Volcanic
ground is a challenging place to drill water wells. In central Nicaragua,
situated on volcanic bedrock, only three of every 10 wells drilled produces
sufficient water even for one household.
That’s because, in volcanic rock, ground water flows primarily through fracture
zones that cannot be seen on the earth’s surface. Locating those underground
fractures can improve the well-drilling success rate dramatically. But up to
now, there has been virtually no funding for ground water exploration and
little research into using remote sensors, such as satellite images, to
identify the location of subsurface faults and fractures.
As part of a larger, National Science Foundation-funded research project titled
Remote Sensing for Hazards Mitigation and Resource Protection in Latin America,
a Michigan Technological University graduate student in geologic and mining
engineering and sciences designed a map using remote sensing images to locate
underground fractures.
Jill Bruning,
who recently received her master’s degree from Michigan Tech, faculty advisor
John Gierke, an associate professor of geological and mining engineering and
sciences, and other students then took the map to Nicaragua for field-testing.
The goal of their research was to determine which data-processing tools work
best with various types of remotely sensed images, field observations and other
data to create an effective, efficient method for identifying the best places
to drill in challenging terrain.
Bruning’s research asked and answered three questions:
-
What type of image or combination of image types will best detect lineaments,
which are surface characteristics that reveal subsurface structures?
-
What processing and interpretation techniques enhance the surface appearance
that indicates fracturing below ground?
-
How do lineaments identified from remotely sensed images compare to field
observations?
She
used several kinds of satellite images and several data-processing techniques,
overlaying the results to find areas of coincidence between lineament
interpretations from the different images. In addition to developing the
method, Bruning determined that RADARSAT-1 products are superior to other types
of satellite images because they maximize the topographic or surface features
of the ground.
No single type of satellite image identified all the lineaments in the final
map. However, says Bruning, the method of employing images from multiple
sensors is a low-cost, non-invasive way to improve ground water exploration in
remote and geologically challenging areas.