Subdaily rainfall data, though essential for applications in many fields, is not as readily available as daily rainfall data. In this work, regression approaches that use atmospheric data and daily rainfall statistics as predictors are evaluated to downscale daily-to-subdaily rainfall statistics on more than 700 hourly rain gauges in Spain. We propose a new approach based on machine learning techniques that improves the downscaling skill of previous methodologies. Results are grouped by climate types (following the Köppen–Geiger classification) to investigate possible missing explanatory variables in the analysis. The methodology is then used to improve the ability of Poisson cluster models to simulate hourly rainfall series that...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
Rainfall is poorly modeled by general circulation models (GCMs) and requires appropriate downscaling...
The robustness of random forest (RF) in classification and superiority of support vector machine (SV...
Subdaily rainfall data, though essential for applications in many fields, is not as readily availabl...
Sub-daily extreme precipitation events are responsible for flash floods which generate impacts that ...
The presence of missing data in hydrometeorological datasets is a common problem, usually due to sen...
To predict accumulated daily rainfall in a particular location where no rain gauges are available is...
To improve the level skill of climate models (CMs) in reproducing the statistics of daily rainfall a...
This work presents a comprehensive assessment of the suitability of random forests, a well-known mac...
14 páginas, 7 figuras, 4 tablas.Model Output Statistics (MOS) has been recently proposed as an alter...
[1] A realistic description of land surface/atmosphere interactions in climate and hydrologic studie...
Urban hydrology studies usually require observed rainfall information of high temporal resolution (1...
ABSTRACT: This work presents a comprehensive assessment of the suitability of random forests, a well...
In this paper, reanalysis fields from the ECMWF have been statistically downscaled to predict from l...
In recent years, climate change has demonstrated the volatility of unexpected events such as typhoon...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
Rainfall is poorly modeled by general circulation models (GCMs) and requires appropriate downscaling...
The robustness of random forest (RF) in classification and superiority of support vector machine (SV...
Subdaily rainfall data, though essential for applications in many fields, is not as readily availabl...
Sub-daily extreme precipitation events are responsible for flash floods which generate impacts that ...
The presence of missing data in hydrometeorological datasets is a common problem, usually due to sen...
To predict accumulated daily rainfall in a particular location where no rain gauges are available is...
To improve the level skill of climate models (CMs) in reproducing the statistics of daily rainfall a...
This work presents a comprehensive assessment of the suitability of random forests, a well-known mac...
14 páginas, 7 figuras, 4 tablas.Model Output Statistics (MOS) has been recently proposed as an alter...
[1] A realistic description of land surface/atmosphere interactions in climate and hydrologic studie...
Urban hydrology studies usually require observed rainfall information of high temporal resolution (1...
ABSTRACT: This work presents a comprehensive assessment of the suitability of random forests, a well...
In this paper, reanalysis fields from the ECMWF have been statistically downscaled to predict from l...
In recent years, climate change has demonstrated the volatility of unexpected events such as typhoon...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
Rainfall is poorly modeled by general circulation models (GCMs) and requires appropriate downscaling...
The robustness of random forest (RF) in classification and superiority of support vector machine (SV...