Section for Biodiversity, Department of Bioscience, Kalø, Aarhus University, Grenåvej 14, DK-8410, Rønde, Denmark.
Section for Ecoinformatics and Biodiversity, Department of Bioscience, Aarhus University, Ny Munkegade 114, DK-8000, Aarhus C, Denmark.
Ecol Appl. 2019 Jul;29(5):e01907. doi: 10.1002/eap.1907. Epub 2019 May 14.
Effective planning and nature management require spatially accurate and comprehensive measures of the factors important for biodiversity. Light detection and ranging (LIDAR) can provide exactly this, and is therefore a promising technology to support future nature management and related applications. However, until now studies evaluating the potential of LIDAR for this field have been highly limited in scope. Here, we assess the potential of LIDAR to estimate the local diversity of four species groups in multiple habitat types, from open grasslands and meadows over shrubland to forests and across a large area (~43,000 km ), providing a crucial step toward enabling the application of LIDAR in practice, planning, and policy-making. We assessed the relationships between the species richness of macrofungi, lichens, bryophytes, and plants, respectively, and 25 LIDAR-based measures related to potential abiotic and biotic diversity drivers. We used negative binomial generalized linear modeling to construct 19 different candidate models for each species group, and leave-one-region-out cross validation to select the best models. These best models explained 49%, 31%, 32%, and 28% of the variation in species richness (R ) for macrofungi, lichens, bryophytes, and plants, respectively. Three LIDAR measures, terrain slope, shrub layer height and variation in local heat load, were important and positively related to the richness in three of the four species groups. For at least one of the species groups, four other LIDAR measures, shrub layer density, medium-tree layer density, and variations in point amplitude and in relative biomass, were among the three most important. Generally, LIDAR measures exhibited strong associations to the biotic environment, and to some abiotic factors, but were poor measures of spatial landscape and temporal habitat continuity. In conclusion, we showed how well LIDAR alone can predict the local biodiversity across habitats. We also showed that several LIDAR measures are highly correlated to important biodiversity drivers, which are notoriously hard to measure in the field. This opens up hitherto unseen possibilities for using LIDAR for cost-effective monitoring and management of local biodiversity across species groups and habitat types even over large areas.
有效的规划和自然管理需要对生物多样性的重要因素进行空间准确和全面的测量。激光雷达(LIDAR)可以提供这种测量,因此是支持未来自然管理和相关应用的有前途的技术。然而,直到现在,评估 LIDAR 在这一领域潜力的研究在范围上受到了极大的限制。在这里,我们评估了 LIDAR 用于估计多种生境类型(从开阔的草地和草地到灌木林和森林)中四个物种组的局部多样性的潜力,覆盖了约 43000 平方公里的大面积,为在实践、规划和决策中应用 LIDAR 提供了关键的一步。我们评估了宏观真菌、地衣、苔藓和植物的物种丰富度与 25 个基于 LIDAR 的与潜在生物多样性驱动因素相关的措施之间的关系。我们使用负二项广义线性模型为每个物种组构建了 19 个不同的候选模型,并通过留一区域交叉验证选择最佳模型。这些最佳模型分别解释了宏观真菌、地衣、苔藓和植物的物种丰富度(R)的 49%、31%、32%和 28%。地形坡度、灌木层高度和局部热负荷变化等三个 LIDAR 措施对四个物种组中的三个物种的丰富度具有重要意义且呈正相关。对于至少一个物种组,LIDAR 措施中的四个其他措施(灌木层密度、中树层密度以及点振幅和相对生物量的变化)是三个最重要的措施之一。一般来说,LIDAR 措施与生物环境以及一些非生物因素有很强的关联,但对空间景观和时间生境连续性的测量效果不佳。总之,我们展示了 LIDAR 单独预测跨生境局部生物多样性的能力。我们还表明,一些 LIDAR 措施与重要的生物多样性驱动因素高度相关,而这些因素在实地测量中非常困难。这为使用 LIDAR 进行具有成本效益的监测和管理跨物种组和生境类型的局部生物多样性,甚至在大面积上,开辟了前所未有的可能性。