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利用基于环境数据的燃料危险评估来提高野火模拟的准确性。

Improved accuracy of wildfire simulations using fuel hazard estimates based on environmental data.

机构信息

School of Ecosystem and Forest Sciences, University of Melbourne, Victoria, Australia.

School of Ecosystem and Forest Sciences, University of Melbourne, Victoria, Australia.

出版信息

J Environ Manage. 2022 Jan 1;301:113789. doi: 10.1016/j.jenvman.2021.113789. Epub 2021 Sep 27.

Abstract

Wildfire extent and their impacts are increasing around the world. Fire management agencies use fire behaviour simulation models operationally (during a wildfire event) or strategically for risk assessment and treatment. These models provide agencies with increased knowledge of fire potential to improve identification of the best strategies for reducing risk. One of the greatest areas of uncertainty in fire simulations is the data relating to fuel, which are usually based on simplified response trajectories with time since fire within vegetation communities. There is a clear need to better predict relevant fuel variables across landscapes to reduce uncertainties in fire simulations. In this study, we compare the performance of fuel hazard models based on environmental variables (environmental model) with those currently implemented based on a negative exponential relationship with time since fire (NEGEXP) using the state of Victoria in south-eastern Australia as an environmentally diverse case study. The models predicted similar broadscale patterns in fuel hazard but with considerable regional variation. The NEGEXP model was less accurate than the environmental model, which had 41-47% accuracy on an independent data set cf. 24-35% for NEGEXP. Model differences resulted in significant differences in the extent and spatial location of predicted fires with NEGEXP consistently predicting larger fires. Fuel is made up of the live and dead components of vegetation, both of which are influenced by a range of environmental factors. As our study highlights, ignoring environmental factors in simple fuel models based on broad vegetation types (like NEGEXP) will likely compromise the predictive accuracy of fire behaviour models. Only when environmental factors are accounted for can we more accurately predict fuels across landscapes and thereby improve the accuracy of fire behaviour predictions and the estimation of fire risks.

摘要

野火的范围及其影响在全球范围内不断扩大。火灾管理机构在(野火事件期间)操作上或战略性地使用火灾行为模拟模型进行风险评估和处理。这些模型为机构提供了更多关于火灾潜力的知识,以提高识别降低风险的最佳策略的能力。火灾模拟中最大的不确定性之一是与燃料相关的数据,这些数据通常基于植被社区内火灾发生后时间的简化响应轨迹。显然,需要更好地预测跨景观的相关燃料变量,以减少火灾模拟中的不确定性。在这项研究中,我们比较了基于环境变量的燃料危险模型(环境模型)和基于与火灾发生后时间呈负指数关系的模型(NEGEXP)的性能,以澳大利亚东南部的维多利亚州作为环境多样的案例研究。模型预测了燃料危险的相似大范围模式,但存在相当大的区域差异。NEGEXP 模型的准确性低于环境模型,环境模型在独立数据集上的准确率为 41-47%,而 NEGEXP 的准确率为 24-35%。模型差异导致预测火灾的范围和空间位置存在显著差异,NEGEXP 一直预测更大的火灾。燃料由植被的活和死部分组成,这两者都受到一系列环境因素的影响。正如我们的研究强调的那样,在基于广泛植被类型的简单燃料模型(如 NEGEXP)中忽略环境因素可能会影响火灾行为模型的预测准确性。只有当考虑到环境因素时,我们才能更准确地预测跨景观的燃料,从而提高火灾行为预测的准确性和火灾风险的估计。

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