Forest-Based and Semiparametric Methods for the Postprocessing of Rainfall Ensemble ForecastingSource: Weather and Forecasting:;2019:;volume 034:;issue 003::page 617DOI: 10.1175/WAF-D-18-0149.1Publisher: American Meteorological Society
Abstract: AbstractTo satisfy a wide range of end users, rainfall ensemble forecasts have to be skillful for both low precipitation and extreme events. We introduce local statistical postprocessing methods based on quantile regression forests and gradient forests with a semiparametric extension for heavy-tailed distributions. These hybrid methods make use of the forest-based outputs to fit a parametric distribution that is suitable to model jointly low, medium, and heavy rainfall intensities. Our goal is to improve ensemble quality and value for all rainfall intensities. The proposed methods are applied to daily 51-h forecasts of 6-h accumulated precipitation from 2012 to 2015 over France using the Météo-France ensemble prediction system called Prévision d?Ensemble ARPEGE (PEARP). They are verified with a cross-validation strategy and compete favorably with state-of-the-art methods like analog ensemble or ensemble model output statistics. Our methods do not assume any parametric links between the variables to calibrate and possible covariates. They do not require any variable selection step and can make use of more than 60 predictors available such as summary statistics on the raw ensemble, deterministic forecasts of other parameters of interest, or probabilities of convective rainfall. In addition to improvements in overall performance, hybrid forest-based procedures produced the largest skill improvements for forecasting heavy rainfall events.
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contributor author | Taillardat, Maxime | |
contributor author | Fougères, Anne-Laure | |
contributor author | Naveau, Philippe | |
contributor author | Mestre, Olivier | |
date accessioned | 2019-10-05T06:44:38Z | |
date available | 2019-10-05T06:44:38Z | |
date copyright | 3/8/2019 12:00:00 AM | |
date issued | 2019 | |
identifier other | WAF-D-18-0149.1.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4263284 | |
description abstract | AbstractTo satisfy a wide range of end users, rainfall ensemble forecasts have to be skillful for both low precipitation and extreme events. We introduce local statistical postprocessing methods based on quantile regression forests and gradient forests with a semiparametric extension for heavy-tailed distributions. These hybrid methods make use of the forest-based outputs to fit a parametric distribution that is suitable to model jointly low, medium, and heavy rainfall intensities. Our goal is to improve ensemble quality and value for all rainfall intensities. The proposed methods are applied to daily 51-h forecasts of 6-h accumulated precipitation from 2012 to 2015 over France using the Météo-France ensemble prediction system called Prévision d?Ensemble ARPEGE (PEARP). They are verified with a cross-validation strategy and compete favorably with state-of-the-art methods like analog ensemble or ensemble model output statistics. Our methods do not assume any parametric links between the variables to calibrate and possible covariates. They do not require any variable selection step and can make use of more than 60 predictors available such as summary statistics on the raw ensemble, deterministic forecasts of other parameters of interest, or probabilities of convective rainfall. In addition to improvements in overall performance, hybrid forest-based procedures produced the largest skill improvements for forecasting heavy rainfall events. | |
publisher | American Meteorological Society | |
title | Forest-Based and Semiparametric Methods for the Postprocessing of Rainfall Ensemble Forecasting | |
type | Journal Paper | |
journal volume | 34 | |
journal issue | 3 | |
journal title | Weather and Forecasting | |
identifier doi | 10.1175/WAF-D-18-0149.1 | |
journal fristpage | 617 | |
journal lastpage | 634 | |
tree | Weather and Forecasting:;2019:;volume 034:;issue 003 | |
contenttype | Fulltext |