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基于数据驱动识别可靠的传感器物种以预测生态网络中的状态转变。

Data-driven identification of reliable sensor species to predict regime shifts in ecological networks.

作者信息

Ghadami Amin, Chen Shiyang, Epureanu Bogdan I

机构信息

Department of Mechanical Engineering, University of Michigan, Ann Arbor, MI, USA.

出版信息

R Soc Open Sci. 2020 Aug 12;7(8):200896. doi: 10.1098/rsos.200896. eCollection 2020 Aug.

Abstract

Signals of critical slowing down are useful for predicting impending transitions in ecosystems. However, in a system with complex interacting components not all components provide the same quality of information to detect system-wide transitions. Identifying the best indicator species in complex ecosystems is a challenging task when a model of the system is not available. In this paper, we propose a data-driven approach to rank the elements of a spatially distributed ecosystem based on their reliability in providing early-warning signals of critical transitions. The proposed method is rooted in experimental modal analysis techniques traditionally used to identify structural dynamical systems. We show that one could use natural system fluctuations and the system responses to small perturbations to reveal the slowest direction of the system dynamics and identify indicator regions that are best suited for detecting abrupt transitions in a network of interacting components. The approach is applied to several ecosystems to demonstrate how it successfully ranks regions based on their reliability to provide early-warning signals of regime shifts. The significance of identifying the indicator species and the challenges associated with ranking nodes in networks of interacting components are also discussed.

摘要

临界减缓信号对于预测生态系统中即将发生的转变很有用。然而,在一个具有复杂相互作用组件的系统中,并非所有组件都能提供相同质量的信息来检测全系统范围的转变。当没有系统模型时,在复杂生态系统中识别最佳指示物种是一项具有挑战性的任务。在本文中,我们提出了一种数据驱动的方法,根据空间分布生态系统各要素在提供临界转变早期预警信号方面的可靠性对其进行排名。所提出的方法植根于传统上用于识别结构动力系统的实验模态分析技术。我们表明,可以利用自然系统波动和系统对小扰动的响应来揭示系统动力学的最慢方向,并识别最适合检测相互作用组件网络中突然转变的指示区域。该方法应用于多个生态系统,以展示它如何根据各区域提供状态转变早期预警信号的可靠性成功地对其进行排名。还讨论了识别指示物种的重要性以及在相互作用组件网络中对节点进行排名所面临的挑战。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9131/7481725/62bd569d25da/rsos200896-g10.jpg

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