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arxiv_ml 96% Match Research Paper Meteorologists,Climatologists,Data Scientists in environmental fields,Disaster Management Agencies 3 weeks ago

Leveraging Teleconnections with Physics-Informed Graph Attention Networks for Long-Range Extreme Rainfall Forecasting in Thailand

graph-neural-networks › graph-learning
📄 Abstract

Abstract: Accurate rainfall forecasting, particularly for extreme events, remains a significant challenge in climatology and the Earth system. This paper presents novel physics-informed Graph Neural Networks (GNNs) combined with extreme-value analysis techniques to improve gauge-station rainfall predictions across Thailand. The model leverages a graph-structured representation of gauge stations to capture complex spatiotemporal patterns, and it offers explainability through teleconnections. We preprocess relevant climate indices that potentially influence regional rainfall. The proposed Graph Attention Network with Long Short-Term Memory (Attention-LSTM) applies the attention mechanism using initial edge features derived from simple orographic-precipitation physics formulation. The embeddings are subsequently processed by LSTM layers. To address extremes, we perform Peak-Over-Threshold (POT) mapping using the novel Spatial Season-aware Generalized Pareto Distribution (GPD) method, which overcomes limitations of traditional machine-learning models. Experiments demonstrate that our method outperforms well-established baselines across most regions, including areas prone to extremes, and remains strongly competitive with the state of the art. Compared with the operational forecasting system SEAS5, our real-world application improves extreme-event prediction and offers a practical enhancement to produce high-resolution maps that support decision-making in long-term water management.
Authors (5)
Kiattikun Chobtham
Kanoksri Sarinnapakorn
Kritanai Torsri
Prattana Deeprasertkul
Jirawan Kamma
Submitted
October 14, 2025
arXiv Category
cs.LG
arXiv PDF

Key Contributions

Presents physics-informed Graph Neural Networks (GNNs) combined with extreme-value analysis for improved gauge-station rainfall predictions, particularly for extreme events. The model leverages graph structures, teleconnections, and a novel Spatial Season-aware GPD method for POT analysis.

Business Value

Enhanced forecasting capabilities for extreme rainfall can significantly aid disaster preparedness, water resource management, and agricultural planning, reducing economic losses and improving safety.