Fuentes Montserrat, Chen Li, Davis Jerry M
Department of Statistics, North Carolina State University, Raleigh, NC 27695-8203, U.S.A.
Environmetrics. 2007 Nov 5;19(5):487-507. doi: 10.1002/env.891.
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal processes. However, standard spectral approaches as well as geostatistical methods assume separability and stationarity of the covariance function; these can be very unrealistic assumptions in many settings. In this work, we introduce a general and flexible parametric class of spatial temporal covariance models, that allows for lack of stationarity and separability by using a spectral representation of the process. This new class of covariance models has a unique parameter that indicates the strength of the interaction between the spatial and temporal components; it has the separable covariance model as a particular case. We introduce an application with ambient ozone air pollution data provided by the U.S. Environmental Protection Agency (U.S. EPA).
谱方法是研究和模拟时空过程依赖结构的强大工具。然而,标准谱方法以及地质统计学方法都假定协方差函数具有可分离性和平稳性;在许多情况下,这些假设可能非常不现实。在这项工作中,我们引入了一类通用且灵活的时空协方差模型参数,通过使用过程的谱表示来允许缺乏平稳性和可分离性。这类新的协方差模型有一个独特的参数,它表示空间和时间成分之间相互作用的强度;它以可分离协方差模型作为特殊情况。我们介绍了一个应用,该应用使用了美国环境保护局(U.S. EPA)提供的环境臭氧空气污染数据。