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Vitenskapelig artikkel

High-resolution modelling of organic aerosol over Europe: exploring spatial and temporal variability and drivers

Daniel Trejo Banos, Abhishek Upadhyay, Yun Cheng, Jianhui Jiang, Petros Vasilakos, Andrea Nava, Pavol Ševera, Benjamin Flueckiger, Aikaterini Bougiatioti, Ana Maria Sanchez De La Campa Verdona, Andrea Schemmel, Andrés Alastuey, Anikó Vasanits, Anna Font, Anna Tobler, Aude Bourin, Attila Machon, Benjamin Chazeau, Benjamin Bergmans, Célia A. Alves, Céline Voiron, Christoph Hueglin, Chunshui Lin, Claudio A. Belis, Cristina Colombi, Cristina Reche, Daniel Alejandro Sanchezrodas Navarro, Dario Massabò, David C. Green, Eleonora Cuccia, Evelyn Freney, Fabio Giardi, Francesco Canonaco, Gaëlle Uzu, Gang I. Chen, Hannes Keernik, Harald Flentje, Hartmut Herrmann, Hasna Chebaicheb, Hilkka Timonen, Hugo Denier van der Gon, Iasonas Stavroulas, Imre Salma, Jaroslav Schwarz, Jaroslaw Necki, Jean Sciare, Jean-Eudes Petit, Jean-Luc Jaffrezo, Jeni Vasilescu, Jesús D. De La Rosa, Julija Pauraite, Jurgita Ovadnevaite, Karl Espen Yttri, Konstantinos Eleftheriadis, Laurent Poulain, Livio Belegante, Lucas Alados-Arboledas, Manousos-Ioannis Manousakas, Marco Paglione, Marek Maasikmets, María Cruz Minguillón, Maria I. Gini, Matteo Rinaldi, Michael Pikridas, Minna Aurela, Nicolas Marchand, Olga Zografou, Olivier Favez, Petr Vodička, Petra Pokorná, Radek Lhotka, Samira Atabakhsh, Sébastien Conil, Sonia Castillo, Stefania Gilardoni, Stephen Matthew Platt, Stuart K. Grange, Vanes Poluzzi, Varun Kumar, Véronique Riffault, Wenche Aas, Xavier Querol, Yulia Sosedova, Nicole Probst-Hensch, Danielle Vienneau, André S.H. Prévôt, Kees de Hoogh, Kaspar R. Daellenbach, Ekaterina Krymova, Imad El Haddad

Organic aerosol (OA) is a major component of atmospheric particulate matter (PM), affecting both human health and climate. However, high-resolution estimates of OA exposure needed for exposure analysis remain scarce. Here, we integrate a chemical transport model (CAMx) with a random forest (RF) machine learning approach to bias-correct and downscale daily OA concentrations across Europe. CAMx OA simulations at ∼15 km resolution show moderate agreement with observations (r = 0.55). By combining these outputs with high-resolution land-use data and training the RF model on ∼48,000 daily OA measurements from 137 sites, prediction accuracy improved (r = 0.65), with ∼l5% reduction in root mean square error. The resulting maps provide European daily OA concentrations at ∼250 m resolution for alternate years from 2011 to 2019. The model captures key spatial features, including elevated OA in the Po Valley, Southeastern, and Central Europe, as well as intracity variations due to local hotspots. Seasonal analysis reveals higher concentrations in winter, while long-term trends indicate a general decline in OA levels. Exposure estimates show that half of the European population experiences OA levels above 3 µg/m3, and ∼50 million people are exposed to more than 5 µg/m3, which is the current guideline level recommended by the world health organization for total PM2.5. These high-resolution OA maps offer vital critical support for epidemiological research and air quality policy.

Publikasjonsdetaljer

Tidsskrift: Environment International, vol. 209, 2026

Internasjonalt standardnummer:
Skriv ut: 0160-4120
Online: 1873-6750

Vitenskapelig artikkel

År: 2026

Vitenskapelig verdi: LevelOne

Språk: Engelsk

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