4.6 Article

Human migration-based graph convolutional network for PM2.5 forecasting in post-COVID-19 pandemic age

期刊

NEURAL COMPUTING & APPLICATIONS
卷 35, 期 9, 页码 6457-6470

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-022-07876-0

关键词

COVID-19; Air pollution; Graph neural network; Deep learning

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This study aims to explore whether human migration can be a significant factor in forecasting PM2.5 concentration in the post-pandemic age. By analyzing the data of 11 cities in Hubei province and establishing a graph data structure based on the migration network, a migration attentive graph convolutional network (MAGCN) for PM2.5 forecasting is proposed. Experimental results demonstrate the accurate forecasting ability of the MAGCN.
Due to the coronavirus disease 2019 pandemic, local authorities always implanted non-pharmaceutical interventions, such as maintaining social distance to reduce human migration. Besides, previous studies have proved that human migration highly influenced air pollution concentration in an area. Therefore, this study aims to explore whether human migration can work as a significant factor in the post-pandemic age to help PM2.5 concentration forecasting. In this work, we first analyze the variations of PM2.5 in 11 cities of Hubei from 2015 to 2020 and further compare PM2.5 trends with the migration trends of Hubei province in 2020. Experimental results indicate that the human migration indirectly affected the urban PM2.5 concentration. Then, we established a graph data structure based on the migration network describing the migration flow size between any two areas in the Hubei province and proposed a migration attentive graph convolutional network (MAGCN) for forecasting PM2.5. Combined with the migration data. The proposed model can attentively aggregate the information of neighbor nodes through migration weights. Experimental results indicate that the proposed MAGCN can forecast PM2.5 concentration accurately.

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