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Geostatistical integration and uncertainty in pollutant concentration surface under preferential sampling

机译:优先采样下地统计积分和污染物浓度表面的不确定性

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In this paper the focus is on environmental statistics, with the aim of estimating the concentration surface and related uncertainty of an air pollutant. We used air quality data recorded by a network of monitoring stations within a Bayesian framework to overcome difficulties in accounting for prediction uncertainty and to integrate information provided by deterministic models based on emissions meteorology and chemico-physical characteristics of the atmosphere. Several authors have proposed such integration, but all the proposed approaches rely on representativeness and completeness of existing air pollution monitoring networks. We considered the situation in which the spatial process of interest and the sampling locations are not independent. This is known in the literature as the preferential sampling problem, which if ignored in the analysis, can bias geostatistical inferences. We developed a Bayesian geostatistical model to account for preferential sampling with the main interest in statistical integration and uncertainty. We used PM10 data arising from the air quality network of the Environmental Protection Agency of Lombardy Region (Italy) and numerical outputs from the deterministic model. We specified an inhomogeneous Poisson process for the sampling locations intensities and a shared spatial random component model for the dependence between the spatial location of monitors and the pollution surface. We found greater predicted standard deviation differences in areas not properly covered by the air quality network. In conclusion, in this context inferences on prediction uncertainty may be misleading when geostatistical modelling does not take into account preferential sampling.
机译:本文的重点是环境统计,目的是估算空气污染物的浓度表面和相关的不确定性。我们使用了贝叶斯框架内的监测站网络记录的空气质量数据,以克服在解释预测不确定性时遇到的困难,并整合基于排放气象学和大气化学物理特性的确定性模型提供的信息。几位作者已经提出了这种整合方法,但是所有提出的方法都依赖于现有空气污染监测网络的代表性和完整性。我们考虑了感兴趣的空间过程和采样位置不独立的情况。这在文献中被称为优先抽样问题,如果在分析中忽略该问题,则会使地统计推论产生偏差。我们开发了一种贝叶斯地统计模型,以考虑优先抽样,并且主要关注统计整合和不确定性。我们使用了来自伦巴第大区(意大利)环境保护局空气质量网络的PM10数据以及确定性模型的数值输出。我们为采样位置强度指定了一个不均匀的Poisson过程,并为监视器的空间位置和污染表面之间的依赖性指定了一个共享的空间随机分量模型。我们发现在空气质量网络未适当覆盖的区域中,存在更大的预测标准偏差差异。总之,在这种情况下,如果地统计学模型未考虑优先抽样,则对预测不确定性的推论可能会产生误导。

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