Sparse Sensing and DMD-Based Identification of Flow Regimes and Bifurcations in Complex Flows

被引:52
作者
Kramer, Boris [1 ]
Grover, Piyush [2 ]
Boufounos, Petros [2 ]
Nabi, Saleh [2 ]
Benosman, Mouhacine [2 ]
机构
[1] MIT, Dept Aeronaut & Astronaut, Cambridge, MA 02139 USA
[2] Mitsubishi Elect Res Labs, Cambridge, MA USA
关键词
turbulent flow; dynamic mode decomposition; model reduction; sparse sensing; DYNAMIC-MODE DECOMPOSITION; PROPER ORTHOGONAL DECOMPOSITION; COHERENT STRUCTURES; KOOPMAN OPERATOR; SPECTRAL PROPERTIES; NATURAL-CONVECTION; FLUID-FLOWS; POD MODELS; SYSTEMS; REDUCTION;
D O I
10.1137/15M104565X
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
We present a sparse sensing framework based on dynamic mode decomposition (DMD) to identify flow regimes and bifurcations in large-scale thermofluid systems. Motivated by real-time sensing and control of thermal-fluid flows in buildings and equipment, we apply this method to a direct numerical simulation (DNS) data set of a two-dimensional laterally heated cavity. The resulting flow solutions can be divided into several regimes, ranging from steady to chaotic flow. The DMD modes and eigenvalues capture the main temporal and spatial scales in the dynamics belonging to different regimes. Our proposed classification method is data driven, robust w.r.t. measurement noise, and exploits the dynamics extracted from the DMD method. Namely, we construct an augmented DMD basis, with "built-in" dynamics, given by the DMD eigenvalues. This allows us to employ a short time series of data from sensors, to more robustly classify flow regimes, particularly in the presence of measurement noise. We also exploit the incoherence exhibited among the data generated by different regimes, which persists even if the number of measurements is small compared to the dimension of the DNS data. The data-driven regime identification algorithm can enable robust low-order modeling of flows for state estimation and control.
引用
收藏
页码:1164 / 1196
页数:33
相关论文
共 64 条
[21]   Liouvillian dynamics of the Hopf bifurcation [J].
Gaspard, P. ;
Tasaki, S. .
Physical Review E - Statistical, Nonlinear, and Soft Matter Physics, 2001, 64 (5 II) :1-056232
[22]   Proper Orthogonal Decomposition-Based Modeling Framework for Improving Spatial Resolution of Measured Temperature Data [J].
Ghosh, Rajat ;
Joshi, Yogendra .
IEEE TRANSACTIONS ON COMPONENTS PACKAGING AND MANUFACTURING TECHNOLOGY, 2014, 4 (05) :848-858
[23]   Alternative approaches to the Karhunen-Loeve decomposition for model reduction and data analysis [J].
Graham, MD ;
Kevrekidis, IG .
COMPUTERS & CHEMICAL ENGINEERING, 1996, 20 (05) :495-506
[24]   Topological chaos, braiding and bifurcation of almost-cyclic sets [J].
Grover, Piyush ;
Ross, Shane D. ;
Stremler, Mark A. ;
Kumar, Pankaj .
CHAOS, 2012, 22 (04)
[25]   Lagrangian Coherent Structures [J].
Haller, George .
ANNUAL REVIEW OF FLUID MECHANICS, VOL 47, 2015, 47 :137-162
[26]   Dynamic mode decomposition for large and streaming datasets [J].
Hemati, Maziar S. ;
Williams, Matthew O. ;
Rowley, Clarence W. .
PHYSICS OF FLUIDS, 2014, 26 (11)
[27]  
Holmes P., 1998, Turbulence, Coherent Structures, Dynamical Systems and Symmetry
[28]   FINITE VOLUME MULTIGRID PREDICTION OF LAMINAR NATURAL-CONVECTION - BENCH-MARK SOLUTIONS [J].
HORTMANN, M ;
PERIC, M ;
SCHEUERER, G .
INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN FLUIDS, 1990, 11 (02) :189-207
[29]  
Huazhen Fang, 2014, 2014 American Control Conference, P2240, DOI 10.1109/ACC.2014.6859417
[30]   Sparsity-promoting dynamic mode decomposition [J].
Jovanovic, Mihailo R. ;
Schmid, Peter J. ;
Nichols, Joseph W. .
PHYSICS OF FLUIDS, 2014, 26 (02)