. The
nt
0
can
lls.
cen
xted
raphic
ween
rder
ce to
| in the
model. Distances related each predictor map were within the range of the influencing distance for each map
pattern as described in table 1. For a dialated lineament with 5 distance classes, the association has been
calculated and obtained values for C are given in table 2. The weights and contrast ,C, for the other spatial
features such as distance to valley, distance to tank, et. have also been calculated. For geological units, only
positive weights were calculated as these units are mutually exclusive and the Table 3 shows calculated
weights for different rock types.
Distance 10 W W C Rock type W
lineament (m) -
50 263381 0.490, 2.825 Charnockite me
100 1,123 0550-42 293 Granite or |
150 1,383 0,510 94,893 Granitic gneiss 0.319
20 1.985 0,483 1.548 Hornblende
250 Q. O66 0. 534. 1.520 biotite gneiss —0, 034
Table 2: Weights for lineament Table 3: Weights for rock types
After obtaining the weights and contrast, C, for each predictor maps, the following equation has been used
to integrate binary predictor maps in order to optimize the probability of obtaining high yielding wells.
O post = exp {In (O prior y+ Tw }
j=l
Where, O odds, either prior or posterior, and is related to the probability P by O = P/(1-P).
"d W for map pattern j present
) W for map pattern j absent
Finally a map of posterior probability indicating potential groundwater zones is created by calculating the
posterior probability P ,. as seen in figure 7.
a a
y . u... x.
aN aa NaN
Cait em etn hn LM aS
* at t >.
+e "ran at
«-O low potential
O1 O10 low to moderate
0:10 03 moderate
0-3 0-6 moderate to high
>0'6 high
Valleys: considered as high
Well 0 lkm
rre
Fgure 7: Posterior probability of groundwater occurences
363
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B7. Vienna 1996