Algorithm of Adaptive Fourier Decomposition | IEEE Journals & Magazine | IEEE Xplore

Algorithm of Adaptive Fourier Decomposition


Abstract:

The present paper is a continuing work on the recently established adaptive Fourier decomposition (AFD) mainly stressing on the algorithm aspect, including algorithm anal...Show More

Abstract:

The present paper is a continuing work on the recently established adaptive Fourier decomposition (AFD) mainly stressing on the algorithm aspect, including algorithm analysis and numerical examples. AFD is a variation and realization of greedy algorithm (matching pursuit) suitable for the Hardy H2 and the L2 spaces. Applying AFD to a given signal, one obtains a series expansion in the basic signals, called mono-components, that possess non-negative analytic phase derivatives (functions), or, equivalently, meaningful analytic instantaneous frequencies. AFD is shown to be robust with computational complexity comparable with DFT. Consistent to the greedy algorithm principle experiments show that AFD produces (pre-) mono-component series with efficient energy decay that also leads to efficient pointwise convergence, both in terms of computer running time.
Published in: IEEE Transactions on Signal Processing ( Volume: 59, Issue: 12, December 2011)
Page(s): 5899 - 5906
Date of Publication: 19 September 2011

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