Bounding linearization errors with sets of densities in approximate Kalman filtering

B. Noack, Vesa Klumpp, N. Petkov, U. Hanebeck
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引用次数: 10

Abstract

Applying the Kalman filtering scheme to linearized system dynamics and observation models does in general not yield optimal state estimates. More precisely, inconsistent state estimates and covariance matrices are caused by neglected linearization errors. This paper introduces a concept for systematically predicting and updating bounds for the linearization errors within the Kalman filtering framework. To achieve this, an uncertain quantity is not characterized by a single probability density anymore, but rather by a set of densities and accordingly, the linear estimation framework is generalized in order to process sets of probability densities. By means of this generalization, the Kalman filter may then not only be applied to stochastic quantities, but also to unknown but bounded quantities. In order to improve the reliability of Kalman filtering results, the last-mentioned quantities are utilized to bound the typically neglected nonlinear parts of a linearized mapping.
近似卡尔曼滤波中密度集的边界线性化误差
将卡尔曼滤波方案应用于线性化的系统动力学和观测模型通常不会产生最优状态估计。更准确地说,不一致的状态估计和协方差矩阵是由忽略的线性化误差引起的。本文介绍了在卡尔曼滤波框架下系统地预测和更新线性化误差边界的概念。为了实现这一点,不确定量不再由单个概率密度表征,而是由一组密度表征,因此,对线性估计框架进行了推广,以处理概率密度集。通过这种推广,卡尔曼滤波器不仅可以应用于随机量,而且可以应用于未知但有界的量。为了提高卡尔曼滤波结果的可靠性,最后提到的量被用来约束线性化映射中通常被忽略的非线性部分。
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