CNN-based forecasting of early winter NAO using sea surface temperature
Elena Provenzano, Guillaume Gastineau, Carlos Mejia, Didier Swingedouw, Sylvie Thiria

TL;DR
This study develops a CNN-based model to forecast early winter NAO using SST data, outperforming linear models and highlighting the importance of nonlinear SST-NAO relationships and ENSO influence.
Contribution
It introduces a CNN framework for NAO prediction from SST fields, capturing nonlinear relationships and improving forecast skill over traditional linear models.
Findings
CNN outperforms linear models in NAO prediction
Prediction skill is higher during strong ENSO events
CNN focuses on tropical Pacific and North Atlantic regions
Abstract
The North Atlantic Oscillation (NAO) is the dominant mode of atmospheric variability over the North Atlantic sector, influencing temperature and precipitation across Europe. While the NAO's impact on North Atlantic sea surface temperatures (SSTs) is well understood, the NAO can also be driven by SST anomalies. However, this NAO response to SST anomalies is believed to be weak and nonlinear. Former studies highlight that during early winter (November-December), El Nino Southern Oscillation (ENSO) events modulate the NAO, with El Nino (La Nina) events being linked to positive (negative) NAO phases, and an opposite effect observed in late winter (January-February). Indian Ocean SSTs and the North Atlantic Horseshoe SST anomaly have also been suggested as contributors to early winter NAO variability. However, climate models often struggle to capture these SST-NAO teleconnections,…
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Taxonomy
TopicsClimate variability and models · Oceanographic and Atmospheric Processes · Meteorological Phenomena and Simulations
