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首页> 外文期刊>Dynamics and Statistics of the Climate System >Beyond bifurcation: using complex models to understand and predict abrupt climate change
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Beyond bifurcation: using complex models to understand and predict abrupt climate change

机译:超越分歧:使用复杂的模型来理解和预测突然的气候变化

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Research on the possibility of future abrupt climate change has been popularized under the term 'tipping points' and has often been motivated by using simple, low-dimensional concepts. These include the iconic fold bifurcation, where abrupt change occurs when a stable equilibrium is lost, and early warning signals of such a destabilization that can be derived based on a simple stochastic model approach. In this paper, we review the challenges and limitations that are associated with this view, and we discuss promising research paths to explore the causes and the likelihood of abrupt changes in future climate. We focus on several climate system components and ecosystems that have been proposed as candidates for tipping points, with an emphasis on ice sheets, the Atlantic Ocean circulation, vegetation in North Africa and Arctic sea ice. In most example cases, multiple equilibria found in simple models do not appear in complex models or become more difficult to find, while the potential for abrupt change still remains. We also discuss how the low-dimensional logic of current methods to detect and interpret the existence of multiple equilibria can fail in complex models. Moreover, we highlight promising methods to detect abrupt shifts and to obtain information about the mechanisms behind them. These methods include linear approaches such as statistical stability indicators and radiative feedback analysis as well as non-linear approaches to detect dynamical transitions and infer the causality behind events. Given the huge complexity of comprehensive process-based climate models and the non-linearity and regional peculiarities of the processes involved, the uncertainties associated with the possible future occurrence of abrupt shifts are large and not well quantified. We highlight the potential of data mining approaches to tackle this problem and finally discuss how the scientific community can collaborate to make efficient progress in understanding abrupt climate shifts.
机译:关于未来突然的气候变化可能性的研究已在“临界点”一词下得到普及,并且通常是通过使用简单的低维度概念来激发的。这些包括标志性的折叠分叉(当失去稳定的平衡时会发生突然变化),以及可以基于简单的随机模型方法得出的这种不稳定现象的预警信号。在本文中,我们回顾了与该观点相关的挑战和局限性,并讨论了有前途的研究路径,以探讨未来气候突变的原因和可能性。我们重点关注已被提议作为临界点候选者的几个气候系统组成部分和生态系统,重点是冰盖,大西洋环流,北非的植被和北极海冰。在大多数示例情况下,在简单模型中发现的多个均衡不会出现在复杂模型中或变得更难找到,而突然变化的可能性仍然存在。我们还将讨论用于检测和解释多重均衡存在的当前方法的低维逻辑如何在复杂模型中失败。此外,我们重点介绍了检测突变并获得有关其背后机理的信息的有前途的方法。这些方法包括线性方法,例如统计稳定性指标和辐射反馈分析,以及用于检测动态过渡并推断事件背后的因果关系的非线性方法。考虑到基于过程的综合气候模型的复杂性以及所涉及过程的非线性和区域特殊性,与未来可能突然发生的突变相关的不确定性很大,无法很好地量化。我们强调了数据挖掘方法解决该问题的潜力,最后讨论了科学界如何能够合作以有效地理解突然的气候变化。

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