高维状态空间模型的多重西格玛点卡尔曼平滑

J. Vilà‐Valls, P. Closas, Á. F. García-Fernández, C. Fernández-Prades
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引用次数: 4

摘要

针对非线性高维高斯系统的贝叶斯平滑问题,提出了一种新的多状态划分解。关键思想是将原始状态划分为几个低维子空间,并对每个子空间应用单个平滑。主要目标是减少每个过滤器必须探索的状态维度,以减少维度的诅咒和最终的准确性损失。我们提供了理论的多重平滑公式和一个新的嵌套的sigma点近似得到的平滑解。对于40维洛伦兹模型,证明了新方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple sigma-point Kalman smoothers for high-dimensional state-space models
This article presents a new multiple state-partitioning solution to the Bayesian smoothing problem in nonlinear high-dimensional Gaussian systems. The key idea is to partition the original state into several low-dimensional subspaces, and apply an individual smoother to each of them. The main goal is to reduce the state dimension each filter has to explore, to reduce the curse of dimensionality and eventual loss of accuracy. We provide the theoretical multiple smoothing formulation and a new nested sigma-point approximation to the resulting smoothing solution. The performance of the new approach is shown for the 40-dimensional Lorenz model.
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