LGAIMLJun 10, 2025

Spatiotemporal deep learning models for detection of rapid intensification in cyclones

arXiv:2506.08397v14 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of predicting extreme weather events for meteorology and disaster management, but it is incremental as it applies existing deep learning techniques to a specific domain problem.

The paper tackled the problem of detecting cyclone rapid intensification, a rare event causing class imbalance, by using deep learning models for data augmentation and classification, showing that data augmentation improves detection results and spatial coordinates are critical input features.

Cyclone rapid intensification is the rapid increase in cyclone wind intensity, exceeding a threshold of 30 knots, within 24 hours. Rapid intensification is considered an extreme event during a cyclone, and its occurrence is relatively rare, contributing to a class imbalance in the dataset. A diverse array of factors influences the likelihood of a cyclone undergoing rapid intensification, further complicating the task for conventional machine learning models. In this paper, we evaluate deep learning, ensemble learning and data augmentation frameworks to detect cyclone rapid intensification based on wind intensity and spatial coordinates. We note that conventional data augmentation methods cannot be utilised for generating spatiotemporal patterns replicating cyclones that undergo rapid intensification. Therefore, our framework employs deep learning models to generate spatial coordinates and wind intensity that replicate cyclones to address the class imbalance problem of rapid intensification. We also use a deep learning model for the classification module within the data augmentation framework to differentiate between rapid and non-rapid intensification events during a cyclone. Our results show that data augmentation improves the results for rapid intensification detection in cyclones, and spatial coordinates play a critical role as input features to the given models. This paves the way for research in synthetic data generation for spatiotemporal data with extreme events.

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