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Scientists develop new AI method to forecast cyclone rapid intensification

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Earth Sciences Planetary Sciences Atmospheric Sciences Artificial Intelligence Oceanology Forecasting Cyclones Weather Forecasting
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Rapid Intensification (RI) of a tropical cyclone (TC), defined as a maximum sustained wind increase of at least 13 m/s within 24 hours, remains one of the most challenging weather phenomena to forecast because of its unpredictable and destructive nature. Although only 5% of TCs experience RI, its sudden and severe development poses significant risks to affected regions.

Image by Pixabay
Image by Pixabay

Traditional forecasting methods, such as numerical weather prediction and statistical approaches, often fail to consider the complex environmental and structural factors driving RI. While artificial intelligence (AI) has been explored as a means to improve RI prediction, most AI techniques have struggled with high false alarm rates and limited reliability.

_To address this issue, researchers from the Institute of Oceanology of the Chinese Academy of Sciences (IOCAS) have developed a new model for forecasting RI of TCs based on “contrastive learning.” _This study was published in the Proceedings of the National Academy of Sciences (PNAS) on January 21.

Inputs
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The new model has two inputs: Input A, a known RI TC sample, and Input B, an unknown sample to be forecasted. It extracts features from both inputs and calculates their distance in a high-dimensional space. If the distance is small, Input B is forecasted as an RI TC; if large, it is classified as a non-RI TC. Each unknown sample is compared with 10 known RI TC samples, and if more than five of the comparisons classify it as an RI TC, it is then classified as such.

Additionally, this study uses satellite imagery alongside atmospheric and oceanic data to balance RI and non-RI TC data. The model learns to differentiate between RI and non-RI TCs by comparing the two inputs during training.

When tested on data from the Northwest Pacific between 2020 and 2021, the method achieved an impressive accuracy of 92.3% and reduced false alarms to 8.9%. Compared to existing techniques, it improved accuracy by 12% and reduced false alarms by a factor of three, representing a major advancement in forecasting.

Although the model was initially trained on reanalysis data, the researchers created an operational forecasting scenario by replacing the reanalysis data with ECMWF-IFS numerical model forecast data from 2020 to 2021 as input. The results demonstrated comparable forecasting accuracy, further validating the reliability of this approach and confirming its suitability for real-time forecasting scenarios. This capability can significantly enhance early warning systems, thus improving global disaster preparedness.

“This study addresses the challenges of low accuracy and high false alarm rates in RI TC forecasting,” said Prof. LI Xiaofeng, the corresponding author. “Our method enhances understanding of these extreme events and supports better defenses against their devastating impacts.”

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