Abstract:In this work we propose and evaluate two variational data assimilation techniques for the estimation of low order surrogate experimental dynamical models for fluid flows. Both methods are built from optimal control recipes and rely on proper orthogonal decomposition and a Galerkin projection of the Navier Stokes equation. The techniques proposed differ in the control variables they involve. The first one introduces a weak dynamical model defined only up to an additional uncertainty time-dependent function wher… Show more
“…See [141] for a corresponding approach to data assimilation [142]. A nice feature of this method is the ability to estimate initial conditions that are generally unknown, too.…”
Section: Probabilistic Modeling and Online Estimationmentioning
“…See [141] for a corresponding approach to data assimilation [142]. A nice feature of this method is the ability to estimate initial conditions that are generally unknown, too.…”
Section: Probabilistic Modeling and Online Estimationmentioning
“…Such extensions appear more natural in connection with dynamic physical models constraining optical flow estimation, as opposed to stationary formulations like (88). See [141] for a corresponding approach to data assimilation [142]. A nice feature of this method is the ability to estimate initial conditions that are generally unknown, too.…”
Section: Probabilistic Modeling and Online Estimationmentioning
Motions of physical objects relative to a camera as observer naturally occur in everyday lives and in many scientific applications. Optical flow represents the corresponding motion induced on the image plane. This paper describes the basic problems and concepts related to optical flow estimation together with mathematical models and computational approaches to solve them. Emphasis is placed on common and different modeling aspects and to relevant research directions from a broader perspective. The state of the art and corresponding deficiencies are reported along with directions of future research. The presentation aims at providing an accessible guide for practitioners as well as stimulating research work in relevant fields of mathematics and computer vision.
“…Thus the dynamics of chronos can be described as a summation along the different frequencies arising from the CK decomposition. Note that this gives an equivalent representation as the one would expect integrating equation (9). However it is important to outline that neither the precise form of the POD-Galerkin system, nor any specific assumption on boundary conditions on pressure has to be settled with this approach.…”
Section: Ck Reduced Order Dynamical Modelingmentioning
confidence: 99%
“…The wake behind a circular cylinder has been generated in the IRSTEA(Cemagref) wind tunnel. Experimental conditions are coincident with the same as those described in [9].…”
Section: Description Of the Experimental Database (Cylinder Wake)mentioning
confidence: 99%
“…Some of them include additional dissipative models [12] or rely on nonlinear Galerkin projection techniques [1,4,13]. Robust techniques based on optimal control strategies have been also proposed for building reduced dynamical models from noisy data [9,15] and incomplete knowledge of the actual flow dynamics (i.e. unknown initial condition, unknown or partially known forcing terms,...).…”
We propose an algorithm that combines Proper Orthogonal Decomposition with a spectral method to analyse and extract from time data series of velocity fields, reduced order models of flows. The flows considered in this study are assumed to be driven by non linear dynamical systems exhibiting a complex behavior within quasi-periodic orbits in the phase space. The technique is appropiate to achieve efficient reduced order models even in complex cases for which the flow description requires a discretization with a fine spatial and temporal resolution. The proposed analysis enables to decompose complex flow dynamics into modes oscillating at a single frequency. These modes are associated with different energy levels and spatial structures. The approach is illustrated using time resolved PIV data of a cylinder wake flow with associated Reynolds number equal to 3900.
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