TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks

We introduce topological restricted maximum likelihood (TopREML) as a method to predict runoff signatures in ungauged basins. The approach is based on the use of linear mixed models with spatially correlated random effects. The nested nature of streamflow networks is taken into account by using wat...

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Main Authors: M. F. Müller, S. E. Thompson
Format: Article
Language:English
Published: Copernicus Publications 2015-06-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/19/2925/2015/hess-19-2925-2015.pdf
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spelling doaj-9a344b664dbe4d368adfd109ff40c0f52020-11-24T23:29:31ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382015-06-011962925294210.5194/hess-19-2925-2015TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networksM. F. Müller0S. E. Thompson1Department of Civil and Environmental Engineering, Davis Hall, University of California, Berkeley, CA, USADepartment of Civil and Environmental Engineering, Davis Hall, University of California, Berkeley, CA, USAWe introduce topological restricted maximum likelihood (TopREML) as a method to predict runoff signatures in ungauged basins. The approach is based on the use of linear mixed models with spatially correlated random effects. The nested nature of streamflow networks is taken into account by using water balance considerations to constrain the covariance structure of runoff and to account for the stronger spatial correlation between flow-connected basins. The restricted maximum likelihood (REML) framework generates the best linear unbiased predictor (BLUP) of both the predicted variable and the associated prediction uncertainty, even when incorporating observable covariates into the model. The method was successfully tested in cross-validation analyses on mean streamflow and runoff frequency in Nepal (sparsely gauged) and Austria (densely gauged), where it matched the performance of comparable methods in the prediction of the considered runoff signature, while significantly outperforming them in the prediction of the associated modeling uncertainty. The ability of TopREML to combine deterministic and stochastic information to generate BLUPs of the prediction variable and its uncertainty makes it a particularly versatile method that can readily be applied in both densely gauged basins, where it takes advantage of spatial covariance information, and data-scarce regions, where it can rely on covariates, which are increasingly observable via remote-sensing technology.http://www.hydrol-earth-syst-sci.net/19/2925/2015/hess-19-2925-2015.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. F. Müller
S. E. Thompson
spellingShingle M. F. Müller
S. E. Thompson
TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
Hydrology and Earth System Sciences
author_facet M. F. Müller
S. E. Thompson
author_sort M. F. Müller
title TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
title_short TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
title_full TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
title_fullStr TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
title_full_unstemmed TopREML: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
title_sort topreml: a topological restricted maximum likelihood approach to regionalize trended runoff signatures in stream networks
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2015-06-01
description We introduce topological restricted maximum likelihood (TopREML) as a method to predict runoff signatures in ungauged basins. The approach is based on the use of linear mixed models with spatially correlated random effects. The nested nature of streamflow networks is taken into account by using water balance considerations to constrain the covariance structure of runoff and to account for the stronger spatial correlation between flow-connected basins. The restricted maximum likelihood (REML) framework generates the best linear unbiased predictor (BLUP) of both the predicted variable and the associated prediction uncertainty, even when incorporating observable covariates into the model. The method was successfully tested in cross-validation analyses on mean streamflow and runoff frequency in Nepal (sparsely gauged) and Austria (densely gauged), where it matched the performance of comparable methods in the prediction of the considered runoff signature, while significantly outperforming them in the prediction of the associated modeling uncertainty. The ability of TopREML to combine deterministic and stochastic information to generate BLUPs of the prediction variable and its uncertainty makes it a particularly versatile method that can readily be applied in both densely gauged basins, where it takes advantage of spatial covariance information, and data-scarce regions, where it can rely on covariates, which are increasingly observable via remote-sensing technology.
url http://www.hydrol-earth-syst-sci.net/19/2925/2015/hess-19-2925-2015.pdf
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AT sethompson topremlatopologicalrestrictedmaximumlikelihoodapproachtoregionalizetrendedrunoffsignaturesinstreamnetworks
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