Title of article :
Modeling spatial patterns and species associations in a Hyrcanian forest using a multivariate log-Gaussian Cox process
Author/Authors :
Jalilian, Abdollah Department of Statistics - Razi University, Kermanshah, Iran , Safari, Amir Natural resources and watershed management general office of Kermanshah, Iran , Sohrabi, Hormoz Department of forestry - Tarbiat Modares University, Tehran, Iran
Abstract :
This paper aims to conduct a model-based analysis of the spatial patterns
of three tree species in a Hyrcanian forest and investigate their associations. There
are many known and unknown mechanisms that influence the spatial forest structure
and species associations. These complex and mainly unobservable mechanisms can
be modeled by hidden Gaussian random fields and log-Gaussian Cox process models
are appropriate for linking them to the spatial patterns of tree species. We consider
a multivariate log-Gaussian Cox process model that can take into account the overall
mixed effects of all influential factors on spatial distributions of species and quantify
species associations in terms of some parameters. This construction provides a suitable
framework for modeling and analyzing spatial patterns of several species. We also discuss
modeling tree diameters, parameter estimation and goodness of fit methods and
apply them to the data. Results from fitting the model to the data show that there
is a significant negative association between two light-demanding species. Finally, a
Gamma intensity-dependent model is considered to model spatial correlation in tree
diameters of one of the species.
Keywords :
Cross-pair correlation function , Hidden Gaussian random field , Intensitydependent marking model , Mark variogram
Journal title :
Journal of Statistical Modelling: Theory and Applications (JSMTA)