Title: MATH 3290 Mathematical Modeling
1MATH 3290 Mathematical Modeling
Tutorial on the Empirical Mode Decomposition
Method (EMD)
2First, review of the procedure of EMD
methodThe main idea of the EMD method is Sifting
3Empirical Mode Decomposition Methodology Test
Data
4Empirical Mode Decomposition Methodology data
and m1
5Empirical Mode Decomposition Methodology data
h1
6Empirical Mode Decomposition Methodology h1
m2
7Empirical Mode Decomposition Methodology h3
m4
8Empirical Mode Decomposition Methodology h4
m5
9Empirical Mode DecompositionSifting to get one
IMF component
10Two Stoppage Criteria SD
Standard Deviation is small than a pre-set
value, where
11Stoppage Criteria
- It is critical that we use the correct stoppage
criterion. - Over shifting, we can prove that the envelopes
defined has to be a straight line. - If the data is not monotonically increasing or
decreasing, the straight lines would be
horizontal lines.
12Empirical Mode Decomposition Methodology IMF
c1
13Definition of the Intrinsic Mode Function (IMF)
14Empirical Mode DecompositionSifting to get all
the IMF components
15Empirical Mode Decomposition data
16Empirical Mode Decomposition IMFs and residue
17Definition of Instantaneous Frequency
18Definition of Frequency
Given the period of a wave as T the frequency
is defined as
19Equivalence
- The definition of frequency is equivalent to
defining velocity as - Velocity Distance / Time
20Instantaneous Frequency
21The combination of Hilbert Spectral Analysis and
Empirical Mode Decomposition is designated as
- Hilbert-Huang Transform
- (HHT vs. FFT)
22Comparison between FFT and HHT
23The Idea behind EMD
- To be able to analyze data from the nonstationary
and nonlinear processes and reveal their physical
meaning, the method has to be Adaptive. - Adaptive requires a posteriori (not a priori)
basis. But the present established mathematical
paradigm is based on a priori basis. - Only a posteriori basis could fit the varieties
of nonlinear and nonstationary data without
resorting to the mathematically necessary (but
physically nonsensical) harmonics.
24The Idea behind EMD
- The method has to be local.
- Locality requires differential operation to
define properties of a function. - Take frequency, for example. The traditional
established mathematical paradigm is based on
Integral transform. But integral transform
suffers the limitation of the uncertainty
principle.
25Global Temperature Anomaly
- Annual Data from 1856 to 2003
26Global Temperature Anomaly 1856 to 2003
27IMF Mean of 10 Sifts CC(1000, I)
28Data and Trend C6
29Rate of Change Overall Trends EMD and Linear
30What This Means
- Instantaneous Frequency offers a total different
view for nonlinear data instantaneous frequency
with no need for harmonics and unlimited by
uncertainty. - Adaptive basis is indispensable for nonstationary
and nonlinear data analysis - HHT establishes a new paradigm of data analysis
31Comparisons
Fourier Wavelet Hilbert
Basis a priori a priori Adaptive
Frequency Integral transform Global Integral transform Regional Differentiation Local
Presentation Energy-frequency Energy-time-frequency Energy-time-frequency
Nonlinear no no yes
Non-stationary no yes yes
Uncertainty yes yes no
Harmonics yes yes no
32Conclusion
- Adaptive method is a scientifically meaningful
way to analyze data. - It is a way to find out the underlying physical
processes therefore, it is indispensable in
scientific research. - It is physical, direct, and simple.
33- History of EMD HHT
- 1998 The Empirical Mode Decomposition Method and
the Hilbert Spectrum for Non-stationary Time
Series Analysis, Proc. Roy. Soc. London, A454,
903-995. The invention of the basic method of
EMD, and Hilbert transform for determining the
Instantaneous Frequency and energy. - 1999 A New View of Nonlinear Water Waves The
Hilbert Spectrum, Ann. Rev. Fluid Mech. 31,
417-457. - Introduction of the intermittence in
decomposition. - 2003 A confidence Limit for the Empirical mode
decomposition and the Hilbert spectral analysis,
Proc. of Roy. Soc. London, A459, 2317-2345. - Establishment of a confidence limit without the
ergodic assumption. - 2004 A Study of the Characteristics of White
Noise Using the Empirical Mode Decomposition
Method, Proc. Roy. Soc. London, 460, 1597-1611. - Defined statistical significance and
predictability.
34- 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. - The correct adaptive trend determination method
- 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 (Advances in Adaptive Data
Analysis. Advances in Adaptive data Analysis, 1,
177-229). - 2009 Multi-Dimensional Ensemble Empirical Mode
Decomposition. Advances in Adaptive Data Analysis
(Advances in Adaptive Data Analysis. Advances in
Adaptive data Analysis, 1, 339-372). - 2010 The Time-Dependent Intrinsic Correlation
based on the Empirical Mode Decomposition
(Advances in Adaptive Data Analysis. Advances in
Adaptive data Analysis, 2, 233-265). - 2010 On Hilbert Spectral Analysis (to appear in
AADA).
35Current Efforts and Applications
- Non-destructive Evaluation for Structural Health
Monitoring - (DOT, NSWC, DFRC/NASA, KSC/NASA Shuttle, THSR)
- Vibration, speech, and acoustic signal analyses
- (FBI, and DARPA)
- Earthquake Engineering
- (DOT)
- Bio-medical applications
- (Harvard, Johns Hopkins, UCSD, NIH, NTU, VHT, AS)
- Climate changes
- (NASA Goddard, NOAA, CCSP)
- Cosmological Gravity Wave
- (NASA Goddard)
- Financial market data analysis
- (NCU)
- Theoretical foundations
- (Princeton University and Caltech)
36Reference
- Huang, M. L. Wu, S. R. Long, S. S. Shen, W. D.
Qu, P. Gloersen, and K. L. Fan (1998)The
empirical mode decomposition and the Hilbert
spectrum for nonlinear and non-stationary time
series analysis. Proc. Roy. Soc. Lond., 454A,
903-993. - Flandrin, P., G. Rilling, and P. Gonçalves
(2004)Â Empirical mode decomposition as a filter
bank. IEEE Signal Proc Lett., 11, 112-114. - Research Center for Adaptive Data Analysis,
National Central University - http//rcada.ncu.edu.tw/research1.htm