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Assessing biomass based on canopy height profiles using airborne laser scanning data in eucalypt plantations

机译:在桉树人工林中利用机载激光扫描数据基于冠层高度剖面评估生物量

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摘要

This study aimed to map the stem biomass of an even-aged eucalyptus plantation in southeastern Brazil based on canopy height profile (CHPs) statistics using wall-to-wall discrete return airborne laser scanning (ALS), and compare the results with alternative maps generated by ordinary kriging interpolation from field-derived measurements. The assessment of stem biomass with ALS data was carried out using regression analysis methods. Initially, CHPs were determined to express the distribution of laser point heights in the ALS cloud for each sample plot. The probability density function (pdf) used was the Weibull distribution, with two parameters that in a secondary task, were used as explanatory variables to model stem biomass. ALS metrics such as height percentiles, dispersion of heights, and proportion of points were also investigated. A simple linear regression model of stem biomass as a function of the Weibull scale parameter showed high correlation (adj.R-2 = 0.89). The alternative model considering the 30th percentile and the Weibull shape parameter slightly improved the quality of the estimation (adj.R-2 = 0.93). Stem biomass maps based on the Weibull scale parameter doubled the accuracy of the ordinary kriging approach (relative root mean square error = 6 % and 13 %, respectively).
机译:这项研究旨在利用冠层高度分布(CHPs)统计数据,使用墙对墙离散返回机载激光扫描(ALS),绘制巴西东南部一个均匀年龄的桉树人工林的茎生物量,并将其结果与生成的其他图进行比较通过基于场的测量的普通克里格插值法。使用回归分析方法对具有ALS数据的茎生物量进行评估。最初,确定CHP以表示每个样品图在ALS云中激光点高度的分布。使用的概率密度函数(pdf)是Weibull分布,其中有两个参数在次要任务中用作解释变量,以模拟茎生物量。还研究了诸如高度百分比,高度分散和点比例之类的ALS度量标准。茎生物量随威布尔尺度参数变化的简单线性回归模型显示出高度相关性(adj.R-2 = 0.89)。考虑第30个百分位数和Weibull形状参数的替代模型稍微提高了估计的质量(adj.R-2 = 0.93)。基于Weibull尺度参数的茎生物量图将普通克里金法的精度提高了一倍(相对均方根误差分别为6%和13%)。

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