a confidence limit for hilbert spectrum through stoppage criteria

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A Confidence Limit for Hilbert Spectrum Through stoppage criteria

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Page 1: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

A Confidence Limit for Hilbert Spectrum

Through stoppage criteria

Page 2: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Need a confidence limit

• As we have presented here, EMD could generate infinite many sets of IMFs. In this case, which one of the infinite many sets really represents the true physics? To answer this question, we need a confidence limit on our result.

• Traditional methods also had the similar problem of generating many answers. Take Fourier analysis for example; we have to assume trigonometric series is basis. How about other basis? Why not slightly distorted sinusoidal wave as basis? ….

Page 3: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Confidence Limit for Fourier Spectrum

• The Confidence limit for Fourier Spectral analysis is based on ergodic assumption.

• It is derived by dividing the data into M sections, and substituting temporal (or spatial) average as ensemble average.

• This approach is valid for linear and stationary processes, and the sub-sections have to be statistically independent.

• By dividing the data into subsections, the resolution will suffer.

Page 4: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Statistical Independence

The probability function of x and y jointly, f(x, y), is equal to f(x) times f(y) if x and y are statistically independent. For any number of variables, x1, x2, ...,

xn, if the joint probability is the product of the several

probability functions, then the variables are all statistically independent. Independent variables are noncorrelated, but not necessarily conversely.

James & James : Mathematics Dictionary

Page 5: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

LOD Data

Page 6: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Confidence Limit for Fourier Spectrum

Confidence Limit from 7 sections, each 2048 points.

Page 7: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Are the sub-sections statistically independent?

For narrow band signals, most likely they would not be

independent.

Page 8: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Confidence Limit for Hilbert Spectrum

• Any data can be decomposed into infinitely many different constituting component sets.

• EMD is a method to generate infinitely many different IMF representations based on different sifting parameters.

• Some of the IMFs are better than others based on various properties: for example, Orthogonal Index.

• A Confidence Limit for Hilbert Spectral analysis can be based on an ensemble of ‘valid IMF’ resulting from different sifting parameters S covering the parameter space fairly.

• It is valid for nonlinear and nonstationary processes.

Page 9: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Different Kinds of Confidence Limit

The basic idea is to generate various IMFs, treat the mean as the true answer, and obtain the confidence limit based on the STD from the various solutions.

• By stoppage criteria • By Ensemble EMD• By down sampling• Different spline methods

Page 10: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Empirical Mode DecompositionSifting : to get one IMF component

1 1

1 2 2

k 1 k k

k 1

x( t ) m h ,

h m h ,

.....

.....

h m h

h c .

.

Page 11: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

None of the above methods depends on ergodic assumption.

We are truly achieving an ensemble mean.

Page 12: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

The Stoppage Criteria : S and SDA. The S number : S is defined as the consecutive

number of siftings, in which the numbers of zero-crossing and extrema are the same for these S siftings.

B. If the mean is smaller than a pre-assigned value.

C. Fixed sifting (iterating) time.

D. SD is small than a pre-set value, whereT

2

k 1 kt 0

T2

k 1t 0

h ( t ) h ( t )SD

h ( t )

Page 13: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Critical Parameters for EMD

• The maximum number of sifting allowed to extract an IMF, N.– Note: N is originally set to guarantee convergence

of sifting, but later found to be superfluous.

• The criterion for accepting a sifting component as an IMF, the Stoppage criterion S.

• Therefore, the nomenclature for the IMF are

CE(N, S) : for extrema sifting

CC(N, S) : for curvature sifting

Page 14: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Sifting with Intermittence Test

• To avoid mode mixing, we have to institute a special criterion to separate oscillation of different time scales into different IMF components.

• The criteria is to select time scale so that oscillations with time scale shorter than this pre-selected criterion is not included in the IMF.

Page 15: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Data

Page 16: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : IMF

Page 17: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Hilbert Spectra

Page 18: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Hilbert Spectra (Low)

Page 19: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Marginal Spectra

Page 20: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Marginal spectra (Low)

Page 21: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Intermittence Sifting : Marginal spectra (High)

Page 22: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Critical Parameters for Sifting

• Because of the inclusion of intermittence test there will be one set of intermittence criteria.

• Therefore, the Nomenclature for IMF here are

CEI(N, S: n1, n2, …)

CCI(N, S: n1, n2, …)

with n1, n2 as the intermittence test criteria.

Note: N is originally set to guarantee convergence of

sifting, but later found to be superfluous.

Page 23: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Effects of EMD (Sifting)

• To separate data into components of similar scale.

• To eliminate ridding waves.• To make the results symmetric with respect to

the x-axis and the amplitude more even.

– Note: The first two are necessary for valid IMF, the last effect actually cause the IMF to lost its intrinsic properties.

Page 24: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

LOD Data

Page 25: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF CE(100, 2)

Page 26: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF CE(100, 10)

Page 27: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Orthogonal Index as function of N and S Contour

Page 28: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Orthogonality Index as function of N and S

Page 29: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Confidence Limit without Intermittence Criteria

Number of IMF for different siftings may not be the same; therefore, average of IMF is, in general, not possible. However, we can take the mean of the Hilbert Spectra, for we can make all the spectra having the same frequency and time ranges.

Page 30: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Hilbert Spectrum CE(100, 2)

Page 31: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Hilbert Spectrum : All CEs

Page 32: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

STD Hilbert Spectrum : All CEs

Page 33: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Marginal Mean & STD Hilbert Spectra : All CEs

Page 34: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean and STD of Marginal Hilbert Spectra

Page 35: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Confidence Limit with Intermittence Criteria

In general, the number of IMFs can be controlled to the same; therefore, averages of IMFs and Hilbert Spectra are all possible.

Page 36: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF CEI(100,2; 4,-1^3,45^2,-10)

Page 37: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF CEI(100,10; 4,-1^3,45^2,-10)

Page 38: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Envelopes of Selected Annual Cycle IMFs

Page 39: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Orthogonal Indices for CEI cases

Page 40: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF : Mean CEI 9 cases

Page 41: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF : STD CEI 9 cases

Page 42: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Hilbert Spectrum : All CEIs

Page 43: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

STD Hilbert Spectrum for All CEIs

Page 44: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Marginal mean & STD Hilbert Spectra : All CEIs

Page 45: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Marginal Hilbert Spectrum & Confidence Limit :All CEIs

Page 46: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Marginal Hilbert Spectrum & Confidence Limit :All CEs

Page 47: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Individual Annual Cycle IMFs : 9 CEI Cases

Page 48: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Details of Individual Annual Cycle : CEIs

Page 49: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Annual Cycle & Envelope: 9 CEI Cases

Page 50: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Individual Envelopes for Annual Cycle IMFs

Page 51: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Envelopes for Annual Cycle IMFs

Page 52: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Optimal Sifting Parameters

• The Maximum sifting number should be set very high to guarantee that the stoppage criterion is always satisfied.

• The Stoppage criterion should be selected by considering the difference between the individual case with the mean to see if there is an optimal range where the difference is minimum.

• The difference can be computed from the Hilbert spectra or IMF components. It turn out that the IMF is a more sensitive way to determine the optimal sifting parameters.

Page 53: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Computation of the Differences

N

jj 1

2

j jt

1V ( t ) V ( t ; S ) .

N

D V( t ) V ( t ; S )

where V(t) can be IMF or Hilbert Spectrum.

Page 54: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF for CEI Cases : Annual Cycle

Page 55: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

IMF for CEI Cases : Half-monthly tidal Cycle

Page 56: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Hilbert Spectrum : Deviation Individual form the mean CEI

Page 57: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Hilbert Spectrum : Deviation Individual form the mean CE

Page 58: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Another Example using Earthquake Data

Earthquake data has no fixed time scale; therefore, it is not possible to sift with intermittence. The only way to compute the confidence limit is use an ensemble of Hilbert Spectra.

Page 59: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Earthquake Data

Page 60: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Mean Hilbert Spectrum

Page 61: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Another Example using Earthquake Data

Page 62: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Optimal Selection of Stoppage Criterion

• From the above tests, we can see that the Hilbert spectrum difference is less sensitive to the changes of stoppage criterion S than IMFs.

• From the IMF tests, we suggest that the S number should be set in the range of 3 to 10.

• This selection is in agreement with our past experiences; however, additional quantitative tests should be conduct for other data types.

Page 63: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Summary

• The Confidence limit presented here exists only with respect to the EMD method used.

• The Confidence limit presented here is only one of many possibilities. Instead of using OI as criterion, we can also use the STD of different trials to get a feeling of the stability of the analysis.

• Instead of Stoppage criteria, we can us different spline methods, down sampling and study their variations.

• Most interestingly, we could use Ensemble EMD, to be discussed next.

Page 64: A Confidence Limit for Hilbert Spectrum Through stoppage criteria

Envelope of IMF : c1