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首页> 外文期刊>Scandinavian Journal of Forest Research >Weibull and percentile models for lidar-based estimation of basal area distribution.
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Weibull and percentile models for lidar-based estimation of basal area distribution.

机译:基于激光雷达的基础面积分布估计的Weibull和百分位模型。

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The aim of this study was to assess the accuracy of basal area distributions of sample plots in coniferous forest derived from small-footprint airborne laser scanner data, and to compare the accuracy of two methods for derivation of such distributions based on: (1) two percentiles of a two-parameter Weibull and parameter recovery, and (2) a system of 10 percentiles defined across the range of observed diameters. The 12 percentiles were derived from the empirical basal area distributions of 141 plots with size 300-400 m2. Regression analysis was used to relate the percentiles to various canopy height and canopy density metrics derived from the laser data. On average, the distance between transmitted laser pulses was 0.9 m on the ground. The plots were divided into three strata according to age class and site quality. The stratum-specific regressions explained 7-91% of the variability. Total plot volume predicted from the estimated distributions was used to assess the accuracy of the regressions. Cross-validation of the regressions revealed a bias of -1.2 to 2.1% between predicted and ground-truth values of plot volume. The standard deviations of the differences between predicted and ground-truth values of plot volume were 15.1-16.4%. Neither bias nor standard deviation differed significantly between the two validated methods..
机译:这项研究的目的是评估从小尺寸机载激光扫描仪数据得出的针叶林样本地的基础面积分布的准确性,并比较基于以下两种方法得出此类分布的两种方法的准确性:(1)两种两参数Weibull和参数恢复的百分位数,以及(2)在观察到的直径范围内定义的10个百分位数的系统。这12个百分点来自141个面积为300-400平方米的地块的经验基础区域分布。回归分析用于将百分位数与从激光数据得出的各种冠层高度和冠层密度度量相关联。平均而言,地面上发射激光脉冲之间的距离为0.9 m。根据年龄等级和场地质量将地块分为三个层次。特定于阶层的回归解释了7-91%的变异性。根据估计分布预测的总样地体积用于评估回归的准确性。回归的交叉验证显示,样地体积的预测值与真实值之间存在-1.2至2.1%的偏差。样地体积的预测值与实际值之间的差异的标准偏差为15.1-16.4%。两种验证方法之间的偏差和标准偏差均无显着差异。

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