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首页> 外文期刊>Physica, D. Nonlinear phenomena >A deterministic filter for non-Gaussian Bayesian estimation Applications to dynamical system estimation with noisy measurements
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A deterministic filter for non-Gaussian Bayesian estimation Applications to dynamical system estimation with noisy measurements

机译:用于非高斯贝叶斯估计的确定性滤波器在带噪声测量的动态系统估计中的应用

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摘要

We present a fully deterministic method to compute sequential updates for stochastic state estimates of dynamic models from noisy measurements. It does not need any assumptions about the type of distribution for either data or measurementin particular it does not have to assume any of them as Gaussian. Here the implementation is based on a polynomial chaos expansion (PCE) of the stochastic variables of the modelhowever, any other orthogonal basis would do. We use a minimum variance estimator that combines an a priori state estimate and noisy measurements in a Bayesian way. For computational purposes, the update equation is projected onto a finite-dimensional PCE-subspace. The resulting Kalman-type update formula for the PCE coefficients can be efficiently computed solely within the PCE. As it does not rely on sampling, the method is deterministic, robust, and fast. In this paper we discuss the theory and practical implementation of the method. The original Kalman filter is shown to be a low-order special case. In a first experiment, we perform a bi-modal identification using noisy measurements. Additionally, we provide numerical experiments by applying it to the well known Lorenz-84 model and compare it to a related method, the ensemble Kalman filter.
机译:我们提出了一种完全确定性的方法,可以根据噪声测量为动态模型的随机状态估计计算顺序更新。对于数据或度量的分布类型,它不需要任何假设,尤其是不必将它们中的任何一个假设为高斯。在这里,实现是基于模型随机变量的多项式混沌扩展(PCE),但是任何其他正交基础都可以。我们使用最小方差估计器,它以贝叶斯方式结合了先验状态估计和噪声测量。出于计算目的,将更新方程式投影到有限维PCE子空间上。仅在PCE中就可以有效地计算所得的PCE系数的卡尔曼型更新公式。由于它不依赖采样,因此该方法具有确定性,鲁棒性和快速性。在本文中,我们讨论了该方法的理论和实际实现。原始的卡尔曼滤波器显示为低阶特例。在第一个实验中,我们使用噪声测量进行双峰识别。此外,我们通过将其应用于著名的Lorenz-84模型来提供数值实验,并将其与相关方法集成卡尔曼滤波器进行比较。

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