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Abstract Background Data from extensive mobile measurements (MM) of air pollutants provide spatially resolved information on pedestrians’ exposure to particulate matter (black carbon (BC) and PM2.5 mass concentrations). Objective We present a distributional regression model in a Bayesian framework that estimates the effects of spatiotemporal factors on the pollutant concentrations influencing pedestrian exposure. Methods We modeled the mean and variance of the pollutant concentrations obtained from MM in two cities and extended commonly used lognormal models with a lognormal-normal convolution (logNNC) extension for BC to account for instrument measurement error. Results The logNNC extension significantly improved the BC model. From these model results, we found local sources and, hence, local mitigation efforts to improve air quality, have more impact on the ambient levels of BC mass concentrations than on the regulated PM2.5. Significance Firstly, this model (logNNC in bamlss package available in R) could be used for the statistical analysis of MM data from various study areas and pollutants with the potential for predicting pollutant concentrations in urban areas. Secondly, with respect to pedestrian exposure, it is crucial for BC mass concentration to be monitored and regulated in areas dominated by traffic-related air pollution.
PARTICLE NUMBER, SPATIAL VARIABILITY, Article, Pedestrians [MeSH] ; New Approach Methodologies (NAMs) ; Personal Exposure ; Particulate Matter ; Humans [MeSH] ; Particulate Matter/analysis [MeSH] ; Bayes Theorem [MeSH] ; Criteria Pollutants ; Article ; Air Pollution/analysis [MeSH] ; Air Pollution ; Soot/analysis [MeSH] ; Environmental Monitoring ; Carbon/analysis [MeSH] ; Air Pollutants/analysis [MeSH] ; Vehicle Emissions/analysis [MeSH] ; Environmental Exposure/analysis [MeSH] ; Environmental Monitoring/methods [MeSH], TERM EXPOSURE, POLLUTION, Soot, Air Pollution, QUALITY, Humans, New Approach Methodologies (NAMs), Pedestrians, Vehicle Emissions, ddc:610, ULTRAFINE PARTICLES, Air Pollutants, LAND-USE, Criteria Pollutants, Bayes Theorem, Environmental Exposure, Carbon, Personal Exposure, MASS CONCENTRATIONS, Particulate Matter, 610 Medizin und Gesundheit, METHODOLOGY, AIR-POLLUTANTS, Environmental Monitoring
PARTICLE NUMBER, SPATIAL VARIABILITY, Article, Pedestrians [MeSH] ; New Approach Methodologies (NAMs) ; Personal Exposure ; Particulate Matter ; Humans [MeSH] ; Particulate Matter/analysis [MeSH] ; Bayes Theorem [MeSH] ; Criteria Pollutants ; Article ; Air Pollution/analysis [MeSH] ; Air Pollution ; Soot/analysis [MeSH] ; Environmental Monitoring ; Carbon/analysis [MeSH] ; Air Pollutants/analysis [MeSH] ; Vehicle Emissions/analysis [MeSH] ; Environmental Exposure/analysis [MeSH] ; Environmental Monitoring/methods [MeSH], TERM EXPOSURE, POLLUTION, Soot, Air Pollution, QUALITY, Humans, New Approach Methodologies (NAMs), Pedestrians, Vehicle Emissions, ddc:610, ULTRAFINE PARTICLES, Air Pollutants, LAND-USE, Criteria Pollutants, Bayes Theorem, Environmental Exposure, Carbon, Personal Exposure, MASS CONCENTRATIONS, Particulate Matter, 610 Medizin und Gesundheit, METHODOLOGY, AIR-POLLUTANTS, Environmental Monitoring
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