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Robust Kalman Filter Based on a Generalized Maximum-Likelihood-Type Estimator

机译:基于广义最大似然类型估计器的鲁棒卡尔曼滤波器

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A new robust Kalman filter is proposed that detects and bounds the influence of outliers in a discrete linear system, including those generated by thick-tailed noise distributions such as impulsive noise. Besides outliers induced in the process and observation noises, we consider in this paper a new type called structural outliers. For a filter to be able to counter the effect of these outliers, observation redundancy in the system is necessary. We have therefore developed a robust filter in a batch-mode regression form to process the observations and predictions together, making it very effective in suppressing multiple outliers. A key step in this filter is a new prewhitening method that incorporates a robust multivariate estimator of location and covariance. The other main step is the use of a generalized maximum likelihood-type (GM) estimator based on Schweppe's proposal and the Huber function, which has a high statistical efficiency at the Gaussian distribution and a positive breakdown point in regression. The latter is defined as the largest fraction of contamination for which the estimator yields a finite maximum bias under contamination. This GM-estimator enables our filter to bound the influence of residual and position, where the former measures the effects of observation and innovation outliers and the latter assesses that of structural outliers. The estimator is solved via the iteratively reweighted least squares (IRLS) algorithm, in which the residuals are standardized utilizing robust weights and scale estimates. Finally, the state estimation error covariance matrix of the proposed GM-Kalman filter is derived from its influence function. Simulation results revealed that our filter compares favorably with the ${rm H}_{infty}$-filter in the presence of outliers.
机译:提出了一种新的鲁棒卡尔曼滤波器,该滤波器可检测并限制离散线性系统中离群值的影响,包括由厚尾噪声分布(例如脉冲噪声)产生的离群值。除了过程中产生的异常值和观察到的噪声外,我们在本文中还考虑了一种称为结构异常值的新类型。为了使过滤器能够抵消这些离群值的影响,系统中的观察冗余是必要的。因此,我们以批处理模式回归形式开发了一种鲁棒的过滤器,可一起处理观察值和​​预测,使其在抑制多个异常值方面非常有效。该滤波器的关键步骤是一种新的预白化方法,该方法结合了位置和协方差的鲁棒多元估计器。另一个主要步骤是使用基于Schweppe提议和Huber函数的广义最大似然类型(GM)估计量,该估计量在高斯分布上具有很高的统计效率,并且回归中具有正分解点。后者定义为污染的最大部分,为此估算器在污染下会产生有限的最大偏差。 GM估计器使我们的滤波器能够约束残差和位置的影响,其中前者衡量观察和创新离群值的影响,而后者则评估结构离群值的影响。估计器通过迭代加权最小二乘(IRLS)算法求解,其中残差使用稳健的权重和规模估计进行标准化。最后,从GM-Kalman滤波器的影响函数中导出了状态估计误差协方差矩阵。仿真结果表明,在存在异常值的情况下,我们的过滤器与$ {rm H} _ {infty} $过滤器相比具有优势。

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