Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology
<p>Stochastic rainfall downscaling methods usually do not take into account orographic effects or local precipitation features at spatial scales finer than those resolved by the large-scale input field. For this reason they may be less reliable in areas with complex topography or with sub-g...
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2018-11-01
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doaj-653071596dd846fc9d805cc132933f652020-11-24T21:46:38ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812018-11-01182825284010.5194/nhess-18-2825-2018Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatologyS. Terzago0E. Palazzi1J. von Hardenberg2Institute of Atmospheric Sciences and Climate, National Research Council of Italy, Corso Fiume 4, Turin, ItalyInstitute of Atmospheric Sciences and Climate, National Research Council of Italy, Corso Fiume 4, Turin, ItalyInstitute of Atmospheric Sciences and Climate, National Research Council of Italy, Corso Fiume 4, Turin, Italy<p>Stochastic rainfall downscaling methods usually do not take into account orographic effects or local precipitation features at spatial scales finer than those resolved by the large-scale input field. For this reason they may be less reliable in areas with complex topography or with sub-grid surface heterogeneities. Here we test a simple method to introduce realistic fine-scale precipitation patterns into the downscaled fields, with the objective of producing downscaled data more suitable for climatological and hydrological applications as well as for extreme event studies. The proposed method relies on the availability of a reference fine-scale precipitation climatology from which corrective weights for the downscaled fields are derived. We demonstrate the method by applying it to the Rainfall Filtered Autoregressive Model (RainFARM) stochastic rainfall downscaling algorithm.</p><p>The modified RainFARM method is tested focusing on an area of complex topography encompassing the Swiss Alps, first, in a <q>perfect-model experiment</q> in which high-resolution (4 km) simulations performed with the Weather Research and Forecasting (WRF) regional model are aggregated to a coarser resolution (64 km) and then downscaled back to 4 km and compared with the original data. Second, the modified RainFARM is applied to the E-OBS gridded precipitation data (0.25° spatial resolution) over Switzerland, where high-quality gridded precipitation climatologies and accurate in situ observations are available for comparison with the downscaled data for the period 1981–2010.</p><p>The results of the perfect-model experiment confirm a clear improvement in the description of the precipitation distribution when the RainFARM stochastic downscaling is applied, either with or without the implemented orographic adjustment. When we separately analyze grid points with precipitation climatology higher or lower than the median calculated over the neighboring grid points, we find that the probability density function (PDF) of the real precipitation is better reproduced using the modified RainFARM rather than the standard RainFARM method. In fact, the modified method successfully assigns more precipitation to areas where precipitation is on average more abundant according to a reference long-term climatology.</p><p>The results of the E-OBS downscaling show that the modified RainFARM introduces improvements in the representation of precipitation amplitudes. While for low-precipitation areas the downscaled and the observed PDFs are in good agreement, for high-precipitation areas residual differences persist, mainly related to known E-OBS deficiencies in properly representing the correct range of precipitation values in the Alpine region. The downscaling method discussed is not intended to correct the bias which may be present in the coarse-scale data, so possible biases should be adjusted before applying the downscaling procedure.</p>https://www.nat-hazards-earth-syst-sci.net/18/2825/2018/nhess-18-2825-2018.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
S. Terzago E. Palazzi J. von Hardenberg |
spellingShingle |
S. Terzago E. Palazzi J. von Hardenberg Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology Natural Hazards and Earth System Sciences |
author_facet |
S. Terzago E. Palazzi J. von Hardenberg |
author_sort |
S. Terzago |
title |
Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
title_short |
Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
title_full |
Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
title_fullStr |
Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
title_full_unstemmed |
Stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
title_sort |
stochastic downscaling of precipitation in complex orography: a simple method to reproduce a realistic fine-scale climatology |
publisher |
Copernicus Publications |
series |
Natural Hazards and Earth System Sciences |
issn |
1561-8633 1684-9981 |
publishDate |
2018-11-01 |
description |
<p>Stochastic rainfall downscaling methods usually do not take into
account orographic effects or local precipitation features at spatial scales
finer than those resolved by the large-scale input field. For this reason
they may be less reliable in areas with complex topography or with sub-grid
surface heterogeneities. Here we test a simple method to introduce realistic
fine-scale precipitation patterns into the downscaled fields, with the
objective of producing downscaled data more suitable for climatological and
hydrological applications as well as for extreme event studies. The proposed
method relies on the availability of a reference fine-scale precipitation
climatology from which corrective weights for the downscaled fields are
derived. We demonstrate the method by applying it to the Rainfall Filtered
Autoregressive Model (RainFARM) stochastic rainfall downscaling algorithm.</p><p>The modified RainFARM method is tested focusing on an area of complex
topography encompassing the Swiss Alps, first, in a <q>perfect-model
experiment</q> in which high-resolution (4 km) simulations performed with the
Weather Research and Forecasting (WRF) regional model are aggregated to a
coarser resolution (64 km) and then downscaled back to 4 km and compared with
the original data. Second, the modified RainFARM is applied to the E-OBS
gridded precipitation data (0.25° spatial resolution) over Switzerland,
where high-quality gridded precipitation climatologies and accurate in situ
observations are available for comparison with the downscaled data for the
period 1981–2010.</p><p>The results of the perfect-model experiment confirm a clear improvement
in the description of the precipitation distribution when the RainFARM
stochastic downscaling is applied, either with or without the implemented
orographic adjustment. When we separately analyze grid points with
precipitation climatology higher or lower than the median calculated over the
neighboring grid points, we find that the probability density function (PDF)
of the real precipitation is better reproduced using the modified RainFARM
rather than the standard RainFARM method. In fact, the modified method
successfully assigns more precipitation to areas where precipitation is on
average more abundant according to a reference long-term climatology.</p><p>The results of the E-OBS downscaling show that the modified RainFARM
introduces improvements in the representation of precipitation amplitudes.
While for low-precipitation areas the downscaled and the observed PDFs are in
good agreement, for high-precipitation areas residual differences persist,
mainly related to known E-OBS deficiencies in properly representing the
correct range of precipitation values in the Alpine region. The downscaling
method discussed is not intended to correct the bias which may be present in
the coarse-scale data, so possible biases should be adjusted before applying
the downscaling procedure.</p> |
url |
https://www.nat-hazards-earth-syst-sci.net/18/2825/2018/nhess-18-2825-2018.pdf |
work_keys_str_mv |
AT sterzago stochasticdownscalingofprecipitationincomplexorographyasimplemethodtoreproducearealisticfinescaleclimatology AT epalazzi stochasticdownscalingofprecipitationincomplexorographyasimplemethodtoreproducearealisticfinescaleclimatology AT jvonhardenberg stochasticdownscalingofprecipitationincomplexorographyasimplemethodtoreproducearealisticfinescaleclimatology |
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