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Group-Aware Graph Neural Network for Nationwide City Air Quality Forecasting

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The problem of air pollution threatens public health. Air quality forecasting can provide the air quality index hours or even days later, which can help the public to prevent air pollution in advance. Previous works focus on citywide air quality forecasting and cannot solve nationwide city forecasting problem, whose difficulties lie in capturing the latent dependencies between geographically distant but highly correlated cities. In this paper, we propose the group-aware graph neural network (GAGNN), a hierarchical model for nationwide city air quality forecasting. The model constructs a city graph and a city group graph to model the spatial and latent dependencies between cities, respectively. GAGNN introduces differentiable grouping network to discover the latent dependencies among cities and generate city groups. Based on the generated city groups, a group correlation encoding module is introduced to learn the correlations between them, which can effectively capture the dependencies between city groups. After the graph construction, GAGNN implements message passing mechanism to model the dependencies between cities and city groups. The evaluation experiments on Chinese city air quality dataset indicate that our GAGNN outperforms existing forecasting models.

Ling Chen, Jiahui Xu, Binqing Wu, Yuntao Qian, Zhenhong Du, Yansheng Li, Yongjun Zhang• 2021

Related benchmarks

TaskDatasetResultRank
Air quality forecastingLargeAQ
MAE15.02
45
Air quality forecastingKnowAir
MAE10.15
45
Air quality forecastingGlobal air quality dataset
MAE12.81
29
Air quality forecastingUSA regional air quality
MAE10.47
24
Air quality forecastingChina regional air quality subset
MAE8.65
24
Air quality forecastingEurope regional air quality
MAE12.61
24
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