Large scale multi-layer fuel load characterization in tropical savanna using GEDI spaceborne lidar data
Allbwn ymchwil: Cyfraniad at gyfnodolyn › Erthygl › adolygiad gan gymheiriaid
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Yn: Remote Sensing of Environment, Cyfrol 268, 112764, 01.2022.
Allbwn ymchwil: Cyfraniad at gyfnodolyn › Erthygl › adolygiad gan gymheiriaid
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TY - JOUR
T1 - Large scale multi-layer fuel load characterization in tropical savanna using GEDI spaceborne lidar data
AU - Leite, Rodrigo Vieira
AU - Silva, Carlos Alberto
AU - Broadbent, Eben North
AU - Amaral, Cibele Hummel do
AU - Liesenberg, Veraldo
AU - Almeida, Danilo Roberti Alves de
AU - Mohan, Midhun
AU - Godinho, Sérgio
AU - Cardil, Adrian
AU - Hamamura, Caio
AU - Faria, Bruno Lopes de
AU - Brancalion, Pedro H.S.
AU - Hirsch, André
AU - Marcatti, Gustavo Eduardo
AU - Dalla Corte, Ana Paula
AU - Zambrano, Angelica Maria Almeyda
AU - Costa, Máira Beatriz Teixeira da
AU - Matricardi, Eraldo Aparecido Trondoli
AU - Silva, Anne Laura da
AU - Goya, Lucas Ruggeri Ré Y.
AU - Valbuena, Ruben
AU - Mendonça, Bruno Araujo Furtado de
AU - Silva Junior, Celso H.L.
AU - Aragão, Luiz E.O.C.
AU - García, Mariano
AU - Liang, Jingjing
AU - Merrick, Trina
AU - Hudak, Andrew T.
AU - Xiao, Jingfeng
AU - Hancock, Steven
AU - Duncason, Laura
AU - Ferreira, Matheus Pinheiro
AU - Valle, Denis
AU - Saatchi, Sassan
AU - Klauberg, Carine
PY - 2022/1
Y1 - 2022/1
N2 - Quantifying fuel load over large areas is essential to support integrated fire management initiatives in fire-prone regions to preserve carbon stock, biodiversity and ecosystem functioning. It also allows a better understanding of global climate regulation as a potential carbon sink or source. Large area assessments usually require data from spaceborne remote sensors, but most of them cannot measure the vertical variability of vegetation structure, which is required for accurately measuring fuel loads and defining management interventions. The recently launched NASA's Global Ecosystem Dynamics Investigation (GEDI) full-waveform lidar sensor holds potential to meet this demand. However, its capability for estimating fuel load has yet not been evaluated. In this study, we developed a novel framework and tested machine learning models for predicting multi-layer fuel load in the Brazilian tropical savanna (i.e., Cerrado biome) using GEDI data. First, lidar data were collected using an unnamed aerial vehicle (UAV). The flights were conducted over selected sample plots in distinct Cerrado vegetation formations (i.e., grassland, savanna, forest) where field measurements were conducted to determine the load of surface, herbaceous, shrubs and small trees, woody fuels and the total fuel load. Subsequently, GEDI-like full-waveforms were simulated from the high-density UAV-lidar 3-D point clouds from which vegetation structure metrics were calculated and correlated to field-derived fuel load components using Random Forest models. From these models, we generate fuel load maps for the entire Cerrado using all on-orbit available GEDI data. Overall, the models had better performance for woody fuels and total fuel loads (R2 = 0.88 and 0.71, respectively). For components at the lower stratum, models had moderate to low performance (R2 between 0.15 and 0.46) but still showed reliable results. The presented framework can be extended to other fire-prone regions where accurate measurements of fuel components are needed. We hope this study will contribute to the expansion of spaceborne lidar applications for integrated fire management activities and supporting carbon monitoring initiatives in tropical savannas worldwide.
AB - Quantifying fuel load over large areas is essential to support integrated fire management initiatives in fire-prone regions to preserve carbon stock, biodiversity and ecosystem functioning. It also allows a better understanding of global climate regulation as a potential carbon sink or source. Large area assessments usually require data from spaceborne remote sensors, but most of them cannot measure the vertical variability of vegetation structure, which is required for accurately measuring fuel loads and defining management interventions. The recently launched NASA's Global Ecosystem Dynamics Investigation (GEDI) full-waveform lidar sensor holds potential to meet this demand. However, its capability for estimating fuel load has yet not been evaluated. In this study, we developed a novel framework and tested machine learning models for predicting multi-layer fuel load in the Brazilian tropical savanna (i.e., Cerrado biome) using GEDI data. First, lidar data were collected using an unnamed aerial vehicle (UAV). The flights were conducted over selected sample plots in distinct Cerrado vegetation formations (i.e., grassland, savanna, forest) where field measurements were conducted to determine the load of surface, herbaceous, shrubs and small trees, woody fuels and the total fuel load. Subsequently, GEDI-like full-waveforms were simulated from the high-density UAV-lidar 3-D point clouds from which vegetation structure metrics were calculated and correlated to field-derived fuel load components using Random Forest models. From these models, we generate fuel load maps for the entire Cerrado using all on-orbit available GEDI data. Overall, the models had better performance for woody fuels and total fuel loads (R2 = 0.88 and 0.71, respectively). For components at the lower stratum, models had moderate to low performance (R2 between 0.15 and 0.46) but still showed reliable results. The presented framework can be extended to other fire-prone regions where accurate measurements of fuel components are needed. We hope this study will contribute to the expansion of spaceborne lidar applications for integrated fire management activities and supporting carbon monitoring initiatives in tropical savannas worldwide.
KW - Active remote sensing
KW - Fire
KW - Modeling
KW - Machine learning
KW - UAV-lidar
KW - Cerrado
KW - Vegetation structure
U2 - 10.1016/j.rse.2021.112764
DO - 10.1016/j.rse.2021.112764
M3 - Article
VL - 268
JO - Remote Sensing of Environment
JF - Remote Sensing of Environment
SN - 0034-4257
M1 - 112764
ER -