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A Bayesian spatiotemporal model to estimate long term exposure to outdoor air pollution at coarser administrative geographies in England and Wales

A Bayesian spatiotemporal model to estimate long term exposure to outdoor air pollution at coarser administrative geographies in England and Wales
A Bayesian spatiotemporal model to estimate long term exposure to outdoor air pollution at coarser administrative geographies in England and Wales

Estimation of long-term exposure to air pollution levels over a large spatial domain, such as the mainland UK, entails a challenging modelling task since exposure data are often only observed by a network of sparse monitoring sites with variable amounts of missing data. The paper develops and compares several flexible non-stationary hierarchical Bayesian models for the four most harmful air pollutants, nitrogen dioxide and ozone, and PM10 and PM2.5 particulate matter, in England and Wales during the 5-year period 2007-2011. The models make use of observed data from the UK's automatic urban and rural network as well as output of an atmospheric air quality dispersion model developed recently especially for the UK. Land use information, incorporated as a predictor in the model, further enhances the accuracy of the model. Using daily data for all four pollutants over the 5-year period we obtain empirically verified maps which are the most accurate among the competition. Monte Carlo integration methods for spatial aggregation are developed and these enable us to obtain predictions, and their uncertainties, at the level of a given administrative geography. These estimates for local authority areas can readily be used for many purposes such as modelling of aggregated health outcome data and are made publicly available alongside this paper.

0964-1998
465-486
Mukhopadhyay, Sabyasachi
a12b9e01-549d-4fab-b45f-e7df03340156
Sahu, Sujit K.
33f1386d-6d73-4b60-a796-d626721f72bf
Mukhopadhyay, Sabyasachi
a12b9e01-549d-4fab-b45f-e7df03340156
Sahu, Sujit K.
33f1386d-6d73-4b60-a796-d626721f72bf

Mukhopadhyay, Sabyasachi and Sahu, Sujit K. (2018) A Bayesian spatiotemporal model to estimate long term exposure to outdoor air pollution at coarser administrative geographies in England and Wales. Journal of the Royal Statistical Society: Series A (Statistics in Society), 181 (2), 465-486. (doi:10.1111/rssa.12299).

Record type: Article

Abstract

Estimation of long-term exposure to air pollution levels over a large spatial domain, such as the mainland UK, entails a challenging modelling task since exposure data are often only observed by a network of sparse monitoring sites with variable amounts of missing data. The paper develops and compares several flexible non-stationary hierarchical Bayesian models for the four most harmful air pollutants, nitrogen dioxide and ozone, and PM10 and PM2.5 particulate matter, in England and Wales during the 5-year period 2007-2011. The models make use of observed data from the UK's automatic urban and rural network as well as output of an atmospheric air quality dispersion model developed recently especially for the UK. Land use information, incorporated as a predictor in the model, further enhances the accuracy of the model. Using daily data for all four pollutants over the 5-year period we obtain empirically verified maps which are the most accurate among the competition. Monte Carlo integration methods for spatial aggregation are developed and these enable us to obtain predictions, and their uncertainties, at the level of a given administrative geography. These estimates for local authority areas can readily be used for many purposes such as modelling of aggregated health outcome data and are made publicly available alongside this paper.

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Accepted/In Press date: 24 April 2017
e-pub ahead of print date: 29 June 2017
Published date: February 2018
Organisations: Statistics

Identifiers

Local EPrints ID: 410636
URI: http://eprints.soton.ac.uk/id/eprint/410636
ISSN: 0964-1998
PURE UUID: 0956e3e8-69be-4fd5-9509-6bd3b9d053be
ORCID for Sujit K. Sahu: ORCID iD orcid.org/0000-0003-2315-3598

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Date deposited: 09 Jun 2017 09:16
Last modified: 16 Mar 2024 05:19

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Contributors

Author: Sabyasachi Mukhopadhyay
Author: Sujit K. Sahu ORCID iD

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