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THE HALF-ORDER DERIVATIVE WAVEFORM

Causal integration is represented in the time domain by convolution with a step function. In the frequency domain this amounts to multiplication by $1/(-i\omega)$.(There is also delta function behavior at $\omega=0$which may be ignored in practice and since at $\omega=0$, wave theory reduces to potential theory). Integrating twice amounts to convolution by a ramp function, $t\, {\rm step}(t)$, which in the Fourier domain is multiplication by $1/(-i\omega)^2$.Integrating a third time is convolution with $t^2\, {\rm step}(t)$ which in the Fourier domain is multiplication by $1/(-i\omega)^3$.In general

 
 \begin{displaymath}
t^{n-1}\ {\rm step}(t) \quad =\quad{\rm FT}\ \left( { 1 \over (-i\omega)^n} \right)\end{displaymath} (28)
Proof of the validity of equation (28) for integer values of n is by repeated indefinite integration which also indicates the need of an n! scaling factor. Proof of the validity of equation (28) for fractional values of n would take us far afield mathematically. Fractional values of n, however, are exactly what we need to interpret Huygen's secondary wave sources in 2-D. The factorial function of n in the scaling factor becomes a gamma function. The poles suggest that a more thorough mathematical study of convergence is warranted, but this is not the place for it.

The principal artifact of the hyperbola-sum method of 2-D migration is the waveform represented by equation (28) when n=1/2. For n=1/2, ignoring the scale factor, equation (28) becomes  
 \begin{displaymath}
{1\over \sqrt{t}} \ {\rm step}(t) \quad =\quad
{\rm FT}\ \left( { 1 \over \sqrt{-i\omega}} \right)\end{displaymath} (29)
A waveform that should come out to be an impulse actually comes out to be equation (29) because Kirchhoff migration needs a little more than summing or spreading on a hyperbola. To compensate for the erroneous filter response of equation (29) we need its inverse filter. We need $\sqrt{-i\omega}$.To see what $\sqrt{-i\omega}$ is in the time domain, we first recall that  
 \begin{displaymath}
{d \ \over dt} \quad =\quad
{\rm FT}\ \left( -i\omega \right)\end{displaymath} (30)
A product in the frequency domain corresponds to a convolution in the time domain. A time derivative is like convolution with a doublet $(1,-1)/\Delta t$.Thus, from equation (29) and equation (30) we obtain  
 \begin{displaymath}
{d \ \over dt} \ {1\over \sqrt{t}} \ {\rm step}(t) \quad =\quad
{\rm FT}\ \left( \sqrt{-i\omega} \,\right) \end{displaymath} (31)
Thus, we will see the way to overcome the principal artifact of hyperbola summation is to apply the filter of equation (31). In chapter [*] we will learn more exact methods of migration. There we will observe that an impulse in the earth creates not a hyperbola with an impulsive waveform but in two dimensions, a hyperbola with the waveform of equation (31), and in three dimensions, a hyperbola of revolution (umbrella?) carrying a time-derivative waveform.



 
next up previous print clean
Next: Hankel tail Up: Waves and Fourier sums Previous: Simple examples of 2-D
Stanford Exploration Project
12/26/2000