Full text: Proceedings, XXth congress (Part 2)

  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004 
Corcoran et al. (1997) identified the optimal areas of location 
for the development of livestock enterprises within the 
European Union based on physical, climatic and socio- 
economic characteristics for areas being evaluated. Biermann 
(1998) presented the land suitability assessment methodology 
with multi-disciplinary data from different sources. The most 
appropriate location for low-income residential development 
was identified by integrating a wide range of data. 
Environmental or natural resources management decisions 
required the analysis of spatial information. GIS technologies 
had ‘been used to facilitate decision making in many different 
fields. Tkach and Simonovic (1997) applied Compromise 
Programming technique within a GIS in order to cvaluate 
floodplain for Red River Valley region in Manitoba, Canada. 
Antonie et al. (1997) presented an example application on 
integration of multicriteria evaluation technique with GIS for 
sustainable land use in Kenya; maximizing revenues from 
crop and livestock production, maximizing food output, 
maximizing district self-reliance in agricultural production, 
minimizing environmental damages from erosion. Thomas 
(2002) aimed to make brownfield sites competitive with 
undeveloped sites and returned these areas to productive uses 
by evaluating land use options with respect to brownfields 
inventory, characterization, and potential for redevelopment. 
Duijm and Markert (2002) searched the environmental 
impact and safety aspects for alternative scenarios for 
disposing of ammunition. 
The main aim of this study is to generate a composite map for 
decision makers by using some effective factors causing 
flood. The study reviewed the role of GIS in decision-making 
and then outlined the evaluation approach for many criteria in 
decision process. The design of multicriteria environment 
attempted to use a variety of evaluation techniques to data 
from GIS and presented them in a manner familiar to 
decision makers. By integrating the evaluation techniques 
with GIS, it was intended that the effective factors would be 
evaluated more flexibly and thus more accurate decision 
would be made in a shorter time by the decision makers. By 
evaluating the criteria, the values of the criteria were 
classified to explain the opinions and preferences. Boolean 
and WLC approach were used in integrating MCE with GIS. 
The uncertain knowledge in multicriteria decision making 
was held by considering standardized criteria as fuzzy 
measures, where fuzzy set theory was emphasized. Different 
weights were given to the citeria in fuzzy extent with the 
Ordered Weighted Averaging (OWA) method. Finally all the 
composite maps created with these approaches were 
compared with the flooded area obtained from a hydraulic 
model. 
2. METHODS 
2.1 The General Outline 
The flood vulnerability analysis applied in this study consists 
of two basic phases. Firstly, the effective factors causing 
floods are determined. Secondly several approaches to MCE 
in a GIS environment are applied and these approaches are 
evaluated in finding the flood vulnerable areas. 
The evaluation procedure consists of the following steps: 
|. The assessment of a vulnerability structure: choosing the 
effective factors and determining their importance and 
how they affect the flood vulnerability. 
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2. Producing map layers: raw data acquisition and 
transferring to appropriate GIS layers. 
3. Cartographic modeling: defining the vulnerable areas 
using several approaches to MCE. 
4. Sensitivity analysis: demonstrating the effect of different 
criterion weights on the spatial pattern of the vulnerable 
areas. 
2.2 Assessment of A Vulnerability Structure 
The first step in assessing the vulnerability structure is to 
determine the factors affecting the flood on the basis of an 
analysis of existing studies and knowledge. Here, judgments 
made by experts on hydrology and hydraulics can be applied. 
These factors are used as criterion separately. A criterion is a 
basis for a decision that can be measured and evaluated 
(Eastman et al., 1995). Layers representing the criteria are 
referred to as criterion maps. 
2.3 Producing Map Layers 
A GIS application is used for managing, producing, 
analyzing and combining spatial data. The data needed in this 
study are produced from collected or existing data by using 
different kinds of spatial functions and analysis. 
2.4 Cartographic Modeling 
Cartographic modeling is applied in producing and 
combining spatial data describing the causing factors. In the 
first phase, the vulnerable areas are produced by numerically 
overlaying a map layer describing the study area. This 
overlay is carried out as a Boolean overlay. 
In the second phase ranking method is used. In Ranking 
Method, every criterion under consideration is ranked in the 
order of the decision maker's preference. To generate 
criterion values for each evaluation unit, each factor was 
weighted according to the estimated significance for causing 
flooding. The inverse ranking was applied to these factors. | 
is the least important and 8 is the most important factor as in 
Pramojanee et al. (2001). The criteria with their raw data 
were typically noncommensurate. To make the various 
criterion maps comparable, a standardization of the raw data 
was usually required (Malczewski, 1999a; Lin et al., 1997; 
Jiang and Eastman, 2000; Eastman et al., 1995). Linear Scale 
Transformation was adopted as a standardization procedure, 
because it is the most frequently used method for 
transforming the input data into commensurate scale. 0 is the 
worst-standardized score and 1 is the best-standardized score 
(Malezweski, 1999a) Through standardization, criterion 
Scores were expressed according to a consistent numeric 
range, 0 and 1000, by multiplying with the constant number 
1000. In fact, the aim was to get the range between 0 and 1, 
but GIS program accepted the calculation as only 0 and 1 as 
if it was a True/False evaluation. At the end of the 
standardization process, each factor had an equivalent 
measurement basis before any weights were applied. 
In the third phase Pairwise Comparison Method is used in 
determining the weights for the criteria. This method involves 
the comparison of the criteria and allows the comparison of 
only two criteria at once. This method can convert subjective 
assessments of relative importance into a linear set of weights 
(Heywood et al., 1993). It was developed by Saaty (1980) in 
the context of a decision making process known as the 
Analytical Hierarchy Process (AHP) (Malczewski, 1999a; 
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