扑灭野火:预测澳大利亚维多利亚州的初步袭击成功

IF 2.9 3区 农林科学 Q1 FORESTRY International Journal of Wildland Fire Pub Date : 2023-12-02 DOI:10.1071/wf23053
M. P. Plucinski, S. Dunstall, N. F. McCarthy, S. Deutsch, E. Tartaglia, C. Huston, A. G. Stephenson
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引用次数: 0

摘要

一小部分躲过初始攻击(IA)的火灾对社区的影响最大,造成的灭火成本也最高。及早发现有可能逃过消防监督的火灾,可以促使消防管理人员订购额外的灭火资源,及时发布公共警告,并在最有可能减少火灾影响的情况下制定长期遏制战略。目的从包含新变量的全州事件数据集开发IA模型,用于在报告新火灾时估计IA的概率。方法从维多利亚州的森林火灾事件记录、地理数据和天气观测数据(n = 35 154)中编制了一个大型数据集,并使用该数据集建立逻辑回归模型,预测草地、森林和灌丛为主的植被类型的初始攻击成功概率。包括描述天气条件、交通延误、坡度和距离道路的输入变量在内的模型能够合理地区分5公顷范围内的火灾。结论和意义这些模型可以用来估计人工智能的成功程度——在可以估计新火灾的位置时使用可用的信息——并且它们可以用来促进对更大火灾的规划。
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Fighting wildfires: predicting initial attack success across Victoria, Australia
Background

The small portion of fires that escape initial attack (IA) have the greatest impacts on communities and incur most suppression costs. Early identification of fires with potential for escaping IA can prompt fire managers to order additional suppression resources, issue timely public warnings and plan longer-term containment strategies when they have the greatest potential for reducing a fire’s impact.

Aims

To develop IA models from a state-wide incident dataset containing novel variables that can be used to estimate the probability of IA when a new fire has been reported.

Methods

A large dataset was compiled from bushfire incident records, geographical data and weather observations across the state of Victoria (n = 35 154) and was used to develop logistic regression models predicting the probability of initial attack success in grassland-, forest- and shrubland-dominated vegetation types.

Key results

Models including input variables describing weather conditions, travel delay, slope and distance from roads were able to reasonably discriminate fires contained to 5 ha.

Conclusions and implications

The models can be used to estimate IA success – using information available when the location of a new fire can be estimated – and they can be used to prompt planning for larger fires.

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来源期刊
CiteScore
5.50
自引率
9.70%
发文量
67
审稿时长
12-24 weeks
期刊介绍: International Journal of Wildland Fire publishes new and significant articles that advance basic and applied research concerning wildland fire. Published papers aim to assist in the understanding of the basic principles of fire as a process, its ecological impact at the stand level and the landscape level, modelling fire and its effects, as well as presenting information on how to effectively and efficiently manage fire. The journal has an international perspective, since wildland fire plays a major social, economic and ecological role around the globe. The International Journal of Wildland Fire is published on behalf of the International Association of Wildland Fire.
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