COMPRESSIVE SAMPLING FOR ENERGY SPECTRUM ESTIMATION OF TURBULENT FLOWS
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SIAM
Abstract
Recent results from compressive sampling (CS) have demonstrated that accurate
reconstruction of sparse signals often requires far fewer samples than suggested by the classical
Nyquist–Shannon sampling theorem. Typically, signal reconstruction errors are measured in the
2 norm and the signal is assumed to be sparse or compressible. Our spectrum estimation by sparse
optimization (SpESO) method uses a priori information about isotropic homogeneous turbulent
flows with power law energy spectra and applies the methods of CS to one- and two-dimensional
turbulence signals to estimate their energy spectra with small logarithmic errors. SpESO is distinct
from existing energy spectrum estimation methods which are based on sparse support of the signal
in Fourier space. SpESO approximates energy spectra with an order of magnitude fewer samples
than needed with Shannon sampling. Our results demonstrate that SpESO performs much better
than lumped orthogonal matching pursuit, and as well as or better than wavelet-based best M-term
or M/2-term methods, even though these methods require complete sampling of the signal before
compression.
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Citation
Adalsteinsson, G. and Kevlahan, N.K.-R. 2015 Compressive sampling for energy spectrum estimation of turbulent flows. SIAM J. Sci. Comput. 37, B452-B472