Graph Convolutional Support Vector Regression for Robust Spatiotemporal Forecasting of Urban Air Pollution
Nourin Jahan, Madhurima Panja, Muhammed Navas T, Tanujit Chakraborty
TLDR
GCSVR combines graph convolutions and SVR for robust spatiotemporal urban air pollution forecasting, improving accuracy and handling outliers.
Key contributions
- Proposes Graph Convolutional Support Vector Regression (GCSVR) for robust urban air pollution forecasting.
- Combines graph convolutions for spatial dependence with SVR for nonlinear temporal dynamics and outlier handling.
- Demonstrates improved accuracy and stable performance across seasons and pollution episodes in Delhi and Mumbai.
- Integrates conformal prediction to generate calibrated uncertainty intervals for practical decision-making.
Why it matters
Urban air quality forecasting is vital but complex due to non-linearities, spatiotemporal dependencies, and outliers. GCSVR provides a robust framework, significantly improving predictive accuracy and stability, which is crucial for effective public health decision-making.
Original Abstract
Urban air quality forecasting is challenging because pollutant concentrations are nonlinear, nonstationary, spatiotemporally dependent, and often affected by anomalous observations caused by traffic congestion, industrial emissions, and seasonal meteorological variability. This study proposes a Graph Convolutional Support Vector Regression (GCSVR) framework for robust spatiotemporal forecasting of urban air pollution. The model combines graph convolutional learning to capture inter-station spatial dependence with support vector regression to model nonlinear temporal dynamics while reducing sensitivity to outlier observations. The proposed framework is evaluated using air quality records from 37 monitoring stations in Delhi and 18 stations in Mumbai, representing inland and coastal metropolitan environments in India. Forecasting performance is assessed across multiple horizons and compared with established temporal and spatiotemporal benchmarks. The results show that GCSVR consistently improves predictive accuracy and maintains stable performance across seasons and outlier-prone pollution episodes. Statistical test further confirms the reliability of the proposed approach across the two cities. Finally, conformal prediction is integrated with GCSVR to generate calibrated prediction intervals, enhancing its practical value for uncertainty-aware air quality monitoring and public health decision-making.
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