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Kalman filters for non-linear systems: a comparison of performance

机译:非线性系统的卡尔曼滤波器:性能比较

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摘要

The Kalman filter is a well-known recursive state estimator for linear systems. In practice, the algorithm is often used for non-linear systems by linearizing the system's process and measurement models. Different ways of linearizing the models lead to different filters. In some applications, these 'Kalman filter variants' seem to perform well, while for other applications they are useless. When choosing a filter for a new application, the literature gives us little to rely on. This paper tries to bridge the gap between the theoretical derivation of a Kalman filter variant and its performance in practice when applied to a non-linear system, by providing an application-independent analysis of the performances of the common Kalman filter variants.This paper separates performance evaluation of Kalman filters into (i) consistency, and (ii) information content of the estimates; and it separates the filter structure into (i) the process update step, and (ii) the measurement update step. This decomposition provides the insights supporting an objective and systematic evaluation of the appropriateness of a particular Kalman filter variant in a particular application.
机译:卡尔曼滤波器是线性系统的众所周知的递归状态估计器。实际上,通过线性化系统的过程和测量模型,该算法通常用于非线性系统。模型线性化的不同方法会导致不同的滤波器。在某些应用程序中,这些“ Kalman过滤器变体”似乎表现良好,而对于其他应用程序却没有用。在为新应用选择过滤器时,文献很少给我们依赖。本文通过对常见Kalman滤波器变体的性能进行独立于应用的分析,力图弥合Kalman滤波器变体的理论推导与其在实际应用中的性能之间的差距。将卡尔曼滤波器的性能评估为(i)一致性,以及(ii)估计的信息内容;并将过滤器结构分为(i)过程更新步骤和(ii)测量更新步骤。这种分解提供的见解支持对特定应用中特定卡尔曼滤波器变体的适用性进行客观和系统的评估。

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