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Large-scale Bayesian spatial modelling of air pollution for policy support

机译:大规模贝叶斯空气污染空间模型为政策提供支持

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The potential effects of air pollution are a major concern both in terms of the environment and in relation to human health. In order to support environmental policy, there is a need for accurate measurements of the concentrations of pollutants at high geographical resolution over large regions. However, within such regions, there are likely to be areas where the monitoring information will be sparse and so methods are required to accurately predict concentrations. Set within a Bayesian framework, models are developed which exploit the relationships between pollution and geographical covariate information, such as land use, climate and transport variables together with spatial structure. Candidate models are compared based on their ability to predict a set of validation sites. The chosen model is used to perform large-scale prediction of nitrogen dioxide at a 1 x 1 km resolution for the entire EU. The models allow probabilistic statements to be made with regard to the levels of air pollution that might be experienced in each area. When combined with population data, such information can be invaluable in informing policy by indicating areas for which improvements may be given priority.
机译:空气污染的潜在影响是对环境和与人类健康有关的主要关注。为了支持环境政策,需要在大区域内以高地理分辨率精确测量污染物的浓度。但是,在这样的区域内,可能会有一些区域的监视信息稀疏,因此需要使用方法来准确地预测浓度。建立在贝叶斯框架内的模型,可利用污染与地理协变量信息(例如土地利用,气候和交通变量以及空间结构)之间的关系进行开发。根据候选模型预测一组验证位点的能力进行比较。选择的模型用于整个欧盟以1 x 1 km的分辨率进行大规模的二氧化氮预测。这些模型允许针对每个区域可能遇到的空气污染水平做出概率陈述。当与人口数据结合使用时,通过指示可以优先考虑改进的领域,此类信息在告知政策时可能具有无价的价值。

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