CI87 CI91 CI94 P1* K1 P2* K2 P3* K3
Township (Ha) (Ha) (Ha)
AFLOU 1.47 2:33 3.47 6893.65 1543.56 3897.84
AIN SIDI ALI 1.69 1.99 3.26 15372.61 13084.23 308.17
BEIDHA 0.42 0.36 0.48 35295.06 10640.24 3664.00
BRIDA 2.42 2.88 3.63 283.68 9312.28 490.72
GUELTET SIDI SAÂD 0.44 0.37 0.64 50017.10 23533.99 3544.40
HADJ MECHERI 1.57 1.25 1.76 0.00 22899.00 7788.20
SEBGAG 5.03 2.51 3.96 445.35 12694.42 1165.06
SIDI BOUZID 0.98 0.64 0.89 16836.21 6044.86 3689.67
TOTAL 125143.66 99752.58 24548.06
Mean 1.55 1.35 2.01
P1: Grazing surface in good state.K1- 1.(Ki, i- 1,3: Weight assigned to the type of surface.)
P2: Grazing surface in degraded state. K2- 0.6.
P3: Grazing surface in very degraded state. K3- 0.4. CI: Charge Index.
Table 1. Evaluation of the charge index and the grazing surfaces per township.
B. Combination of the different layers
The overlay of the land cover layer, where the different
weighted grazing are represented with the pasture area
distribution layer, inform us on the grazing status. This
information is given by the computation of the charge index.
IIL RESULTS AND DISCUSSION
Firstly, the treatments done on this data base allowed us set up
the following remarks:
-the charge index computed in three different dates over the
townships shows that the considerable increase of this index is
in 91 and 94 (see Table 1).
-this index is very superior to the normal threshold which is 0.25
(Boukhobza, 1982) by hectare. In the case of an index greater
than this threshold, the grazing degradation will occur.
According to table 1, the charge index is very high in the four
townships: AFLOU, AIN SIDI ALI, BRIDA and SEBGAG.
This is due to the increase of the livestock number and the
decrease of grazing areas.
We noticed that the charge index of SEBGAG township is the
greatest one and this will involve bad consequences on the
grazing status. Nevertheless, the charge index of the remaining
three township GUELTET SIDI SAAD, BEIDHA and SIDI
BOUZID are small because of the presence of big grazing areas.
Secondly, the combination of the information layers shows us
the distribution of the main drillings and the pastoral wells on
the whole study area (see Fig. 1).
The townships BEIDHA and GUELTET SIDI SAAD are much
better supplied by water than the others and this is due to the
existence of a considerable number of pastoral wells and
drillings. This advantage makes these townships more attractive
in pastoralism.
According to the pasture density map (see Fig. 1), we notice that
the focalisation points are much concentrated in the south of the
study region which is flat. This aspect allows good circulation of
the herd. In addition, the densities vary between 2600 and 26000
animals per year.
Since the concentrated points are situated on the degraded
regions, we conclude that this degradation is due to the big
number of animals pasturing during the year.
The map of synthesis in the Figure 1 combining the livestock
density, land cover, administrative limits and hydraulic resource
helps us with management in terms of finding areas of
satisfactory grazing, water availability, existence of large and
good grazing areas (abundance of food), and accessible land.
Now, thanks to GIS tools and its functionalities the townships
BEIDHA and GUELTET SIDI SAAD are the most suitable for
the criteria mentioned above.
IV. CONCLUSION
This study gives the contribution of the GIS in the integration
process of the physical and socio-economic data in the aim of
producing maps and answers to complex interrogations in order
to find out the causes of grazing degradation and to propose the
best plan for the suitable grazing management.
The spatial representation offered by GIS facilitates the
expertise which identifies the most affected regions by the
livestock concentration, shows the distribution of the necessary
resources for the pastoralism and facilitates the research of new
sites satisfying to the good criteria.
The next steps aim to integrate temporal and spatial components
for the space management in addition to the area potential
valorisation.
Finally, the functionalities of GIS represent an advantage for the
space spatio-temporal organisation comprehension.
748 Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998