预测未来气候导致的北方森林野火风险

Fire Pub Date : 2024-04-17 DOI:10.3390/fire7040144
Shelby Corning, A. Krasovskiy, Pavel Kiparisov, Johanna San Pedro, Camila Maciel Viana, F. Kraxner
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引用次数: 0

摘要

极端森林火灾历来是加拿大、俄罗斯联邦和美国的重大问题,如今在欧洲北部地区也构成了日益严重的威胁。本文介绍了野生火灾气候影响和适应模型(FLAM)在北方森林中的应用。FLAM 以每天为一个时间步长,利用机理算法量化气候、人类活动和燃料供应对野火概率、频率和燃烧面积的影响。在本文中,我们利用历史遥感数据对模型进行了校准,并探讨了不同气候变化情景下未来烧毁面积的预测。研究包括以下步骤:(i) 分析 2001-2020 年间的历史烧毁面积;(ii) 与历史时期相比,分析未来预测中的气温和降水变化;(iii) 分析 FLAM 预测的未来烧毁面积以及 2100 年之前的气候变化情景;(iv) 模拟最坏情况下的适应方案。建模结果显示,在所有代表性浓度途径(RCP)情景下,焚烧面积都会增加。保持当前温度(RCP 2.6)仍将导致烧毁面积(总面积和森林面积)增加,但在最坏情况(RCP 8.5)下,预计到 2100 年烧毁的森林面积将增加两倍多。基于 FLAM 校准,我们确定了北方森林野地火灾的热点,并提出了适应方案,如提高热点地区的扑救效率。我们模拟了两种提高反应时间的方案--在 4 天内和 24 小时内扑灭火灾--与 2021-2099 年不进行适应性调整的预测烧毁面积相比,这两种方案可将平均烧毁森林面积分别减少 48.6% 和 79.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anticipating Future Risks of Climate-Driven Wildfires in Boreal Forests
Extreme forest fires have historically been a significant concern in Canada, the Russian Federation, the USA, and now pose an increasing threat in boreal Europe. This paper deals with application of the wildFire cLimate impacts and Adaptation Model (FLAM) in boreal forests. FLAM operates on a daily time step and utilizes mechanistic algorithms to quantify the impact of climate, human activities, and fuel availability on wildfire probabilities, frequencies, and burned areas. In our paper, we calibrate the model using historical remote sensing data and explore future projections of burned areas under different climate change scenarios. The study consists of the following steps: (i) analysis of the historical burned areas over 2001–2020; (ii) analysis of temperature and precipitation changes in the future projections as compared to the historical period; (iii) analysis of the future burned areas projected by FLAM and driven by climate change scenarios until the year 2100; (iv) simulation of adaptation options under the worst-case scenario. The modeling results show an increase in burned areas under all Representative Concentration Pathway (RCP) scenarios. Maintaining current temperatures (RCP 2.6) will still result in an increase in burned area (total and forest), but in the worst-case scenario (RCP 8.5), projected burned forest area will more than triple by 2100. Based on FLAM calibration, we identify hotspots for wildland fires in the boreal forest and suggest adaptation options such as increasing suppression efficiency at the hotspots. We model two scenarios of improved reaction times—stopping a fire within 4 days and within 24 h—which could reduce average burned forest areas by 48.6% and 79.2%, respectively, compared to projected burned areas without adaptation from 2021–2099.
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