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一种集成基于风向的动态图网络的深度学习模型用于臭氧预测。

A deep learning model integrating a wind direction-based dynamic graph network for ozone prediction.

作者信息

Wang Shiyi, Sun Yiming, Gu Haonan, Cao Xiaoyong, Shi Yao, He Yi

机构信息

College of Chemical and Biological Engineering, Zhejiang University, Hangzhou 310058, China.

College of Chemical and Biological Engineering, Zhejiang University, Hangzhou 310058, China; Institute of Zhejiang University-Quzhou, Quzhou 324000, China.

出版信息

Sci Total Environ. 2024 Oct 10;946:174229. doi: 10.1016/j.scitotenv.2024.174229. Epub 2024 Jun 23.

DOI:10.1016/j.scitotenv.2024.174229
PMID:38917895
Abstract

Ozone pollution is an important environmental issue in many countries. Accurate forecasting of ozone concentration enables relevant authorities to enact timely policies to mitigate adverse impacts. This study develops a novel hybrid deep learning model, named wind direction-based dynamic spatio-temporal graph network (WDDSTG-Net), for hourly ozone concentration prediction. The model uses a dynamic directed graph structure based on hourly changing wind direction data to capture evolving spatial relationships between air quality monitoring stations. It applied the graph attention mechanism to compute dynamic weights between connected stations, thereby aggregating neighborhood information adaptively. For temporal modeling, it utilized a sequence-to-sequence model with attention mechanism to extract long-range temporal dependencies. Additionally, it integrated meteorological predictions to guide the ozone forecasting. The model achieves a mean absolute error of 6.69 μg/m and 18.63 μg/m for 1-h prediction and 24-h prediction, outperforming several classic models. The model's IAQI accuracy predictions at all stations are above 75 %, with a maximum of 81.74 %. It also exhibits strong capabilities in predicting severe ozone pollution events, with a 24-h true positive rate of 0.77. Compared to traditional static graph models, WDDSTG-Net demonstrates the importance of incorporating short-term wind fluctuations and transport dynamics for data-driven air quality modeling. In principle, it may serve as an effective data-driven approach for the concentration prediction of other airborne pollutants.

摘要

臭氧污染是许多国家重要的环境问题。准确预测臭氧浓度能使相关部门及时制定政策以减轻不利影响。本研究开发了一种新型混合深度学习模型,名为基于风向的动态时空图网络(WDDSTG-Net),用于每小时臭氧浓度预测。该模型基于每小时变化的风向数据使用动态有向图结构来捕捉空气质量监测站之间不断演变的空间关系。它应用图注意力机制来计算相连站点之间的动态权重,从而自适应地聚合邻域信息。对于时间建模,它利用带有注意力机制的序列到序列模型来提取长期时间依赖性。此外,它整合了气象预测来指导臭氧预测。该模型在1小时预测和24小时预测中的平均绝对误差分别为6.69μg/m和18.63μg/m,优于几个经典模型。该模型在所有站点的IAQI准确率预测均高于75%,最高可达81.74%。它在预测严重臭氧污染事件方面也表现出强大能力,24小时真阳性率为0.77。与传统静态图模型相比,WDDSTG-Net证明了纳入短期风波动和传输动态对数据驱动的空气质量建模的重要性。原则上,它可作为一种有效的数据驱动方法用于其他空气传播污染物的浓度预测。

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