Skilful forecasting of global fire activity using seasonal climate predictions

  • Curs 2018/19
  • Meteorologia

Descripció:

Societal exposure to large fires has been increasing in recent years. Estimating the expected fire activity a few months in advance would allow reducing environmental and socio-economic impacts through short-term adaptation and response to climate variability and change. However, seasonal prediction of climate-driven fires is still in its infancy. Here, we discuss a strategy for seasonally forecasting burned area anomalies linking seasonal climate predictions with parsimonious empirical climate–fire models using the standardized precipitation index as the climate predictor for burned area. Assuming near-perfect climate predictions, we obtained skilful predictions of fire activity over a substantial portion of the global burnable area (~60%). Using currently available operational seasonal climate predictions, the skill of fire seasonal forecasts remains high and significant in a large fraction of the burnable area (~40%). These findings reveal an untapped and useful burned area predictive ability using seasonal climate forecasts, which can play a crucial role in fire management strategies and minimise the impact of adverse climate conditions.


Turco, M.; Jerez, S.; Doblas-Reyes, F.J.; AghaKouchak, A.; Llasat, M.C.; Provenzale, A.

2018
  • Editor:
    Nature Communications
  • Llicència:
    copy left
  • Descripcó física:
    pàgines