Construction of digital elevation models (DEMS) from provisional topographic maps using kriging interpolation on point sampled data /

Implementation of geostatistical tools into Natural Resource

Bibliographic Details
Main Author: Siska, Peter, P.
Format: Thesis Book
Language:English
Published: [Place of publication not identified] : [publisher not identified] ; 1995.
Subjects:
Online Access:Link to OAKTrust copy
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Description
Summary:Implementation of geostatistical tools into Natural Resource
Management studies such as soil science, entomology, ecology
or forestry marked the end of 1980s and the beginning of
1990s. During this time the spatial analysis in natural
resource oriented research found significant support in
geostatistical methods. The objective of this study is to
develop and test digital elevation models based on a kriging
interpolation algorithm to predict the elevation values in
any unsampled location. This methodology, however, can be
applied to many other related problems in natural resource
management such as air or water pollution assessment soil
properties, spatial distribution of mineral resources or
insect outbreaks. Vegetation mapping and many other projects
would also benefit highly from modeling procedures developed
and tested in this research. The Geographic Information
System (GIS) was designed for manipulation and analysis of
spatial data. Hence the linkage between geostatistical
methods and GIS was mutually useful. It increased the
efficiency of spatial analysis and accelerated many
intermediate steps in the model building process. Display,
graphing and built-in GIS functionality appeared to be useful
at different stages of this research for checking and testing
of intermediate steps. For example, the generate function
produced coverages from predicted values, contouring
capabilities were useful for anisotropy modeling, thiessen
function, Grid functions and a number of other additional
functions allowed efficient manipulation of spatial data.
Statistical analysis in GIS, however, is limited and the
research often required implementation of additional systems
such as SAS, GSLIIB, FORTRAN 77, Gauss, Delta graph and
Excel, packages to develop models for spatial data with
graphical output. 'Me variogram analysis played a
significant role before the kriging interpolation procedure
took place. The accuracy of predicted results from the
kriging was highly dependent on precise identification of
variogram parameters. The quality of data and the character
of earth's surface was another significant factor with high
impact on the accuracy of the predicted results. The kriging
variance and the kriging estimates responded sensitively to
the relief differences in all testing sites. Particularly,
the abrupt changes in elevations along mountainous rims and
the jagged mountainous areas significantly increased the mean
error of prediction and the error variance of predicted
values. The use of stochastic methods in the natural
resource management better corresponds to the character and
behavior of the earth science phenomena. Hence, kriging, as
a stochastic method, was selected to generate four digital
elevation models. The results of testing corroborated the
hypothesis that the elevation models (DEMS) can be generated
with a good level of accuracy with probabilistic methods and
also confirmed the assumption that the accuracy of testing
models decreases with increasing relief diversity.
Item Description:Vita.
"Major Subject: Forestry".
Physical Description:xi, 135 leaves : illustrations ; 28 cm.
Issued also on microfiche from University Microfilms Inc.
Bibliography:Includes bibliographical references.