一种基于代理的非线性非高斯联合状态参数数据同化方法

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2020-12-08 DOI:10.3934/fods.2021019
J. Maclean, E. Spiller
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引用次数: 1

摘要

在将数据序贯同化到非线性高维模型方面的许多最新进展是对粒子滤波的改进,粒子滤波利用高维状态空间的有效搜索。在这项工作中,我们提出了一种结合统计模拟器和粒子滤波器的互补策略。仿真器用于学习并提供一个计算成本低廉的前向动态映射近似值。这种仿真粒子滤波(Emu-PF)方法需要少量的前向模型运行,但即使在非高斯情况下也能产生很好的后验分布。我们探索了Emu-PF的几种修改,利用降维机制来有效地适应统计模拟器,并在非典型Lorenz-96系统上进行了一系列仿真实验来证明它们的性能。最后,我们讨论了如何将Emu-PF与现代粒子滤波算法配对。
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A surrogate-based approach to nonlinear, non-Gaussian joint state-parameter data assimilation
Many recent advances in sequential assimilation of data into nonlinear high-dimensional models are modifications to particle filters which employ efficient searches of a high-dimensional state space. In this work, we present a complementary strategy that combines statistical emulators and particle filters. The emulators are used to learn and offer a computationally cheap approximation to the forward dynamic mapping. This emulator-particle filter (Emu-PF) approach requires a modest number of forward-model runs, but yields well-resolved posterior distributions even in non-Gaussian cases. We explore several modifications to the Emu-PF that utilize mechanisms for dimension reduction to efficiently fit the statistical emulator, and present a series of simulation experiments on an atypical Lorenz-96 system to demonstrate their performance. We conclude with a discussion on how the Emu-PF can be paired with modern particle filtering algorithms.
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