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Machine learning-based observation-constrained projections reveal elevated global socioeconomic risks from wildfire

Earth Sciences

Machine learning-based observation-constrained projections reveal elevated global socioeconomic risks from wildfire

Y. Yu, J. Mao, et al.

This groundbreaking study by Yan Yu and colleagues reveals vital insights into wildfire projections and socioeconomic risks. By utilizing a machine learning framework, the research highlights the urgent need for strategic wildfire preparedness, particularly in western and central Africa, where future wildfire activity is expected to rise amid increasing socioeconomic development.

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Abstract
Reliable projections of wildfire and associated socioeconomic risks are crucial for the development of efficient and effective adaptation and mitigation strategies. The lack of or limited observational constraints for modeling outputs impairs the credibility of wildfire projections. Here, we present a machine learning framework to constrain the future fire carbon emissions simulated by 13 Earth system models from the Coupled Model Inter-comparison Project phase 6 (CMIP6), using historical, observed joint states of fire-relevant variables. During the twenty-first century, the observation-constrained ensemble indicates a weaker increase in global fire carbon emissions but higher increase in global wildfire exposure in population, gross domestic production, and agricultural area, compared with the default ensemble. Such elevated socioeconomic risks are primarily caused by the compound regional enhancement of future wildfire activity and socioeconomic development in the western and central African countries, necessitating an emergent strategic preparedness to wildfires in these countries.
Publisher
Nature Communications
Published On
Mar 22, 2022
Authors
Yan Yu, Jiafu Mao, Stan D. Wullschleger, Anping Chen, Xiaoying Shi, Yaoping Wang, Forrest M. Hoffman, Yulong Zhang, Eric Pierce
Tags
wildfire projections
socioeconomic risks
machine learning
fire carbon emissions
socioeconomic development
preparedness
African regions
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