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Regional Geologic Hazard Map
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Fig.9 Regional geologic hazard map
(scale 1:25,000)
Geology
The study area is mostly composed of banded
biotite gneiss and granitic gneiss(Geological map
of Dunjeon, 1982). The bedrock outcrops are
severely weathered on the ground surface. No
geologic event is recognized in recent years.
Therefore, geologic features are divided into
two: hard part(1) and soft part(2).
Some R.Q.D(Rock Quality Designation) data
were taken from the test borings performed
in construction sites(Soil investigation report,
1990, Geological report for electrical railway,
1989). R.Q.D allows to recognize condition of
subsurface(R.Q.D(%) = 100 x length of full
diameter rockcore in pieces > 0.1m / length
of core run). R.Q.D of the area were
classsified as followings: (3)0-20% (highly
fractured), (2)20-50% (intermediate), (1)above 50%
(low). They ranged from 0 to 30% at the
depth of 20m from surface.
Classification of Stability Rating
After accomplishing the rating system of each
factor, weights were developed from
relationships between different factors(Table 2).
When the rating and weights were determined,
overlay process begin to create new maps(Fig.
7). A formula developed by Environmental
Protection Agency(Griner, 1989) is applied to
calculate the stability rating index(SR) in our
study:
SR = Tw x Tr + Iw x Ly + Gw x Gr
+ Vw x Vr + Rw x Rr ^ Sw x Sr +
Qw x Qr + Cw x Cr + Bw x Br
(SR; Stability rating index, w and r; weight
and rating of the factors in Table 2)
SR values in the study area ranged from 4
to 46. A percentage cumulative curve(areas vs.
SR values) was drawn. On this curve, three
important break points(15,20,25) were selected
for classification of SR values(Fig.8). The
classification of geologic hazards(landslides) is
presented as followings; (1)stable(0-15), (2)
potential unstable(15-20), (3)unstable(20-25), (4)
very unstable(above 25).
679
ASSESSMENT OF
REGIONAL GEOLOGIC HAZARD MAP
A final map(Fig.9) was produced only on the
area where nine envoronmental geologic data
(Table 2) were available. ARC/INFO calculated
the final SR values for composite polygons
created by overlay process(Fig.8). Although
vegetations could not be sufficiently examined
due to the limit of image processing technique
and source data(images), the stability rating
system was very efficient to examine landslide
occurrence an hazard assessment. Natural
hazards could be avoided, eliminated and
reduced through this risk assessment. Most of
the study areas are comprised in stable class
(57%), but some places, particularly pediment
areas which slope angles are less than 10
degrees, are included in the second class(24%)
due to soil texture(ML:3) and high
groundwater level(rating:3). Unstable areas(third
or forth class; 19%) are mostly located on
slopes of higher than 30 degrees(or 20-30%
of landslide frequency).
CONCLUSIONS
The regional geologic hazard map produced by
GIS can be effectively applied to predict the
landslide hazards. Unstable slopes(third or
fourth class) in Fig.9 should be carefully
treated during construction according to geologic
conditions, although most of the areas is
assessed as stable(first or second class).
Consequently, the analysis of landslide activity
by the hazard map can play an important role
in optimal land use planning in the study
area. The stability rating system adopted in the
area may be changed in other regions due to
different environmental characteristics, but slope,
landslide frequency and groundwater level
remain constant factors.
The results illustrate that this approach is
useful in providing information for preliminary
planning and assessment of landslide hazards.
Moreover, this technique can contribute to
natural hazard reduction by recognition of
landslide occurrences in the hazard map. The
accuracy of the hazard map can be improved
by application of more data layers through
overlay process. This methodology can provide
the better guide for environmental geologic
study, and become a basis for construction of
geological hazard information system.
REFERENCES
Anderson,J.R., et al 1976. A land use and
land cover classification system for use with
remote sensor data, U.S.G.S Geological Survey
Professional Paper, 964.
Brabb, Earl E., 1987. Analyzing and
portraying geologic and cartographic information
for land-use planning, emergency response, and
decision making in San Mateo County,
Caifornia, Second Annual International
Conference, Exhibits and Workshops on GIS,
pp.362-374.
Degraff,J. V., 1985. Using isopleth maps of
landslide deposits as a tool in timber sale
planning, Bulletin of the International
Association of Engineering Geology, No.22, pp.
445-453.