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The robustness of ecosystems to the species loss of community

机译:生态系统对社区物种丧失的稳健性

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摘要

To study the robustness of ecosystems is crucial to promote the sustainable development of human society. This paper aims to analyze the robustness of ecosystems from an interesting viewpoint of the species loss of community. Unlike the existing definitions, we first introduce the notion of a community as a population of species belonging to the same trophic level. We then put forward a novel multiobjective optimization model which can be utilized to discover community structures from arbitrary unipartite networks. Because an ecosystem is commonly represented as a multipartite network, we further introduce a mechanism of competition among species whereby a multipartite network is transformed into a unipartite signed network without loss of species interaction information. Finally, we examine three strategies to test the robustness of an ecosystem. Our experiments indicate that ecosystems are robust to random species loss of community but fragile to target ones. We also investigate the relationships between the robustness of an ecosystem and that of its community composed network both to species loss. Our experiments indicate that the robustness analysis of a large-scale ecosystem to species loss may be akin to that of its community composed network which is usually small in size.
机译:研究生态系统的健壮性对于促进人类社会的可持续发展至关重要。本文旨在从群落物种流失的有趣角度来分析生态系统的健壮性。与现有定义不同,我们首先引入社区概念,即属于同一营养级别的物种种群。然后,我们提出了一种新颖的多目标优化模型,该模型可用于从任意单方网络中发现社区结构。由于生态系统通常被表示为多部分网络,因此我们进一步介绍了物种之间的竞争机制,从而将多部分网络转换为单部分签名网络,而不会丢失物种相互作用信息。最后,我们研究了三种测试生态系统健壮性的策略。我们的实验表明,生态系统对随机物种丧失群落具有较强的抵抗力,但对目标种群却脆弱。我们还研究了生态系统的健壮性与其社区组成的网络与物种流失之间的关系。我们的实验表明,大型生态系统对物种丧失的鲁棒性分析可能类似于其社区组成的网络(通常规模较小)的鲁棒性分析。

著录项

  • 期刊名称 Scientific Reports
  • 作者

    Qing Cai; Jiming Liu;

  • 作者单位
  • 年(卷),期 -1(6),-1
  • 年度 -1
  • 页码 35904
  • 总页数 8
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

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