学位论文详细信息
Symmetry and Separability in Spatial-Temporal Processes
Spatial-Temporal Process;Matern Covariance;Separability;Symmetry
Park, Man Sik ; Montserrat Fuentes, Committee Chair,Peter Bloomfield, Committee Member,David A. Dickey, Committee Member,Sastry G. Pantula, Committee Member,Jerry M. Davis, Committee Member,Park, Man Sik ; Montserrat Fuentes ; Committee Chair ; Peter Bloomfield ; Committee Member ; David A. Dickey ; Committee Member ; Sastry G. Pantula ; Committee Member ; Jerry M. Davis ; Committee Member
University:North Carolina State University
关键词: Spatial-Temporal Process;    Matern Covariance;    Separability;    Symmetry;   
Others  :  https://repository.lib.ncsu.edu/bitstream/handle/1840.16/4153/etd.pdf?sequence=1&isAllowed=y
美国|英语
来源: null
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【 摘 要 】

Symmetry is one of most standard assumptions that are needed for a covariance function in spatial statistics. However, many studies in spatial research fields show that environmental data have complex spatial-temporal dependency structures that are difficult to model and estimate, due to the lack of symmetry and other standard assumptions of a covariance function. So, not much literature exists in statistics about asymmetric covariance functions and formal tests for lack of symmetry in spatial-temporal processes. In this study, we introduce certain types of symmetry in spatial-temporal processes and propose new classes of asymmetric spatial-temporal covariance models by using spectral representations. We also clarify the relationship between symmetry and separability and introduce nonseparable covariance models. Based on the proposed concept of symmetry in spatial-temporal processes, new formal tests for lack of symmetry are proposed in this study by employing spectral representations of the spatial-temporal covariance function. The advantage of the tests is that simple analysis of variance (ANOVA) approaches are employed for detecting lack of symmetry inherent in spatial-temporal processes. Our new classes of covariance models are applied to the methods for the fine particulate matters with a mass median diameter less than 2.5 $mu m$ ($mbox[PM]_[2.5]$) observed from U.S. Environmental Protection Agency (EPA). We evaluate the performance of the tests by a simulation study and, finally, apply to the $mbox[PM]_[2.5]$ daily concentration calculated by the Models-3/Community Multiscale Air Quality (CMAQ) modeling system with the spatial resolution of $36km imes 36 km$.

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