Assessing subseasonal forecast skill for use in predicting US coastal inundation risk
Type de ressource
Auteurs/contributeurs
- Albers, John R. (Auteur)
- Newman, Matthew (Auteur)
- Balmaseda, Magdalena A. (Auteur)
- Sweet, William (Auteur)
- Wang, Yan (Auteur)
- Xu, Tongtong (Auteur)
Titre
Assessing subseasonal forecast skill for use in predicting US coastal inundation risk
Résumé
Abstract. Developing predictions of coastal flooding risk on subseasonal timescales (2–6 weeks in advance) is an emerging priority for the National Oceanic and Atmospheric Administration (NOAA). In this study, we assess the ability of two current operational forecast systems, the European Centre for Medium-Range Weather Forecasts Integrated Forecasting System (IFS) and the Centre National de Recherches Météorologiques climate model (CNRM), to make subseasonal ensemble predictions of the non-tidal residual component of coastal water levels at United States coastal gauge stations for the period 2000–2019. These models were chosen because they assimilate satellite altimetry at forecast initialization and attempt to predict the mean sea level, including a global mean component whose absence in other forecast systems complicates assessment of tide gauge reforecast skill. Both forecast systems have skill that exceeds damped persistence for forecast leads through 2–3 weeks, with IFS skill exceeding damped persistence for leads up to 6 weeks. Post-processing forecasts to include the inverse barometer effect, derived from mean sea level pressure forecasts, improves skill for relatively short forecast leads (1–3 weeks). Accounting for vertical land motion of each gauge primarily improves skill for longer leads (3–6 weeks), especially for the Alaskan and Gulf coasts; sea-level trends contribute to reforecast skill for both model and persistence forecasts, primarily for the East and Gulf coasts. Overall, we find that current forecast systems have sufficiently high levels of deterministic and probabilistic skill to be used in support of operational coastal flood guidance on subseasonal timescales.
Publication
Ocean Science
Volume
21
Numéro
4
Pages
1761-1785
Date
2025-08-21
Abrév. de revue
Ocean Sci.
Langue
en
ISSN
1812-0792
Consulté le
2025-09-07 00 h 42
Catalogue de bibl.
DOI.org (Crossref)
Autorisations
Référence
Albers, J. R., Newman, M., Balmaseda, M. A., Sweet, W., Wang, Y., & Xu, T. (2025). Assessing subseasonal forecast skill for use in predicting US coastal inundation risk. Ocean Science, 21(4), 1761–1785. https://doi.org/10.5194/os-21-1761-2025
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