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Combining remote sensing imagery and forest age inventory for biomass mapping

机译:结合遥感影像和林木存量进行生物量测绘

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Aboveground biomass (AGB) of forests is an important component of the global carbon cycle. In this study, Landsat ETM~+ images and field forest inventory data were used to estimate AGB of forests in Liping County, Guizhou Province, China. Three different vegetation indices, including simple ratio (SR), reduced simple ratio (RSR), and normalized difference vegetation index (NDVI), were calculated from atmospherically corrected ETM~+ reflectance images. A leaf area index (LAI) map was produced from the RSR map using a regression model based on measured LAI and RSR. The LAI map was then used to develop an initial AGB map, from which forest stand age was deduced. Vegetation indices, LAI, and forest stand age were together used to develop AGB estimation models for different forest types through a stepwise regression analysis. Significant predictors of AGB changed with forest types. LAI and NDVI were significant predictors of AGB for Chinese fir (R~2 = 0.93). The model using LAI and stand age as predictors explained 94% of the AGB variance for coniferous forests. Stand age captured 79% of the AGB variance for broadleaved forests (R~2 = 0.792). AGB of mixed forests was predicted well by LAI and SR (R~2 = 0.931). Without differentiating among forest types, the model with SR and LAI as predictors was able to explain 90% of AGB variances of all forests. In Liping County, AGB shows a strong gradient that increases from northeast to southwest. About 64% of the forests have AGB in the range from 90 to 180 tha~(-1).
机译:森林的地上生物量(AGB)是全球碳循环的重要组成部分。在这项研究中,Landsat ETM〜+图像和野外森林清单数据被用于估算中国贵州省黎平县的森林AGB。从大气校正后的ETM〜+反射率图像中计算出三种不同的植被指数,包括简单比率(SR),简化比率(RSR)和归一化差异植被指数(NDVI)。使用基于测得的LAI和RSR的回归模型,从RSR图生成叶面积指数(LAI)图。然后将LAI图用于开发初始AGB图,从中推论出林分年龄。通过逐步回归分析,将植被指数,LAI和林分年龄共同用于开发针对不同森林类型的AGB估算模型。 AGB的重要预测因子随森林类型而变化。 LAI和NDVI是杉木AGB的重要预测因子(R〜2 = 0.93)。该模型使用LAI和林分年龄作为预测因子,解释了针叶林AGB变异的94%。阔叶林的林分年龄捕获了AGB变化的79%(R〜2 = 0.792)。通过LAI和SR可以很好地预测混交林的AGB(R〜2 = 0.931)。在不区分森林类型的情况下,以SR和LAI作为预测因子的模型能够解释所有森林90%的AGB变化。在黎平县,AGB表现出从东北到西南逐渐增加的强烈梯度。大约64%的森林的AGB在90到180 tha〜(-1)之间。

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