Estimating the Aboveground Biomass of an Evergreen Broadleaf Forest in Xuan Lien Nature Reserve, Thanh Hoa, Vietnam, Using SPOT-6 Data and the Random Forest Algorithm

2020 | journal article. A publication with affiliation to the University of Göttingen.

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​Estimating the Aboveground Biomass of an Evergreen Broadleaf Forest in Xuan Lien Nature Reserve, Thanh Hoa, Vietnam, Using SPOT-6 Data and the Random Forest Algorithm​
Nguyen, T. D. & Kappas, M.​ (2020) 
International Journal of Forestry Research2020 art. 4216160​.​ DOI: https://doi.org/10.1155/2020/4216160 

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Authors
Nguyen, The Dung; Kappas, Martin
Abstract
Forest biomass is an important ecological indicator for the sustainable management of forests. The aim of this study was to estimate forest aboveground biomass (AGB) by integrating SPOT-6 data with field-based measurements using the random forest (RF) algorithm. In total, 52 remote sensing variables, including spectral bands, vegetation indices, topography data, and textures, were extracted from SPOT-6 images to predict the forest AGB of Xuan Lien Nature Reserve, Vietnam. To determine the optimal predictor variables for AGB estimation, 10 different RF models were built. To evaluate these models, 10-fold cross-validation was applied. We found that a combination of spectral and vegetation indices and topography variables offer the highest prediction results ( R$^2_{\textit{adj}}$ = 0.74 and RMSE = 61.24 Mg ha$^{−1}$). Adding texture features into the predictor variables did not improve the model performance. In addition, the SPOT-6 sensor has the potential to predict forest AGB using the RF algorithm.
Issue Date
2020
Journal
International Journal of Forestry Research 
Organization
Fakultät für Geowissenschaften und Geographie
ISSN
1687-9368
eISSN
1687-9376
Language
English
Sponsor
Open-Access-Publikationsfonds 2020

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