使用分层贝叶斯时空模型对西班牙加泰罗尼亚地区空气污染水平的空间预测

M. Saez, M. Barceló
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引用次数: 13

摘要

我们在这项工作中的目标是提出一个层次贝叶斯时空模型,使我们能够以一种有效的方式和很少的计算成本对空气污染水平进行空间预测。我们指定了一个分层的时空模型,使用随机偏微分方程的积分嵌套拉普拉斯近似近似。这种方法使我们能够在空间上预测加泰罗尼亚(西班牙)境内最能证明对健康产生不利影响的四种污染物的水平。我们的模型使我们能够以较低的计算成本,对空气污染物的长期和短期暴露做出相当准确的空间预测。我们提出的方法的唯一要求是,分布在要进行预测的地区的最少台站数量,并且空间和时间维度要么是独立的,要么是可分离的。
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Spatial prediction of air pollution levels using a hierarchical Bayesian spatiotemporal model in Catalonia, Spain
Our objective in this work was to present a hierarchical Bayesian spatiotemporal model that allowed us to make spatial predictions of air pollution levels in an effective way and with very few computational costs. We specified a hierarchical spatiotemporal model, using the Stochastic Partial Differential Equations of the integrated nested Laplace approximations approximation. This approach allowed us to spatially predict, in the territory of Catalonia (Spain), the levels of the four pollutants for which there is the most evidence of an adverse health effect. Our model allowed us to make fairly accurate spatial predictions of both long-term and short-term exposure to air pollutants, with a low computational cost. The only requirements of the method we propose are the minimum number of stations distributed throughout the territory where the predictions are to be made, and that the spatial and temporal dimensions are either independent or separable.
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