uses matrix manipulation to realize the prediction of periodic flow field at any time. Taking the wave field formed by the periodic movement of a trimaran in regular waves as an example, a parameter selection strategy based on the DMD-α method is proposed to take reconstruction accuracy and efficiency into account. Furthermore, proper orthogonal decomposition and Kriging surrogate models are combined to realize the temporal super-resolution flow field prediction for a trimaran with arbitrary side-hull layout to validate the robustness of the DMD-α method. The results show that the proposed DMD-α method is stable, efficient, and can obtain high-fidelity flow prediction, which has great potential in the field of temporal super-resolution prediction of complex flow fields and optimization design based on fluid dynamic performances of various structures.
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