Empirical mode decomposition (EMD) in a nutshell
This is session 14 of "Nonstationary Time Series Analysis with Modern Signal Processing Techniques Part 1", delivered in 2024 Jan. The topic is an introduction of a widely applied algorithm called empirical mode decomposition (EMD). Other sessions of this series of lectures can be found in this channel, which will be announced one by one. If you like the material, please subscribe & thumb up. Comments are appreciated. Thank you! My email: [email protected] My homepage: hautiengwu.wordpress.com/home/

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