Predictability of abrupt shifts in dryland ecosystem functioning

IF 29.6 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Nature Climate Change Pub Date : 2025-01-03 DOI:10.1038/s41558-024-02201-0
Paulo N. Bernardino, Wanda De Keersmaecker, Stéphanie Horion, Stefan Oehmcke, Fabian Gieseke, Rasmus Fensholt, Ruben Van De Kerchove, Stef Lhermitte, Christin Abel, Koenraad Van Meerbeek, Jan Verbesselt, Ben Somers
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Abstract

Climate change and human-induced land degradation threaten dryland ecosystems, vital to one-third of the global population and pivotal to inter-annual global carbon fluxes. Early warning systems are essential for guiding conservation, climate change mitigation and alleviating food insecurity in drylands. However, contemporary methods fail to provide large-scale early warnings effectively. Here we show that a machine learning-based approach can predict the probability of abrupt shifts in Sudano–Sahelian dryland vegetation functioning (75.1% accuracy; 76.6% precision) particularly where measures of resilience (temporal autocorrelation) are supplemented with proxies for vegetation and rainfall dynamics and other environmental factors. Regional-scale predictions for 2025 highlight a belt in the south of the study region with high probabilities of future shifts, largely linked to long-term rainfall trends. Our approach can provide valuable support for the conservation and sustainable use of dryland ecosystem services, particularly in the context of climate change projected drying trends. The authors develop a machine learning-based approach to derive abrupt shift probability in dryland ecosystem functioning in the Sudano–Sahel. They highlight areas with high probabilities of abrupt shifts in the near future (2025), which are linked to long-term rainfall trends.

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旱地生态系统功能突变的可预测性
气候变化和人为引起的土地退化威胁着旱地生态系统,而旱地生态系统对全球三分之一的人口至关重要,对全球年际碳通量至关重要。预警系统对于指导旱地的保护、减缓气候变化和缓解粮食不安全至关重要。然而,现有的方法无法有效地提供大规模的早期预警。在这里,我们表明,基于机器学习的方法可以预测苏丹-萨赫勒旱地植被功能突变的概率(精确度为75.1%;76.6%的精度),特别是当恢复力测量(时间自相关)被植被、降雨动态和其他环境因子的代用物补充时。对2025年的区域尺度预测强调了研究区域南部的一个带,未来极有可能发生变化,这在很大程度上与长期降雨趋势有关。我们的方法可以为旱地生态系统服务的保护和可持续利用提供宝贵的支持,特别是在气候变化预测的干旱趋势的背景下。
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来源期刊
Nature Climate Change
Nature Climate Change ENVIRONMENTAL SCIENCES-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
40.30
自引率
1.60%
发文量
267
审稿时长
4-8 weeks
期刊介绍: Nature Climate Change is dedicated to addressing the scientific challenge of understanding Earth's changing climate and its societal implications. As a monthly journal, it publishes significant and cutting-edge research on the nature, causes, and impacts of global climate change, as well as its implications for the economy, policy, and the world at large. The journal publishes original research spanning the natural and social sciences, synthesizing interdisciplinary research to provide a comprehensive understanding of climate change. It upholds the high standards set by all Nature-branded journals, ensuring top-tier original research through a fair and rigorous review process, broad readership access, high standards of copy editing and production, rapid publication, and independence from academic societies and other vested interests. Nature Climate Change serves as a platform for discussion among experts, publishing opinion, analysis, and review articles. It also features Research Highlights to highlight important developments in the field and original reporting from renowned science journalists in the form of feature articles. Topics covered in the journal include adaptation, atmospheric science, ecology, economics, energy, impacts and vulnerability, mitigation, oceanography, policy, sociology, and sustainability, among others.
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