复杂性研究在环境科学和现代农业应用方面的潜力和局限性

IF 6.6 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Kevin Mallinger , Sebastian Raubitzek , Thomas Neubauer , Steven Lade
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引用次数: 0

摘要

由于变量之间的紧密耦合及其非线性、复杂和经常不可预测的行为,开放式系统分析容易导致动态过于简单化。通过评估不同生态系统变量(结构、化学和生物)的组合及其在时间和空间上的动态状态,单个复杂性测量可捕捉生态系统稳定性的阶段性变化,并提高效率、疾病检测和生态系统理解能力。本文总结了复杂性研究的最新进展,并探讨了评估和预测生态系统可持续性和复原力的指标潜力,尤其关注农业系统。文章通过考虑系统的复杂性和必要的数据要求,展望了改进机器学习方法的前景。介绍了一个 GitHub 存储库 [1],使从业人员能够使用复杂性应用(如熵度量和重构相空间)。这项研究加深了人们对数据复杂性、机器学习算法和环境建模之间联系的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Potentials and limitations of complexity research for environmental sciences and modern farming applications

Open system analysis is prone to the oversimplification of dynamics due to tightly coupled variables and their nonlinear, complex, and often unpredictable behavior. By assessing the combination of different ecosystem variables (structural, chemical, and biological) and their dynamic states in time and space, individual complexity measurements can capture phase changes of ecosystem stability and enhance efficiency, disease detection, and ecosystem understanding. This article summarizes the latest developments in complexity research and investigates the potential of metrics to assess and predict the sustainability and resilience of ecosystems, with a particular focus on farming systems. It provides an outlook on improving machine learning approaches by considering the system’s complexity and the necessary data requirements. A GitHub repository [1] is presented that enables practitioners to use complexity applications (e.g. entropy metrics and reconstructed phase spaces). This research provides a deeper understanding of the connections between data complexity, machine learning algorithms, and environmental modeling.

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来源期刊
Current Opinion in Environmental Sustainability
Current Opinion in Environmental Sustainability ENVIRONMENTAL SCIENCES-ENVIRONMENTAL SCIENCES
CiteScore
13.80
自引率
2.80%
发文量
52
审稿时长
6-12 weeks
期刊介绍: "Current Opinion in Environmental Sustainability (COSUST)" is a distinguished journal within Elsevier's esteemed scientific publishing portfolio, known for its dedication to high-quality, reproducible research. Launched in 2010, COSUST is a part of the Current Opinion and Research (CO+RE) suite, which is recognized for its editorial excellence and global impact. The journal specializes in peer-reviewed, concise, and timely short reviews that provide a synthesis of recent literature, emerging topics, innovations, and perspectives in the field of environmental sustainability.
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