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Predicting tree heights for biomass estimates in tropical forests – a test from French Guiana

机译:为热带森林中的生物量评估预测树高–法属圭亚那的测试

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pstrongAbstract./strong The recent development of REDD+ mechanisms requires reliable estimation of carbon stocks, especially in tropical forests that are particularly threatened by global changes. Even though tree height is a crucial variable for computing aboveground forest biomass (AGB), it is rarely measured in large-scale forest censuses because it requires extra effort. Therefore, tree height has to be predicted with height models. brbr The height and diameter of all trees over 10 cm in diameter were measured in 33 half-hectare plots and 9 one-hectare plots throughout northern French Guiana, an area with substantial climate and environmental gradients. We compared four different model shapes and found that the Michaelisa??Menten shape was most appropriate for the tree biomass prediction. Model parameter values were significantly different from one forest plot to another, and this leads to large errors in biomass estimates. brbr Variables from the forest stand structure explained a sufficient part of plot-to-plot variations of the height model parameters to improve the quality of the AGB predictions. In the forest stands dominated by small trees, the trees were found to have rapid height growth for small diameters. In forest stands dominated by larger trees, the trees were found to have the greatest heights for large diameters. The aboveground biomass estimation uncertainty of the forest plots was reduced by the use of the forest structure-based height model. It demonstrated the feasibility and the importance of height modeling in tropical forests for carbon mapping. When the tree heights are not measured in an inventory, they can be predicted with a heighta??diameter model and incorporating forest structure descriptors may improve the predictions./p.
机译:> >摘要。REDD +机制的最新发展要求可靠地估算碳储量,尤其是在受到全球变化特别威胁的热带森林中。尽管树高是计算地上森林生物量(AGB)的关键变量,但由于需要额外的努力,因此在大规模森林普查中很少对其进行测量。因此,必须使用高度模型来预测树的高度。 在法属圭亚那北部的33个半公顷土地和9个1公顷土地中测量了直径超过10厘米的所有树木的高度和直径,该地区气候和环境梯度很大。我们比较了四种不同的模型形状,发现Michaelisa?Menten形状最适合树木生物量的预测。一个森林地的模型参数值与另一个森林地的模型参数值显着不同,这导致生物量估计中的巨大误差。 来自林分结构的变量解释了高度模型参数的地对空变化的足够部分,以提高AGB预测的质量。在以小树为主的林分中,发现小直径树木的高度会快速增长。在以大树为主的林分中,发现树木直径较大时身高最高。通过使用基于森林结构的高度模型,减少了林地的地上生物量估计不确定性。它证明了在热带森林中进行高空建模以进行碳测绘的可行性和重要性。当未在清单中测量树高时,可以使用身高-直径模型进行预测,并结合森林结构描述符可以改善预测。

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