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Influence of sample selection method and estimation technique on sample size requirements for wall-to-wall estimation of volume using airborne LiDAR

机译:样品选择方法及估计技术对使用空气驾驶员的壁到墙体估计样品尺寸要求的影响

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摘要

Light detection and ranging (LiDAR) is commonly used to predict forest inventory attributes of interest across large regions. Most studies utilize model-derived estimators whose performances are affected by training data, and give less attention to using design-derived estimators. The influence of sample design and estimation method is an important consideration for determining sample sizes or calibration plot densities; however, this has not been systematically explored, particularly in mixed-species forests. In this study, 10 sample selection methods (four equal probability and six variable probability selection methods) and six estimation techniques (two model-derived and four sample-derived estimators) across a range of sample sizes are evaluated using LiDAR-derived predictions of volume per ha. Results show that the use of variable probability selection methods combined with sample-derived estimation techniques are more efficient than using model-derived estimates. Estimation technique had a greater effect on sample efficiency than did selection method, though specific combinations were more efficient than others. For example, random forest imputation was the most efficient at the lowest sample sizes (n 50); however, significant biases were obtained when used with variable probability selection methods. The required plot densities across the combinations of selection methods and estimation techniques used in this study ranged from one plot per 15.7-32.6 ha. Use of a variable probability selection method based on attributes derived directly from LiDAR point clouds coupled with a ratio or regression estimator was a very efficient LiDAR-assisted sampling design that should be considered more in the future.
机译:光检测和测距(LIDAR)通常用于预测大区域患有兴趣的森林库存属性。大多数研究利用其性能受到培训数据影响的模型导出的估计,并对使用设计衍生估算者不太注意。样品设计和估计方法的影响是确定样本尺寸或校准绘图密度的重要考虑因素;然而,这尚未系统地探索,特别是在混合物种森林中。在本研究中,使用LIDAR导出的体积预测,评估10个样本选择方法(四个相等概率和六个可变概率选择方法)和六种样本尺寸的估计技术(两个模型导出和四个样本导出的估计器)每人公顷。结果表明,使用可变概率选择方法与样品推导估计技术相结合的是比使用模型导出的估计更有效。估计技术对样品效率的影响比选择方法更大,尽管特定组合比其他组合更有效。例如,随机森林估算是最低样的样本尺寸(n <50)中最有效;然而,当与可变概率选择方法一起使用时获得了显着的偏差。本研究中使用的选择方法和估计技术中所需的绘制密度范围从每15.7-32.6公顷的一个曲线。使用基于直接从与比率或回归估计器耦合的LIDAR点云导出的属性的可变概率选择方法是一个非常有效的激光乐辅助采样设计,应该在将来更加考虑。

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  • 来源
    《Forestry》 |2019年第3期|共13页
  • 作者单位

    Univ New Brunswick Fac Forestry &

    Environm Management Fredericton NB E3B 5A3 Canada;

    Univ New Brunswick Fac Forestry &

    Environm Management Fredericton NB E3B 5A3 Canada;

    Univ Maine Ctr Res Sustainable Forests Orono ME 04469 USA;

    Natl Taiwan Univ Sch Forestry &

    Resource Conservat Taipei 10617 Taiwan;

    Nova Scotia Nat Resource Forestry Div Truro NS B2N 0G9 Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 林业;
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