

Author: Dube Timothy Mutanga Onisimo Adam Elhadi Ismail Riyad
Publisher: MDPI
E-ISSN: 1424-8220|14|8|15348-15370
ISSN: 1424-8220
Source: Sensors, Vol.14, Iss.8, 2014-08, pp. : 15348-15370
Disclaimer: Any content in publications that violate the sovereignty, the constitution or regulations of the PRC is not accepted or approved by CNPIEC.
Abstract
The quantification of aboveground biomass using remote sensing is critical for better understanding the role of forests in carbon sequestration and for informed sustainable management. Although remote sensing techniques have been proven useful in assessing forest biomass in general, more is required to investigate their capabilities in predicting intra-and-inter species biomass which are mainly characterised by non-linear relationships. In this study, we tested two machine learning algorithms, Stochastic Gradient Boosting (SGB) and Random Forest (RF) regression trees to predict intra-and-inter species biomass using high resolution RapidEye reflectance bands as well as the derived vegetation indices in a commercial plantation. The results showed that the SGB algorithm yielded the best performance for intra-and-inter species biomass prediction; using all the predictor variables as well as based on the most important selected variables. For example using the most important variables the algorithm produced an R2 of 0.80 and RMSE of 16.93 t·ha−1 for
Related content






By Yeong-Sung Lin Frank Hsiao Chiu-Han Shih-Chang Lin Leo Wen Yean-Fu
Sensors, Vol. 13, Iss. 3, 2013-03 ,pp. :




An Acousto-Optical Sensor with High Angular Resolution
By Kaloshin Gennady Lukin Igor
Sensors, Vol. 12, Iss. 3, 2012-03 ,pp. :