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Robust weighted fusion Kalman predictor for multisensor systems with multiplicative noises and uncertain noise variances

机译:具有乘法噪声和不确定噪声方差的多传感器系统的鲁棒加权融合卡尔曼预测器

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This paper addresses the design of robust weighted fusion Kalman predictor for a class of linear discrete-time multisensor systems with multiplicative noises in the state and measurement matrices, and with the uncertain noise variances. By introducing two fictitious noises, the considered system is converted into one with only uncertain noise variances. According to the minimax robust estimation principle, based on the worst-case system with the conservative upper bounds of the noise variances, using the optimal fusion criterion with scalar weights, the robust scalars-weighted fusion time-varying Kalman predictor is presented. By use of the Lyapunov equation approach, its robustness is proved such that its actual prediction error variance is guaranteed to have the corresponding minimal upper bound for all admissible noise variance uncertainties. The accuracy relations between the robust local and fused time-varying Kalman predictors are proved. Simulation results show the effectiveness and correctness of the proposed results.
机译:本文针对一类线性离散时间多传感器系统的鲁棒加权融合卡尔曼预测器的设计,该系统在状态和测量矩阵中具有乘法噪声,并且具有不确定的噪声方差。通过引入两种虚拟噪声,可以将考虑的系统转换为仅具有不确定噪声方差的系统。根据最小极大鲁棒估计原理,基于带有噪声方差保守上限的最坏情况系统,使用带有标量权重的最优融合准则,给出了鲁棒的标量加权融合时变卡尔曼预测器。通过使用Lyapunov方程方法,证明了其鲁棒性,从而保证了其实际的预测误差方差对于所有允许的噪声方差不确定性都具有相应的最小上限。证明了鲁棒局部和融合时变卡尔曼预测器之间的精度关系。仿真结果表明了所提结果的有效性和正确性。

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