Generative Nowcasting of Marine Fog Visibility in the Grand Banks area and Sable Island in Canada
Eren Gultepe, Sen Wang, Byron Blomquist, Harindra J.S. Fernando, O., Patrick Kreidl, David J. Delene, Ismail Gultepe

TL;DR
This paper explores the use of generative deep learning, specifically cGANs, to improve marine fog visibility nowcasting in the North Atlantic, comparing its performance with XGBoost for short-term predictions.
Contribution
It introduces a novel application of cGANs for marine fog nowcasting, demonstrating potential advantages over traditional methods like XGBoost in short-term visibility prediction.
Findings
cGAN outperforms XGBoost at 30 min lead time for Vis < 1 km
XGBoost performs better at 60 min lead time for Vis < 1 km
cGAN shows potential for tracking fog variation at 1 km visibility
Abstract
This study presents the application of generative deep learning techniques to evaluate marine fog visibility nowcasting using the FATIMA (Fog and turbulence interactions in the marine atmosphere) campaign observations collected during July 2022 in the North Atlantic in the Grand Banks area and vicinity of Sable Island (SI), northeast of Canada. The measurements were collected using the Vaisala Forward Scatter Sensor model FD70 and Weather Transmitter model WXT50, and Gill R3A ultrasonic anemometer mounted on the Research Vessel Atlantic Condor. To perform nowcasting, the time series of fog visibility (Vis), wind speed, dew point depression, and relative humidity with respect to water were preprocessed to have lagged time step features. Generative nowcasting of Vis time series for lead times of 30 and 60 minutes were performed using conditional generative adversarial networks (cGAN)…
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Taxonomy
TopicsCoastal and Marine Management · Marine animal studies overview · Coral and Marine Ecosystems Studies
