Insights into the drivers and spatio-temporal trends of extreme
Mediterranean wildfires with statistical deep-learning
- URL: http://arxiv.org/abs/2212.01796v3
- Date: Mon, 5 Jun 2023 09:26:19 GMT
- Title: Insights into the drivers and spatio-temporal trends of extreme
Mediterranean wildfires with statistical deep-learning
- Authors: Jordan Richards, Rapha\"el Huser, Emanuele Bevacqua, Jakob
Zscheischler
- Abstract summary: Recent trends in wildfire activity suggest that wildfires are likely to be highly impacted by climate change.
We analyse monthly burnt area due to wildfires over a region encompassing most of Europe and the Mediterranean Basin from 2001 to 2020.
We use a hybrid statistical deep-learning framework that can disentangle the effects of vapour-pressure deficit, air temperature, and drought on wildfire activity.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Extreme wildfires are 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, we must identify the main drivers of
extreme wildfires and assess their spatio-temporal trends, with a view to
understanding the impacts of global warming on fire activity. 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 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. To model the
complex relationships between the predictor variables and wildfires, we use a
hybrid statistical deep-learning framework that can 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. To
gain insights into the effect of climate trends on wildfires in the near
future, we focus on August 2001 and perturb temperature according to its
observed trends (median over Europe: +0.04K per year). We find that, on average
over Europe, these trends lead to a relative increase of 17.1\% and 1.6\% in
the expected frequency and severity, respectively, of wildfires in August 2001,
with spatially non-uniform changes in both aspects.
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