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Title: | Domain knowledge-enhanced multi-spatial multi-temporal PM₂.₅ forecasting with integrated monitoring and reanalysis data | Authors: | Hu, Y Li, Q Shi, X Yan, J Chen, Y |
Issue Date: | Oct-2024 | Source: | Environment international, Oct. 2024, v. 192, 108997 | Abstract: | Accurate air quality forecasting is crucial for public health, environmental monitoring and protection, and urban planning. However, existing methods fail to effectively utilize multi-scale information, both spatially and temporally. There is a lack of integration between individual monitoring stations and city-wide scales. Temporally, the periodic nature of air quality variations is often overlooked or inadequately considered. To overcome these limitations, we conduct a thorough analysis of the data and tasks, integrating spatio-temporal multi-scale domain knowledge. We present a novel Multi-spatial Multi-temporal air quality forecasting method based on Graph Convolutional Networks and Gated Recurrent Units (M2G2), bridging the gap in air quality forecasting across spatial and temporal scales. The proposed framework consists of two modules: Multi-scale Spatial GCN (MS-GCN) for spatial information fusion and Multi-scale Temporal GRU (MT-GRU) for temporal information integration. In the spatial dimension, the MS-GCN module employs a bidirectional learnable structure and a residual structure, enabling comprehensive information exchange between individual monitoring stations and the city-scale graph. Regarding the temporal dimension, the MT-GRU module adaptively combines information from different temporal scales through parallel hidden states. Leveraging meteorological indicators and four air quality indicators, we present comprehensive comparative analyses and ablation experiments, showcasing the higher accuracy of M2G2 in comparison to nine currently available advanced approaches across all aspects. The improvements of M2G2 over the second-best method on RMSE of 72-h future predictions are as follows: PM2.5: 6%∼10%; PM10: 5%∼7%; NO2: 5%∼16%; O3: 6%∼9%. Furthermore, we demonstrate the effectiveness of each module of M2G2 by ablation study. We conduct a sensitivity analysis of air quality and meteorological data, finding that the introduction of O3 adversely impacts the prediction accuracy of PM2.5. | Keywords: | Air quality prediction Gate recurrent unit Graph convolutional network Multi-spatial scale Multi-temporal scale |
Publisher: | Elsevier Ltd | Journal: | Environment international | ISSN: | 0160-4120 | EISSN: | 1873-6750 | DOI: | 10.1016/j.envint.2024.108997 | Rights: | © 2024 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). The following publication Hu, Y., Li, Q., Shi, X., Yan, J., & Chen, Y. (2024). Domain knowledge-enhanced multi-spatial multi-temporal PM2.5 forecasting with integrated monitoring and reanalysis data. Environment International, 192, 108997 is available at https://doi.org/10.1016/j.envint.2024.108997. |
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