Building a machine learning surrogate model for wildfire activities within a global Earth system model
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Published:2022-03-08
Issue:5
Volume:15
Page:1899-1911
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Zhu Qing, Li Fa, Riley William J.ORCID, Xu Li, Zhao LeiORCID, Yuan Kunxiaojia, Wu Huayi, Gong Jianya, Randerson James
Abstract
Abstract. Wildfire is an important ecosystem process, influencing land biogeophysical
and biogeochemical dynamics and atmospheric composition. Fire-driven loss of
vegetation cover, for example, directly modifies the surface energy budget
as a consequence of changing albedo, surface roughness, and partitioning of
sensible and latent heat fluxes. Carbon dioxide and methane emitted by fires
contribute to a positive atmospheric forcing, whereas emissions of
carbonaceous aerosols may contribute to surface cooling. Process-based
modeling of wildfires in Earth system land models is challenging due to
limited understanding of human, climate, and ecosystem controls on fire
counts, fire size, and burned area. Integration of mechanistic wildfire
models within Earth system models requires careful parameter calibration,
which is computationally expensive and subject to equifinality. To explore
alternative approaches, we present a deep neural network (DNN) scheme that
surrogates the process-based wildfire model with the Energy Exascale Earth
System Model (E3SM) interface. The DNN wildfire model accurately simulates
observed burned area with over 90 % higher accuracy with a large reduction
in parameterization time compared with the current process-based wildfire
model. The surrogate wildfire model successfully captured the observed
monthly regional burned area during validation period 2011 to 2015
(coefficient of determination, R2=0.93). Since the DNN wildfire
model has the same input and output requirements as the E3SM process-based
wildfire model, our results demonstrate the applicability of machine
learning for high accuracy and efficient large-scale land model development
and predictions.
Funder
U.S. Department of Energy
Publisher
Copernicus GmbH
Reference96 articles.
1. Abatzoglou, J. T. and Williams, A. P.: Impact of anthropogenic climate
change on wildfire across western US forests, P. Natl. Acad. Sci., 113, 11770–11775, 2016. 2. Andela, N., Morton, D., Giglio, L., Chen, Y., Van Der Werf, G., Kasibhatla,
P., DeFries, R., Collatz, G., Hantson, S., and Kloster, S.: A human-driven
decline in global burned area, Science, 356, 1356–1362, 2017. 3. Andela, N., Morton, D. C., Giglio, L., Paugam, R., Chen, Y., Hantson, S., van der Werf, G. R., and Randerson, J. T.: The Global Fire Atlas of individual fire size, duration, speed and direction, Earth Syst. Sci. Data, 11, 529–552, https://doi.org/10.5194/essd-11-529-2019, 2019. 4. Arora, V. K. and Boer, G. J.: Fire as an interactive component of dynamic
vegetation models, J. Geophys. Res.-Biogeo., 110, G02008, https://doi.org/10.1029/2005JG000042, 2005. 5. Bond, W. J., Woodward, F. I., and Midgley, G. F.: The global distribution of
ecosystems in a world without fire, New Phytol., 165, 525–538, 2005.
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