An unconstrained optimization approach to empirical mode decomposition

Digital Signal Processing(2015)

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摘要
Empirical mode decomposition (EMD) is an adaptive (data-driven) method to decompose non-linear and non-stationary signals into AM-FM components. Despite its well-known usefulness, one of the major EMD drawbacks is its lack of mathematical foundation, being defined as an algorithm output. In this paper we present an alternative formulation for the EMD method, based on unconstrained optimization. Unlike previous optimization-based efforts, our approach is simple, with an analytic solution, and its algorithm can be easily implemented. By making no explicit use of envelopes to find the local mean, possible inherent problems of the original EMD formulation (such as the under- and overshoot) are avoided. Classical EMD experiments with artificial signals overlapped in both time and frequency are revisited, and comparisons with other optimization-based approaches to EMD are made, showing advantages for our proposal both in recovering known components and computational times. A voice signal is decomposed by our method evidencing some advantages in comparison with traditional EMD and noise-assisted versions. The new method here introduced catches most flavors of the original EMD but with a more solid mathematical framework, which could lead to explore analytical properties of this technique. A new simple unconstrained optimization-based approach to EMD is introduced.The new method provides an analytical and easily implemented closed solution.Unlike other proposals, computational cost of the present one is similar to EMD's.The number of parameters to be tuned has been reduced to only one.The use of explicit spline interpolations is avoided.
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关键词
convex optimization,data-driven methods,empirical mode decomposition,time frequency
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