Precipitation downscaling using random cascades: a case study in Italy
We present a Stochastic Space Random Cascade (SSRC) approach to downscale precipitation from a Global Climate Model (hereon, <i>GCM</i>s) for an Italian Alpine watershed, the Oglio river (1440 km<sup>2</sup>). The SSRC model is locally tuned upon Oglio river for spatial downs...
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doaj-31c4648ceb5f4a0f92c02f3a8596044f2020-11-24T20:54:30ZengCopernicus PublicationsAdvances in Geosciences1680-73401680-73592010-07-0126394410.5194/adgeo-26-39-2010Precipitation downscaling using random cascades: a case study in ItalyB. Groppelli0D. Bocchiola1R. Rosso2Politecnico di Milano, Milano, ItalyPolitecnico di Milano, Milano, ItalyPolitecnico di Milano, Milano, ItalyWe present a Stochastic Space Random Cascade (SSRC) approach to downscale precipitation from a Global Climate Model (hereon, <i>GCM</i>s) for an Italian Alpine watershed, the Oglio river (1440 km<sup>2</sup>). The SSRC model is locally tuned upon Oglio river for spatial downscaling (approx. 2 km) of daily precipitation from the NCAR Parallel Climate Model. We use a 10 years (1990–1999) series of observed daily precipitation data from 25 rain gages. Scale Recursive Estimation coupled with Expectation Maximization algorithm is used for model estimation. Seasonal parameters of the multiplicative cascade are accommodated by statistical distributions conditioned upon climatic forcing, based on regression analysis. The main advantage of the SSRC is to reproduce spatial clustering, intermittency, self-similarity of precipitation fields and their spatial correlation structure, with low computational burden.http://www.adv-geosci.net/26/39/2010/adgeo-26-39-2010.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
B. Groppelli D. Bocchiola R. Rosso |
spellingShingle |
B. Groppelli D. Bocchiola R. Rosso Precipitation downscaling using random cascades: a case study in Italy Advances in Geosciences |
author_facet |
B. Groppelli D. Bocchiola R. Rosso |
author_sort |
B. Groppelli |
title |
Precipitation downscaling using random cascades: a case study in Italy |
title_short |
Precipitation downscaling using random cascades: a case study in Italy |
title_full |
Precipitation downscaling using random cascades: a case study in Italy |
title_fullStr |
Precipitation downscaling using random cascades: a case study in Italy |
title_full_unstemmed |
Precipitation downscaling using random cascades: a case study in Italy |
title_sort |
precipitation downscaling using random cascades: a case study in italy |
publisher |
Copernicus Publications |
series |
Advances in Geosciences |
issn |
1680-7340 1680-7359 |
publishDate |
2010-07-01 |
description |
We present a Stochastic Space Random Cascade (SSRC) approach to downscale
precipitation from a Global Climate Model (hereon, <i>GCM</i>s) for an Italian Alpine
watershed, the Oglio river (1440 km<sup>2</sup>). The SSRC model is locally tuned
upon Oglio river for spatial downscaling (approx. 2 km) of daily
precipitation from the NCAR Parallel Climate Model. We use a 10 years
(1990–1999) series of observed daily precipitation data from 25 rain gages.
Scale Recursive Estimation coupled with Expectation Maximization algorithm
is used for model estimation. Seasonal parameters of the multiplicative
cascade are accommodated by statistical distributions conditioned upon
climatic forcing, based on regression analysis. The main advantage of the
SSRC is to reproduce spatial clustering, intermittency, self-similarity of
precipitation fields and their spatial correlation structure, with low
computational burden. |
url |
http://www.adv-geosci.net/26/39/2010/adgeo-26-39-2010.pdf |
work_keys_str_mv |
AT bgroppelli precipitationdownscalingusingrandomcascadesacasestudyinitaly AT dbocchiola precipitationdownscalingusingrandomcascadesacasestudyinitaly AT rrosso precipitationdownscalingusingrandomcascadesacasestudyinitaly |
_version_ |
1716794319499689984 |