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Quantifying the drivers and predictability of seasonal changes in African fire

Earth Sciences

Quantifying the drivers and predictability of seasonal changes in African fire

Y. Yu, J. Mao, et al.

Explore the groundbreaking research conducted by Yan Yu and colleagues, revealing how seasonal environmental factors like sea-surface temperature and soil moisture influence African fire predictability. Their innovative use of Stepwise Generalized Equilibrium Feedback Assessment combined with machine learning techniques offers a robust method for forecasting fires a month in advance.

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~3 min • Beginner • English
Abstract
Africa contains some of the most vulnerable ecosystems to fires. Successful seasonal prediction of fire activity over these fire-prone regions remains a challenge and relies heavily on in-depth understanding of various driving mechanisms underlying fire evolution. Here, we assess the seasonal environmental drivers and predictability of African fire using the analytical framework of Stepwise Generalized Equilibrium Feedback Assessment (SGEFA) and machine learning techniques (MLTs). The impacts of sea-surface temperature, soil moisture, and leaf area index are quantified and found to dominate the fire seasonal variability by regulating regional burning condition and fuel supply. Compared with previously-identified atmospheric and socioeconomic predictors, these slowly evolving oceanic and terrestrial predictors are further identified to determine the seasonal predictability of fire activity in Africa. Our combined SGEFA-MLT approach achieves skillful prediction of African fire one month in advance and can be generalized to provide seasonal estimates of regional and global fire risk.
Publisher
Nature Communications
Published On
Jun 09, 2020
Authors
Yan Yu, Jiafu Mao, Peter E. Thornton, Michael Notaro, Stan D. Wullschleger, Xiaoying Shi, Forrest M. Hoffman, Yaoping Wang
Tags
African fire
seasonal environmental drivers
machine learning techniques
predictability
Stepwise Generalized Equilibrium Feedback Assessment
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