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urban growth model.
2.1 SA method for CA modeling
In this study, univariate sensitivity analysis was performed in
which the parameters i.e. the basic CA elements were assumed
independent. This is mainly because of the fact that complicated
mathematical operations are difficult to derive for the analysis
of uncertainties and errors in CA simulation testing as stated by
Yeh and Li (2003). Furthermore, KAPPA statistic can be used
(Congalton and Mead, 1983) for the analysis of simulation
outcomes since CA operates in raster environment. However,
KAPPA statistic has some disadvantages since it does not
quantify the patterns of map land-use classes, thus even a small
difference of classes between two maps is shown as an
inconsistency (White et al. 1997; Barredo et al. 2003; Straatman
et al. 2004). In order to overcome these shortcomings this study
proposes an integrated SA method that employs qualitative and
quantitative approaches of cross-classification map, KAPPA
index with coincidence matrices and spatial metrics. The
effective SA was accomplished by varying the CA basic
elements one at the time, more specifically neighborhood size
and type. Subsequently, the model outputs i.e. the simulated
maps were compared with each other in terms of the
combination of different approaches to provide the quantitative
and qualitative measures and achieve the high accuracy in map
comparisons.
Under the heading of qualitative part of the approach, the visual
comparison of the outcomes was used. The advantage of this
method is in its capability to detect the uncertainties and
inconsistencies while comparing the simulation results. White et
al. (1997) and Mandelbrot (1983) pointed out that visual
similarity is an important factor for comparison of complex
fractal forms. Therefore, the cross-classification map, which is
the result of multiple GIS overlay analysis showing all
combinations, was produced to enable visual comparison and
the analysis of visual similarities and differences between
model outputs. The cross-classification map depicts the
locations of the combinations of the map land-use classes of
urban growth model output for the two maps that were being
compared. The advantage of a cross-classification map is
reflected in its capability to easily determine the locational
differences of map land-use classes between the two maps.
Quantitative part of the developed approach relics on the
following two categories: a coincidence matrix with KAPPA
index and spatial metrics. The KAPPA index is computed with
the coincidence matrix to compare the results of changing CA
element values. It was introduced by Cohen (1960) and adapted
for accuracy assessment in the remote sensing applications by
Congalton and Mead (1983). It ranges from 0 to 1, and when it
approaches | it indicates that the two maps are similar. In this
study, the overall KAPPA index (Lillesand and Kiefer, 1994)
was calculated in order to analyze the degree of similarity
between outputs when varying different CA element
configurations.
Landscape indices or metrics are quantitative indices that can
measure the structure and pattern of a landscape (McGarigal
and Marks, 1994; O'Neill et al., 1988). Their origins can be
found in the information measures theory and fractal geometry
(Mandelbrot, 1983). Recent studies use the term spatial metrics
for the analysis of the urban phenomena. It has been shown that
spatial metrics have significant advantages when applied in the
analysis of heterogeneous urban areas (Parker and Meretsky
2004; Alberti and Waddell 2000; Barnslev and Bair 1997;
87
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
Herold et al. 2002). In addition. Herold et al. (2003) stated that
spatial metrics can be utilized for the accuracy assessment of
CA model simulations. In turn, they have applied spatial metrics
to test the accuracy of SLEUTH CA model.
In this study, fractal dimension (FD) and class area spatial
metrics were employed to analyze the CA model output results.
Fractal dimension (FD) illustrates the complexity and the
fragmentation of a land-use class patch by a perimeter-area
proportion. The derived version of FD, which is called Area
Weighted Mean Patch Fractal Dimension (AWMPFD), is used
in this study since it eliminates the overestimation of smaller
land-use class patches (Milne, 1991). In addition to FD, class
area metric compares the change in area of each class by
varying radius from the city center. Class area is a measure used
to calculate the surface of overall change for each class type. In
order to analyze results of spatial metrics, radius zones were
created to divide study area into subareas with the increasing
radius of 10 km from the city center, and FD value is calculated
for each sub-area. To compute metrics, PATCH ANALYST
3.1, an extension of ESRI ArcView GIS software, was used to
facilitate the spatial analysis of landscape patches calculations
and modeling of attributes associated with patches (Elkie et al.,
1999).
3. SIMULATION FRAMEWORK
3.1 Study area and CA model
San Diego region, USA, was chosen for the study arca. The
digital map data for the study area was obtained from San
Diego’s Regional Planning Agency public Internet site
(SANDAG, 2004). The vector map was rasterized to
appropriate spatial resolutions in order to apply the CA model.
The raster map represents the digital image of the city classified
in nine land use classes, which are: housing area, commercial
area, public area, industrial areas. recreational areas, water
arcas, transportation network, agricultural areas, and vacant
land. :
Since it is important to analyze different urban land use classes
that change over time, housing and commercial areas were
chosen as the most dynamic. Land uses such as agricultural
areas and public areas, which would impose more constraints on
urban growth pattern, were classified as other land use classes.
Nonetheless, these areas are considered to be changed to
housing throughout the simulation. Water areas and roads
represent fixed land use types, which are assumed not to grow
or change the location over time. Therefore, the simulation was
configured to ensure that urban area can grow in any direction
without limitations except for roads and water areas, in which
urban growth is assumed to be impossible.
The constrained CA-based simulation model developed by
White et al. (1997) was selected due to the fact that it has been
widely adapted to simulation of different real cities growth.
Simulations based on the CA model were performed by Cellular
Automata extension of ESRI ArcView GIS software (Heuegger,
2002). The GIS-based CA simulations of urban growth of San
Diego region were used to obtain different model outcomes
when varving different CA elements more specifically
neighborhood size and type.