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Estimating aboveground biomass in forest and oil palm plantation in Sabah, Malaysian Borneo using ALOS PALSAR data
Authors:Alexandra C Morel  Sassan S SaatchiYadvinder Malhi  Nicholas J BerryLindsay Banin  David BurslemReuben Nilus  Robert C Ong
Institution:a Environmental Change Institute, School of Geography and the Environment, University of Oxford, Oxford, OX1 3QY, United Kingdom
b NASA Jet Propulsion Laboratory (JPL), California Institute of Technology, Pasadena, CA 91109, United States
c Ecometrica, Edinburgh, EH9 1PJ, United Kingdom
d School of Geography, University of Leeds, Leeds, LS2 9JT, United Kingdom
e School of Biological Sciences, University of Aberdeen, AB24 3UU, United Kingdom
f Sabah Forestry Department Forest Research Centre, Sandakan, Sabah, Malaysia
Abstract:Conversion of tropical forests to oil palm plantations in Malaysia and Indonesia has resulted in large-scale environmental degradation, loss of biodiversity and significant carbon emissions. For both countries to participate in the United Nation’s REDD (Reduced Emission from Deforestation and Degradation) mechanism, assessment of forest carbon stocks, including the estimated loss in carbon from conversion to plantation, is needed. In this study, we use a combination of field and remote sensing data to quantify both the magnitude and the geographical distribution of carbon stock in forests and timber plantations, in Sabah, Malaysia, which has been the site of significant expansion of oil palm cultivation over the last two decades. Forest structure data from 129 ha of research and inventory plots were used at different spatial scales to discriminate forest biomass across degradation levels. Field data was integrated with ALOS PALSAR (Advanced Land-Observing Satellite Phased Array L-band Synthetic Aperture Radar) imagery to both discriminate oil palm plantation from forest stands, with an accuracy of 97.0% (κ = 0.64) and predict AGB using regression analysis of HV-polarized PALSAR data (R2 = 0.63, p < .001). Direct estimation of AGB from simple regression models was sensitive to both environmental conditions and forest structure. Precipitation effect on the backscatter data changed the HV prediction of AGB significantly (R2 = 0.21, p < .001), and scattering from large leaves of mature palm trees significantly impeded the use of a single HV-based model for predicting AGB in palm oil plantations. Multi-temporal SAR data and algorithms based on forest types are suggested to improve the ability of a sensor similar to ALOS PALSAR for accurately mapping and monitoring forest biomass, now that the ALOS PALSAR sensor is no longer operational.
Keywords:AGB  aboveground biomass  ALOS-PALSAR  Advanced Land-Observing Satellite Phased Array L-band Synthetic Aperture Radar  AMSR-E  Advanced Microwave Scanning Radiometer - Earth Observing System  DBH  diameter at breast height  FBD  fine beam dual-polarization  FRC  [Sabah] Forest Research Centre  FSC  Forest Stewardship Council  GPS  global positioning system  JERS-1  Japanese Earth Resources Satellite 1  MLC  maximum likelihood classification  RMSE  root mean square error  SAR  synthetic aperture radar  SSSB  Sabah Softwoods Sendirian Berhad
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