预测生态网络中物种灭绝的新分析方法

IF 7.1 1区 环境科学与生态学 Q1 ECOLOGY Ecological Monographs Pub Date : 2024-03-12 DOI:10.1002/ecm.1601
Chris Jones, Damaris Zurell, Karoline Wiesner
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引用次数: 0

摘要

生态网络描述了不同物种之间的相互作用,告诉我们它们如何相互依赖以获取食物、授粉和生存。如果生态系统中的某个物种面临灭绝威胁,就会影响到系统中的其他物种,并可能导致它们的二次灭绝。以前曾有人用计算方法研究过(原生)物种灭绝如何导致生态网络中的次生物种灭绝。然而,这些方法无法解释生态网络的稳健性,而且计算成本高昂。我们开发了一种新的分析模型,用于预测无需随机模拟的次生物种灭绝。我们的模型可以预测当原生灭绝随机发生或由于基于每个物种的链接数或灭绝风险的某些目标而发生时的次生灭绝,并可应用于任何层数的生态网络。利用我们的模型,我们考虑了网络数据中的假阴性和假阳性如何影响对网络稳健性的预测。我们还对模型进行了扩展,以预测一旦物种失去一定比例的相互作用强度就会发生二次灭绝的情况,并对相互作用的丧失而不仅仅是物种灭绝进行建模。从我们的模型中可以得出新的分析结果,例如当次生物种的程度相同时,生态网络如何最为稳健。此外,我们还表明,根据所考虑的物种灭绝情况,相互作用强度分布的特殊化和普遍化对网络的稳健性都是有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Novel analytic methods for predicting extinctions in ecological networks

Ecological networks describe the interactions between different species, informing us how they rely on one another for food, pollination, and survival. If a species in an ecosystem is under threat of extinction, it can affect other species in the system and possibly result in their secondary extinction as well. Understanding how (primary) extinctions cause secondary extinctions on ecological networks has been considered previously using computational methods. However, these methods do not provide an explanation for the properties that make ecological networks robust, and they can be computationally expensive. We develop a new analytic model for predicting secondary extinctions that requires no stochastic simulation. Our model can predict secondary extinctions when primary extinctions occur at random or due to some targeting based on the number of links per species or risk of extinction, and can be applied to an ecological network of any number of layers. Using our model, we consider how false negatives and positives in network data affect predictions for network robustness. We have also extended the model to predict scenarios in which secondary extinctions occur once species lose a certain percentage of interaction strength, and to model the loss of interactions as opposed to just species extinction. From our model, it is possible to derive new analytic results such as how ecological networks are most robust when secondary species are of equal degree. Additionally, we show that both specialization and generalization in the distribution of interaction strength can be advantageous for network robustness, depending upon the extinction scenario being considered.

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来源期刊
Ecological Monographs
Ecological Monographs 环境科学-生态学
CiteScore
12.20
自引率
0.00%
发文量
61
审稿时长
3 months
期刊介绍: The vision for Ecological Monographs is that it should be the place for publishing integrative, synthetic papers that elaborate new directions for the field of ecology. Original Research Papers published in Ecological Monographs will continue to document complex observational, experimental, or theoretical studies that by their very integrated nature defy dissolution into shorter publications focused on a single topic or message. Reviews will be comprehensive and synthetic papers that establish new benchmarks in the field, define directions for future research, contribute to fundamental understanding of ecological principles, and derive principles for ecological management in its broadest sense (including, but not limited to: conservation, mitigation, restoration, and pro-active protection of the environment). Reviews should reflect the full development of a topic and encompass relevant natural history, observational and experimental data, analyses, models, and theory. Reviews published in Ecological Monographs should further blur the boundaries between “basic” and “applied” ecology. Concepts and Synthesis papers will conceptually advance the field of ecology. These papers are expected to go well beyond works being reviewed and include discussion of new directions, new syntheses, and resolutions of old questions. In this world of rapid scientific advancement and never-ending environmental change, there needs to be room for the thoughtful integration of scientific ideas, data, and concepts that feeds the mind and guides the development of the maturing science of ecology. Ecological Monographs provides that room, with an expansive view to a sustainable future.
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