Pyros:用于预测野地地表火灾蔓延和增长的栅格-矢量空间模拟模型

IF 2.9 3区 农林科学 Q1 FORESTRY
Debora Voltolina, Giacomo Cappellini, Tiziana Apuani, Simone Sterlacchini
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引用次数: 0

摘要

背景 欧洲-地中海地区预计在未来几十年内将经历由气候引起的火灾活动加剧。对火灾行为的可靠预测是规划和优化火灾管理行动和战略的重要工具。目的 本研究旨在描述和分析基于代理的空间模拟模型的性能,以预测野地地表火灾的蔓延和增长。方法 该模型整合了罗瑟梅尔方程以获得火灾蔓延指标,并使用栅格-矢量混合实施方法来预测火灾的增长模式。利用意大利撒丁岛的案例研究,从理想和现实环境条件下预测的火灾增长模式与参考模式之间的时空一致性角度对模型性能进行了定量评估。主要结果 在理想条件下,与圆形或椭圆形参考模式相比,预测的火势增长模式的失真可以忽略不计。在现实世界的异质条件下,观察到的模式与预测的模式基本一致,相似系数高达 0.76。结论 结果表明,该模型具有良好的性能和较低的计算要求。启示 假定参数的不确定性得到有效管理,并对欧洲-地中海地区的其他案例研究进行严格验证,该模型就有可能为实际火灾管理应用做出宝贵贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pyros: a raster–vector spatial simulation model for predicting wildland surface fire spread and growth
Background Euro–Mediterranean regions are expected to undergo a climate-induced exacerbation of fire activity in the upcoming decades. Reliable predictions of fire behaviour represent an essential instrument for planning and optimising fire management actions and strategies. Aims The aim of this study was to describe and analyse the performance of an agent-based spatial simulation model for predicting wildland surface fire spread and growth. Methods The model integrates Rothermel’s equations to obtain fire spread metrics and uses a hybrid raster–vector implementation to predict patterns of fire growth. The model performance is evaluated in quantitative terms of spatiotemporal agreement between predicted patterns of fire growth and reference patterns, under both ideal and real-world environmental conditions, using case studies in Sardinia, Italy. Key results Predicted patterns of fire growth demonstrate negligible distortions under ideal conditions when compared with circular or elliptical reference patterns. In real-world heterogeneous conditions, a substantial agreement between observed and predicted patterns is achieved, resulting in a similarity coefficient of up to 0.76. Conclusions Outcomes suggest that the model exhibits promising performance with low computational requirements. Implications Assuming that parametric uncertainty is effectively managed and a rigorous validation encompassing additional case studies from Euro–Mediterranean regions is conducted, the model has the potential to provide a valuable contribution to operational fire management applications.
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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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