生态动态机制:识别、表征和比较

IF 7.1 1区 环境科学与生态学 Q1 ECOLOGY Ecological Monographs Pub Date : 2023-08-03 DOI:10.1002/ecm.1589
Martina Sánchez-Pinillos, Sonia Kéfi, Miquel De Cáceres, Vasilis Dakos
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引用次数: 0

摘要

从生态学产生之日起,理解生态动力学就一直是生态学的一个中心话题。然而,识别动态机制仍然是现代生态学的一个研究前沿。生态动态机制的概念是为了强调自然界稳定状态的动态特性而产生的,指的是生态系统围绕某种趋势或平均值的波动。在当前全球变化的背景下,识别和表征生态动态机制至关重要,因为它们构成了必须对扰动后动态进行比较以评估生态恢复力的参考。然而,鉴于生态数据的高维度和随机性,以及区分随机动力学与一般和可预测动力学所需的大量数据,在实证科学中实施生态动力学机制仍然具有挑战性。大数据时代以及定量生态学和数据科学的最新进展为从新的角度使用实证方法研究动态机制提供了机会。本文提出了一种新的方法论框架,从多维状态空间中状态变量的时间变化定义的一组生态轨迹来描述生态动态机制。在我们的框架中,我们正式定义了生态动态机制,并包括基于其几何特征识别、表征和比较生态动态机制的分析工具。更具体地说,我们提出了从经验数据中识别生态动态状况的不同方法,开发了一种新的算法来识别总结主要动态模式的代表性轨迹,提出了一组描述生态轨迹内部分布的指标,并且定义相异性指数以基于两个或更多个动态状态在状态空间中的形状和位置来比较它们。我们使用人工数据来说明我们框架的不同元素,并将我们的分析应用于真实数据,以加拿大北方森林的永久采样点为例。总的来说,我们的框架通过提供强大的分析工具,从多维角度评估生态恢复力和研究生态系统动力学,并考虑自然系统的可变性,有助于填补理论生态学和实证生态学之间的空白。
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Ecological dynamic regimes: Identification, characterization, and comparison

Understanding ecological dynamics has been a central topic in ecology since its origins. Yet, identifying dynamic regimes remains a research frontier for modern ecology. The concept of ecological dynamic regime (EDR) emerged to emphasize the dynamic property of steady states in nature and refers to the fluctuations of ecosystems around some trend or average. Identifying and characterizing EDRs is of utmost importance in the current context of global change since they form the reference against which post-disturbance dynamics must be compared to assess ecological resilience. However, the implementation of EDRs in empirical science is still challenging given the high dimensionality and stochasticity of ecological data and the large volume of data required to distinguish stochastic dynamics from general and predictable dynamics. The era of big data and the recent advances in quantitative ecology and data science offer an opportunity to study dynamic regimes using empirical approaches from a new perspective. This paper presents a novel methodological framework to describe EDRs from a set of ecological trajectories defined by the temporal changes of state variables in a multidimensional state space. In our framework, we formally define EDRs and include analytical tools to identify, characterize, and compare EDRs based on their geometric characteristics. More specifically, we propose different ways to identify EDRs from empirical data, develop a new algorithm to identify representative trajectories summarizing the main dynamic patterns, propose a set of metrics to describe the internal distribution of ecological trajectories, and define a dissimilarity index to compare two or more dynamic regimes based on their shape and position in the state space. We used artificial data to illustrate the different elements of our framework and applied our analyses to real data, using permanent sampling plots of Canadian boreal forests as an example. Overall, our framework contributes to filling the gap between theoretical and empirical ecology by providing robust analytical tools to assess ecological resilience and study ecosystem dynamics from a multidimensional perspective and considering the variability of natural systems.

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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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