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Superfloe Parameterization with Physics Constraints for Uncertainty Quantification of Sea Ice Floes

机译:基于物理约束的浮冰参数化,用于浮冰不确定性量化

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摘要

The discrete element method (DEM) provides a new modeling approach for describing sea ice dynamics. It exploits particle-based methods to characterize the physical quantities of each sea ice floe along its trajectory under Lagrangian coordinates. One major challenge in applying DEM models is the heavy computational cost when the number of floes becomes large. In this paper, an efficient Lagrangian parameterization algorithm is developed, which aims at reducing the computational cost of simulating the DEM models while preserving the key features of the sea ice. The new parameterization takes advantage of a small number of artificial ice floes, called the superfloes, to effectively approximate a considerable number of the floes, where the parameterization scheme satisfies several important physics constraints. The physics constraints guarantee the superfloe parameterized system will have short-term dynamical behavior similar to that of the full system. These constraints also allow the superfloe parameterized system to accurately quantify the long-range uncertainty, especially the non-Gaussian statistical features, of the full system. In addition, the superfloe parameterization facilitates a systematic noise inflation strategy that significantly advances an ensemble-based data assimilation algorithm for recovering the unobserved ocean field underneath the sea ice. Such a new noise inflation method avoids ad hoc tunings as in many traditional algorithms and is computationally extremely efficient. Numerical experiments based on an idealized DEM model with multiscale features illustrate the success of the superfloe parameterization in quantifying the uncertainty and assimilating both the sea ice and the associated ocean field.
机译:离散单元法(DEM)提供了一个新的描述海冰建模方法动力学。特征的物理量冰川沿着它的轨迹在拉格朗日坐标。模型的计算成本时浮冰数量增加。高效的拉格朗日算法参数化开发,其目的是在减少吗模拟DEM模型的计算成本同时保护海冰的关键特性。新的参数化的利用少量的人工浮冰,叫做superfloes有效近似相当数量的浮冰,参数化方案满足数重要的物理约束。约束保证superfloe参数化系统会有短期的动态行为类似的系统。约束也允许superfloe参数化系统准确地量化长期的不确定性,特别是非高斯统计特性,完整的系统。参数化促进系统的噪声通货膨胀策略显著进步ensemble-based数据同化算法下面的未被注意的海洋领域中恢复海冰。避免临时调优在许多传统算法和计算非常非常高效。理想化的DEM模型的多尺度特性说明superfloe的成功参数量化的不确定性和同化海冰和海洋领域有关。

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  • 来源
    《SIAM/ASA Journal on Uncertainty Quantification》 |2022年第4期|1384-1409|共26页
  • 作者单位

    Department of Mathematics, University of Wisconsin-Madison, Madison, WI 53706, USA;

    School of Computing, Australian National University, Canberra, ACT 2601, Australia;

    Department of Mathematics and Department of Atmospheric and Oceanic Sciences, University of Wisconsin-Madison, Madison, WI 53706, USA;

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  • 原文格式 PDF
  • 正文语种 英语
  • 中图分类 计量学;
  • 关键词

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