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Out-of-sequence measurement algorithm based on fast Marginalized Particle Filter

机译:基于快速边缘化粒子滤波的失序测量算法

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When it comes to the Out-of-Sequence Measurement (OOSM) problem with nonlinear system, the particle filter (PF) is widely used. But these OOSM-PF algorithms are facing the computation burden. In order to reduce the storage and computation requirements, a new algorithm based on the fast Marginalized Particle Filter (FMPF) for the OOSM problem is proposed in this paper. By using this algorithm, the state vectors are divided into two parts: the nonlinear and linear parts. The OOSM-PF is used to deal with the nonlinear parts, while the linear parts are estimated by Kalman filter (KF) based algorithm. The algorithm solves the OOSM problem under the framework of forward directly updating. It can deal with both the 1-step-lag and the multistep lag OOSM problem. Theoretical and simulation results show the effectiveness of the algorithm in dealing with the OOSM problem.
机译:当涉及非线性系统的失序测量(OOSM)问题时,粒子滤波器(PF)被广泛使用。但是这些OOSM-PF算法面临着计算负担。为了减少存储和计算需求,针对OOSM问题,提出了一种基于快速边缘化粒子滤波器(FMPF)的新算法。通过使用该算法,状态向量被分为两部分:非线性部分和线性部分。 OOSM-PF用于处理非线性部分,而线性部分则通过基于卡尔曼滤波器(KF)的算法进行估计。该算法在前向直接更新的框架下解决了OOSM问题。它可以处理1步滞后和多步滞后OOSM问题。理论和仿真结果表明,该算法在处理OOSM问题上是有效的。

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