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Hilbert–Huang transform / Mathematical sciences / Spline / Hilbert spectral analysis / Hilbert spectrum / Variance / Time series / Stationary process / Signal processing / Statistics / Applied mathematics
Date: 2013-01-15 18:39:07
Hilbert–Huang transform
Mathematical sciences
Spline
Hilbert spectral analysis
Hilbert spectrum
Variance
Time series
Stationary process
Signal processing
Statistics
Applied mathematics

Issues with the Application of Empirical Mode Decomposition Analysis

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