Ground-level ozone (O-3) pollution poses significant environmental and public health challenges and requires accurate predictive models for effective monitoring and management. In this study we observe that 91 % of the observed ground-level O-3 variance can potentially be explained using time-lagged data from Sentinel-5P TROPOMI and data from ERA5-Land datasets on a trained artificial intelligence (AI) model deployed by machine learning (ML) in the continental part of the Veneto region in Italy. Data from local air quality monitoring stations were used as ground truth data. The study period is from January 2019 to December 2022. Spatio-temporal ML models predicted daily O-3 concentrations with RMSE of 9.05 mu g/m(3), 8.87 mu g/m(3) and 10.87 mu g/m(3) respectively for RF, XGB and LSTM. Models without spatio-temporal information gave lower accuracy, with RMSE of 10.88 mu g/m(3), 11.45 mu g/m(3) and 12.06 mu g/m(3) respectively, showing that spatio-temporal information can improve performance more than 10 %. However, spatio-temporal independent models are more transferable across continental region and different seasons. Results provide spatially continuous maps of ground-level O-3 with a spatial resolution of similar to 11.13 km (0.1 degrees), helping to estimate pollution levels in areas without ground stations. Spatial analysis of the models' performance showed consistent high accuracy across all stations, while temporal analysis revealed lower performance in summer months. Overall, while the spatial resolution of the models developed in this study is insufficient for risk management in urban areas, they have practical implications for daily ground-level O-3 monitoring in areas without ground stations in the continental region.
Harnessing open remote sensing data and machine learning for daily ground-level ozone prediction models: Spatio-temporal insights in the continental biogeographical region / Mamic, L.; Pirotti, F.. - In: ATMOSPHERIC POLLUTION RESEARCH. - ISSN 1309-1042. - 16:6(2025). [10.1016/j.apr.2025.102514]
Harnessing open remote sensing data and machine learning for daily ground-level ozone prediction models: Spatio-temporal insights in the continental biogeographical region
Mamic L.
;
2025
Abstract
Ground-level ozone (O-3) pollution poses significant environmental and public health challenges and requires accurate predictive models for effective monitoring and management. In this study we observe that 91 % of the observed ground-level O-3 variance can potentially be explained using time-lagged data from Sentinel-5P TROPOMI and data from ERA5-Land datasets on a trained artificial intelligence (AI) model deployed by machine learning (ML) in the continental part of the Veneto region in Italy. Data from local air quality monitoring stations were used as ground truth data. The study period is from January 2019 to December 2022. Spatio-temporal ML models predicted daily O-3 concentrations with RMSE of 9.05 mu g/m(3), 8.87 mu g/m(3) and 10.87 mu g/m(3) respectively for RF, XGB and LSTM. Models without spatio-temporal information gave lower accuracy, with RMSE of 10.88 mu g/m(3), 11.45 mu g/m(3) and 12.06 mu g/m(3) respectively, showing that spatio-temporal information can improve performance more than 10 %. However, spatio-temporal independent models are more transferable across continental region and different seasons. Results provide spatially continuous maps of ground-level O-3 with a spatial resolution of similar to 11.13 km (0.1 degrees), helping to estimate pollution levels in areas without ground stations. Spatial analysis of the models' performance showed consistent high accuracy across all stations, while temporal analysis revealed lower performance in summer months. Overall, while the spatial resolution of the models developed in this study is insufficient for risk management in urban areas, they have practical implications for daily ground-level O-3 monitoring in areas without ground stations in the continental region.| File | Dimensione | Formato | |
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