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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
72% of the study area needed compulsory treatment and 22 %
of the study area needed a compulsory investigation.
Risk map A ue E
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B Scenario i (0.0%) E m p
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Figure 7. Global hazard map for scenario i
Risk map EN
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BH Scenario ii (6.4%) | WW
BRR Scenarioii (21.7%) >" /
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Figure 8. Global hazard map for scenario iv
$3 Environmental hazard maps
Finally, with the hazards maps obtained for the two alternatives
it is possible to intersect them with an environmental impact
map. An impact map that classify to areas according its
environmental importance was made by C.M.A. (C.M.A,
2000). The maps include 4 different impacts levels. The lowest
impact level corresponds to an extensive culture occupation that
occupies 56% of the total study area while the highest
corresponds to the Guadiamar river margins (27% of the area).
Intersecting the impact map with the 2 hazards maps (resulting
from the two alternatives for the scenario iv) 23% and 36% of
the highest impact area needed treatment for the first and
second alternative, respectively.
6. NETWORK SAMPLING DESIGN
According to the previous results, the residual contamination
affected to a determined areas. For this reason, a new sampling
campaign was considered as necessary. The new sampling must
have a lower grid size in order to reach a better characterization
of the variability characteristics of the residual contamination
(local contamination).
The campaign was made in summer 2001. The new data tried to
analyse the real situation of the affected area after two years
from the previous data (1999) and examine the properties that
have had in the zone the different cleaning tasks (by means of
the organic and chemistries addition) thus own regenerative
power of the environment.
The sampling network design has two principal conditions.
First, only the north area -from the Aználcollar mine to the
Doblas Brigde- must be considered due to the elevated
contained which were detected in this zone. On the other hand,
the total number of samples must be around 300.
For the sampling network design geostatistical techniques were
applied. The method has a base in the fact than the associated
errors to an estimation process can be calculated a priori inside
to the geostatistical schema. These errors only depend of the
variability function (obtained from the structural analysis -
variogram analysis- of the available data that are considered as
representative of the variable to sample) and of the position of
the sampling points being totally independent of the proper
variable values. Using this approach, it is possible to analyse the
estimation error (that define the estimation uncertainty)
obtained for the different sampling network considered in the
design.
This analysis has been combined with the land-use and
environmental hazard level made by the environmental
technicians of the CMA. Both aspects are fundamental in the
sampling design network planning.
The network optimization begins with the determination of the
variability function that is considered as representative of the
variable to sample. The used structure (in which the different
variogram structures of the variables are take into account) are
composed by a nugget effect (local variability around 20%
variance) and an exponential model (with 400m range that
represents 80% variance).
Three grid sampling design were considered. The sampling
schemas are shown in figure 9. The used reference distance unit
-the work unit over the error must be analysed- is 100m
(divided into 10x10 elements of 10x10m grid size). The grid
size is variable between 50m x 50m and 500m x 500m, as
function of the desired information density for a determined
location. In Table 2, an example of the application of this
methodology is shown. The final result is obtained as a
weighted mean of a priori errors considering the surface of the
different impact units (that must be according with the future
available information density).