Title
Comparison of distribution strategies in uncertainty-aware catchment delineation
Abstract
Delineation of drainage basins from a digital elevation model (DEM) has become a standard operation in a number of terrain analysis software packages, but limitations of the conventionally used techniques have become apparent. Firstly, the delineation methods make assumption of error-free data, which is an unreachable utopia even with modern sensor technology. Secondly, even though the computing capacity has increased dramatically during the last decades, sizes of geospatial data sets have increased simultaneously. Thus far, the typical problems arising when using uncertainty-aware geospatial analysis are 1) the computational complexity of the analysis and 2) memory allocation problems when large datasets are used. In this paper, we raise the question about the general need for developing scalable and uncertainty-aware algorithms for terrain analysis and propose improvements to the existing drainage basin calculation methods. The distributed uncertainty-aware catchment delineation methods with and without spatial partitioning of the DEM are introduced and the performance of the methods in different cases are compared.
Year
DOI
Venue
2011
10.1007/s10707-009-0098-z
GeoInformatica
Keywords
Field
DocType
Parallel computing,Digital elevation model,Error propagation analysis,Terrain analysis,Process convolution
Geospatial analysis,Space partitioning,Data mining,Data processing,Terrain,Digital elevation model,Memory management,Geography,Cartography,Computational complexity theory,Scalability
Journal
Volume
Issue
ISSN
15
2
1384-6175
Citations 
PageRank 
References 
1
0.36
22
Authors
4
Name
Order
Citations
PageRank
Tomas Ukkonen191.65
Juha Oksanen2558.95
Tapani Rousi310.36
Tapani Sarjakoski411817.51