Integrated Engineering, Dept. of Environmental Science and Engineering, College of Engineering, Kyung Hee University, 1732 Deogyeong-daero, Giheung-gu, Yongin-si, Gyeonggi-do, 17104, Republic of Korea.
Integrated Engineering, Dept. of Environmental Science and Engineering, College of Engineering, Kyung Hee University, 1732 Deogyeong-daero, Giheung-gu, Yongin-si, Gyeonggi-do, 17104, Republic of Korea; Department of Earth Resources and Environmental Engineering, Hanyang University, 222 Wangsimni-ro, Seongdong-gu, Seoul, 04763, Republic of Korea.
Chemosphere. 2023 Sep;335:139071. doi: 10.1016/j.chemosphere.2023.139071. Epub 2023 Jun 2.
Current spatial-temporal early warning systems aim to predict outdoor air quality in urban areas either at short or long temporal horizons. These systems implemented architectures without considering the geographical distribution of each air quality monitoring station, increasing the uncertainty of the forecasting framework. This study developed an integrated spatiotemporal forecasting architecture incorporating an extensive air quality PM monitoring network and simultaneously forecasts PM concentrations at all locations, allowing the monitoring of the health risk associated with exposure to these levels. First, this study uses a graph convolutional layer to incorporate the spatial relationship of the neighboring stations at their current state with real-time measurements. Then, it is coupled to a deep learning temporal model to form the long- and short-term time-series graph convolutional network (LSTGraphNet) model, anticipating high pollutant concentration events. This work tested the proposed model with a case study of an existing ambient air quality monitoring network in South Korea. LSTGraphNet model showed prediction performances of PM at multiple monitoring stations with a mean absolute error (MAE) of 1.82 μg/m, 4.46 μg/m, and 4.87 μg/m for forecasting horizons of one, three, and 6 h ahead, respectively. Compared to conventional sequential models, this architecture was superior among the state-of-the-art baselines, where the MAE decreased to 41%, respectively. The results of the study showed that the proposed architecture was superior to conventional sequential models and could be used as a tool for decision-making in smart cities by revealing hotspots of higher and lower PM concentrations in the long term.
当前的时空预警系统旨在预测城市地区的短期或长期室外空气质量。这些系统实施的架构没有考虑到每个空气质量监测站的地理位置分布,增加了预测框架的不确定性。本研究开发了一种集成的时空预测架构,该架构结合了广泛的空气质量 PM 监测网络,并同时预测所有位置的 PM 浓度,从而可以监测与这些水平暴露相关的健康风险。首先,本研究使用图卷积层来整合当前状态下相邻站点的空间关系及其实时测量值。然后,它与深度学习时间模型耦合,形成长期和短期时间序列图卷积网络 (LSTGraphNet) 模型,以预测高污染物浓度事件。这项工作通过对韩国现有环境空气质量监测网络的案例研究测试了所提出的模型。LSTGraphNet 模型在多个监测站的 PM 预测性能表现出色,对于 1、3 和 6 小时的预测提前期,平均绝对误差 (MAE) 分别为 1.82μg/m、4.46μg/m 和 4.87μg/m。与传统的顺序模型相比,该架构在最先进的基线中表现出色,MAE 分别降低了 41%。研究结果表明,所提出的架构优于传统的顺序模型,可以作为智慧城市中决策的工具,通过揭示长期内 PM 浓度较高和较低的热点。