Spatio-temporal log-Gaussian Cox processes for modelling wildfire occurrence: the case of Catalonia, 1994–2008

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作者
Laura Serra
Marc Saez
Jorge Mateu
Diego Varga
Pablo Juan
Carlos Díaz-Ávalos
Håvard Rue
机构
[1] University of Girona,CIBER of Epidemiology and Public Health (CIBERESP)
[2] University of Girona,Research Group on Statistics, Econometrics and Public Health (GRECS)
[3] University Jaume I of Castellon,Department of Mathematics
[4] University of Girona,Geographic Information Technologies and Environmental Research Group
[5] National Autonomous University of Mexico,Department of Probability and Statistics, IIMAS
[6] Norwegian University of Science and Technology,Department of Mathematical Sciences
关键词
Covariates; GMRF; INLA; Log-Gaussian Cox models; Marks; Spatio-temporal point processes; Wildfire;
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摘要
Wildfires have become one of the principal environmental problems in the Mediterranean basin. While fire plays an important role in most terrestrial plant ecosystems, the potential hazard that it represents for human lives and property has led to the application of fire exclusion policies that, in the long term, have caused severe damage, mainly due to the increase of fuel loadings in forested areas, in some forest systems. The lack of an easy solution to forest fire management highlights the importance of preventive tasks. The observed spatio-temporal pattern of wildfire occurrences may be idealized as a realization of some stochastic process. In particular, we may use a space–time point pattern approach for the analysis and inference process. We studied wildfires in Catalonia, a region in the north-east of the Iberian Peninsula, and we analyzed the spatio-temporal patterns produced by those wildfire incidences by considering the influence of covariates on trends in the intensity of wildfire locations. A total of 3,166 wildfires from 1994–2008 have been recorded. We specified spatio-temporal log-Gaussian Cox process models. Models were estimated using Bayesian inference for Gaussian Markov Random Field through the integrated nested Laplace approximation algorithm. The results of our analysis have provided statistical evidence that areas closer to humans have more human induced wildfires, areas farther have more naturally occurring wildfires. We believe the methods presented in this paper may contribute to the prevention and management of those wildfires which are not random in space or time.
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页码:531 / 563
页数:32
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