Transactions in GIS, 2003, 7(3): 325–343
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Research Article
Spatial Simulation and Fuzzy Threshold Analyses B Güneralp, G Mendoza, G Gertner and A Anderson
Spatial Simulation and Fuzzy Threshold
Analyses for Allocating Restoration Areas
Burak Güneralp
Department of Natural Resources
and Environmental Sciences
University of Illinois
George Gertner
Department of Natural Resources
and Environmental Sciences
University of Illinois
Gil Mendoza
Department of Natural Resources
and Environmental Sciences
University of Illinois
Alan Anderson
US Army Corps of Engineers
Research Laboratory
Champaign, Illinois
Abstract
This paper presents a methodology for the evaluation of land condition and for the
allocation of areas requiring restoration. It is based on spatial simulation analysis
and fuzzy logic. The method is demonstrated in a restoration allocation problem
within a military training area in Texas. Fuzzy logic is integrated with spatial analysis
through Geographic Information Systems (GIS) to make land condition assessment
geographically specific. Two sources of uncertainty in Land Condition Analysis are
considered in this paper. First is the uncertainty due to incomplete information on
land condition. Second is the uncertainty emanating from identifying the condition
of a particular parcel of land. The first is addressed by using sequential Gaussian
simulation, a geostatistical tool. Erosion status is selected as the land condition factor,
and uncertainty associated with it is considered in this study. Land allocation is
based on fuzzy logic to reflect the continuous transition between different land
conditions and the minimization of loss that is expected to occur in the case of mis-
allocation. Various forms of loss functions are used for allocating areas in need of
restoration. An important result of the study is a map showing the areas allocated
for restoration. The proposed method is compared to two alternative methods with
varying degrees of determinism and uncertainty. The incorporation of uncertainty
led to better allocation strategies and results that are more realistic.
Address for correspondence: Gil Mendoza, Department of Natural Resources and Environmental
Sciences, University of Illinois at Urbana-Champaign, W-503 Turner Hall, 1102 South Goodwin
Avenue, Urbana, IL 61801. E-mail: gamendoz@uiuc.edu