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Skill (or lack thereof) of data-model fusion techniques to provide an early warning signal for an approaching tipping point

机译:数据模型融合技术的技能(或缺乏技能),为即将来临的临界点提供预警信号

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摘要

Many coupled human-natural systems have the potential to exhibit a highly nonlinear threshold response to external forcings resulting in fast transitions to undesirable states (such as eutrophication in a lake). Often, there are considerable uncertainties that make identifying the threshold challenging. Thus, rapid learning is critical for guiding management actions to avoid abrupt transitions. Here, we adopt the shallow lake problem as a test case to compare the performance of four common data assimilation schemes to predict an approaching transition. In order to demonstrate the complex interactions between management strategies and the ability of the data assimilation schemes to predict eutrophication, we also analyze our results across two different management strategies governing phosphorus emissions into the shallow lake. The compared data assimilation schemes are: ensemble Kalman filtering (EnKF), particle filtering (PF), pre-calibration (PC), and Markov Chain Monte Carlo (MCMC) estimation. While differing in their core assumptions, each data assimilation scheme is based on Bayes’ theorem and updates prior beliefs about a system based on new information. For large computational investments, EnKF, PF and MCMC show similar skill in capturing the observed phosphorus in the lake (measured as expected root mean squared prediction error). EnKF, followed by PF, displays the highest learning rates at low computational cost, thus providing a more reliable signal of an impending transition. MCMC approaches the true probability of eutrophication only after a strong signal of an impending transition emerges from the observations. Overall, we find that learning rates are greatest near regions of abrupt transitions, posing a challenge to early learning and preemptive management of systems with such abrupt transitions.
机译:许多耦合的人-自然系统都有可能表现出对外部强迫的高度非线性阈值响应,从而导致快速过渡到不良状态(例如湖泊中的富营养化)。通常,存在很大的不确定性,使确定阈值具有挑战性。因此,快速学习对于指导管理操作以避免突然过渡至关重要。在这里,我们采用浅湖问题作为测试案例,以比较四种常见数据同化方案的性能,以预测即将到来的过渡。为了证明管理策略与数据同化方案预测富营养化能力之间复杂的相互作用,我们还分析了控制磷向浅湖排放的两种不同管理策略的结果。比较的数据同化方案为:集成卡尔曼滤波(EnKF),粒子滤波(PF),预校准(PC)和马尔可夫链蒙特卡洛(MCMC)估计。尽管它们的核心假设有所不同,但每种数据同化方案都基于贝叶斯定理,并根据新信息更新了对系统的先前信念。对于大量的计算投资,EnKF,PF和MCMC在捕获湖中观测到的磷方面表现出相似的技能(以预期的均方根预测误差度量)。 EnKF和PF紧随其后,以较低的计算量显示出最高的学习率,从而提供了更可靠的即将过渡的信号。只有在观察到强烈的即将发生过渡的信号之后,MCMC才会达到富营养化的真正可能性。总的来说,我们发现在突然过渡的区域附近学习率最高,这对具有这种突然过渡的系统的早期学习和抢先管理构成了挑战。

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