非平稳空间协方差函数的多分辨率模型

D. Nychka, C. Wikle, J. Andrew Royle
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引用次数: 230

摘要

许多地球物理和环境问题依赖于对具有非平稳结构的空间过程的估计。基于空间场是多分辨率(小波)基函数和随机系数的线性组合,提出了一种非平稳模型。关键是允许有限数量的系数之间的相关性,并使用平滑的小波基。当强制执行大约6%的非零相关性时,这种表示给出了一个很好的matn协方差函数族近似值。这种稀疏性不仅对模型的简约性很重要,而且对大型空间数据集的有效分析也有影响。将协方差模型成功地应用于臭氧模型输出,得到了一个非平稳但平滑的估计。
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Multiresolution models for nonstationary spatial covariance functions
Many geophysical and environmental problems depend on estimating a spatial process that has nonstationary structure. A nonstationary model is proposed based on the spatial field being a linear combination of multiresolution (wavelet) basis functions and random coefficients. The key is to allow for a limited number of correlations among coefficients and also to use a wavelet basis that is smooth. When approximately 6% nonzero correlations are enforced, this representation gives a good approximation to a family of Matern covariance functions. This sparseness is important not only for model parsimony but also has implications for the efficient analysis of large spatial data sets. The covariance model is successfully applied to ozone model output and results in a nonstationary but smooth estimate.
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