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Habitat assessment for forest dwelling species using LiDAR remote sensing: Capercaillie in the Alps

机译:利用LiDAR遥感技术对森林居住物种进行栖息地评估:阿尔卑斯山的Capercaillie

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Large-scale information on habitat suitability is indispensable for planning management actions to further endangered species with large-spatial requirements. So far, remote sensing based habitat variables mostly included environmental and land cover data derived from passive sensors, but lacked information on vegetation structure. This is a serious constraint for the management of endangered species with specific structural requirements. Light detection and ranging (LiDAR), in contrast to passive remote sensing techniques, may bridge this gap in structural information at the landscape scale. We investigated the potential of LiDAR data to quantify habitat suitability for capercaillie (Tetrao urogallus), an endangered forest grouse in Central Europe, in a forest reserve of 17.7km super(2). We used continuous variables of horizontal and vertical stand structure from first and last pulse LiDAR data and presence-absence information from field work to model habitat suitability with generalized linear models (GLM). The two final habitat suitability models explained the observed presence-absence pattern moderately well (AUC of 0.71 and 0.77) with horizontal structure explaining better than vertical structure. Relative tree canopy cover was the most important variable with intermediate values indicating highest habitat suitability. As such, LiDAR allowed us to translate the results from habitat modeling at the landscape scale to effective management recommendations at the local scale at a level of detail that hitherto was unavailable for large areas. LiDAR thus enabled us to integrate individual habitat preferences at the scale of entire populations and thus offers great potential for effective habitat monitoring and management of endangered species.
机译:关于栖息地适应性的大规模信息对于规划管理行动以进一步应对具有大空间需求的濒危物种是必不可少的。到目前为止,基于遥感的栖息地变量主要包括从被动传感器获得的环境和土地覆盖数据,但缺乏有关植被结构的信息。对于具有特定结构要求的濒危物种的管理,这是一个严重的限制。与被动遥感技术相比,光检测和测距(LiDAR)可以在景观尺度上弥补结构信息中的这一空白。我们调查了LiDAR数据在量化17.7 km超级森林保护区中中部濒危森林松鸡Capercaillie(Tetrao urogallus)的栖息地适宜性方面的潜力(2)。我们使用来自第一个和最后一个脉冲LiDAR数据的水平和垂直林分结构的连续变量,以及来自野外工作的存在信息,以广义线性模型(GLM)来模拟栖息地的适宜性。两种最终的生境适应性模型均较好地解释了观察到的存在模式(AUC为0.71和0.77),其中水平结构比垂直结构更好。相对树冠覆盖度是最重要的变量,中间值指示最高的生境适应性。因此,LiDAR使我们能够将迄今为止在大范围内尚无法获得的详细信息,从景观尺度的栖息地建模结果转化为局部尺度的有效管理建议。因此,LiDAR使我们能够在整个种群的范围内整合各个栖息地的偏好,从而为有效地监测和管理濒危物种提供了巨大的潜力。

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