Forest structure, roads and soil moisture provide realistic predictions of fire spread in modern Swedish landscape

IF 2.6 3区 环境科学与生态学 Q2 ECOLOGY
Sara Sharon Jones , Maksym Matsala , Emily Viola Delin , Narayanan Subramanian , Urban Nilsson , Emma Holmström , Igor Drobyshev
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引用次数: 0

Abstract

Recent increases in fire activity in Sweden call for the quantification of forest fire susceptibility, in order to develop management strategies to mitigate fire risk. Using the data from 100 large Swedish forest fires (>10 ha), mapped from sentinel-2 images from 2016 to 2022, we explored the predictive power of vegetation properties in estimating relative likelihood of fires within a landscape using logistic regression. To model spatially explicit fire susceptibility within a given landscape, we used the outcome of logistic regression as an input into a cellular automata model (CA model), which simulates fire spread in a 2D grid.
The CA was model calibrated on three fires that occurred between 2016 and 2022, then verified on six 2023 fires and featured a mean sensitivity of 0.74 and specificity of 0.79. The logistic regression model had an accuracy of 54 %, showing increased fire susceptibility from high Scots pine volume (p-value = 0.02), and decreased fire susceptibility from high volumes of deciduous trees and wet soil. Realistic outcomes of the CA model and reliance of our approach on publicly available data with nation-wide coverage of vegetation cover in Sweden allows for the development of an automated protocol of fire susceptibility assessment at the operational level and its integration in existing decision support systems. This would allow forest owners to obtain estimates of forest fire susceptibility for different forest management strategies.
森林结构、道路和土壤湿度可真实预测现代瑞典地貌中的火灾蔓延情况
瑞典近期火灾活动的增加要求对森林火灾的易发性进行量化,以便制定管理策略来降低火灾风险。利用哨兵-2 图像绘制的 2016 年至 2022 年瑞典 100 起大型森林火灾(10 公顷)的数据,我们使用逻辑回归法探索了植被特性在估计景观内火灾相对可能性方面的预测能力。为了在给定景观内建立空间明确的火灾易感性模型,我们将逻辑回归的结果作为细胞自动机模型(CA 模型)的输入,该模型模拟火灾在二维网格中的蔓延。逻辑回归模型的准确率为 54%,表明苏格兰松树数量多会增加火灾易感性(p 值 = 0.02),落叶树数量多和土壤潮湿会降低火灾易感性。CA 模型的现实结果以及我们的方法对瑞典全国植被覆盖的公开数据的依赖,使得我们可以在操作层面上开发火灾易感性评估的自动化协议,并将其集成到现有的决策支持系统中。这将使森林所有者能够根据不同的森林管理策略获得森林火灾易发性的估计值。
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来源期刊
Ecological Modelling
Ecological Modelling 环境科学-生态学
CiteScore
5.60
自引率
6.50%
发文量
259
审稿时长
69 days
期刊介绍: The journal is concerned with the use of mathematical models and systems analysis for the description of ecological processes and for the sustainable management of resources. Human activity and well-being are dependent on and integrated with the functioning of ecosystems and the services they provide. We aim to understand these basic ecosystem functions using mathematical and conceptual modelling, systems analysis, thermodynamics, computer simulations, and ecological theory. This leads to a preference for process-based models embedded in theory with explicit causative agents as opposed to strictly statistical or correlative descriptions. These modelling methods can be applied to a wide spectrum of issues ranging from basic ecology to human ecology to socio-ecological systems. The journal welcomes research articles, short communications, review articles, letters to the editor, book reviews, and other communications. The journal also supports the activities of the [International Society of Ecological Modelling (ISEM)](http://www.isemna.org/).
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