Environmental monitoring network characterization and clustering
Details
Serval ID
serval:BIB_F57BFDF16900
Type
A part of a book
Collection
Publications
Institution
Title
Environmental monitoring network characterization and clustering
Title of the book
Advanced Mapping of Environmental Data: Geostatistics, Machine Learning and Bayesian Maximum Entropy
Publisher
ISTE Ltd and Wiley Press
ISBN
978-1-84821-060-8
Publication state
Published
Issued date
2008
Editor
Kanevski M.
Chapter
2
Pages
19-46
Language
english
Notes
Tuia2008e
Abstract
The quality of environmental data analysis and propagation of errors
are heavily affected by the representativity of the initial sampling
design [CRE 93, DEU 97, KAN 04a, LEN 06, MUL07]. Geostatistical methods
such as kriging are related to field samples, whose spatial distribution
is crucial for the correct detection of the phenomena. Literature
about the design of environmental monitoring networks (MN) is widespread
and several interesting books have recently been published [GRU 06,
LEN 06, MUL 07] in order to clarify the basic principles of spatial
sampling design (monitoring networks optimization) based on Support
Vector Machines was proposed.
Nonetheless, modelers often receive real data coming from environmental
monitoring networks that suffer from problems of non-homogenity (clustering).
Clustering can be related to the preferential sampling or to the
impossibility of reaching certain regions.
are heavily affected by the representativity of the initial sampling
design [CRE 93, DEU 97, KAN 04a, LEN 06, MUL07]. Geostatistical methods
such as kriging are related to field samples, whose spatial distribution
is crucial for the correct detection of the phenomena. Literature
about the design of environmental monitoring networks (MN) is widespread
and several interesting books have recently been published [GRU 06,
LEN 06, MUL 07] in order to clarify the basic principles of spatial
sampling design (monitoring networks optimization) based on Support
Vector Machines was proposed.
Nonetheless, modelers often receive real data coming from environmental
monitoring networks that suffer from problems of non-homogenity (clustering).
Clustering can be related to the preferential sampling or to the
impossibility of reaching certain regions.
Keywords
spatial clustering, network quantification, topological indices, fractal, measures, dimensional resolution
Create date
25/11/2013 17:18
Last modification date
20/08/2019 16:22