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Geology 5600/6600 Signal Analysis 16 Sep 2015 © A.R. Lowry 2015 Last time: A process is ergodic if time averages equal ensemble averages. Properties of.

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Presentation on theme: "Geology 5600/6600 Signal Analysis 16 Sep 2015 © A.R. Lowry 2015 Last time: A process is ergodic if time averages equal ensemble averages. Properties of."— Presentation transcript:

1 Geology 5600/6600 Signal Analysis 16 Sep 2015 © A.R. Lowry 2015 Last time: A process is ergodic if time averages equal ensemble averages. Properties of weakly WSS ergodic processes: and hence, statistical properties can be derived by averages (We don’t need the pdf a priori to evaluate expectation!) The convolution of two functions f and g is defined as: so we can also write: The convolution theorem : convolution in the time domain is equivalent to multiplication in the freq domain.

2 Geology 6600/7600 Signal Analysis 16 Sep 2015 © A.R. Lowry 2015 Last time (Continued): The Auto-Power Spectrum of a random variable is the Fourier transform of the autocorrelation function, given by the Wiener-Khinchin relation : which we can also write as:

3 Grokking the Fourier Transform: Power spectra and the Fourier Transform to the frequency domain are fundamental to signal analysis, so you should spend a little time familiarizing yourself with them. For the following functions, I’d like you to first evaluate the integral by hand, & then calculate and plot the Fourier transform using Matlab. (Send me by class-time Monday Sep 28). 1) Autocorrelation of a zero-mean, WSS white noise process (use   2 = 3 ) 2) A constant (use a = 3 ) 3) A cosine function (use amplitude 1 ;  ) 4) A sine function (as above) 5) A box function ( 0 on [– ,–  /2] & [  /2,  ] ; 1 on [–  /2,  /2] )

4 Use the continuous Fourier transform to do calculations by hand; use the DFT for the matlab exercises Matlab functions you’ll need to learn: fft fftshift Be sure to turn in matlab scripts so if you did something wrong I can figure out what happened!

5 Important: Defns of forward/inverse Fourier transform Useful: Euler’s eqn, function product relations Some key things to recognize: Integral of a sinusoid on [– ,  ] (hence [–∞,∞] ) is always zero unless the sinusoid is cos(0). Ergo, integral of a product of sin ’s/ cos ’s is nonzero only when . In the case of FT, the Fourier transform Acos(   t) and Asin(   t) is thus nonzero only at  0. By definition this means that sinusoids are a class of orthogonal functions. (Their inner product is zero unless f = g !) This makes them a very important class of functions…

6 As a shorthand for the forward and inverse Fourier transform, we will use e.g.: Some properties of the Fourier transform: Recalling Euler’s relation, e –i  t = cos(  t) – isin(  t), the FT of an even function will always be even (and real), and the FT of an odd function will always be odd and imaginary. Hence, because the autocorrelation function R xx is real and even, the autopower spectrum S xx will always be real and even as well! Note however this also implies that the power spectrum does not contain any phase information about the signal…

7 Some practical applications of cross-correlation in geophysics: If we assume ergodicity of WSS random processes that are sampled at N regular intervals in time (latter is commonly the case for geophysical data), the cross-correlation R xy [l] at lag l can be estimated as: Note that for zero-mean signals, this simplifies to:

8 Example: The change in reflection travel-time with offset is given by the Normal MoveOut (NMO) equation: NMO correction cross-correlates signals shifted using a range of assumed velocities to identify the “stacking velocity” that maximizes the cross-correlation.

9 Example: Pleistocene Lake Bonneville shorelines exhibit erosional and depositional features that are easily recognized in plots of elevation slope and curvature…. Cross-correlation of slope & curvature allows accurate estimates of  -height!

10 Generally, because both the autocorrelation function and the autopower spectrum are real and even, we can write: The average power of is simply We can derive this by recalling that and plugging zero in for  in the Wiener-Khinchin relation: Hence the average power is the mean square of x. ~

11 The Cross-Power Spectrum relating two random processes x and y is given by: Recall that R xy (  ) = R yx (–  ) : If we substitute and let  – , However so consequently ~~


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