基于生态系统的临界点检测技术。

IF 11 1区 生物学 Q1 BIOLOGY
Deevesh Ashley Hemraj, Jacob Carstensen
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引用次数: 0

摘要

当累积压力(即环境变化或人类活动的直接影响)超过阈值时,生态系统就会转入另一种稳定状态。在经验数据中检测这一阈值仍然是一个挑战,因为生态系统受其组成部分和压力之间复杂的相互联系和反馈回路的支配。此外,存在多种反馈机制,可使生态系统对状态变化具有复原力。因此,除非使用广泛的生态学视角来检测状态转变,否则目前的检测方法在多大程度上真正捕捉到了生态系统的状态转变,以及从较小规模的分析中得出的推论能否应用到生态系统管理中,仍然是个问题。我们回顾了目前用于从经验数据中回溯检测状态转变的技术。我们的研究表明,大多数技术都不适合从广泛的生态系统角度进行分析,因为大约 85% 的技术没有将变量间的非线性关系和来自多个生态系统变量的高维数据结合起来,而是倾向于关注生态系统的一个子系统。因此,我们对状态变化的感知可能会受到通常用于较小数据集的方法的限制,无法代表整个生态系统。通过回顾当前技术的特点、优势和局限性,我们确定了有可能纳入基于生态系统的广泛方法的方法。因此,我们为开发更适合检测生态系统状态变化的技术提供了视角,这些技术结合了变量间的相互作用和高维数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards ecosystem-based techniques for tipping point detection.

An ecosystem shifts to an alternative stable state when a threshold of accumulated pressure (i.e. direct impact of environmental change or human activities) is exceeded. Detecting this threshold in empirical data remains a challenge because ecosystems are governed by complex interlinkages and feedback loops between their components and pressures. In addition, multiple feedback mechanisms exist that can make an ecosystem resilient to state shifts. Therefore, unless a broad ecological perspective is used to detect state shifts, it remains questionable to what extent current detection methods really capture ecosystem state shifts and whether inferences made from smaller scale analyses can be implemented into ecosystem management. We reviewed the techniques currently used for retrospective detection of state shifts detection from empirical data. We show that most techniques are not suitable for taking a broad ecosystem perspective because approximately 85% do not combine intervariable non-linear relationships and high-dimensional data from multiple ecosystem variables, but rather tend to focus on one subsystem of the ecosystem. Thus, our perception of state shifts may be limited by methods that are often used on smaller data sets, unrepresentative of whole ecosystems. By reviewing the characteristics, advantages, and limitations of the current techniques, we identify methods that provide the potential to incorporate a broad ecosystem-based approach. We therefore provide perspectives into developing techniques better suited for detecting ecosystem state shifts that incorporate intervariable interactions and high-dimensionality data.

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来源期刊
Biological Reviews
Biological Reviews 生物-生物学
CiteScore
21.30
自引率
2.00%
发文量
99
审稿时长
6-12 weeks
期刊介绍: Biological Reviews is a scientific journal that covers a wide range of topics in the biological sciences. It publishes several review articles per issue, which are aimed at both non-specialist biologists and researchers in the field. The articles are scholarly and include extensive bibliographies. Authors are instructed to be aware of the diverse readership and write their articles accordingly. The reviews in Biological Reviews serve as comprehensive introductions to specific fields, presenting the current state of the art and highlighting gaps in knowledge. Each article can be up to 20,000 words long and includes an abstract, a thorough introduction, and a statement of conclusions. The journal focuses on publishing synthetic reviews, which are based on existing literature and address important biological questions. These reviews are interesting to a broad readership and are timely, often related to fast-moving fields or new discoveries. A key aspect of a synthetic review is that it goes beyond simply compiling information and instead analyzes the collected data to create a new theoretical or conceptual framework that can significantly impact the field. Biological Reviews is abstracted and indexed in various databases, including Abstracts on Hygiene & Communicable Diseases, Academic Search, AgBiotech News & Information, AgBiotechNet, AGRICOLA Database, GeoRef, Global Health, SCOPUS, Weed Abstracts, and Reaction Citation Index, among others.
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