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Predicting Landfalls Location and Time of a Tropical Cyclone Using Reanalysis Data

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 نشر من قبل Sandeep Kumar
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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Landfall of a tropical cyclone is the event when it moves over the land after crossing the coast of the ocean. It is important to know the characteristics of the landfall in terms of location and time, well advance in time to take preventive measures timely. In this article, we develop a deep learning model based on the combination of a Convolutional Neural network and a Long Short-Term memory network to predict the landfalls location and time of a tropical cyclone in six ocean basins of the world with high accuracy. We have used high-resolution spacial reanalysis data, ERA5, maintained by European Center for Medium-Range Weather Forecasting (ECMWF). The model takes any 9 hours, 15 hours, or 21 hours of data, during the progress of a tropical cyclone and predicts its landfalls location in terms of latitude and longitude and time in hours. For 21 hours of data, we achieve mean absolute error for landfalls location prediction in the range of 66.18 - 158.92 kilometers and for landfalls time prediction in the range of 4.71 - 8.20 hours across all six ocean basins. The model can be trained in just 30 to 45 minutes (based on ocean basin) and can predict the landfalls location and time in a few seconds, which makes it suitable for real time prediction.



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