Use of mobile and passive badge air monitoring data for NOX and ozone air pollution spatial exposure prediction models

被引:18
作者
Xu, Wei [1 ]
Riley, Erin A. [2 ]
Austin, Elena [2 ]
Sasakura, Miyoko [2 ]
Schaal, Lanae [3 ]
Gould, Timothy R. [4 ]
Hartin, Kris [2 ]
Simpson, Christopher D. [2 ]
Sampson, Paul D. [3 ]
Yost, Michael G. [2 ]
Larson, Timothy V. [2 ,4 ]
Xiu, Guangli [1 ]
Vedal, Sverre [2 ]
机构
[1] East China Univ Sci & Technol, Dept Environm Engn, Shanghai, Peoples R China
[2] Univ Washington, Dept Environm & Occupat Hlth Sci, Seattle, WA 98195 USA
[3] Univ Washington, Dept Stat, Seattle, WA 98195 USA
[4] Univ Washington, Dept Civil & Environm Engn, Seattle, WA 98195 USA
关键词
air pollution monitoring; exposure models; land use regression; partial least squares; universal kriging; LAND-USE REGRESSION; URBAN AREA; NITROGEN-DIOXIDE; HEALTH; EPIDEMIOLOGY; POLLUTANTS; PROJECT; LUR;
D O I
10.1038/jes.2016.9
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Air pollution exposure prediction models can make use of many types of air monitoring data. Fixed location passive samples typically measure concentrations averaged over several days to weeks. Mobile monitoring data can generate near continuous concentration measurements. It is not known whether mobile monitoring data are suitable for generating well-performing exposure prediction models or how they compare with other types of monitoring data in generating exposure models. Measurements from fixed site passive samplers and mobile monitoring platform were made over a 2-week period in Baltimore in the summer and winter months in 2012. Performance of exposure prediction models for long-term nitrogen oxides (NOX) and ozone (O-3) concentrations were compared using a state-of-the-art approach for model development based on land use regression (LUR) and geostatistical smoothing. Model performance was evaluated using leave-one-out cross-validation (LOOCV). Models performed well using the mobile peak traffic monitoring data for both NOX and O3, with LOOCV R(2)s of 0.70 and 0.71, respectively, in the summer, and 0.90 and 0.58, respectively, in the winter. Models using 2-week passive samples for NOX had LOOCV R2s of 0.60 and 0.65 in the summer and winter months, respectively. The passive badge sampling data were not adequate for developing models for O3. Mobile air monitoring data can be used to successfully build well-performing LUR exposure prediction models for NOX and O3 and are a better source of data for these models than 2-week passive badge data.
引用
收藏
页码:184 / 192
页数:9
相关论文
共 32 条
  • [1] Spatiotemporal Modeling of Ozone Levels in Quebec (Canada): A Comparison of Kriging, Land-Use Regression (LUR), and Combined Bayesian Maximum Entropy-LUR Approaches
    Adam-Poupart, Ariane
    Brand, Allan
    Fournier, Michel
    Jerrett, Michael
    Smargiassi, Audrey
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2014, 122 (09) : 970 - 976
  • [2] [Anonymous], 2013, National Elevation Dataset
  • [3] Application of Regression Kriging to Air Pollutant Concentrations in Japan with High Spatial Resolution
    Araki, Shin
    Yamamoto, Kouhei
    Kondo, Akira
    [J]. AEROSOL AND AIR QUALITY RESEARCH, 2015, 15 (01) : 234 - 241
  • [4] Exposure prediction approaches used in air pollution epidemiology studies: Key findings and future recommendations
    Baxter, Lisa K.
    Dionisio, Kathie L.
    Burke, Janet
    Sarnat, Stefanie Ebelt
    Sarnat, Jeremy A.
    Hodas, Natasha
    Rich, David Q.
    Turpin, Barbara J.
    Jones, Rena R.
    Mannshardt, Elizabeth
    Kumar, Naresh
    Beevers, Sean D.
    Oezkaynak, Haluk
    [J]. JOURNAL OF EXPOSURE SCIENCE AND ENVIRONMENTAL EPIDEMIOLOGY, 2013, 23 (06) : 654 - 659
  • [5] Development of NO2 and NOx land use regression models for estimating air pollution exposure in 36 study areas in Europe - The ESCAPE project
    Beelen, Rob
    Hoek, Gerard
    Vienneau, Danielle
    Eeftens, Marloes
    Dimakopoulou, Konstantina
    Pedeli, Xanthi
    Tsai, Ming-Yi
    Kunzli, Nino
    Schikowski, Tamara
    Marcon, Alessandro
    Eriksen, Kirsten T.
    Raaschou-Nielsen, Ole
    Stephanou, Euripides
    Patelarou, Evridiki
    Lanki, Timo
    Yli-Tuomi, Tarja
    Declercq, Christophe
    Falq, Gregoire
    Stempfelet, Morgane
    Birk, Matthias
    Cyrys, Josef
    von Klot, Stephanie
    Nador, Gizella
    Varro, Mihaly Janos
    Dedele, Audrius
    Grazuleviciene, Regina
    Moelter, Anna
    Lindley, Sarah
    Madsen, Christian
    Cesaroni, Giulia
    Ranzi, Andrea
    Badaloni, Chiara
    Hoffmann, Barbara
    Nonnemacher, Michael
    Kraemer, Ursula
    Kuhlbusch, Thomas
    Cirach, Marta
    de Nazelle, Audrey
    Nieuwenhuijsen, Mark
    Bellander, Tom
    Korek, Michal
    Olsson, David
    Stromgren, Magnus
    Dons, Evi
    Jerrett, Michael
    Fischer, Paul
    Wang, Meng
    Brunekreef, Bert
    de Hoogh, Kees
    [J]. ATMOSPHERIC ENVIRONMENT, 2013, 72 : 10 - 23
  • [6] A National Prediction Model for PM2.5 Component Exposures and Measurement Error-Corrected Health Effect Inference
    Bergen, Silas
    Sheppard, Lianne
    Sampson, Paul D.
    Kim, Sun-Young
    Richards, Mark
    Vedal, Sverre
    Kaufman, Joel D.
    Szpiro, Adam A.
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2013, 121 (09) : 1017 - 1025
  • [7] Mobile air monitoring data-processing strategies and effects on spatial air pollution trends
    Brantley, H. L.
    Hagler, G. S. W.
    Kimbrough, E. S.
    Williams, R. W.
    Mukerjee, S.
    Neas, L. M.
    [J]. ATMOSPHERIC MEASUREMENT TECHNIQUES, 2014, 7 (07) : 2169 - 2183
  • [8] A regression-based method for mapping traffic-related air pollution: application and testing in four contrasting urban environments
    Briggs, DJ
    de Hoogh, C
    Guiliver, J
    Wills, J
    Elliott, P
    Kingham, S
    Smallbone, K
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2000, 253 (1-3) : 151 - 167
  • [9] Exposure science, the exposome, and public health
    Brunekreef, Bert
    [J]. ENVIRONMENTAL AND MOLECULAR MUTAGENESIS, 2013, 54 (07) : 596 - 598
  • [10] Global Land Cover Facility, 2006, MODIS NORM DIFF VEG