Statistical downscaling of seasonal wave forecasts
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Camus Braña, Paula; Herrera García, Sixto

Fecha
2019-06Derechos
© 2019. This manuscript version is made available under the CC-BY-NC-ND 4.0 license
Publicado en
Ocean Modelling
, 2019, 138, 1-12
Editorial
Elsevier Ltd
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Palabras clave
Seasonal forecast
Statistical downscaling
Significant wave height
Western Pacific
Atlantic Ocean
Resumen/Abstract
Despite the potential applicability of seasonal forecasting for decision making in construction, maintenance and operations of coastal and offshore infrastructures, tailored climate services have yet to be developed in the marine sector. In this work, we explore the potential of a state-of-the-art seasonal forecast system to predict wave conditions, particularly significant wave height. Since this information is not directly provided by models, a statistical downscaling method is applied to infer significant wave height based on model outputs such as sea level pressure, which drive waves over large wave generation areas beyond the target location over time. This method may be beneficial for seasonal forecasting since skill from wide generation areas can be propagated to wave conditions in (distant and smaller) target regions. We consider seasonal predictions with a one-month lead time of the CFSv2 hindcast in two regions: the Western Pacific around Indonesia during the June-July-August (JJA) season and the North Atlantic Ocean during the January-February-March (JFM) season. In the former case, skillful predictions are found, which are higher during decay years after ENSO warm phases when a negative anomaly of the significant wave height is expected. In contrast, statistical downscaling in the North Atlantic Ocean cannot add value to the signal given by the predictor, which is also very weak.
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