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Woody Aboveground Biomass Mapping of the Brazilian Savanna with a Multi-Sensor and Machine Learning Approach

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posted on 2021-04-21, 10:27 authored by Polyanna da Conceição Bispo, Pedro Rodríguez-Veiga, Barbara Zimbres, Sabrina do Couto de Miranda, Cassio Henrique Giusti Cezare, Sam Fleming, Francesca Baldacchino, Valentin Louis, Dominik Rains, Mariano Garcia, Fernando Del Bon Espírito-Santo, Iris Roitman, Ana María Pacheco-Pascagaza, Yaqing Gou, John Roberts, Kirsten Barrett, Laerte Guimaraes Ferreira, Julia Zanin Shimbo, Ane Alencar, Mercedes Bustamante, Iain Hector Woodhouse, Edson Eyji Sano, Jean Pierre Ometto, Kevin Tansey, Heiko Balzter
The tropical savanna in Brazil known as the Cerrado covers circa 23% of the Brazilian territory, but only 3% of this area is protected. High rates of deforestation and degradation in the woodland and forest areas have made the Cerrado the second-largest source of carbon emissions in Brazil. However, data on these emissions are highly uncertain because of the spatial and temporal variability of the aboveground biomass (AGB) in this biome. Remote-sensing data combined with local vegetation inventories provide the means to quantify the AGB at large scales. Here, we quantify the spatial distribution of woody AGB in the Rio Vermelho watershed, located in the centre of the Cerrado, at a high spatial resolution of 30 metres, with a random forest (RF) machine-learning approach. We produced the first high-resolution map of the AGB for a region in the Brazilian Cerrado using a combination of vegetation inventory plots, airborne light detection and ranging (LiDAR) data, and multispectral and radar satellite images (Landsat 8 and ALOS-2/PALSAR-2). A combination of random forest (RF) models and jackknife analyses enabled us to select the best remote-sensing variables to quantify the AGB on a large scale. Overall, the relationship between the ground data from vegetation inventories and remote-sensing variables was strong (R2 = 0.89), with a root-mean-square error (RMSE) of 7.58 Mg ha−1 and a bias of 0.43 Mg ha−1.

Funding

The authors were supported by the Forests 2020 project from UK Space Agency’s International Partnership Programme (IPP) under the Global Challenge Research Fund (GCRF). P. Rodriguez-Veiga and H. Balzter were also supported by the UK’s Natural Environment Research Council, Agreement PR140015, between the NERC and National Centre for Earth Observation (NCEO) and ESA Biomass Climate Change Initiative (CCI+) project (4000123662/18/I-NB). S.C. Miranda was supported by the Edital Universal—CNPq (445420/2014-6). M. Bustamante was supported by the INCT MC Fase 2 CNPq (465501/2014-1).

History

Citation

Bispo, P.d.C.; Rodríguez-Veiga, P.; Zimbres, B.; do Couto de Miranda, S.; Henrique Giusti Cezare, C.; Fleming, S.; Baldacchino, F.; Louis, V.; Rains, D.; Garcia, M.; Del Bon Espírito-Santo, F.; Roitman, I.; Pacheco-Pascagaza, A.M.; Gou, Y.; Roberts, J.; Barrett, K.; Ferreira, L.G.; Shimbo, J.Z.; Alencar, A.; Bustamante, M.; Woodhouse, I.H.; Eyji Sano, E.; Ometto, J.P.; Tansey, K.; Balzter, H. Woody Aboveground Biomass Mapping of the Brazilian Savanna with a Multi-Sensor and Machine Learning Approach. Remote Sens. 2020, 12, 2685. https://doi.org/10.3390/rs12172685

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  • VoR (Version of Record)

Published in

Remote Sensing

Volume

12

Issue

17

Pagination

2685 - 2685

Publisher

MDPI

eissn

2072-4292

Acceptance date

2020-08-15

Copyright date

2020

Available date

2021-04-21

Language

en

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