International Archives of the Photogrammetry, Remote Sensing
(Anonym, 1999). This is fast and has relatively simple
mathematical algorithm.
In equation 2 and 3, the relations are given to calculate the
geoid undulation point k as related to the surrounding reference
points i=1,2,3 .. n. The point k and neighbor reference points
contributed to the computation of geoid undulation value of
point k according to certain weight values are illustrated in
Figure 2 (in the figure i=7).
n
YN 77
N'= À (2)
= v.
izl
Il
N’ = geoid undulation value of point k
: . at x :
N; = geoid undulation value of i" reference point
. nfl >
P; = weight of i" reference point
where
den (3)
1 n
1
og
where di = distance between interpolation point k and i"
reference point in kilometer
n = power of the distance, it can be 1, 2, 3 or 4. In the
case study, n has chosen 3 empirically.
Figure 2. Interpolation point k of which geoid undulation value
is going to be computed and neighbor reference points that
contributes the computation of geoid undulation at point k.
In general, it is not usual to contribute all the reference points to
the computation of geoid undulation value according to IDW
interpolation method. Because of that a boundary is described
to surround an area to include the reference points which are
going to be contribute to the computation. There are several
ways to describe the boundary. One of them is to determine a
circle as being the interpolation point in the center of it. The
radius of the circle is determined according to conditions of the
cover area of the study and in this example a 3 km radius was
described by considering the topographical properties of the
local area.
Kriging is a geostatistical approach to interpolate data based
upon spatial variance and has proven useful and popular in
many fields in geodesy as well. This is a considerably flexible
method and similar to IDW whereby proximity and influence
are assumed to be related, Kriging recognizes that spatial
variance is a function of distance (Wilson, 1996). It can be
custom fit to a data set by specifying the appropriate variogram
and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
model. The variogram model mathematically specifies the
spatial variability of the data set. The weights of reference
points, which are applied to data points during calculations, are
direct functions of the variogram model (Anonym, 1999).
Computing an experimental variogram from your data is the
only certain way to determine which variogram model you
should use. A detailed variogram analysis can offer insights
into the data that would not otherwise be available, and it
allows for an objective assessment of the variogram scale and
anisotropy (Anonym, 1999). In an other word structural effects
have been accounted for the surfacc may be modeled on the
basis of variations as a function of distance. A mathematical
model is fit to this data in order to interpolate unknown values
at other locations. Spatial variation may also be more
predominate in certain directions. Anisotropy implies the
preferred direction of higher or lower continuity between data
points. Anisotropy is applied by specifying an anisotropy ratio
which states: “Give more weighting to points located along one
axis versus points located along another axis”. The relative
weighting is defined by an anisotropy ratio (Wilson, 1996).
The method based on the recognition that the spatial variation
of any property, known as a ‘regionalized variable’, is too
irregular to be modeled by a smooth mathematical function but
can be described better by a stochastic surface. The
interpolation proceeds by first exploring and then modelling the
stochastic aspects of the regionalized variable. The resulting
information is then used to estimate weights for interpolation
points and in the Kriging method, the logic is similar.
Geostatistics, similar to any form of statistics, has two main
criteria which must be met. All statistical models have
assumptions which need to be recognized and expectantly meet
before the model is used. The second criterion, a statistical
analysis, to perform on the data set, should be explored for
normality and spatial variance with data transformations
applied as necessarily. Geostatistical assumptions are reviewed
by Issaaks and Srivastava, 1989. Regionalized variable theory
assumes that spatial variation is the sum of three components
(Wilson, 1996);
— A first order effect, in another word, known as a *structural
component’, which is defined by a constant trend. This part
gives trend and is depicted graphically in a variogram as the
“sill”. It implies that at these values of the ‘lag’ (distance)
there is no spatial dependence between the data points
based on variance.
_ A second order effect is defined as a random spatially
correlated component. Referred lo as “variance of
differences” and this is a function of distance between sites
(the distance is called as “lag”). Variance increascs from
random noise (the nugget) to the sill as distance increases.
The distance is important as it specifies the distance site
differences are spatially dependent.
— Random noise or residual error, known as the “nugget”.
For a detailed explanation about Kriging Method Isaaks and
Srivastava, 1989; Watson, 1992 and Deutsch and Journel, 1992
can be seen.
[n the case study, universal Kriging method was applied with
linear variogram model. The results of the case study will be
given under following title.
78
Inter
The
usin,
near
geol
meth
inter
the «
how
on t
soft
In ti
deci
whic
appr
poin
inter
Metl
the i
refer
poin
38.45
LATITUDE
3825
IDW
acco
meth
meth
varic
that
an ii
hand
Accc
mod
The
com|
meas
the n
This
com]
Whil
data
root