Data-driven catchment classification: application to the pub problem

A promising approach to catchment classification makes use of unsupervised neural networks (Self Organising Maps, SOM's), which organise input data through non-linear techniques depending on the intrinsic similarity of the data themselves. Our study considers ∼300 Italian catchments...

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Main Authors: M. Di Prinzio, A. Castellarin, E. Toth
Format: Article
Language:English
Published: Copernicus Publications 2011-06-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/15/1921/2011/hess-15-1921-2011.pdf
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spelling doaj-6b8551725e1c497685720592171d05cd2020-11-24T23:16:11ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382011-06-011561921193510.5194/hess-15-1921-2011Data-driven catchment classification: application to the pub problemM. Di PrinzioA. CastellarinE. TothA promising approach to catchment classification makes use of unsupervised neural networks (Self Organising Maps, SOM's), which organise input data through non-linear techniques depending on the intrinsic similarity of the data themselves. Our study considers ∼300 Italian catchments scattered nationwide, for which several descriptors of the streamflow regime and geomorphoclimatic characteristics are available. We compare a reference classification, identified by using indices of the streamflow regime as input to SOM, with four alternative classifications, which were identified on the basis of catchment descriptors that can be derived for ungauged basins. One alternative classification adopts the available catchment descriptors as input to SOM, the remaining classifications are identified by applying SOM to sets of derived variables obtained by applying Principal Component Analysis (PCA) and Canonical Correlation Analysis (CCA) to the available catchment descriptors. The comparison is performed relative to a PUB problem, that is for predicting several streamflow indices in ungauged basins. We perform an extensive cross-validation to quantify nationwide the accuracy of predictions of mean annual runoff, mean annual flood, and flood quantiles associated with given exceedance probabilities. Results of the study indicate that performing PCA and, in particular, CCA on the available set of catchment descriptors before applying SOM significantly improves the effectiveness of SOM classifications by reducing the uncertainty of hydrological predictions in ungauged sites.http://www.hydrol-earth-syst-sci.net/15/1921/2011/hess-15-1921-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. Di Prinzio
A. Castellarin
E. Toth
spellingShingle M. Di Prinzio
A. Castellarin
E. Toth
Data-driven catchment classification: application to the pub problem
Hydrology and Earth System Sciences
author_facet M. Di Prinzio
A. Castellarin
E. Toth
author_sort M. Di Prinzio
title Data-driven catchment classification: application to the pub problem
title_short Data-driven catchment classification: application to the pub problem
title_full Data-driven catchment classification: application to the pub problem
title_fullStr Data-driven catchment classification: application to the pub problem
title_full_unstemmed Data-driven catchment classification: application to the pub problem
title_sort data-driven catchment classification: application to the pub problem
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2011-06-01
description A promising approach to catchment classification makes use of unsupervised neural networks (Self Organising Maps, SOM's), which organise input data through non-linear techniques depending on the intrinsic similarity of the data themselves. Our study considers ∼300 Italian catchments scattered nationwide, for which several descriptors of the streamflow regime and geomorphoclimatic characteristics are available. We compare a reference classification, identified by using indices of the streamflow regime as input to SOM, with four alternative classifications, which were identified on the basis of catchment descriptors that can be derived for ungauged basins. One alternative classification adopts the available catchment descriptors as input to SOM, the remaining classifications are identified by applying SOM to sets of derived variables obtained by applying Principal Component Analysis (PCA) and Canonical Correlation Analysis (CCA) to the available catchment descriptors. The comparison is performed relative to a PUB problem, that is for predicting several streamflow indices in ungauged basins. We perform an extensive cross-validation to quantify nationwide the accuracy of predictions of mean annual runoff, mean annual flood, and flood quantiles associated with given exceedance probabilities. Results of the study indicate that performing PCA and, in particular, CCA on the available set of catchment descriptors before applying SOM significantly improves the effectiveness of SOM classifications by reducing the uncertainty of hydrological predictions in ungauged sites.
url http://www.hydrol-earth-syst-sci.net/15/1921/2011/hess-15-1921-2011.pdf
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