Pirani Monica, Gulliver John, Fuller Gary W, Blangiardo Marta
MRC-PHE Centre for Environment and Health, King's College London, Franklin Wilkins Building, 150 Stamford Street, SE1 9NH London, UK.
Department of Epidemiology and Biostatistics, Centre for Environment and Health, Imperial College London, School of Public Health, Norfolk Place, W2 1PG London, UK.
J Expo Sci Environ Epidemiol. 2014 May-Jun;24(3):319-27. doi: 10.1038/jes.2013.85. Epub 2013 Nov 27.
This paper describes a Bayesian hierarchical approach to predict short-term concentrations of particle pollution in an urban environment, with application to inhalable particulate matter (PM10) in Greater London. We developed and compared several spatiotemporal models that differently accounted for factors affecting the spatiotemporal properties of particle concentrations. We considered two main source contributions to ambient measurements: (i) the long-range transport of the secondary fraction of particles, which temporal variability was described by a latent variable derived from rural concentrations; and (ii) the local primary component of particles (traffic- and non-traffic-related) captured by the output of the dispersion model ADMS-Urban, which site-specific effect was described by a Bayesian kriging. We also assessed the effect of spatiotemporal covariates, including type of site, daily temperature to describe the seasonal changes in chemical processes affecting local PM10 concentrations that are not considered in local-scale dispersion models and day of the week to account for time-varying emission rates not available in emissions inventories. The evaluation of the predictive ability of the models, obtained via a cross-validation approach, revealed that concentration estimates in urban areas benefit from combining the city-scale particle component and the long-range transport component with covariates that account for the residual spatiotemporal variation in the pollution process.
本文描述了一种贝叶斯层次方法,用于预测城市环境中颗粒物污染的短期浓度,并将其应用于大伦敦地区的可吸入颗粒物(PM10)。我们开发并比较了几种时空模型,这些模型对影响颗粒物浓度时空特性的因素有不同的考虑。我们考虑了对环境测量的两个主要源贡献:(i)颗粒物二次成分的长距离传输,其时间变异性由从农村浓度导出的潜在变量描述;(ii)由扩散模型ADMS-Urban的输出捕获的颗粒物的本地一次成分(与交通和非交通相关),其特定地点效应由贝叶斯克里金法描述。我们还评估了时空协变量的影响,包括站点类型、描述影响本地PM10浓度的化学过程季节性变化的日温度(本地尺度扩散模型未考虑)以及用于考虑排放清单中不可用的随时间变化的排放率的星期几。通过交叉验证方法对模型预测能力的评估表明,城市地区的浓度估计受益于将城市尺度颗粒物成分和长距离传输成分与考虑污染过程中剩余时空变化的协变量相结合。