Kizhner 1MAPLD 2005/1020 On the Hilbert-Huang Transform Theoretical Developments Semion Kizhner, Karin Blank, Thomas Flatley, Norden E. Huang, David Petrick.

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Kizhner 1MAPLD 2005/1020 On the Hilbert-Huang Transform Theoretical Developments Semion Kizhner, Karin Blank, Thomas Flatley, Norden E. Huang, David Petrick and Phyllis Hestnes National Aeronautics and Space Administration Goddard Space Flight Center Greenbelt Road, Greenbelt MD,

Kizhner 2MAPLD 2005/1020 Overview Main heritage tools used in scientific and engineering data spectrum analysis carry strong a-priori assumptions about the source data. A recent development at NASA Goddard, known as the Hilbert-Huang Transform (HHT), proposes a novel approach to the solution for the nonlinear class of spectrum analysis problems for an arbitrary data vector. A new engineering spectrum analysis tool using HHT has been developed at NASA GSFC, the HHT Data Processing System (HHT-DPS).

Kizhner 3MAPLD 2005/1020 Overview (Cont.) In this paper we have developed the theoretical basis behind the HHT and EMD algorithms to answer questions: Why is the fastest changing component of a composite signal being sifted out first in the EMD sifting process? Why does the EMD sifting process seemingly converge and why does it converge rapidly? Does an IMF have a distinctive structure? Why are the IMFs near orthogonal? We address these questions and develop the initial theoretical background for the HHT.

Kizhner 4MAPLD 2005/1020 EMD Algorithm Overview The EMD algorithm’s empirical behavior is determined by its built-in definitions and criterias as well as by the user’s supplied run configuration vector. The configuration vector is composed of the sampling time interval  t (used after EMD in spectrum analysis) and other empirical user supplied parameters. The Empirical Mode Decomposition algorithm in the paper is describing the implementation in the latest HHT-DPS Release 1.4.

Kizhner 5MAPLD 2005/1020 Problem Statement Naturally, because of the EMD algorithm, the sum of all IMFs and the last signal residue R(t) (which is counted towards the number of IMFs) synthesize the original input signal s(t) s(t) = ∑IMF l + R(t), where 1<=l<=m-1 The set of IMFs, which is derived from the data, comprises the signal s(t) near-orthogonal adaptive basis and is used for the following signal time-spectrum analysis. With the EMD algorithm described in the paper, the research problem is to understand why it works this way and try to develop the theoretical fundamentals of this algorithm.

Kizhner 6MAPLD 2005/1020 Hypothesis 1 and Theory of EMD Sifting Process’ Sequence of Scales The fastest changing component of a composite signal is invariably being sifted out first in the Empirical Mode Decomposition algorithm. Hypothesis 1: Assuming theoretical convergence of the EMD sifting process, the fastest scale is being sifted out first, because the composite signal s(t) extremas’ envelope median is approximating the slower variance signal in presence of a fast varying component.

Kizhner 7MAPLD 2005/1020 Analogies It is implied in this paper that the EMD sifting process converges theoretically. In order to prove this hypothesis we are first considering two analogies, one from optical physics and the other from electrical and electronics engineering disciplines. We then consider three intuitive examples of the EMD sifting for a few artificially created signals comprised of fast and slow varying components.

Kizhner 8MAPLD 2005/1020 Composite Signal 1 Figure 1. Composite Signal 1 s(t) = s1 + s2 = *cos(2*pi*f*t)

Kizhner 9MAPLD 2005/1020 Signal 1 Decomposition Figure 2. HHT-DPS Release 1.4 EMD Results for Signal 1

Kizhner 10MAPLD 2005/1020 Composite Signal 2 Figure 3. Composite Signal 2 s(t) = s1+s2 = 1*t + 1.0*cos(2*pi*5*t)

Kizhner 11MAPLD 2005/1020 Signal 2 Decomposition Figure 4. HHT-DPS Release 1.4 EMD Results for Signal 2

Kizhner 12MAPLD 2005/1020 Composite Signal 3 s1 = b *cos(2*pi*1*t) s2 = 2.0*cos(2*pi*2*t)) s3 = 2.0*cos(2*pi*50*t) s(t) = s1 + s2 + s3 Figure 5. HHT-DPS Release 1.4 EMD Results for Signal 3

Kizhner 13MAPLD 2005/1020 Signal 3 Decomposition Figure 6. HHT-DPS Release 1.4 EMD Results for Signal 3

Kizhner 14MAPLD 2005/1020 General Case of an Arbitrary Signal We present two instances of a general case signal s(t) with Fast Varying Component Extrema Symmetry Considerations and A Linear Approximation of a Slow Varying Component. Piecewise Cubic Spline for the Construction of the Signal Envelopes and its Role in the EMD Sifting Scale Sequence for an Arbitrary Signal are analyzed.

Kizhner 15MAPLD 2005/1020 Hypotheses Hypothesis 2: The EMD sifting process preserves an intermediate locally symmetric zero-crossing pair of extrema points with interleaved regions of diminishing amplitudes yielding an IMF with a definitive structure. Hypothesis 3: The EMD sifting process’ rapid convergence is of order O(1/2 k ). This is a consequence of the EMD envelope control points definition as sets of extremas of the same type, its interpolation by piecewise cubic spline whose control points are the data extremas, and envelope’s median construction as an arithmetic median- sum of envelop re- sampled values at t i divided by 2.

Kizhner 16MAPLD 2005/1020 Conclusions and Acknowledgments We have reported the initial theoretical proof of why the fastest changing component of a composite signal is being sifted out first in the Empirical Mode Decomposition sifting process. We have also provided the two hypotheses for the theoretical explanation of why the EMD algorithm converges and converges rapidly while using cubic splines for signal envelope interpolation. This work was funded by the AETD 2005 Research and Technology Development of Core Capabilities Grant. The assistance of Michael A. Johnson/AETD Code 560 Chief Technologist in sponsoring and encouraging this work is greatly appreciated and acknowledged.