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Computational advances for spatio-temporal multivariate environmental models

机译:时空多元环境模型的计算进展

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摘要

In multivariate Geostatistics, the linear coregionalization model (LCM) has been widely used over the last decades, in order to describe the spatial dependence which characterizes two or more variables of interest. However, in spatio-temporal multiple modeling, the identification of the main elements of a space-time linear coregionalization model (ST-LCM), as well as of the latent structures underlying the analyzed phenomenon, represents a tough task. In this paper, some computational advances which support the selection of an ST-LCM are described, gathering all the necessary steps which allow the analyst to easily and properly detect the basic space-time components for the phenomenon under study. The implemented algorithm is applied on space-time air quality data measured in Scotland in 2017.
机译:在过去几十年中,在多变量地统计学中,线性共区域化模型 (LCM) 被广泛使用,以描述表征两个或多个感兴趣变量的空间依赖性。然而,在时空多重建模中,识别时空线性共区域化模型(ST-LCM)的主要元素以及所分析现象背后的潜在结构是一项艰巨的任务。在本文中,描述了一些支持选择ST-LCM的计算进展,收集了所有必要的步骤,使分析人员能够轻松正确地检测所研究现象的基本时空分量。所实现的算法应用于 2017 年在苏格兰测量的时空空气质量数据。

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