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使用Cell2Fire在合成景观和真实景观上进行火灾蔓延模拟。

Fire spread simulations using Cell2Fire on synthetic and real landscapes.

作者信息

Kim Minho, Pais Cristobal, Gonzalez Marta C

机构信息

Landscape Architecture and Environmental Planning, University of California, Berkeley, CA, 94720, USA.

Industrial Engineering and Operations Research, University of California, Berkeley, CA, 94720, USA.

出版信息

Sci Rep. 2025 Jul 11;15(1):25173. doi: 10.1038/s41598-025-05706-6.

Abstract

Fire spread models (FSMs) are used to reproduce fire behavior and can simulate fire propagation over landscapes. As wildfires have emerged into a global phenomenon with far-reaching impacts on the natural and built environments, FSM simulations provide crucial information to better understand and predict fire behavior in various landscapes. In this study, we tested Cell2Fire, a recently developed cellular automata-based FSM, against benchmarking models used in the U.S., Canada, and Chile. We experimented on synthetically generated landscapes (homogeneous and heterogeneous mix of fuels), applying Cell2Fire for the first time on U.S. landscapes, and found a high level of agreement between Cell2Fire and existing FSMs. However, FSMs may not always produce realistic simulations. In response, we used two optimization methods to improve the simulation's accuracy. First, we adopted a multi-objective optimization algorithm that scales the elliptical shape of the Cell2Fire's output based on rate of spread (ROS) and eccentricity. Second, we optimized four adjustment factors related to the fire spread (head ROS, back ROS, flank ROS, and eccentricity) using blackbox optimization (i.e., derivative-free optimization), minimizing the discrepancy of the output with respect to real burn data. We assessed the effectiveness of the optimization on the 2001 Dogrib Fire in Alberta, Canada and found that the optimized Cell2Fire result more accurately predicted the real burn in comparison to Prometheus (standard Canadian FSM), increasing F1-score from 0.74 to 0.83. Further, Cell2Fire exhibited better computational efficiency, with simulation runtime increasing linearly compared to Prometheus' runtime increasing exponentially. From these results, users can adjust Cell2Fire and simulate more realistic burns and surpass the capabilities of benchmark FSMs, integrating local or custom-made FSM data to expand the simulator's application.

摘要

火灾蔓延模型(FSMs)用于再现火灾行为,并能模拟火灾在不同地形上的蔓延。由于野火已成为一种全球现象,对自然和建筑环境产生深远影响,FSM模拟为更好地理解和预测不同地形中的火灾行为提供了关键信息。在本研究中,我们将最近开发的基于元胞自动机的FSM——Cell2Fire,与美国、加拿大和智利使用的基准模型进行了对比测试。我们在合成生成的地形(燃料的均匀和异质混合)上进行了实验,首次在美国地形上应用Cell2Fire,发现Cell2Fire与现有FSM之间具有高度一致性。然而,FSMs并不总是能产生逼真的模拟结果。为此,我们使用了两种优化方法来提高模拟的准确性。首先,我们采用了一种多目标优化算法,该算法根据蔓延速率(ROS)和偏心率来调整Cell2Fire输出的椭圆形状。其次,我们使用黑箱优化(即无导数优化)来优化与火灾蔓延相关的四个调整因子(头部ROS、后部ROS、侧翼ROS和偏心率),使输出与实际燃烧数据之间的差异最小化。我们评估了该优化方法对加拿大艾伯塔省2001年多格里布火灾的有效性,发现与Prometheus(标准的加拿大FSM)相比,优化后的Cell2Fire结果能更准确地预测实际燃烧情况,F1分数从0.74提高到了0.83。此外,Cell2Fire表现出更好的计算效率,与Prometheus运行时呈指数增长相比,其模拟运行时呈线性增长。基于这些结果,用户可以调整Cell2Fire并模拟更逼真的燃烧情况,超越基准FSM的能力,整合本地或定制的FSM数据以扩展模拟器的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2efc/12254405/8efaee1705d8/41598_2025_5706_Fig1_HTML.jpg

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