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Estimating the Above-Ground Biomass in Miombo Savanna Woodlands (Mozambique, East Africa) Using L-Band Synthetic Aperture Radar Data

机译:使用L波段合成孔径雷达数据估算Miombo Savanna林地(东非莫桑比克)的地上生物量

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The quantification of forest above-ground biomass (AGB) is important for such broader applications as decision making, forest management, carbon (C) stock change assessment and scientific applications, such as C cycle modeling. However, there is a great uncertainty related to the estimation of forest AGB, especially in the tropics. The main goal of this study was to test a combination of field data and Advanced Land Observing Satellite (ALOS) Phased Array L-band Synthetic Aperture Radar (PALSAR) backscatter intensity data to reduce the uncertainty in the estimation of forest AGB in the Miombo savanna woodlands of Mozambique (East Africa). A machine learning algorithm, based on bagging stochastic gradient boosting (BagSGB), was used to model forest AGB as a function of ALOS PALSAR Fine Beam Dual (FBD) backscatter intensity metrics. The application of this method resulted in a coefficient of correlation (R) between observed and predicted (10-fold cross-validation) forest AGB values of 0.95 and a root mean square error of 5.03 Mg·ha−1. However, as a consequence of using bootstrap samples in combination with a cross validation procedure, some bias may have been introduced, and the reported cross validation statistics could be overoptimistic. Therefore and as a consequence of the BagSGB model, a measure of prediction variability (coefficient of variation) on a pixel-by-pixel basis was also produced, with values ranging from 10 to 119% (mean = 25%) across the study area. It provides additional and complementary information regarding the spatial distribution of the error resulting from the application of the fitted model to new observations.
机译:森林地上生物量(AGB)的定量对于决策,森林管理,碳(C)储量变化评估和科学应用(例如C循环建模)等更广泛的应用非常重要。但是,尤其是在热带地区,与森林AGB的估算存在很大的不确定性。这项研究的主要目标是测试野外数据和高级陆地观测卫星(ALOS)相控阵L波段合成孔径雷达(PALSAR)背向散射强度数据的组合,以减少Miombo大草原森林AGB估算的不确定性莫桑比克(东非)的林地。使用基于装袋随机梯度增强(BagSGB)的机器学习算法对森林AGB进行建模,以作为ALOS PALSAR细光束双(FBD)反向散射强度指标的函数。此方法的应用导致观测到的森林AGB值与预测的(十倍交叉验证)的相关系数(R)为0.95,均方根误差为5.03 Mg·ha -1 。但是,由于将引导程序样本与交叉验证程序结合使用,可能会引入一些偏差,并且所报告的交叉验证统计信息可能过于乐观。因此,作为BagSGB模型的结果,还产生了逐像素的预测变异性(变异系数)的量度,整个研究区域的值范围为10%至119%(平均值= 25%)。 。它提供了有关由于将拟合模型应用于新观测值而导致的误差的空间分布的其他补充信息。

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