Environmental Data Mapping with Support Vector Regression and Geostatistics

Details

Serval ID
serval:BIB_654C2E7F3EE0
Type
Report: a report published by a school or other institution, usually numbered within a series.
Collection
Publications
Title
Environmental Data Mapping with Support Vector Regression and Geostatistics
Author(s)
Kanevski M., Wong P.M., Canu S.
Issued date
2000
Language
english
Number of pages
8
Notes
Kanevski2000
Abstract
The paper presents decision-oriented mapping of pollution using hybrid
models based on statistical learning theory (support vector regression
or SVR) and spatial statistics (geostatistics). Adaptive and robust
SVR approach is used to model non-linear large scale trends in the
region and geostatistical models -- spatial predictions and spatial
simulations -- are used to prepare decisionoriented maps: prediction
maps along with maps of error variance and equiprobable digital models
of the pollution based on conditional stochastic simulations. The
quality of the proposed approach is tested with the validation data
set not used for the model development. Real data on soil contamination
by Chernobyl radionuclides in Russia is used as a case study.
Create date
25/11/2013 17:18
Last modification date
20/08/2019 14:21
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