Russo Lucia, Russo Paola, Siettos Constantinos I
Combustion Research Institute, Consiglio Nazionale delle Ricerche, Naples, Italy.
Department of Chemical Engineering, Materials and Environment, Sapienza University of Rome, Rome, Italy.
PLoS One. 2016 Oct 25;11(10):e0163226. doi: 10.1371/journal.pone.0163226. eCollection 2016.
Based on complex network theory, we propose a computational methodology which addresses the spatial distribution of fuel breaks for the inhibition of the spread of wildland fires on heterogeneous landscapes. This is a two-level approach where the dynamics of fire spread are modeled as a random Markov field process on a directed network whose edge weights are determined by a Cellular Automata model that integrates detailed GIS, landscape and meteorological data. Within this framework, the spatial distribution of fuel breaks is reduced to the problem of finding network nodes (small land patches) which favour fire propagation. Here, this is accomplished by exploiting network centrality statistics. We illustrate the proposed approach through (a) an artificial forest of randomly distributed density of vegetation, and (b) a real-world case concerning the island of Rhodes in Greece whose major part of its forest was burned in 2008. Simulation results show that the proposed methodology outperforms the benchmark/conventional policy of fuel reduction as this can be realized by selective harvesting and/or prescribed burning based on the density and flammability of vegetation. Interestingly, our approach reveals that patches with sparse density of vegetation may act as hubs for the spread of the fire.
基于复杂网络理论,我们提出了一种计算方法,该方法用于解决防火带的空间分布问题,以抑制异质景观上野火的蔓延。这是一种两级方法,其中火灾蔓延动态被建模为有向网络上的随机马尔可夫场过程,该网络的边权重由一个元胞自动机模型确定,该模型整合了详细的地理信息系统(GIS)、景观和气象数据。在此框架内,防火带的空间分布被简化为寻找有利于火灾蔓延的网络节点(小地块)的问题。在这里,这是通过利用网络中心性统计来实现的。我们通过(a)一个植被密度随机分布的人工林,以及(b)一个关于希腊罗德岛的实际案例来说明所提出的方法,该岛的大部分森林在2008年被烧毁。模拟结果表明,所提出的方法优于基于植被密度和易燃性通过选择性采伐和/或规定燃烧来实现的基准/传统燃料减少策略。有趣的是,我们的方法表明植被密度稀疏的地块可能会成为火灾蔓延的中心。