Abstract

Scientific research and engineering practice often require the modeling and decomposition of nonlinear systems. The dynamic mode decomposition (DMD) is a novel Koopman-based technique that effectively dissects high-dimensional nonlinear systems into periodically distinct constituents on reduced-order subspaces. As a novel mathematical hatchling, the DMD bears vast potentials yet an equal degree of unknown. This effort investigates the nuances of DMD sampling with an engineering-oriented emphasis. It aimed at elucidating how sampling range and resolution affect the convergence of DMD modes. We employed the most classical nonlinear system in fluid mechanics as the test subject—the turbulent free-shear flow over a prism—for optimal pertinency. We numerically simulated the flow by the dynamic-stress Large-Eddies Simulation with Near-Wall Resolution. With the large-quantity, high-fidelity data, we parametrized and identified four global convergence states: Initialization, Transition, Stabilization, and Divergence with increasing sampling range. Results showed that Stabilization is the optimal state for modal convergence, in which DMD output becomes independent of the sampling range. The Initialization state also yields sufficient accuracy for most system reconstruction tasks. Moreover, defying popular beliefs, over-sampling causes algorithmic instability: as the temporal dimension, n, approaches and transcends the spatial dimension, m (i.e., m < n), the output diverges and becomes meaningless. Additionally, the convergence of the sampling resolution depends on the mode-specific dynamics, such that the resolution of 15 frames per cycle for target activities is suggested for most engineering implementations. Finally, a bi-parametric study revealed that the convergence of the sampling range and resolution are mutually independent.

Highlights

  • Kutz et al [6] offered an excellent collage of Dynamic Mode Decomposition (DMD) implementations on nonlinear systems from fluid mechanics, video processing, signal and controls, epidemiology, neuroscience, finance, etc

  • We suggest the achievement of the Stabilization state for the most analytical effort on nonlinear systems, while the Initialization state suffices for most reconstruction tasks

  • We parametrically investigated the nuances of DMD sampling from an engineering point-of-view

Read more

Summary

Introduction

In today’s realm of science and engineering, nonlinearity remains one of the few unanswered questions of classical physics. Nonlinear systems are often high-dimensional and have intertwining dynamics, so modeling them can be extremely strenuous. Seeking engineering solutions, applied mathematicians invented the Reduced-Order Models (ROM) that serve precisely for the purpose of dimension reduction and modeling of nonlinear systems. The Dynamic Mode Decomposition (DMD) is a new addition to the ROM family [3, 4]. The Proper Orthogonal Decomposition (POD) [5], the DMD is purely data-driven. Kutz et al [6] offered an excellent collage of DMD implementations on nonlinear systems from fluid mechanics, video processing, signal and controls, epidemiology, neuroscience, finance, etc. The DMD proved powerful in generating spatiotemporally accurate representations of complex dynamics and, subsequently, in producing visual decompositions with insightful revelations [4, 7–11]. Like any other brand-new mathematical hatchlings, its potential comes with many unknowns

Objectives
Methods
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call