Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions

52 pages, figures, tables, appendix This work aims at creating a preliminary machine learning (ML) model for correcting the European Centre for Medium-Range Weather Forecasts (ECMWF) ERA5 reanalysis stress-equivalent local wind biases, based on atmospheric and oceanic parameters. Several errors in t...

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Main Authors: Makarova, Evgeniia, Portabella, Marcos, Stoffelen, Ad
Format: Report
Language:English
Published: EUMETSAT 2022
Subjects:
Online Access:http://hdl.handle.net/10261/81991
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spelling ftcsic:oai:digital.csic.es:10261/81991 2024-02-11T10:08:33+01:00 Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions Makarova, Evgeniia Portabella, Marcos Stoffelen, Ad 2022-11 http://hdl.handle.net/10261/81991 en eng EUMETSAT https://osi-saf.eumetsat.int/sites/osi-saf.eumetsat.int/files/inline-files/TechReport_OSI_SAF_VSA22_01.pdf Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions: 1-52 (2022) http://hdl.handle.net/10261/81991 open Scatterometer-based corrections ERA5 biases Machine Learning Ocean forcing informe técnico http://purl.org/coar/resource_type/c_5794 2022 ftcsic 2024-01-16T09:51:59Z 52 pages, figures, tables, appendix This work aims at creating a preliminary machine learning (ML) model for correcting the European Centre for Medium-Range Weather Forecasts (ECMWF) ERA5 reanalysis stress-equivalent local wind biases, based on atmospheric and oceanic parameters. Several errors in the ECMWF global output for near surface ocean winds have been reported when validated against scatterometer observations. An existing approach for correcting these biases (the so-called ERA* method) consists of scatterometer-based corrections accumulated over a certain time window at each grid point, which allows to reduce local persistent biases. This approach is sensitive to scatterometer sampling and, to collect a statistically significant number of samples, assumes that such biases are static. This is not the case for errors due to moist convection or the diurnal cycle. For operational purposes, the temporal window is lagged with respect to the reanalysis forecast time and the time difference betweeen scatterometer-based correction (SC) and sample data collections can be ten days. We propose a preliminary ML setup that looks for the functional relationship between several oceanic and atmospheric variables that describe the persistent NWP errors as observed in the NWP-scatterometer differences. This would allow to predict the biases of the stressequivalent wind forecasts and using the bias corrections in coupled weather or seasonal forecasts, or to account for these in climate runs. Such variables are first identified as ECMWF model parameters, such as stress-equivalent winds, their derivatives (curl and divergence), atmospheric stability related parameters, i.e., sea-surface temperature (SST), air temperature (Ta), relative humidity (rh), surface pressure (sp), as well as SST gradients and ocean currents. This work evaluates the feasibility of such approach and provides an overview of possible implementations of this regression Peer reviewed Report Sea ice Digital.CSIC (Spanish National Research Council) Curl ENVELOPE(-63.071,-63.071,-70.797,-70.797)
institution Open Polar
collection Digital.CSIC (Spanish National Research Council)
op_collection_id ftcsic
language English
topic Scatterometer-based corrections
ERA5 biases
Machine Learning
Ocean forcing
spellingShingle Scatterometer-based corrections
ERA5 biases
Machine Learning
Ocean forcing
Makarova, Evgeniia
Portabella, Marcos
Stoffelen, Ad
Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
topic_facet Scatterometer-based corrections
ERA5 biases
Machine Learning
Ocean forcing
description 52 pages, figures, tables, appendix This work aims at creating a preliminary machine learning (ML) model for correcting the European Centre for Medium-Range Weather Forecasts (ECMWF) ERA5 reanalysis stress-equivalent local wind biases, based on atmospheric and oceanic parameters. Several errors in the ECMWF global output for near surface ocean winds have been reported when validated against scatterometer observations. An existing approach for correcting these biases (the so-called ERA* method) consists of scatterometer-based corrections accumulated over a certain time window at each grid point, which allows to reduce local persistent biases. This approach is sensitive to scatterometer sampling and, to collect a statistically significant number of samples, assumes that such biases are static. This is not the case for errors due to moist convection or the diurnal cycle. For operational purposes, the temporal window is lagged with respect to the reanalysis forecast time and the time difference betweeen scatterometer-based correction (SC) and sample data collections can be ten days. We propose a preliminary ML setup that looks for the functional relationship between several oceanic and atmospheric variables that describe the persistent NWP errors as observed in the NWP-scatterometer differences. This would allow to predict the biases of the stressequivalent wind forecasts and using the bias corrections in coupled weather or seasonal forecasts, or to account for these in climate runs. Such variables are first identified as ECMWF model parameters, such as stress-equivalent winds, their derivatives (curl and divergence), atmospheric stability related parameters, i.e., sea-surface temperature (SST), air temperature (Ta), relative humidity (rh), surface pressure (sp), as well as SST gradients and ocean currents. This work evaluates the feasibility of such approach and provides an overview of possible implementations of this regression Peer reviewed
format Report
author Makarova, Evgeniia
Portabella, Marcos
Stoffelen, Ad
author_facet Makarova, Evgeniia
Portabella, Marcos
Stoffelen, Ad
author_sort Makarova, Evgeniia
title Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
title_short Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
title_full Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
title_fullStr Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
title_full_unstemmed Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions
title_sort ocean and sea ice saf : osi vsa22 01 : proposal and evaluation of the machine learning models for correcting era5 stress equivalent wind forecasts as a function of atmospheric and oceanic conditions
publisher EUMETSAT
publishDate 2022
url http://hdl.handle.net/10261/81991
long_lat ENVELOPE(-63.071,-63.071,-70.797,-70.797)
geographic Curl
geographic_facet Curl
genre Sea ice
genre_facet Sea ice
op_relation https://osi-saf.eumetsat.int/sites/osi-saf.eumetsat.int/files/inline-files/TechReport_OSI_SAF_VSA22_01.pdf
Ocean and Sea Ice SAF : OSI VSA22 01 : Proposal and Evaluation of the Machine Learning Models for Correcting ERA5 Stress Equivalent Wind Forecasts as a Function of Atmospheric and Oceanic Conditions: 1-52 (2022)
http://hdl.handle.net/10261/81991
op_rights open
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