Adaptive Kalman Filtering for Postprocessing Ensemble Numerical Weather PredictionsSource: Monthly Weather Review:;2017:;volume( 145 ):;issue: 012::page 4837Author:Pelosi, Anna;Medina, Hanoi;Van den Bergh, Joris;Vannitsem, Stéphane;Chirico, Giovanni Battista
DOI: 10.1175/MWR-D-17-0084.1Publisher: American Meteorological Society
Abstract: AbstractForecasts from numerical weather prediction models suffer from systematic and nonsystematic errors, which originate from various sources such as subgrid-scale variability affecting large scales. Statistical postprocessing techniques can partly remove such errors. Adaptive MOS techniques based on Kalman filters (here called AMOS), are used to sequentially postprocess the forecasts, by continuously updating the correction parameters as new ground observations become available. These techniques, originally proposed for deterministic forecasts, are valuable when long training datasets do not exist. Here, a new adaptive postprocessing technique for ensemble predictions (called AEMOS) is introduced. The proposed method implements a Kalman filtering approach that fully exploits the information content of the ensemble for updating the parameters of the postprocessing equation. A verification study for the region of Campania in southern Italy is performed. Two years (2014?15) of daily meteorological observations of 10-m wind speed and 2-m temperature from 18 ground-based automatic weather stations are used, comparing them with the corresponding COSMO-LEPS ensemble forecasts. It is shown that the proposed adaptive method outperforms the AMOS method, while it shows comparable results to the member-by-member batch postprocessing approach.
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contributor author | Pelosi, Anna;Medina, Hanoi;Van den Bergh, Joris;Vannitsem, Stéphane;Chirico, Giovanni Battista | |
date accessioned | 2018-01-03T11:03:08Z | |
date available | 2018-01-03T11:03:08Z | |
date copyright | 10/2/2017 12:00:00 AM | |
date issued | 2017 | |
identifier other | mwr-d-17-0084.1.pdf | |
identifier uri | http://138.201.223.254:8080/yetl1/handle/yetl/4246599 | |
description abstract | AbstractForecasts from numerical weather prediction models suffer from systematic and nonsystematic errors, which originate from various sources such as subgrid-scale variability affecting large scales. Statistical postprocessing techniques can partly remove such errors. Adaptive MOS techniques based on Kalman filters (here called AMOS), are used to sequentially postprocess the forecasts, by continuously updating the correction parameters as new ground observations become available. These techniques, originally proposed for deterministic forecasts, are valuable when long training datasets do not exist. Here, a new adaptive postprocessing technique for ensemble predictions (called AEMOS) is introduced. The proposed method implements a Kalman filtering approach that fully exploits the information content of the ensemble for updating the parameters of the postprocessing equation. A verification study for the region of Campania in southern Italy is performed. Two years (2014?15) of daily meteorological observations of 10-m wind speed and 2-m temperature from 18 ground-based automatic weather stations are used, comparing them with the corresponding COSMO-LEPS ensemble forecasts. It is shown that the proposed adaptive method outperforms the AMOS method, while it shows comparable results to the member-by-member batch postprocessing approach. | |
publisher | American Meteorological Society | |
title | Adaptive Kalman Filtering for Postprocessing Ensemble Numerical Weather Predictions | |
type | Journal Paper | |
journal volume | 145 | |
journal issue | 12 | |
journal title | Monthly Weather Review | |
identifier doi | 10.1175/MWR-D-17-0084.1 | |
journal fristpage | 4837 | |
tree | Monthly Weather Review:;2017:;volume( 145 ):;issue: 012 | |
contenttype | Fulltext |