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Requirements of a habitat specialist in Swiss mountain forests – an assessment of forest structure and composition using laser remote sensing and field data

机译:瑞士山区森林中的栖息地专家的要求–使用激光遥感和野外数据评估森林结构和组成

摘要

Species richness in forest ecosystems largely depends on habitat structure and composition. These attributes can be assessed in field surveys, however, such data often lacks in spatial extent. Remote sensing technologies such as light detection and ranging (LiDAR) provide alternative tools to quantify structural elements across relatively broad areas at a fine resolution. To study the habitat requirements of hazel grouse (Bonasa bonasia), an indicator species of structurally rich forest stands, we assessed the structure and composition of Swiss mountain forests over three biogeographical regions.\udWe designed a sample based field survey of forest structure and composition and a LiDAR based assessment of vertical and horizontal forest structures using a nationwide LiDAR dataset with a mean point density of 1.4 m2. The dependent variable consisted of hazel grouse presence/absence data at a resolution of 1 km2. Species distribution models were computed for both variable sets separately and in combination, using boosted regression trees, a statistical machine learning technique.\udModel performance assessment based on explained deviance and AUC showed that the combined model performed best, with over 55% explained deviance in the observed data, followed by the field and LiDAR models. The field model revealed that hazel grouse favored evenly distributed, rich ground vegetation, optimally with a substantial portion of bilberry (Vaccinium myrtillus). The abundance of tall rowans (Sorbus aucuparia), basal branched trees and a high percentage of resource trees in the shrub layer were found to be further essential habitat elements. LiDAR was powerful in detecting important structural features, whereby the horizontal forest structure explained more of the deviance than the vertical forest structure. The most influential LiDAR variable was a measure of canopy height heterogeneity. Apart from indicating structurally rich forest stands, it probably also served as a proxy of compositional aspects such as the abundance of light demanding resource trees and shrubs or of a well developed ground vegetation. To support habitat management, we derived variable thresholds at a relevant spatial scale (1 km2) for forest management.\udOur study showed that LiDAR provides adequate means to assess structural habitat elements area-wide, thus overcoming the difficulties associated with sample based field assessments. The best model fit, however, was obtained by combining LiDAR variables with compositional variables from the field survey. Hence, we successfully bridged the gap between different ecologically relevant scales, such as habitat configuration and structure at the regional scale and the abundance of habitat elements at the local scale. The methods applied in this study can also be used to identify hotspots of forest structural richness, a matter of interest in the light of emerging attempts to conserve biodiversity in forests.
机译:森林生态系统中的物种丰富度在很大程度上取决于栖息地的结构和组成。这些属性可以在野外调查中进行评估,但是,此类数据通常缺乏空间范围。诸如光检测和测距(LiDAR)之类的遥感技术提供了替代工具,可以以较高分辨率对相对广泛的区域中的结构元素进行量化。为了研究榛松鸡(Bonasa bonasia)(结构丰富的林分的指示物种)的栖息地需求,我们评估了三个生物地理区域上瑞士山区森林的结构和组成。\ ud我们设计了基于样本的森林结构和组成实地调查并使用平均点密度为1.4 m2的全国性LiDAR数据集基于LiDAR的垂直和水平森林结构评估。因变量由榛子松鸡的有无数据组成,分辨率为1 km2。使用增强的回归树,一种统计机器学习技术,分别和组合地计算了两个变量集的物种分布模型。\ ud基于已解释的偏差和AUC的模型性能评估表明,组合模型表现最佳,其中超过55%的已解释偏差观察到的数据,然后是现场和LiDAR模型。田间模型表明,榛子松鸡有利于均匀分布,丰富的地面植被,最好是带有大量的越桔(越桔越桔)。灌木层中大量的高花row(花S),基部分支树和高比例的资源树被认为是进一步重要的生境要素。 LiDAR在检测重要的结构特征方面功能强大,因此水平森林结构比垂直森林结构更能说明偏差。最具影响力的LiDAR变量是冠层高度异质性的度量。除了指出结构上茂密的林分外,它还可以用作组成方面的替代,例如大量需要光的资源树和灌木丛或发达的地面植被。为了支持栖息地管理,我们在相关的空间规模(1 km2)下得出了用于森林管理的可变阈值。\ ud我们的研究表明,LiDAR提供了足够的手段来评估整个区域的结构性栖息地元素,从而克服了基于样本的田间评估带来的困难。但是,最好的模型拟合是通过将LiDAR变量与野外调查的成分变量相结合而获得的。因此,我们成功地弥合了与生态相关的不同尺度之间的差距,例如区域尺度上的栖息地配置和结构以及局部尺度上的丰富的栖息地元素。这项研究中使用的方法还可以用于确定森林结构丰富性的热点,鉴于保护森林生物多样性的新尝试正在引起人们关注。

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