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Dynamical attribution of oceanic prediction uncertainty in the North Atlantic: application to the design of optimal monitoring systems

机译:北大西洋海洋预测不确定性的动态归因:在最佳监测系统设计中的应用

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摘要

In this study, the relation between two approaches to assess the ocean predictability on interannual to decadal time scales is investigated. The first pragmatic approach consists of sampling the initial condition uncertainty and assess the predictability through the divergence of this ensemble in time. The second approach is provided by a theoretical framework to determine error growth by estimating optimal linear growing modes. In this paper, it is shown that under the assumption of linearized dynamics and normal distributions of the uncertainty, the exact quantitative spread of ensemble can be determined from the theoretical framework. This spread is at least an order of magnitude less expensive to compute than the approximate solution given by the pragmatic approach. This result is applied to a state-of-the-art Ocean General Circulation Model to assess the predictability in the North Atlantic of four typical oceanic metrics: the strength of the Atlantic Meridional Overturning Circulation (AMOC), the intensity of its heat transport, the two-dimensional spatially-averaged Sea Surface Temperature (SST) over the North Atlantic, and the three-dimensional spatially-averaged temperature in the North Atlantic. For all tested metrics, except for SST, 75% of the total uncertainty on interannual time scales can be attributed to oceanic initial condition uncertainty rather than atmospheric stochastic forcing. The theoretical method also provide the sensitivity pattern to the initial condition uncertainty, allowing for targeted measurements to improve the skill of the prediction. It is suggested that a relatively small fleet of several autonomous underwater vehicles can reduce the uncertainty in AMOC strength prediction by 70% for 1-5 years lead times.
机译:在这项研究中,研究了两种在年际到年代际尺度上评估海洋可预测性的方法之间的关系。第一种实用方法是对初始条件不确定性进行采样,并通过时间上的差异评估可预测性。第二种方法由理论框架提供,可通过估计最佳线性增长模式来确定误差增长。本文表明,在线性动力学和不确定性为正态分布的假设下,可以从理论框架确定集合的精确定量分布。与实用方法给出的近似解相比,此扩展的计算成本至少低一个数量级。将该结果应用于最新的海洋总循环模型,以评估北大西洋四种典型海洋指标的可预测性:大西洋子午翻转环流(AMOC)的强度,其热传输强度,北大西洋的二维空间平均海温(SST),以及北大西洋的三维空间平均温度。对于所有测试指标,除SST以外,年际时间尺度上总不确定性的75%可以归因于海洋初始条件不确定性,而不是大气随机强迫。理论方法还为初始条件不确定性提供了灵敏度模式,从而可以进行有针对性的测量以提高预测技巧。建议由少量的水下自动驾驶车辆组成的相对较小的车队可以在1-5年的交货时间内将AMOC强度预测的不确定性降低70%。

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  • 来源
    《Climate dynamics》 |2018年第4期|1517-1535|共19页
  • 作者单位

    Univ Southampton, Ocean & Earth Sci, Waterfront Campus,European Way, Southampton SO14 3ZH, Hants, England;

    Univ Utrecht, Inst Marine & Atmospher Res Utrecht, Dept Phys, Utrecht, Netherlands;

    Univ Southampton, Ocean & Earth Sci, Waterfront Campus,European Way, Southampton SO14 3ZH, Hants, England;

    Natl Oceanog Ctr, Southampton, Hants, England;

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