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Towards consistent filtering for discrete-time partially-observable nonlinear systems

机译:对离散时间可观察的非线性系统的一致滤波

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In this paper, we study the filter consistency of discrete-time nonlinear systems with partially-observable measurements, where the full state is not reconstructable from the available measurements at each time step. Linearized filters such as the extended Kalman filter (EKF) which are realized based on the corresponding linearized systems, may become inconsistent. Relying on a novel decomposition of the observability matrix based on different measurement sources, we show that the filter acquires spurious information from the measurements of each source, which erroneously reduces the uncertainty of the state estimates and hence causes inconsistency. Based on this key insight, we propose an information aware methodology and develop two novel EKF algorithms of computing filter Jacobians which ensure that all decompositions of the observability matrix have nullspace of correct dimensions. In the first, the linearization points are selected so as to minimize their expected linearization errors under the constraints that the decompositions of the observability matrix have correct nullspace. In the second, we project the canonical measurement Jacobian onto the actual information-available directions. The proposed approaches are shown to significantly outperform the canonical EKF in the particular application of radar-based target tracking. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,我们研究了可部分可观察测量的离散时间非线性系统的滤波器一致性,其中完全状态在每个时间步骤中的可用测量不可重建。基于相应的线性化系统实现的诸如扩展卡尔曼滤波器(EKF)的线性化过滤器可能变得不一致。依赖于基于不同测量源的观察性矩阵的新型分解,我们表明滤波器从每个源的测量获取虚假信息,这错误地降低了状态估计的不确定性,因此导致不一致。基于这一关键洞察力,我们提出了一种信息意识方法,并开发了两个新的计算滤波器雅加索的EKF算法,这确保了可观察性矩阵的所有分解都具有正确的正确尺寸的空间。首先,选择线性化点,以便在约束下最小化它们的预期线性化误差,使得可观察性矩阵的分解具有正确的空位。在第二个中,我们将规范测量雅可比队将雅各比尔投影到实际信息可用方向上。所提出的方法显示在基于雷达的目标跟踪的特定应用中显着优于规范EKF。 (c)2017 Elsevier B.v.保留所有权利。

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