ByteStorm: a multi-step data-driven approach for Tropical Cyclones detection and tracking
Davide Donno, Donatello Elia, Gabriele Accarino, Marco De Carlo, Enrico Scoccimarro, Silvio Gualdi

TL;DR
ByteStorm is a novel deep learning-based framework that improves tropical cyclone detection and tracking accuracy while reducing computational complexity, offering a robust data-driven alternative to traditional methods.
Contribution
It introduces a multi-step, data-driven approach combining deep learning and the BYTE algorithm for efficient and accurate tropical cyclone tracking.
Findings
Achieves high detection probability and low false alarms.
Reproduces seasonal and inter-annual variability accurately.
Produces reliable, smooth, and coherent cyclone tracks.
Abstract
Accurate tropical cyclones (TCs) tracking represents a critical challenge in the context of weather and climate science. Traditional tracking schemes mainly rely on subjective thresholds, which may introduce biases in their skills on the geographical region of application and are often computationally and data-intensive, due to the management of a large number of variables. We present \textit{ByteStorm}, an efficient data-driven framework for reconstructing TC tracks. It leverages deep learning networks to detect TC centers (via classification and localization), using only relative vorticity (850 mb) and mean sea-level pressure. Then, detected centers are linked into TC tracks through the BYTE algorithm. \textit{ByteStorm} is benchmarked with state-of-the-art deterministic trackers on the main global TC formation basins. The proposed framework achieves good tracking skills in terms of…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research · Precipitation Measurement and Analysis · Ocean Waves and Remote Sensing
