HurriCast: Synthetic Tropical Cyclone Track Generation for Hurricane Forecasting

Authors

  • Shouwei Gao Oregon State University
  • Meiyan Gao Florida International University
  • Yuepen Li Florida International University
  • Wenqian Dong Oregon State University

DOI:

https://doi.org/10.1609/aaaiss.v5i1.35581

Abstract

The generation of synthetic tropical cyclone tracks for Risk assessment is a critical application of preparedness for the impacts of climate change and disaster relief, particularly in North America. Insurance companies use these synthetic tracks to estimate the potential risks and financial impacts of future tropical cyclones. For governments and policymakers, understanding the potential impacts of tropical cyclones helps in developing effective emergency response strategies, updating building codes, and prioritizing investments in resilience and mitigation projects. In this study, many hypothetical but plausible TC scenarios are created based on historical TC data HURDAT2 (HURricane DATa 2nd generation). A hybrid methodology, combining the ARIMA and K-MEANS methods with Autoencoder, is employed to capture better historical TC behaviors and project future trajectories and intensities. It demonstrates an efficient and reliable in the field of climate modeling and risk assessment. By effectively capturing past hurricane patterns and providing detailed future projections, this approach not only validates the reliability of this method but also offers crucial insights for a range of applications, from disaster preparedness and emergency management to insurance risk analysis and policy formulation.

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Published

2025-05-28

How to Cite

Gao, S., Gao, M., Li, Y., & Dong, W. (2025). HurriCast: Synthetic Tropical Cyclone Track Generation for Hurricane Forecasting. Proceedings of the AAAI Symposium Series, 5(1), 143–150. https://doi.org/10.1609/aaaiss.v5i1.35581

Issue

Section

GenAI@Edge: Empowering Generative AI at the Edge