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Efficient grid-based Bayesian estimation of nonlinear low-dimensional systems with sparse non-Gaussian PDFs

机译:具有稀疏非高斯PDF的非线性低维系统的基于网格的有效贝叶斯估计

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摘要

Bayesian estimation strategies represent the most fundamental formulation of the state estimation problem available, and apply readily to nonlinear systems with non-Gaussian uncertainties. The present paper introduces a novel method for implementing grid-based Bayesian estimation which largely sidesteps the severe computational expense that has prevented the widespread use of such methods. The method represents the evolution of the probability density function (PDF) in phase space, p_x(x', t), discretized on a fixed Cartesian grid over all of phase space, and consists of two main steps: (i) between measurement times, p_x(x', t) is evolved via numerical discretization of the Kolmogorov forward equation, using a Godunov method with second-order corner transport upwind correction and a total variation diminishing flux limiter; (ii) at measurement times, p_x(x', t) is updated via Bayes' theorem. Computational economy is achieved by exploiting the localized nature of p_x(x', t). An ordered list of cells with non-negligible probability, as well as their immediate neighbors, is created and updated, and the PDF evolution is tracked only on these active cells.
机译:贝叶斯估计策略代表了可用的状态估计问题的最基本表述,并且易于应用于具有非高斯不确定性的非线性系统。本文介绍了一种新的实现基于网格的贝叶斯估计的方法,该方法在很大程度上避免了严重的计算费用,而后者却阻止了此类方法的广泛使用。该方法表示概率密度函数(PDF)在相空间p_x(x',t)中的演化,在整个相空间上离散在固定的笛卡尔网格上,并且包括两个主要步骤:(i)测量时间之间,p_x(x',t)是通过使用带有二阶角输运逆风校正和总变化量减小通量限制器的Godunov方法,通过Kolmogorov正向方程的数值离散化得到的。 (ii)在测量时间,通过贝叶斯定理更新p_x(x',t)。通过利用p_x(x',t)的局部性来实现计算经济。将创建并更新具有不可忽略的概率的单元格及其直接邻居的有序列表,并且仅在这些活动单元格上跟踪PDF的演变。

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