Center for Intelligent Transportation Systems and Unmanned Aerial Systems Applications Research, State Key Laboratory of Ocean Engineering, School of Naval Architecture, Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
International Center for Adaptation Planning and Design, College of Design, Construction and Planning, University of Florida, P.O. Box 115706, Gainesville, FL 32611, USA.
Int J Environ Res Public Health. 2022 Mar 27;19(7):3988. doi: 10.3390/ijerph19073988.
Accurate air quality forecasts can provide data-driven supports for governmental departments to control air pollution and further protect the health of residents. However, existing air quality forecasting models mainly focus on site-specific time series forecasts at a local level, and rarely consider the spatiotemporal relationships among regional monitoring stations. As a novelty, we construct a diffusion convolutional recurrent neural network (DCRNN) model that fully considers the influence of geographic distance and dominant wind direction on the regional variations in air quality through different combinations of directed and undirected graphs. The hourly fine particulate matter (PM) and ozone data from 123 air quality monitoring stations in the Yangtze River Delta, China are used to evaluate the performance of the DCRNN model in the regional prediction of PM and ozone concentrations. Results show that the proposed DCRNN model outperforms the baseline models in prediction accuracy. Compared with the undirected graph model, the directed graph model considering the effects of wind direction performs better in 24 h predictions of pollutant concentrations. In addition, more accurate forecasts of both PM and ozone are found at a regional level where monitoring stations are distributed densely rather than sparsely. Therefore, the proposed model can assist environmental researchers to further improve the technologies of air quality forecasts and could also serve as tools for environmental policymakers to implement pollution control measures.
准确的空气质量预测可以为政府部门提供数据支持,以控制空气污染,进一步保护居民的健康。然而,现有的空气质量预测模型主要集中在特定地点的本地时间序列预测上,很少考虑区域监测站之间的时空关系。作为一种新颖的方法,我们构建了一个扩散卷积循环神经网络(DCRNN)模型,该模型通过有向图和无向图的不同组合,充分考虑了地理距离和主导风向对空气质量区域变化的影响。该模型使用了来自中国长三角地区 123 个空气质量监测站的每小时细颗粒物(PM)和臭氧数据,以评估 DCRNN 模型在 PM 和臭氧浓度的区域预测中的性能。结果表明,所提出的 DCRNN 模型在预测精度上优于基准模型。与无向图模型相比,考虑风向影响的有向图模型在污染物浓度的 24 小时预测中表现更好。此外,在监测站分布密集而非稀疏的区域,对 PM 和臭氧的预测更为准确。因此,该模型可以帮助环境研究人员进一步提高空气质量预测技术,也可以作为环境政策制定者实施污染控制措施的工具。