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Bayesian spatio-temporal inference of trace gas emissions using an integrated nested Laplacian approximation and Gaussian Markov random fields

机译:使用综合嵌套拉普拉斯近似和高斯马尔可夫随机字段,贝叶斯时空推动痕量气体排放

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We present a method to infer spatially and spatio-temporally correlated emissions of greenhouse gases from atmospheric measurements and a chemical transport model. The method allows fast computation of spatial emissions using a hierarchical Bayesian framework as an alternative to Markov chain Monte Carlo algorithms. The spatial emissions follow a Gaussian process with a Matérn correlation structure which can be represented by a Gaussian Markov random field through a stochastic partial differential equation approach. The inference is based on an integrated nested Laplacian approximation (INLA) for hierarchical models with Gaussian latent fields. Combining an autoregressive temporal correlation and the Matérn field provides a full spatio-temporal correlation structure. We first demonstrate the method on a synthetic data example and follow this using a well-studied test case of inferring UK methane emissions from tall tower measurements of atmospheric mole fraction. Results from these two test cases show that this method can accurately estimate regional greenhouse gas emissions, accounting for spatio-temporal uncertainties that have traditionally been neglected in atmospheric inverse modelling.
机译:我们提出了一种方法来推断出从大气测量和化学传输模型的温室气体的空间和时空相关排放。该方法允许使用分层贝叶斯框架快速计算空间排放,作为Markov链蒙特卡罗算法的替代方案。空间排放遵循具有Matérn相关结构的高斯过程,其可以通过随机部分微分方程方法由高斯马尔可夫随机场表示。推断是基于具有高斯潜在字段的分层模型的集成嵌套Laplacian近似(Inla)。组合自回归时间相关性和Matérn领域提供了一种完整的时空相关结构。我们首先在合成数据示例中展示该方法,并使用高塔摩尔分数的高塔测量推断出英国甲烷排放的良好测试用例。这两种测试用例的结果表明,该方法可以准确估计区域温室气体排放,占传统上在大气反向建模中被忽视的时空不确定性。

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