...
首页> 外文期刊>Forest Ecology and Management >Estimating tropical tree diversity indices from forestry surveys: a method to integrate taxonomic uncertainty.
【24h】

Estimating tropical tree diversity indices from forestry surveys: a method to integrate taxonomic uncertainty.

机译:从林业调查中估算热带树木多样性指数:一种整合分类学不确定性的方法。

获取原文
获取原文并翻译 | 示例
           

摘要

Analyses of tree diversity and community composition in tropical rain forests are usually based either on general herbarium data or on a restricted number of botanical plots. Despite their high taxonomic accuracy, both types of data are difficult to extrapolate to landscape scales. Meanwhile, forestry surveys provide quantitative occurrence data on large areas, and are thus increasingly used for landscape-scale analyses of tree diversity. However, the reliability of these approaches has been challenged because of the ambiguity of the common (vernacular) names used by foresters and the complexity of tree taxonomy in those hyper-diverse communities. We developed and tested a novel approach to evaluate taxonomic reliability of forestry surveys and to propagate the resulting uncertainty in the estimates of several diversity indicators (alpha and beta entropy, Fisher-alpha and Sorensen similarity). Our approach is based on Monte-Carlo processes that simulate communities by taking into account the expected accuracy and reliability of common names. We tested this method in French Guiana, on 9 one-hectare plots (4279 trees - DBH 鈮?10 cm) for which both common names and standardized taxonomic determinations were available. We then applied our method of community simulation on large forestry inventories (560 ha) at the landscape scale and compared the diversity indices obtained for 10 sites with those computed from precise botanical determination situated at the same localities. We found that taxonomic reliability of forestry inventories varied from 22% (species level) to 83% (family level) in this Amazonian region. Indices computed directly with raw forestry data resulted in incorrect values, except for Gini-Simpson beta-diversity. On the contrary, our correction method provides more accurate diversity estimates, highly correlated with botanical measurements, for almost all diversity indices at both regional and local scales. We obtained a robust ranking of sites consistent with those shown by botanical inventories. These results show that (i) forestry inventories represent a significant part of taxonomic information, (ii) the relative diversity of regional sites can be successfully ranked using forestry inventory data using our method and (iii) forestry inventories can valuably contribute to the detection of large-scale diversity patterns when biases are well-controlled and corrected. The tools we developed as R-functions are available in supplementary material and can be adapted with local parameters to be used for forest management and conservation issues in other regional contexts.
机译:对热带雨林树木多样性和群落组成的分析通常基于植物标本室的总体数据或有限数量的植物园。尽管它们具有很高的分类学准确性,但是两种类型的数据都难以外推到景观尺度。同时,林业调查提供了大面积的定量发生数据,因此越来越多地用于树木多样性的景观尺度分析。但是,这些方法的可靠性一直受到挑战,因为林务员使用的通用(乡土)名称含混不清,而且在这些高多样性社区中树木分类法也很复杂。我们开发并测试了一种新颖的方法来评估林业调查的分类学可靠性,并在几种多样性指标(α和β熵,Fisher-α和Sorensen相似性)的估计中传播由此产生的不确定性。我们的方法基于蒙特卡洛流程,该流程通过考虑通用名称的预期准确性和可靠性来模拟社区。我们在法属圭亚那的9个单公顷地块(4279棵树-DBH≤10 cm)上测试了该方法,可以使用其通用名称和标准化分类学确定方法。然后,我们在景观规模上对大型林业清单(560公顷)应用了社区模拟方法,并将10个地点获得的多样性指数与根据相同地点的精确植物学确定计算得出的多样性指数进行了比较。我们发现,在这个亚马逊地区,林业清单的分类学可靠性从22%(物种水平)到83%(家庭水平)不等。除吉尼-辛普森(Gini-Simpson)β多样性外,直接用原始林业数据计算的指数得出的值不正确。相反,我们的校正方法为区域和地方范围内的几乎所有多样性指数提供了更准确的多样性估计,与植物学测量高度相关。我们获得了与植物目录所显示的站点一致的强大站点排名。这些结果表明(i)林业清单是分类信息的重要组成部分;(ii)可以使用我们的方法使用林业清单数据成功地对区域站点的相对多样性进行排名;以及(iii)林业清单可以对检测森林资源做出重要贡献。偏差得到良好控制和纠正后的大规模多样性模式。我们开发为R函数的工具可在补充材料中找到,并且可以与本地参数相适应,以用于其他区域环境下的森林管理和保护问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号