Look at the data, they appear to have been gridded at 30 meters. The data cover a huge area; gridding at 30m would take a long time. One could experiment.

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Presentation transcript:

Look at the data, they appear to have been gridded at 30 meters. The data cover a huge area; gridding at 30m would take a long time. One could experiment on a representative subset. I chose to try a 100 meter grid interval. Note that choice of grid interval affects the radial power spectrum.

TMI gridded at 100 meters with minimum curvature

Radially averaged power spectrum for the data gridded at 100 meters. This follows iterative adjustment, I chose four layers.

Shallowest Dipole Layer

Second deepest equivalent layer

Third deepest equivalent layer

Deepest (4 th ) equivalent layer

TMI separated into four equivalent layers. The deepest layer is largely devoid of signal from the dikes The two middle layers contain most of the NW striking dike signal. Note that I limit the range of the color scale to accent the signal of interest.

Sum of the middle two equivalent layers (461 meters and 1533 meters) separated by matched filtering. The dikes are now the dominant signal but there are some interesting anomalies transverse to the dikes

Surfer includes simple (convolution) directional filters – you can use them to bias against directional signal in directional apertures

Application of Simple Directional Filters Signal with southwest strike removedSubsequent removal of northeast strike

TMITMI after filtering to separate dikes

Surfer color schemeGeosoft color scheme