Physics-Informed Residual Neural Ordinary Differential Equations for Enhanced Tropical Cyclone Intensity Forecasting
Journal:
arXiv
Published Date:
Mar 9, 2025
Abstract
Accurate tropical cyclone (TC) intensity prediction is crucial for mitigating
storm hazards, yet its complex dynamics pose challenges to traditional methods.
Here, we introduce a Physics-Informed Residual Neural Ordinary Differential
Equation (PIR-NODE) model to precisely forecast TC intensity evolution. This
model leverages the powerful non-linear fitting capabilities of deep learning,
integrates residual connections to enhance model depth and training stability,
and explicitly models the continuous temporal evolution of TC intensity using
Neural ODEs. Experimental results in the SHIPS dataset demonstrate that the
PIR-NODE model achieves a significant improvement in 24-hour intensity
prediction accuracy compared to traditional statistical models and benchmark
deep learning methods, with a 25. 2\% reduction in the root mean square error
(RMSE) and a 19.5\% increase in R-square (R2) relative to a baseline of neural
network. Crucially, the residual structure effectively preserves initial state
information, and the model exhibits robust generalization capabilities. This
study details the PIR-NODE model architecture, physics-informed integration
strategies, and comprehensive experimental validation, revealing the
substantial potential of deep learning techniques in predicting complex
geophysical systems and laying the foundation for future refined TC forecasting
research.