Hybrid Cellular Automata-based Air Pollution Model for Traffic Scenario Microsimulations
Publication date
2025-03
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taverne
Abstract
Scenario microsimulations like agent-based models can account for feedbacks and spatio-temporal and social heterogeneity when projecting future intervention impacts. Addressing air pollution exposure requires traffic scenario models (i.e. of car-free zones). Traditional air pollution models do not meet all requirements for traffic scenario microsimulation: isolating traffic emission, integrating relevant dispersion moderators, while computationally efficient, interoperable and valid. We propose a hybrid model of land use regression-based baseline concentrations and on-road emissions in conjunction with cellular automata-based off-road dispersion. The model efficiently assesses air pollution, while accounting for meteorological and morphological dispersion processes. We calibrate using genetic algorithms and externally validate the model based on mobile measurements and fixed-site routine monitoring data of NO2 concentrations across Amsterdam. Our model achieves an external validation R2 of 0.60 and 0.48 s computation time in a 50 m × 50 m raster. Further, we successfully projected the NO2 reduction of the first Covid-19 lockdown traffic scenario (R2 0.57).
Keywords
Agent-based modeling, Atmospheric dispersion, Cellular automata, Land use regression, Scenario modeling, Traffic emissions, Software, Environmental Engineering, Ecological Modelling, SDG 3 - Good Health and Well-being, SDG 15 - Life on Land
Citation
Sonnenschein, T, Yuan, Z, Khan, J, Kerckhoffs, J, Vermeulen, R & Scheider, S 2025, 'Hybrid Cellular Automata-based Air Pollution Model for Traffic Scenario Microsimulations', Environmental Modelling and Software, vol. 186, 106356. https://doi.org/10.1016/j.envsoft.2025.106356