Benefits from using combined dynamical-statistical downscaling approaches – lessons from a case study in the Mediterranean region

Various downscaling techniques have been developed to bridge the scale gap between global climate models (GCMs) and finer scales required to assess hydrological impacts of climate change. Such techniques may be grouped into two downscaling approaches: the deterministic dynamical downscaling (DD) and...

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Main Authors: G. Tartari, A. B. Petrangeli, S. Calmanti, F. Salerno, I. Portoghese, E. Romano, N. Guyennon, D. Copetti
Format: Article
Language:English
Published: Copernicus Publications 2013-02-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/17/705/2013/hess-17-705-2013.pdf
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spelling doaj-d1aa01a61e3b475b831b82a3c84e08782020-11-24T23:52:17ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382013-02-0117270572010.5194/hess-17-705-2013Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean regionG. TartariA. B. PetrangeliS. CalmantiF. SalernoI. PortogheseE. RomanoN. GuyennonD. CopettiVarious downscaling techniques have been developed to bridge the scale gap between global climate models (GCMs) and finer scales required to assess hydrological impacts of climate change. Such techniques may be grouped into two downscaling approaches: the deterministic dynamical downscaling (DD) and the statistical downscaling (SD). Although SD has been traditionally seen as an alternative to DD, recent works on statistical downscaling have aimed to combine the benefits of these two approaches. The overall objective of this study is to assess whether a DD processing performed before the SD permits to obtain more suitable climate scenarios for basin scale hydrological applications starting from GCM simulations. The case study presented here focuses on the Apulia region (South East of Italy, surface area about 20 000 km<sup>2</sup>), characterised by a typical Mediterranean climate; the monthly cumulated precipitation and monthly mean of daily minimum and maximum temperature distribution were examined for the period 1953–2000. The fifth-generation ECHAM model from the Max-Planck-Institute for Meteorology was adopted as GCM. The DD was carried out with the Protheus system (ENEA), while the SD was performed through a monthly quantile-quantile correction. The SD resulted efficient in reducing the mean bias in the spatial distribution at both annual and seasonal scales, but it was not able to correct the miss-modelled non-stationary components of the GCM dynamics. The DD provided a partial correction by enhancing the spatial heterogeneity of trends and the long-term time evolution predicted by the GCM. The best results were obtained through the combination of both DD and SD approaches.http://www.hydrol-earth-syst-sci.net/17/705/2013/hess-17-705-2013.pdf
collection DOAJ
language English
format Article
sources DOAJ
author G. Tartari
A. B. Petrangeli
S. Calmanti
F. Salerno
I. Portoghese
E. Romano
N. Guyennon
D. Copetti
spellingShingle G. Tartari
A. B. Petrangeli
S. Calmanti
F. Salerno
I. Portoghese
E. Romano
N. Guyennon
D. Copetti
Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
Hydrology and Earth System Sciences
author_facet G. Tartari
A. B. Petrangeli
S. Calmanti
F. Salerno
I. Portoghese
E. Romano
N. Guyennon
D. Copetti
author_sort G. Tartari
title Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
title_short Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
title_full Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
title_fullStr Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
title_full_unstemmed Benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the Mediterranean region
title_sort benefits from using combined dynamical-statistical downscaling approaches &ndash; lessons from a case study in the mediterranean region
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2013-02-01
description Various downscaling techniques have been developed to bridge the scale gap between global climate models (GCMs) and finer scales required to assess hydrological impacts of climate change. Such techniques may be grouped into two downscaling approaches: the deterministic dynamical downscaling (DD) and the statistical downscaling (SD). Although SD has been traditionally seen as an alternative to DD, recent works on statistical downscaling have aimed to combine the benefits of these two approaches. The overall objective of this study is to assess whether a DD processing performed before the SD permits to obtain more suitable climate scenarios for basin scale hydrological applications starting from GCM simulations. The case study presented here focuses on the Apulia region (South East of Italy, surface area about 20 000 km<sup>2</sup>), characterised by a typical Mediterranean climate; the monthly cumulated precipitation and monthly mean of daily minimum and maximum temperature distribution were examined for the period 1953–2000. The fifth-generation ECHAM model from the Max-Planck-Institute for Meteorology was adopted as GCM. The DD was carried out with the Protheus system (ENEA), while the SD was performed through a monthly quantile-quantile correction. The SD resulted efficient in reducing the mean bias in the spatial distribution at both annual and seasonal scales, but it was not able to correct the miss-modelled non-stationary components of the GCM dynamics. The DD provided a partial correction by enhancing the spatial heterogeneity of trends and the long-term time evolution predicted by the GCM. The best results were obtained through the combination of both DD and SD approaches.
url http://www.hydrol-earth-syst-sci.net/17/705/2013/hess-17-705-2013.pdf
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