非高斯随机场的空间场重建:Tukey G-and-H随机过程

IRPN: Science Pub Date : 2018-04-09 DOI:10.2139/ssrn.3159687
Sai Ganesh Nagarajan, G. Peters, Ido Nevat
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引用次数: 2

摘要

提出了一种新的非高斯空间随机场模型,用于环境和传感网络监测中的空间场重建。已开发的模型家族利用一类被称为Tukey g-and-h变换的变换函数来创建一类新的扭曲空间高斯过程模型,该模型可以支持各种理想的特征,例如灵活的边际分布,可以倾斜和/或重尾。该模型可广泛应用于空间场重建。为了在实践中利用该模型进行此类应用,我们首先需要推导新的Tukey g-and-h随机场族的统计性质。然后,我们能够推导出五个不同的目标来执行空间场重建。这些方法包括最小均方误差(MMSE)、最大A-Posteirori (MAP)和空间最佳线性无偏(S-BLUE)估计以及空间区域和水平超越估计。大量的模拟结果和实际数据示例表明,与传统使用的标准高斯空间随机场相比,使用Tukey g-and-h变换具有优势。
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Spatial Field Reconstruction of Non-Gaussian Random Fields: The Tukey G-and-H Random Process
A new class of models for non-Gaussian spatial random fields is developed for spatial field reconstruction in environmental and sensory network monitoring. The developed family of models utilises a class of transformation functions known as the Tukey g-and-h transformation to create a new class of warped spatial Gaussian process model which can support various desirable features such as flexible marginal distributions, which can be skewed and/or heavy-tailed. The resulting model is widely applicable for a wide range of spatial field reconstruction applications. To utilise the model for such applications in practice, we first need to derive the statistical properties of the new family of Tukey g-and-h random fields. We are then able to derive five different objectives to perform spatial field reconstruction. These include the Minimum Mean Squared Error (MMSE), Maximum A-Posteirori (MAP) and the Spatial-Best Linear Unbiased (S-BLUE) estimators as well as the Spatial Regional and Level Exceedance estimators. Extensive simulation results and real data examples show the benefits of using the Tukey g-and-h transformation as opposed to standard Gaussian spatial random fields as is classically utilised.
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