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Mobile monitoring of air pollutants; performance evaluation of a mixed-model land use regression framework in relation to the number of drive days.

Jules Kerckhoffs, Gerard Hoek, Roel Vermeulen

2023Environmental Research12 citationsDOIOpen Access PDF

Abstract

We used black carbon data from a mobile monitoring campaign in Oakland, USA measuring street segments up to 40 times and compared a data-only, LUR model and mixed-model approach with a long-term average, represented by the average concentration based on 40 drive days on that street segment. The mixed model outperformed the data-only and LUR model estimates, with 80% explained variance after 5 drive days and 90% after 14 drive days. The data-only approach needed 8 and 15 to achieve an explained variance of 80% and 90%, respectively, The LUR model never achieved an explained variance higher than 70%. The mixed model is a scalable approach, as it can be used before all street segments in a domain are measured by developing a LUR model and adds information with increasing repeats per street segment.

Topics & Concepts

StatisticsVariance (accounting)Environmental scienceRegression analysisMixed modelRegressionMathematicsComputer scienceEconometricsBusinessAccountingAir Quality and Health ImpactsVehicle emissions and performanceAir Quality Monitoring and Forecasting
Mobile monitoring of air pollutants; performance evaluation of a mixed-model land use regression framework in relation to the number of drive days. | Litcius