Large scale air pollution estimation method combining land use regression and chemical transport modeling in a geostatistical framework

Yasuyuki Akita*, Jose M. Baldasano, Rob Beelen, Marta Cirach, Kees De Hoogh, Gerard Hoek, Mark Nieuwenhuijsen, Marc L. Serre, Audrey De Nazelle

*Corresponding author for this work

    Research output: Contribution to journalArticleAcademicpeer-review

    Abstract

    In recognition that intraurban exposure gradients may be as large as between-city variations, recent air pollution epidemiologic studies have become increasingly interested in capturing within-city exposure gradients. In addition, because of the rapidly accumulating health data, recent studies also need to handle large study populations distributed over large geographic domains. Even though several modeling approaches have been introduced, a consistent modeling framework capturing within-city exposure variability and applicable to large geographic domains is still missing. To address these needs, we proposed a modeling framework based on the Bayesian Maximum Entropy method that integrates monitoring data and outputs from existing air quality models based on Land Use Regression (LUR) and Chemical Transport Models (CTM). The framework was applied to estimate the yearly average NO2 concentrations over the region of Catalunya in Spain. By jointly accounting for the global scale variability in the concentration from the output of CTM and the intraurban scale variability through LUR model output, the proposed framework outperformed more conventional approaches.

    Original languageEnglish
    Pages (from-to)4452-4459
    Number of pages8
    JournalEnvironmental Science and Technology
    Volume48
    Issue number8
    DOIs
    Publication statusPublished - 15 Apr 2014

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