PM2.5-GNN: A Domain Knowledge Enhanced Graph Neural Network For PM2.5 Forecasting
About
When predicting PM2.5 concentrations, it is necessary to consider complex information sources since the concentrations are influenced by various factors within a long period. In this paper, we identify a set of critical domain knowledge for PM2.5 forecasting and develop a novel graph based model, PM2.5-GNN, being capable of capturing long-term dependencies. On a real-world dataset, we validate the effectiveness of the proposed model and examine its abilities of capturing both fine-grained and long-term influences in PM2.5 process. The proposed PM2.5-GNN has also been deployed online to provide free forecasting service.
Shuo Wang, Yanran Li, Jiang Zhang, Qingye Meng, Lingwei Meng, Fei Gao• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Air quality forecasting | KnowAir | MAE8.12 | 45 | |
| Air quality forecasting | LargeAQ | MAE14.62 | 45 | |
| Air quality forecasting | Global air quality dataset | MAE12.9 | 29 | |
| Air quality forecasting | USA regional air quality | MAE10.43 | 24 | |
| Air quality forecasting | China regional air quality subset | MAE8 | 24 | |
| Air quality forecasting | Europe regional air quality | MAE12.54 | 24 | |
| Air pollution prediction | KnowAir 4-year (Sub-dataset 1) | RMSE19.93 | 7 | |
| Air pollution prediction | KnowAir 4-year (Sub-dataset 2) | RMSE31.37 | 7 | |
| Air pollution prediction | KnowAir 4-year (Sub-dataset 3) | RMSE43.29 | 7 |
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