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Estimating aboveground carbon using airborne LiDAR in Cambodian tropical seasonal forests for REDD+ implementation

机译:使用机载LiDAR估算柬埔寨热带季节性森林中的地上碳,以实现REDD +

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We developed an empirical model to estimate aboveground carbon density with variables derived from airborne Light Detection and Ranging (LiDAR) in tropical seasonal forests in Cambodia, and assessed the effects of LiDAR pulse density on the accurate estimation of aboveground carbon density. First, we tested the applicability of variables used for estimating aboveground carbon density with the original LiDAR pulse density data (26 pulse m−2). Aboveground carbon density was regressed against variables derived from airborne LiDAR. Three individual height variable models were developed along with a canopy density model, and three other models combined canopy height and canopy density variables. The influence of forest type on model accuracy was also assessed. Next, the relationship between pulse density and estimation accuracy was investigated using the best regression model. The accuracy of the models were compared based on seven LiDAR point densities consisting of 0.25, 1, 2, 3, 4, 5 and 10 pulse m−2. The best model was obtained using the single mean canopy height (MCH) model (R 2  = 0.92) with the original pulse density data. The relationship between MCH and aboveground carbon density was found to be consistent under different forest types. The differences between predicted and measured residual mean of squares of deviations were less than 1.5 Mg C ha−1 between each pulse density. We concluded that aboveground carbon density can be estimated using MCH derived from airborne LiDAR in tropical seasonal forests in Cambodia even with a low pulse density of 0.25 pulse m−2 without stratifying the study area based on forest type.
机译:我们开发了一个经验模型,该模型使用柬埔寨热带季节性森林中的机载光检测和测距(LiDAR)得出的变量来估算地上碳密度,并评估了LiDAR脉冲密度对准确估算地上碳密度的影响。首先,我们使用原始的LiDAR脉冲密度数据(26脉冲m-2)测试了用于估算地上碳密度的变量的适用性。地上碳密度针对机载LiDAR得出的变量进行回归。与冠层密度模型一起开发了三个单独的高度变量模型,其他三个模型结合了冠层高度和冠层密度变量。还评估了森林类型对模型准确性的影响。接下来,使用最佳回归模型研究了脉冲密度与估计精度之间的关系。基于0.25、1、2、3、4、5和10脉冲m-2的七个LiDAR点密度比较了模型的准确性。使用单一平均冠层高度(MCH)模型(R 2 = 0.92)和原始脉冲密度数据获得最佳模型。在不同的森林类型下,MCH与地上碳密度之间的关系是一致的。每个脉冲密度之间的预测和测量残留均方差之间的差异小于1.5 Mg C ha-1。我们得出的结论是,即使在0.25脉冲m-2的低脉冲密度的情况下,也可以使用柬埔寨Lida的机载LiDAR产生的MCH估算地上碳密度,而无需根据森林类型对研究区域进行分层。

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