Bayesian approximation for parameterized KALMAN filter for investigation and simulation of unknown noise variance trajectory following in state space models with different noise distributions

Farhad Asadi, S. Hossein Sadati
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Abstract

Bayesian approach can be used for parameter identification and extraction in state space models and its ability for analyzing sequence of data in dynamical system is proved in different literatures. In this paper, Bayesian approach for approximation of variances in measurement noise with KALMAN filter is applied for estimation of the dynamical state and measurement data in discrete dynamical system. Detection of uncertainty and estimation of those can be done simultaneously with adaptive KALMAN filter. This algorithm at each step time estimates noise variance and state of system with KALMAN filter. Then, approximation is formed at each step separately and at each step sufficient statistics of the state and noise variances are computed with a fixed-point iteration of a KALMAN filter. For showing influence of variance in measurement data on algorithm different simulations is applied. First, effect of variance and its distribution on detection performance is simulated in KALMAN filter without Bayesian formulation. Then simulation is applied to KALMAN filter with ability of variance tracking of measurement data.in these simulations, influence of distribution of measurement data in each step is estimated and true variance of data is obtained by algorithm and is compared in different scenarios. Afterwards, one typical modeling of nonlinear state space model with inducing noise measurement is simulated by this approach. Finally, the performance and the important limitations of this algorithm in these simulations are explained.
参数化 KALMAN 滤波器的贝叶斯近似,用于研究和模拟具有不同噪声分布的状态空间模型中的未知噪声方差轨迹跟踪
贝叶斯方法可用于状态空间模型的参数识别和提取,其分析动态系统数据序列的能力已在不同文献中得到证实。本文采用 KALMAN 滤波器近似测量噪声方差的贝叶斯方法来估计离散动态系统中的动态状态和测量数据。通过自适应 KALMAN 滤波器,不确定性的检测和估计可以同时进行。该算法在每一步时间用 KALMAN 滤波器估计噪声方差和系统状态。然后,在每一步分别形成近似值,并在每一步通过 KALMAN 滤波器的定点迭代计算状态和噪声方差的充分统计量。为了显示测量数据方差对算法的影响,我们进行了不同的模拟。首先,在没有贝叶斯公式的 KALMAN 滤波器中模拟了方差及其分布对检测性能的影响。在这些模拟中,对每一步测量数据分布的影响进行了估计,并通过算法获得了数据的真实方差,并在不同情况下进行了比较。随后,用这种方法模拟了一个典型的带有诱导噪声测量的非线性状态空间模型。最后,解释了该算法在这些模拟中的性能和重要局限性。
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