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利用机载激光雷达数据改善低地和山地森林中植物物种丰富度和多样性监测。

Use of airborne lidar data to improve plant species richness and diversity monitoring in lowland and mountain forests.

作者信息

Bouvier Marc, Durrieu Sylvie, Gosselin Frédéric, Herpigny Basile

机构信息

Irstea, UMR TETIS, 500 rue Jean-François Breton, Montpellier, France.

Info Geo Drones, Pépinière d'Entreprises Versailles Grand Parc, Versailles, France.

出版信息

PLoS One. 2017 Sep 13;12(9):e0184524. doi: 10.1371/journal.pone.0184524. eCollection 2017.

Abstract

We explored the potential of airborne laser scanner (ALS) data to improve Bayesian models linking biodiversity indicators of the understory vegetation to environmental factors. Biodiversity was studied at plot level and models were built to investigate species abundance for the most abundant plants found on each study site, and for ecological group richness based on light preference. The usual abiotic explanatory factors related to climate, topography and soil properties were used in the models. ALS data, available for two contrasting study sites, were used to provide biotic factors related to forest structure, which was assumed to be a key driver of understory biodiversity. Several ALS variables were found to have significant effects on biodiversity indicators. However, the responses of biodiversity indicators to forest structure variables, as revealed by the Bayesian model outputs, were shown to be dependent on the abiotic environmental conditions characterizing the study areas. Lower responses were observed on the lowland site than on the mountainous site. In the latter, shade-tolerant and heliophilous species richness was impacted by vegetation structure indicators linked to light penetration through the canopy. However, to reveal the full effects of forest structure on biodiversity indicators, forest structure would need to be measured over much wider areas than the plot we assessed. It seems obvious that the forest structure surrounding the field plots can impact biodiversity indicators measured at plot level. Various scales were found to be relevant depending on: the biodiversity indicators that were modelled, and the ALS variable. Finally, our results underline the utility of lidar data in abundance and richness models to characterize forest structure with variables that are difficult to measure in the field, either due to their nature or to the size of the area they relate to.

摘要

我们探讨了机载激光扫描仪(ALS)数据在改进贝叶斯模型方面的潜力,该模型将林下植被的生物多样性指标与环境因素联系起来。在样地水平上研究生物多样性,并建立模型来调查每个研究地点最丰富植物的物种丰度,以及基于光照偏好的生态组丰富度。模型中使用了与气候、地形和土壤性质相关的常见非生物解释因素。利用两个形成对比的研究地点可获取的ALS数据,来提供与森林结构相关的生物因素,而森林结构被认为是林下生物多样性的关键驱动因素。发现几个ALS变量对生物多样性指标有显著影响。然而,贝叶斯模型输出显示,生物多样性指标对森林结构变量的响应取决于研究区域的非生物环境条件。在低地站点观察到的响应低于山区站点。在山区,耐荫和喜阳物种的丰富度受到与冠层透光率相关的植被结构指标的影响。然而,为了揭示森林结构对生物多样性指标的全面影响,需要在比我们评估的样地更广阔的区域测量森林结构。很明显,样地周围的森林结构会影响在样地水平测量的生物多样性指标。根据所建模的生物多样性指标和ALS变量,发现不同尺度是相关的。最后,我们的结果强调了激光雷达数据在丰度和丰富度模型中的效用,以便用因性质或所涉及区域大小而难以在实地测量的变量来表征森林结构。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e25e/5597197/ac5ed4ab08c9/pone.0184524.g001.jpg

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