首页> 外文期刊>Ecography >Towards a functional basis for predicting vegetation patterns; incorporating plant traits in habitat distribution models
【24h】

Towards a functional basis for predicting vegetation patterns; incorporating plant traits in habitat distribution models

机译:为预测植被格局提供功能基础;将植物性状纳入栖息地分布模型

获取原文
获取原文并翻译 | 示例
           

摘要

Reliably predicting vegetation distribution requires habitat distribution models (HDMs) that are ecologically sound. Current correlative HDMs are increasingly criticized because they lack sufficient functional basis. To include functional information into these models, we integrated two concepts from community ecology into a new type of HDM. We incorporated: 1) species selection by their traits in which only those species that pass the environmental filter can be part of the community (assembly theory); 2) that the occurrence probability of a community is determined by the extent to which the community mean traits fit the required traits as set by the environment. In this paper, our trait-based HDM is presented and its predictive capacity explored.Our approach consists of two steps. In step 1, four plant traits (stem-specific density and indicator values for nutrients, moisture and acidity) are predicted from four dominant environmental drivers (disturbance, nutrient supply, moisture supply and acidity) using regression. In step 2, these traits are used to predict the occurrence probability of 13 vegeta-tion types, covering the majority of vegetation types across the Netherlands. The model was validated by comparison to the observed vegetation type for 263 plots in the Netherlands. Model performance was within the range of conventional HDMs and decreased with increasing uncertainty in the environment-trait relationships and with an increasing number of vegetation types.This study shows that including functionality into HDMs is not necessarily at the cost of model performance, while it has several conceptual advantages among including an increased insight in the functional characteristics of the vegetation and sources of unpredictability in community assembly. As such it is a promising first step towards more functional HDMs. Further development of a trait-based HDM hinges on replacing indicator values by truly functional traits and the translation of these relationships into mechanistic relationships.
机译:要可靠地预测植被分布,就需要生态学上合理的栖息地分布模型(HDM)。当前的相关HDM由于缺乏足够的功能基础而受到越来越多的批评。为了将功能性信息包括到这些模型中,我们将社区生态学中的两个概念集成到一种新型的HDM中。我们结合了以下内容:1)通过其特征进行物种选择,其中只有那些通过环境过滤器的物种才能成为社区的组成部分(组装理论); 2)社区的发生概率取决于社区的平均性状与环境设定的所需性状相适应的程度。本文介绍了基于特征的HDM并探讨了其预测能力。我们的方法包括两个步骤。在第1步中,使用回归从四个主要环境驱动因素(干扰,养分供应,水分供应和酸度)预测了四个植物性状(茎的密度和养分,水分和酸度的指示值)。在第2步中,这些特征被用来预测13种植被类型的发生概率,涵盖了整个荷兰的大多数植被类型。通过与荷兰263个样地的观测植被类型进行比较,对模型进行了验证。模型性能在传统的HDM范围内,并且随着环境特征关系的不确定性增加以及植被类型的数量增加而降低。这项研究表明,将功能包含到HDM中并不一定以模型性能为代价,尽管它具有其中包括一些概念上的优势,包括对植被功能特征的深入了解以及社区集会中不可预测的来源。因此,这是朝着更多功能的HDM迈出的有希望的第一步。基于特征的HDM的进一步开发取决于用真正的功能特征替换指标值,以及将这些关系转换为机械关系。

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