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Effective number of layers: A new measure for quantifying three-dimensional stand structure based on sampling with terrestrial LiDAR

机译:有效层数:一种基于地面LiDAR采样的量化三维展台结构的新措施

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The relevance of stand structural heterogeneity for biodiversity conservation is increasingly recognized and efficient tools for its measurement are demanded. Here, we quantified forest structure by calculating the effective number of layers (ENL) for different Hill Numbers (0D, 1D, 2D) as a measure of vertical structure of a subplot. We than use sampling techniques to cover the horizontal structural variability within study plots. ENL describes the vertical structure based on the occupation of 1 m wide vertical layers by tree components relative to the total space occupation of a stand. Space occupation was quantified by a voxel-model obtained from terrestrial laser scanning (TLS) on 150 forest plots in Germany. We used a single scan approach, which requires less field work and post-processing compared to multiple-scans. Single-scan derived mean ENL and its coefficient of variation successfully differentiated forest structures over a wide range of even-aged, uneven-aged and unmanaged broadleaved and coniferous stands. ENL was correlated to the stand summary measures basal area, quadratic mean diameter and stem density as well as stand age. ENL can be used to describe structural heterogeneity and proved to be efficiently assessable by TLS. (C) 2016 Elsevier B.V. All rights reserved.
机译:林分结构异质性与生物多样性保护的相关性日益得到认可,并需要有效的测量手段。在这里,我们通过计算不同希尔数(0D,1D,2D)的有效层数(ENL)来量化森林结构,以作为子图垂直结构的度量。然后,我们将使用抽样技术来覆盖研究区域内的水平结构变异性。 ENL描述了垂直结构,该结构基于树木成分相对于架子总空间占用的1 m宽的垂直层占用。通过从德国150个森林地块上的陆地激光扫描(TLS)获得的体素模型对空间占用进行了量化。我们使用了单次扫描方法,与多次扫描相比,它需要较少的现场工作和后处理。单次扫描得出的平均ENL及其变异系数成功地区分了大范围的均匀年龄,不均匀年龄和未管理的阔叶和针叶林林结构。 ENL与林分摘要测量的基础面积,二次平均直径和茎密度以及林分年龄相关。 ENL可用于描述结构异质性,并证明可以通过TLS有效评估。 (C)2016 Elsevier B.V.保留所有权利。

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