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Self-tuning centralized fusion Kalman filter for multisensor systems with companion form and its convergence

机译:具有伴侣形式的多传感器系统自校正集中融合卡尔曼滤波器及其收敛性

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摘要

For the multisensor systems with companion form and unknown model parameters and noise variances, using recursive instrumental variable(RIV) algorithm, the local and fused model parameter estimators are obtained. Based on the fused model parameter estimators, the information fusion noise variance estimators are presented by using correlation method. They have strong consistence. Further, a self-tuning centralized fusion Kalman filter based on a self-tuning information matrix equation is presented, which can reduce the computational burden. By the dynamic variance error system analysis(DVSEA) method, it is proved that the self-tuning information matrix equation convergence to the optimal information matrix equation. Based on this, by the dynamic error system analysis (DESA) method, it is rigorously proved that the self-tuning centralized fusion Kalman filter converges to the optimal centralized fusion Kalman filter with probability one, so that it has asymptotic global optimality. A simulation example shows its effectiveness.
机译:对于具有伴随形式,未知模型参数和噪声方差的多传感器系统,使用递归工具变量(RIV)算法,获得了局部和融合模型参数估计量。在融合模型参数估计量的基础上,采用相关方法给出了信息融合噪声方差估计量。它们具有很强的一致性。此外,提出了一种基于自校正信息矩阵方程的自校正集中式融合卡尔曼滤波器,可以减少计算量。通过动态方差误差系统分析(DVSEA)方法,证明了自整定信息矩阵方程收敛于最优信息矩阵方程。在此基础上,通过动态误差系统分析(DESA)方法,严格证明自调整集中式融合卡尔曼滤波器收敛到最优集中式融合卡尔曼滤波器的概率为1,从而具有渐近全局最优性。一个仿真例子说明了它的有效性。

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