从个体层面的机制预测种群对环境变化的反应:走向标准化的机制方法。

Proceedings of the Royal Society B Pub Date : 2019-10-23 Epub Date: 2019-10-16 DOI:10.1098/rspb.2019.1916
A S A Johnston, R J Boyd, J W Watson, A Paul, L C Evans, E L Gardner, V L Boult
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引用次数: 0

摘要

动物种群将介导全球生物多样性对环境变化的反应。因此,种群模型是了解和预测动物对未来不确定条件的反应的重要工具。然而,大多数方法都是相关性的,忽略了引起种群动态的个体层面机制。在此,我们对现有的几种种群建模方法进行了评估,发现 "相关 "和 "机制 "模型都存在局限性。我们主张需要一种标准化的机制方法,将个体机制(生理、行为和进化)与空间明确景观中的种群动态联系起来。这种方法可能比目前的种群模型更灵活,信息量更大。然而,实现这一目标的关键在于克服当前数据的局限性,发展和检验生态进化理论以体现个体机制之间的相互作用,以及纳入多种压力因素的标准化多维环境变化情景。这些进展对于在不确定的未来条件下支持环境决策至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting population responses to environmental change from individual-level mechanisms: towards a standardized mechanistic approach.

Animal populations will mediate the response of global biodiversity to environmental changes. Population models are thus important tools for both understanding and predicting animal responses to uncertain future conditions. Most approaches, however, are correlative and ignore the individual-level mechanisms that give rise to population dynamics. Here, we assess several existing population modelling approaches and find limitations to both 'correlative' and 'mechanistic' models. We advocate the need for a standardized mechanistic approach for linking individual mechanisms (physiology, behaviour, and evolution) to population dynamics in spatially explicit landscapes. Such an approach is potentially more flexible and informative than current population models. Key to realizing this goal, however, is overcoming current data limitations, the development and testing of eco-evolutionary theory to represent interactions between individual mechanisms, and standardized multi-dimensional environmental change scenarios which incorporate multiple stressors. Such progress is essential in supporting environmental decisions in uncertain future conditions.

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