Wavelet analysis residual kriging vs. neural network residual kriging
Details
Serval ID
serval:BIB_6577F4AEC874
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Wavelet analysis residual kriging vs. neural network residual kriging
Journal
Stochastic Environmental Research and Risk Assessment
ISSN-L
1436-3240
Publication state
Published
Issued date
2001
Peer-reviewed
Oui
Volume
15
Pages
18-32
Language
english
Notes
ISI:000167665200002
Abstract
This paper deals with the problem of spatial data mapping. A new method
based on wavelet interpolation and geostatistical prediction (kriging)
is proposed. The method - wavelet analysis residual kriging (WARK) - is
developed in order to assess the problems rising for highly variable
data in presence of spatial trends. In these cases stationary prediction
models have very limited application. Wavelet analysis is used to model
large-scale structures and kriging of the remaining residuals focuses on
small-scale peculiarities. WARK is able to model spatial pattern which
features multiscale structure. In the present work WARK is applied to
the rainfall data and the results of validation are compared with the
ones obtained from neural network residual kriging (NNRK). NNRK is also
a residual-based method, which uses artificial neural network to model
large-scale non-linear trends. The comparison of the results
demonstrates the high quality performance of WARK in predicting hot
spots, reproducing global statistical characteristics of the
distribution and spatial correlation structure.
based on wavelet interpolation and geostatistical prediction (kriging)
is proposed. The method - wavelet analysis residual kriging (WARK) - is
developed in order to assess the problems rising for highly variable
data in presence of spatial trends. In these cases stationary prediction
models have very limited application. Wavelet analysis is used to model
large-scale structures and kriging of the remaining residuals focuses on
small-scale peculiarities. WARK is able to model spatial pattern which
features multiscale structure. In the present work WARK is applied to
the rainfall data and the results of validation are compared with the
ones obtained from neural network residual kriging (NNRK). NNRK is also
a residual-based method, which uses artificial neural network to model
large-scale non-linear trends. The comparison of the results
demonstrates the high quality performance of WARK in predicting hot
spots, reproducing global statistical characteristics of the
distribution and spatial correlation structure.
Create date
07/10/2012 15:53
Last modification date
20/08/2019 14:21