A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1)
Vegetation fires affect human infrastructures, ecosystems, global vegetation distribution, and atmospheric composition. However, the climatic, environmental, and socioeconomic factors that control global fire activity in vegetation are only poorly understood, and in various complexities and form...
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doaj-142cda1c998f4b2fb3d2360bd5fddd4d2020-11-25T00:04:03ZengCopernicus PublicationsGeoscientific Model Development1991-959X1991-96032017-12-01104443447610.5194/gmd-10-4443-2017A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1)M. Forkel0W. Dorigo1G. Lasslop2I. Teubner3E. Chuvieco4K. Thonicke5Climate and Environmental Remote Sensing Group, Department of Geodesy and Geoinformation, Technische Universität Wien, Gusshausstraße 27–29, 1040 Vienna, AustriaClimate and Environmental Remote Sensing Group, Department of Geodesy and Geoinformation, Technische Universität Wien, Gusshausstraße 27–29, 1040 Vienna, AustriaDepartment of Land in the Earth System, Max Planck Institute for Meteorology, Bundesstr. 53, 20146 Hamburg, GermanyClimate and Environmental Remote Sensing Group, Department of Geodesy and Geoinformation, Technische Universität Wien, Gusshausstraße 27–29, 1040 Vienna, AustriaDepartment of Geology, Geography and the Environment, University of Alcalá, Colegios 2, 28801 Alcalá de Henares, SpainDepartment of Earth System Analysis, Potsdam Institute for Climate Impact Research, Telegraphenberg A62, 14412 Potsdam, GermanyVegetation fires affect human infrastructures, ecosystems, global vegetation distribution, and atmospheric composition. However, the climatic, environmental, and socioeconomic factors that control global fire activity in vegetation are only poorly understood, and in various complexities and formulations are represented in global process-oriented vegetation-fire models. Data-driven model approaches such as machine learning algorithms have successfully been used to identify and better understand controlling factors for fire activity. However, such machine learning models cannot be easily adapted or even implemented within process-oriented global vegetation-fire models. To overcome this gap between machine learning-based approaches and process-oriented global fire models, we introduce a new flexible data-driven fire modelling approach here (Satellite Observations to predict FIre Activity, SOFIA approach version 1). SOFIA models can use several predictor variables and functional relationships to estimate burned area that can be easily adapted with more complex process-oriented vegetation-fire models. We created an ensemble of SOFIA models to test the importance of several predictor variables. SOFIA models result in the highest performance in predicting burned area if they account for a direct restriction of fire activity under wet conditions and if they include a land cover-dependent restriction or allowance of fire activity by vegetation density and biomass. The use of vegetation optical depth data from microwave satellite observations, a proxy for vegetation biomass and water content, reaches higher model performance than commonly used vegetation variables from optical sensors. We further analyse spatial patterns of the sensitivity between anthropogenic, climate, and vegetation predictor variables and burned area. We finally discuss how multiple observational datasets on climate, hydrological, vegetation, and socioeconomic variables together with data-driven modelling and model–data integration approaches can guide the future development of global process-oriented vegetation-fire models.https://www.geosci-model-dev.net/10/4443/2017/gmd-10-4443-2017.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
M. Forkel W. Dorigo G. Lasslop I. Teubner E. Chuvieco K. Thonicke |
spellingShingle |
M. Forkel W. Dorigo G. Lasslop I. Teubner E. Chuvieco K. Thonicke A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) Geoscientific Model Development |
author_facet |
M. Forkel W. Dorigo G. Lasslop I. Teubner E. Chuvieco K. Thonicke |
author_sort |
M. Forkel |
title |
A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) |
title_short |
A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) |
title_full |
A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) |
title_fullStr |
A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) |
title_full_unstemmed |
A data-driven approach to identify controls on global fire activity from satellite and climate observations (SOFIA V1) |
title_sort |
data-driven approach to identify controls on global fire activity from satellite and climate observations (sofia v1) |
publisher |
Copernicus Publications |
series |
Geoscientific Model Development |
issn |
1991-959X 1991-9603 |
publishDate |
2017-12-01 |
description |
Vegetation fires affect human infrastructures, ecosystems, global vegetation
distribution, and atmospheric composition. However, the climatic,
environmental, and socioeconomic factors that control global fire activity in
vegetation are only poorly understood, and in various complexities and
formulations are represented in global process-oriented vegetation-fire
models. Data-driven model approaches such as machine learning algorithms have
successfully been used to identify and better understand controlling factors
for fire activity. However, such machine learning models cannot be easily
adapted or even implemented within process-oriented global vegetation-fire
models. To overcome this gap between machine learning-based approaches and
process-oriented global fire models, we introduce a new flexible data-driven
fire modelling approach here (Satellite Observations to predict FIre
Activity, SOFIA approach version 1). SOFIA models can use several predictor
variables and functional relationships to estimate burned area that can be
easily adapted with more complex process-oriented vegetation-fire models. We
created an ensemble of SOFIA models to test the importance of several
predictor variables. SOFIA models result in the highest performance in
predicting burned area if they account for a direct restriction of fire
activity under wet conditions and if they include a land cover-dependent
restriction or allowance of fire activity by vegetation density and biomass.
The use of vegetation optical depth data from microwave satellite
observations, a proxy for vegetation biomass and water content, reaches
higher model performance than commonly used vegetation variables from optical
sensors. We further analyse spatial patterns of the sensitivity between
anthropogenic, climate, and vegetation predictor variables and burned area.
We finally discuss how multiple observational datasets on climate,
hydrological, vegetation, and socioeconomic variables together with
data-driven modelling and model–data integration approaches can guide the
future development of global process-oriented vegetation-fire models. |
url |
https://www.geosci-model-dev.net/10/4443/2017/gmd-10-4443-2017.pdf |
work_keys_str_mv |
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