Operational fuel model map for Atlantic landscapes using ALS and Sentinel-2 images

IF 3.6 3区 环境科学与生态学 Q1 ECOLOGY Fire Ecology Pub Date : 2023-10-17 DOI:10.1186/s42408-023-00218-y
Ana Solares-Canal, Laura Alonso, Thais Rincón, Juan Picos, Domingo M. Molina-Terrén, Carmen Becerra, Julia Armesto
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Abstract

Abstract Background In the new era of large, high-intensity wildfire events, new fire prevention and extinction strategies are emerging. Software that simulates fire behavior can play a leading role. In order for these simulators to provide reliable results, updated fuel model maps are required. Previous studies have shown that remote sensing is a useful tool for obtaining information about vegetation structures and types. However, remote sensing technologies have not been evaluated for operational purposes in Atlantic environments. In this study, we describe a methodology based on remote sensing data (Sentinel-2 images and aerial point clouds) to obtain updated fuel model maps of an Atlantic area. These maps could be used directly in wildfire simulation software. Results An automated methodology has been developed that allows for the efficient identification and mapping of fuel models in an Atlantic environment. It mainly consists of processing remote sensing data using supervised classifications to obtain a map with the geographical distribution of the species in the study area and maps with the geographical distribution of the structural characteristics of the forest covers. The relationships between the vegetation species and structures in the study area and the Rothermel fuel models were identified. These relationships enabled the generation of the final fuel model map by combining the different previously obtained maps. The resulting map provides essential information about the geographical distribution of fuels; 32.92% of the study area corresponds to models 4 and 7, which are the two models that tend to develop more dangerous behaviors. The accuracy of the final map is evaluated through validation of the maps that are used to obtain it. The user and producer accuracy ranged between 70 and 100%. Conclusion This paper describes an automated methodology for obtaining updated fuel model maps in Atlantic landscapes using remote sensing data. These maps are crucial in wildfire simulation, which supports the modern wildfire suppression and prevention strategies. Sentinel-2 is a global open access source, and LiDAR is an extensively used technology, meaning that the approach proposed in this study represents a step forward in the efficient transformation of remote sensing data into operational tools for wildfire prevention.
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使用ALS和Sentinel-2图像的大西洋景观运行燃料模型图
背景在大规模、高强度野火事件频发的新时代,新的防火和灭火策略应运而生。模拟火灾行为的软件可以发挥主导作用。为了使这些模拟器提供可靠的结果,需要更新燃料模型图。以往的研究表明,遥感是获取植被结构和类型信息的有用工具。但是,遥感技术尚未在大西洋环境中为业务目的进行评价。在这项研究中,我们描述了一种基于遥感数据(Sentinel-2图像和航空点云)的方法,以获得大西洋地区更新的燃料模型地图。这些地图可以直接用于野火模拟软件。结果开发了一种自动化方法,可以有效地识别和绘制大西洋环境中的燃料模型。主要包括对遥感数据进行监督分类处理,得到研究区物种地理分布图和森林覆盖结构特征地理分布图。确定了研究区植被种类和结构与Rothermel燃料模型的关系。这些关系使最终的燃料模型地图能够通过组合不同的先前获得的地图来生成。绘制的地图提供了关于燃料地理分布的基本信息;32.92%的研究区域对应于模式4和模式7,这是两种倾向于发生更危险行为的模式。通过验证用于获得最终地图的地图来评估最终地图的准确性。用户和生产者的准确率在70%到100%之间。本文描述了一种利用遥感数据获取大西洋景观中最新燃料模型地图的自动化方法。这些地图在野火模拟中至关重要,为现代野火扑灭和预防策略提供支持。哨兵-2是一个全球开放获取源,而激光雷达是一种广泛使用的技术,这意味着本研究中提出的方法代表了将遥感数据有效转化为预防野火的操作工具的一步。
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来源期刊
Fire Ecology
Fire Ecology ECOLOGY-FORESTRY
CiteScore
6.20
自引率
7.80%
发文量
24
审稿时长
20 weeks
期刊介绍: Fire Ecology is the international scientific journal supported by the Association for Fire Ecology. Fire Ecology publishes peer-reviewed articles on all ecological and management aspects relating to wildland fire. We welcome submissions on topics that include a broad range of research on the ecological relationships of fire to its environment, including, but not limited to: Ecology (physical and biological fire effects, fire regimes, etc.) Social science (geography, sociology, anthropology, etc.) Fuel Fire science and modeling Planning and risk management Law and policy Fire management Inter- or cross-disciplinary fire-related topics Technology transfer products.
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