具有相同测量矩阵和相关噪声的多传感器广义系统的WMF信息滤波

C. Ran, Y. Dou, Yuan Gao
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引用次数: 1

摘要

针对具有相同测量矩阵和相关噪声的多传感器线性随机描述子系统,基于加权测量融合算法和卡尔曼信息滤波理论,提出了加权测量融合信息滤波方法。这种信息滤波是基于信息矩阵的卡尔曼滤波的一种新的抑制方法,可以减少计算量,在许多理论分析中都有重要的应用。与状态融合方法相比,加权测量融合信息滤波器具有全局最优性,避免了局部卡尔曼滤波器的交叉方差计算。通过三传感器随机描述子系统的仿真实例验证了该方法的有效性。
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WMF information filter for multisensor descriptor system with same measurement matrix and correlated noises
For the multisensor linear stochastic descriptor system with same measurement matrix and correlated noises, the weighted measurement fusion information filter is presented, based on the weighted measurement fusion algorithm and the Kalman information filtering theory. This information filtering is a new repression of Kalman filtering based on information matrix, which can reduce computational burden and has important application in many theory analysis. And the presented weighted measurement fusion information filter has global optimality, and can avoid computing these cross-variances of the local Kalman filters, compared with the state fusion method. A simulation example about 3-sensors stochastic descriptor system verifies the effectiveness.
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