AISep 14, 2025

Knowledge-Guided Adaptive Mixture of Experts for Precipitation Prediction

arXiv:2509.11459v11 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses the challenge of predicting rainfall for agriculture and disaster management by improving integration of heterogeneous climate data, though it appears incremental as it builds on existing mixture of experts methods.

The paper tackled the problem of accurate precipitation forecasting by proposing an Adaptive Mixture of Experts model that integrates multi-source observational data, and it significantly outperformed all baselines in benchmark results on a dataset from Hurricane Ian in 2022.

Accurate precipitation forecasting is indispensable in agriculture, disaster management, and sustainable strategies. However, predicting rainfall has been challenging due to the complexity of climate systems and the heterogeneous nature of multi-source observational data, including radar, satellite imagery, and surface-level measurements. The multi-source data vary in spatial and temporal resolution, and they carry domain-specific features, making it challenging for effective integration in conventional deep learning models. Previous research has explored various machine learning techniques for weather prediction; however, most struggle with the integration of data with heterogeneous modalities. To address these limitations, we propose an Adaptive Mixture of Experts (MoE) model tailored for precipitation rate prediction. Each expert within the model specializes in a specific modality or spatio-temporal pattern. We also incorporated a dynamic router that learns to assign inputs to the most relevant experts. Our results show that this modular design enhances predictive accuracy and interpretability. In addition to the modeling framework, we introduced an interactive web-based visualization tool that enables users to intuitively explore historical weather patterns over time and space. The tool was designed to support decision-making for stakeholders in climate-sensitive sectors. We evaluated our approach using a curated multimodal climate dataset capturing real-world conditions during Hurricane Ian in 2022. The benchmark results show that the Adaptive MoE significantly outperformed all the baselines.

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