COMPARATIVE ANALYSIS AND FEATURES OF GRAPH NEURAL NETWORKS FOR SPATIOTEMPORAL AIR POLLUTION FORECASTING

Authors

  • Z.M. Abubakerova Institute of Mechanical Engineering, Automation and Geomechanics of the National Academy of Sciences of the Kyrgyz Republic

Keywords:

CNN, GNN, air quality forecasting, spatiotemporal data, attention mechanism

Abstract

The article presents a review of modern spatiotemporal graph and hybrid neural networks used for air quality forecasting. The considered models aim to improve prediction accuracy by accounting for complex non-Euclidean spatiotemporal dependencies between monitoring stations and meteorological factors. Particular attention is paid to dynamic graph construction using mechanistic models, multi-level “region-station” architectures, adaptive attention mechanisms, and hybridization with signal decomposition. The analysis shows that these approaches outperform traditional methods, providing more accurate and stable long-term forecasting of pollutant concentrations, including rare extreme events.

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Published

2026-05-07

Issue

Section

INFORMATION TECHNOLOGY AND INFORMATION PROCESSING