Modeling Forest Tree Data Using Sequential Spatial Point Processes

被引:0
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作者
Adil Yazigi
Antti Penttinen
Anna-Kaisa Ylitalo
Matti Maltamo
Petteri Packalen
Lauri Mehtätalo
机构
[1] University of Eastern Finland,School of Computing
[2] University of Jyväskylä,Department of Mathematics and Statistics
[3] Natural Resources Institute Finland (Luke),School of Forest Sciences
[4] University of Eastern Finland,undefined
[5] Bioeconomy and Environment Unit,undefined
[6] Natural Resources Institute Finland (Luke),undefined
关键词
Functional summary statistics; History-dependent model; Maximum likelihood; Ordered sequence; Spatial point processes;
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学科分类号
摘要
The spatial structure of a forest stand is typically modeled by spatial point process models. Motivated by aerial forest inventories and forest dynamics in general, we propose a sequential spatial approach for modeling forest data. Such an approach is better justified than a static point process model in describing the long-term dependence among the spatial location of trees in a forest and the locations of detected trees in aerial forest inventories. Tree size can be used as a surrogate for the unknown tree age when determining the order in which trees have emerged or are observed on an aerial image. Sequential spatial point processes differ from spatial point processes in that the realizations are ordered sequences of spatial locations, thus allowing us to approximate the spatial dynamics of the phenomena under study. This feature is useful in interpreting the long-term dependence and spatial history of the locations of trees. For the application, we use a forest data set collected from the Kiihtelysvaara forest region in Eastern Finland.
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页码:88 / 108
页数:20
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