TopoFlow:用于高分辨率空气质量预测的物理引导神经网络 / TopoFlow: Physics-guided Neural Networks for high-resolution air quality prediction
1️⃣ 一句话总结
这篇论文提出了一种名为TopoFlow的新型人工智能模型,它通过巧妙地将地形和风向这两个关键物理因素融入神经网络,显著提高了空气质量预测的准确性和可靠性。
We propose TopoFlow (Topography-aware pollutant Flow learning), a physics-guided neural network for efficient, high-resolution air quality prediction. To explicitly embed physical processes into the learning framework, we identify two critical factors governing pollutant dynamics: topography and wind direction. Complex terrain can channel, block, and trap pollutants, while wind acts as a primary driver of their transport and dispersion. Building on these insights, TopoFlow leverages a vision transformer architecture with two novel mechanisms: topography-aware attention, which explicitly models terrain-induced flow patterns, and wind-guided patch reordering, which aligns spatial representations with prevailing wind directions. Trained on six years of high-resolution reanalysis data assimilating observations from over 1,400 surface monitoring stations across China, TopoFlow achieves a PM2.5 RMSE of 9.71 ug/m3, representing a 71-80% improvement over operational forecasting systems and a 13% improvement over state-of-the-art AI baselines. Forecast errors remain well below China's 24-hour air quality threshold of 75 ug/m3 (GB 3095-2012), enabling reliable discrimination between clean and polluted conditions. These performance gains are consistent across all four major pollutants and forecast lead times from 12 to 96 hours, demonstrating that principled integration of physical knowledge into neural networks can fundamentally advance air quality prediction.
TopoFlow:用于高分辨率空气质量预测的物理引导神经网络 / TopoFlow: Physics-guided Neural Networks for high-resolution air quality prediction
这篇论文提出了一种名为TopoFlow的新型人工智能模型,它通过巧妙地将地形和风向这两个关键物理因素融入神经网络,显著提高了空气质量预测的准确性和可靠性。
源自 arXiv: 2602.16821