Modelling daily multivariate pollutant data at multiple sites |
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Authors: | Gavin Shaddick Jon Wakefield |
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Affiliation: | University of Bath and Imperial College School of Medicine, London, UK; University of Washington, Seattle, USA, and Imperial College School of Medicine, London, UK |
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Abstract: | Summary. This paper considers the spatiotemporal modelling of four pollutants measured daily at eight monitoring sites in London over a 4-year period. Such multiple-pollutant data sets measured over time at multiple sites within a region of interest are typical. Here, the modelling was carried out to provide the exposure for a study investigating the health effects of air pollution. Alternative objectives include the design problem of the positioning of a new monitoring site, or for regulatory purposes to determine whether environmental standards are being met. In general, analyses are hampered by missing data due, for example, to a particular pollutant not being measured at a site, a monitor being inactive by design (e.g. a 6-day monitoring schedule) or because of an unreliable or faulty monitor. Data of this type are modelled here within a dynamic linear modelling framework, in which the dependences across time, space and pollutants are exploited. Throughout the approach is Bayesian, with implementation via Markov chain Monte Carlo sampling. |
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Keywords: | Dynamic linear models Environmental statistics Hierarchical models Isotropy Spatial modelling Stationarity |
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