用于漂移轨迹预测的大规模并行隐式等权粒子滤波器

Håvard Heitlo Holm , Martin Lilleeng Sætra , Peter Jan van Leeuwen
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引用次数: 6

摘要

海洋漂移轨迹的预测在许多应用中都很重要,包括搜救行动、漏油清理和冰山风险缓解。在操作环境中,漂移轨迹的预测是基于对三维洋流的计算要求高的预测产生的。在此,我们通过将最近提出的两阶段隐式等权重粒子滤波器应用于简化海洋模型,研究了一种适用于较短时间尺度的互补方法。为了实现这一点,我们为数据同化系统提出了一种新的算法设计,其中所有组件——包括模型、模型误差和粒子滤波器——都利用了大规模并行计算架构,如图形处理单元。更快的计算可以实现应急管理的现场和特别模型运行,以及更好的不确定性量化的更大集合。使用一个具有接近现实的混沌不稳定性的具有挑战性的测试案例,我们基于漂移和系泊浮标的合成观测结果进行了数据同化实验,并分析了漂移者的轨迹预测。我们的结果表明,即使是稀疏的漂移观测也足以显著改善长达12小时的短期漂移预测。在等距系泊浮标仅观测到0.1%的状态空间的情况下,该集合在数据同化后给出了真实状态的准确描述,然后进行了高质量的概率预测。
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Massively parallel implicit equal-weights particle filter for ocean drift trajectory forecasting

Forecasting of ocean drift trajectories are important for many applications, including search and rescue operations, oil spill cleanup and iceberg risk mitigation. In an operational setting, forecasts of drift trajectories are produced based on computationally demanding forecasts of three-dimensional ocean currents. Herein, we investigate a complementary approach for shorter time scales by using the recently proposed two-stage implicit equal-weights particle filter applied to a simplified ocean model. To achieve this, we present a new algorithmic design for a data-assimilation system in which all components – including the model, model errors, and particle filter – take advantage of massively parallel compute architectures, such as graphical processing units. Faster computations can enable in-situ and ad-hoc model runs for emergency management, and larger ensembles for better uncertainty quantification. Using a challenging test case with near-realistic chaotic instabilities, we run data-assimilation experiments based on synthetic observations from drifting and moored buoys, and analyze the trajectory forecasts for the drifters. Our results show that even sparse drifter observations are sufficient to significantly improve short-term drift forecasts up to twelve hours. With equidistant moored buoys observing only 0.1% of the state space, the ensemble gives an accurate description of the true state after data assimilation followed by a high-quality probabilistic forecast.

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来源期刊
Journal of Computational Physics: X
Journal of Computational Physics: X Physics and Astronomy-Physics and Astronomy (miscellaneous)
CiteScore
6.10
自引率
0.00%
发文量
7
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