利用统计深度学习洞察地中海极端野火的驱动因素和时空趋势

Jordan Richards, Raphaël Huser, Emanuele Bevacqua, Jakob Zscheischler
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引用次数: 5

摘要

极端野火仍然是地中海盆地国家内人类死亡和生物多样性破坏的一个重要原因。最近野火活动(即发生和蔓延)令人担忧的趋势表明,野火可能受到气候变化的高度影响。为了促进适当减轻风险,必须确定极端野火的主要驱动因素并评估其时空趋势,以便了解气候变化对火灾活动的影响。为此,我们分析了2001年至2020年欧洲大部分地区和地中海盆地每月因野火造成的烧伤面积,并确定了东欧、阿尔及利亚、意大利和葡萄牙在此期间的高火灾活动。我们建立了一个极端分位数回归模型,该模型具有高维预测集,描述了该领域的气象条件、土地覆盖利用和地形。为了模拟预测变量与野火之间的复杂关系,我们使用了一个混合统计深度学习框架,该框架使我们能够解开蒸汽压差(VPD)、气温和干旱对野火活动的影响。我们的研究结果表明,虽然VPD、气温和干旱显著影响野火的发生,但只有VPD影响野火的蔓延。此外,为了深入了解近期气候变化趋势对森林火灾的影响,我们以2001年8月的极端森林火灾为研究对象,根据观测到的趋势对VPD和温度进行扰动。我们发现,平均而言,欧洲的温度趋势(欧洲的中位数:每年+0.04K)导致2001年8月野火的预期频率和严重程度分别相对增加17.1%和1.6%;使用VPD进行类似分析(欧洲地区的中位数:每年+4.82Pa),分别增加1.2%和3.6%。我们的分析发现,有证据表明,全球变暖可能导致野火活动在空间上的不均匀变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Insights into the drivers and spatio-temporal trends of extreme Mediterranean wildfires with statistical deep-learning
Abstract Extreme wildfires continue to be a significant cause of human death and biodiversity destruction within countries that encompass the Mediterranean Basin. Recent worrying trends in wildfire activity (i.e., occurrence and spread) suggest that wildfires are likely to be highly impacted by climate change. In order to facilitate appropriate risk mitigation, it is imperative to identify the main drivers of extreme wildfires and assess their spatio-temporal trends, with a view to understanding the impacts of the changing climate on fire activity. To this end, we analyse the monthly burnt area due to wildfires over a region encompassing most of Europe and the Mediterranean Basin from 2001 to 2020, and identify high fire activity during this period in eastern Europe, Algeria, Italy and Portugal. We build an extreme quantile regression model with a high-dimensional predictor set describing meteorological conditions, land cover usage, and orography, for the domain. To model the complex relationships between the predictor variables and wildfires, we make use of a hybrid statistical deep-learning framework that allows us to disentangle the effects of vapour-pressure deficit (VPD), air temperature, and drought on wildfire activity. Our results highlight that whilst VPD, air temperature, and drought significantly affect wildfire occurrence, only VPD affects wildfire spread. Furthermore, to gain insights into the effect of climate trends on wildfires in the near future, we focus on the extreme wildfires in August 2001 and perturb VPD and temperature according to their observed trends. We find that, on average over Europe, trends in temperature (median over Europe: +0.04K per year) lead to a relative increase of 17.1% and 1.6% in the expected frequency and severity, respectively, of wildfires in August 2001; similar analyses using VPD (median over Europe: +4.82Pa per year) give respective increases of 1.2% and 3.6%. Our analysis finds evidence suggesting that global warming can lead to spatially non-uniform changes in wildfire activity.
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