Covariance Intersection Kalman Fuser with Time-delayed Measurements

Wenjuan Qi, Zunbing Sheng
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引用次数: 1

Abstract

For a two-sensor linear discrete time-invariant stochastic system with time-delayed measurements, by the measurement transformation method, an equivalent system without measurement delays is obtained, and then using the covariance intersection (CI) fusion method, the covariance intersection steady-state Kalman fuser is presented. It can handle the estimation fusion problem between local estimation errors for the system with unknown cross-covariances and avoid a large computed burden and computational complexity of cross-covariances. It is proved that its accuracy is higher than that of each local estimator, and is lower than that of optimal Kalman fuser weighted by matrices with known cross-covariances. A Monte-Carlo simulation example shows the above accuracy relation, and indicates that its actual accuracy is close to that of the Kalman fuser weighted by matrices, hence it has good performances.
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时滞测量的协方差交卡尔曼融合
对于具有时滞测量值的双传感器线性离散定常随机系统,通过测量变换方法得到了一个不存在测量延迟的等效系统,然后利用协方差交融合(CI)方法给出了协方差交稳态卡尔曼融合器。它可以处理未知交叉协方差系统的局部估计误差之间的估计融合问题,避免了大量的计算负担和交叉协方差的计算复杂度。证明了其精度高于各局部估计量,但低于由已知交叉协方差矩阵加权的最优卡尔曼融合器。通过蒙特卡罗仿真实例验证了上述精度关系,并表明其实际精度与矩阵加权卡尔曼融合器接近,具有良好的性能。
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