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Aboveground biomass estimation in a subtropical forest using airborne hyperspectral data

机译:使用空中高光谱数据在亚热带森林中地上地下生物量估计

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Accurate estimation of forest biomass is critical in the study of global carbon balance and climate change. This research was undertaken in the Yushan forest, in southeast china. We used metrics extracted from hyperspectral data as predictor variables to establish three types of biomass prediction models, and then the models are verified by cross-validation method. Overall, all of the three types of models were well predicted, the broad-leaved forest model was relatively high (Adj-R2=0.68), followed by coniferous forest (Adj-R2=0.65), and the mixed forest was relatively low (Adj-R2=0.63). It was also confirming that the vegetation indices (i.e., NDVI, NDVI_RE and GNDVI) were important in predicting biomass in subtropical forests. This method can be used to estimate the forest biomass in subtropical forest effectively.
机译:准确估算森林生物量在全球碳平衡和气候变化研究中至关重要。这项研究在中国东南部的玉山森林进行。我们使用从高光谱数据中提取的指标作为预测因子变量来建立三种类型的生物量预测模型,然后通过交叉验证方法验证模型。总体而言,所有三种类型的模型都预测,阔叶森林模型相对较高(ADJ-R2 = 0.68),其次是针叶林(ADJ-R2 = 0.65),混合森林相对较低( ADJ-R2 = 0.63)。它还证实,植被指数(即,NDVI,NDVI_RE和GNDVI)在预测亚热带林中的生物质方面是重要的。该方法可用于有效地估算亚热带林中的森林生物量。

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