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Published:2026/1/5 14:02:04

インドモンスーン☔️をAIで予測!高解像度モデル爆誕✨

超要約: ディープラーニング(DL)でインドモンスーンの雨☔️を細かく予測するよ!

✨ ギャル的キラキラポイント ✨

● 高解像度(細かい!)で雨を予測できるのがスゴくない?😍 ● 農業とか水資源管理とか、色んな分野で役立つって最高じゃん?🫶 ● IT企業が新しいサービス作れるチャンス到来ってコト!💖

詳細解説

続きは「らくらく論文」アプリで

A Spatio-Temporal Deep Learning Approach For High-Resolution Gridded Monsoon Prediction

Parashjyoti Borah / Sanghamitra Sarkar / Ranjan Phukan

The Indian Summer Monsoon (ISM) is a critical climate phenomenon, fundamentally impacting the agriculture, economy, and water security of over a billion people. Traditional long-range forecasting, whether statistical or dynamical, has predominantly focused on predicting a single, spatially-averaged seasonal value, lacking the spatial detail essential for regional-level resource management. To address this gap, we introduce a novel deep learning framework that reframes gridded monsoon prediction as a spatio-temporal computer vision task. We treat multi-variable, pre-monsoon atmospheric and oceanic fields as a sequence of multi-channel images, effectively creating a video-like input tensor. Using 85 years of ERA5 reanalysis data for predictors and IMD rainfall data for targets, we employ a Convolutional Neural Network (CNN)-based architecture to learn the complex mapping from the five-month pre-monsoon period (January-May) to a high-resolution gridded rainfall pattern for the subsequent monsoon season. Our framework successfully produces distinct forecasts for each of the four monsoon months (June-September) as well as the total seasonal average, demonstrating its utility for both intra-seasonal and seasonal outlooks.

cs / cs.CV / cs.LG