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A Plea for Adaptive Data Analysis: An Introduction to HHT for Nonlinear and Nonstationary Data Norden E. Huang Research Center for Adaptive Data Analysis National Central University Nanjing October 2009
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Data Processing and Data Analysis Processing [proces < L. Processus < pp of Procedere = Proceed: pro- forward + cedere, to go] : A particular method of doing something. Data Processing >>>> Mathematically meaningful parameters Analysis [Gr. ana, up, throughout + lysis, a loosing] : A separating of any whole into its parts, especially with an examination of the parts to find out their nature, proportion, function, interrelationship etc. Data Analysis >>>> Physical understandings
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Scientific Activities Collecting and analyzing data, synthesizing and theorizing the analyzed results are the core of scientific activities. Therefore, data analysis is a key link in this continuous loop.
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Data Analysis There are, unfortunately, tensions between sciences and mathematics. Data analysis is too important to be left to the mathematicians. Why?!
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Different Paradigms Mathematics vs. Science/Engineering Mathematicians Absolute proofs Logic consistency Mathematical rigor Scientists/Engineers Agreement with observations Physical meaning Working Approximations
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Motivations for alternatives: Problems for Traditional Methods Physical processes are mostly nonstationary Physical Processes are mostly nonlinear Data from observations are invariably too short Physical processes are mostly non-repeatable. Ensemble mean impossible, and temporal mean might not be meaningful for lack of stationarity and ergodicity. Traditional methods are inadequate.
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Hilbert Transform : Definition
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The Traditional View of the Hilbert Transform for Data Analysis
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Traditional View a la Hahn (1995) : Data LOD
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Traditional View a la Hahn (1995) : Hilbert
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The Empirical Mode Decomposition Method and Hilbert Spectral Analysis Sifting
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Empirical Mode Decomposition: Methodology : Test Data
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Empirical Mode Decomposition: Methodology : data and m1
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Empirical Mode Decomposition Sifting : to get one IMF component
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The Stoppage Criteria The Cauchy type criterion: when SD is small than a pre- set value, where Or, simply pre-determine the number of iterations.
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Empirical Mode Decomposition: Methodology : IMF c1
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Empirical Mode Decomposition Sifting : to get all the IMF components
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Definition of Instantaneous Frequency
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The Idea and the need of Instantaneous Frequency According to the classic wave theory, the wave conservation law is based on a gradually changing φ(x,t) such that Therefore, both wave number and frequency must have instantaneous values. But how to find φ(x, t)?
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The combination of Hilbert Spectral Analysis and Empirical Mode Decomposition has been designated by NASA as HHT (HHT vs. FFT)
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Comparison between FFT and HHT
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Comparisons: Fourier, Hilbert & Wavelet
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Speech Analysis Hello : Data
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Four comparsions D
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An Example of Sifting
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Length Of Day Data
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LOD : IMF
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Orthogonality Check Pair-wise % 0.0003 0.0001 0.0215 0.0117 0.0022 0.0031 0.0026 0.0083 0.0042 0.0369 0.0400 Overall % 0.0452
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LOD : Data & c12
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LOD : Data & Sum c11-12
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LOD : Data & sum c10-12
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LOD : Data & c9 - 12
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LOD : Data & c8 - 12
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LOD : Detailed Data and Sum c8-c12
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LOD : Data & c7 - 12
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LOD : Detail Data and Sum IMF c7-c12
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LOD : Difference Data – sum all IMFs
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Traditional View a la Hahn (1995) : Hilbert
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Mean Annual Cycle & Envelope: 9 CEI Cases
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Properties of EMD Basis The Adaptive Basis based on and derived from the data by the empirical method satisfy nearly all the traditional requirements for basis empirically and a posteriori: Complete Convergent Orthogonal Unique
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Hilbert ’ s View on Nonlinear Data
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Duffing Type Wave Data: x = cos(wt+0.3 sin2wt)
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Duffing Type Wave Perturbation Expansion
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Duffing Type Wave Wavelet Spectrum
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Duffing Type Wave Hilbert Spectrum
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Duffing Type Wave Marginal Spectra
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Ensemble EMD Noise Assisted Signal Analysis (nasa) Utilizing the uniformly distributed reference frame based on the white noise to eliminate the mode mixing Enable EMD to apply to function with spiky or flat portion The true result of EMD is the ensemble of infinite trials. Wu and Huang, Adv. Adapt. Data Ana., 2009
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New Multi-dimensional EEMD Extrema defined easily Computationally inexpensive, relatively Ensemble approach removed the Mode Mixing Edge effects easier to fix in each 1D slice Results are 2-directional Wu, Huang and Chen, AADA, 2009
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What This Means EMD separates scales in physical space; it generates an extremely sparse representation for any given data. Added noises help to make the decomposition more robust with uniform scale separations. Instantaneous Frequency offers a total different view for nonlinear data: instantaneous frequency needs no harmonics and is unlimited by uncertainty principle. Adaptive basis is indispensable for nonstationary and nonlinear data analysis EMD establishes a new paradigm of data analysis
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Comparisons FourierWaveletHilbert Basisa priori Adaptive FrequencyIntegral transform: Global Integral transform: Regional Differentiation: Local PresentationEnergy-frequencyEnergy-time- frequency Nonlinearno yes Non-stationarynoyes Uncertaintyyes no Harmonicsyes no
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Conclusion Adaptive method is the only scientifically meaningful way to analyze nonlinear and nonstationary data. It is the only way to find out the underlying physical processes; therefore, it is indispensable in scientific research. EMD is adaptive; It is physical, direct, and simple. But, we have a lot of problems And need a lot of helps!
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National Central University Research Center for Adaptive Data Analysis
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History of HHT 1998: The Empirical Mode Decomposition Method and the Hilbert Spectrum for Non-stationary Time Series Analysis, Proc. Roy. Soc. London, A454, 903-995. 1999: A New View of Nonlinear Water Waves – The Hilbert Spectrum, Ann. Rev. Fluid Mech. 31, 417- 457. 2003: A confidence Limit for the Empirical mode decomposition and the Hilbert spectral analysis, Proc. of Roy. Soc. London, A459, 2317-2345. 2004: A Study of the Characteristics of White Noise Using the Empirical Mode Decomposition Method, Proc. Roy. Soc. London, (in press)
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Recent Developments in HHT 2007: On the trend, detrending, and variability of nonlinear and nonstationary time series. Proc. Natl. Acad. Sci., 104, 14,889-14,894. 2009: On Ensemble Empirical Mode Decomposition. Advances in Adaptive Data Analysis. Advances in Adaptive data Analysis, 1, 1-41 2009: On instantaneous Frequency. Advances in Adaptive Data Analysis 1, 177-229. 2009: Multi-Dimensional Ensemble Empirical Mode Decomposition. Advances in Adaptive Data Analysis, 1, 339-372.
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VOLUME I TECHNICAL PROPOSAL AND MANAGEMENT APPROACH Mathematical Analysis of the Empirical Mode Decomposition Ingrid Daubechies 1 and Norden Huang 2 1 Program in Applied and Computational Mathematics (Princeton) 2 Research Center for Adaptive Data Analysis, (National Central University) Since its invention by PI Huang over ten years ago, the Empirical Mode Decomposition (EMD) has been applied to a wide range of applications. The EMD is a two-stage, adaptive method that provides a nonlinear time- frequency analysis that has been remarkably successful in the analysis of nonstationary signals. It has been used in a wide range of fields, including (among many others) biology, geophysics, ocean research, radar and medicine. …….
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