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Globally Optimal Distributed Kalman Filtering for Multisensor Systems with Unknown Inputs

机译:输入未知的多传感器系统的全局最优分布式卡尔曼滤波

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摘要

In this paper, the state estimation for dynamic system with unknown inputs modeled as an autoregressive AR (1) process is considered. We propose an optimal algorithm in mean square error sense by using difference method to eliminate the unknown inputs. Moreover, we consider the state estimation for multisensor dynamic systems with unknown inputs. It is proved that the distributed fused state estimate is equivalent to the centralized Kalman filtering using all sensor measurement; therefore, it achieves the best performance. The computation complexity of the traditional augmented state algorithm increases with the augmented state dimension. While, the new algorithm shows good performance with much less computations compared to that of the traditional augmented state algorithms. Moreover, numerical examples show that the performances of the traditional algorithms greatly depend on the initial value of the unknown inputs, if the estimation of initial value of the unknown input is largely biased, the performances of the traditional algorithms become quite worse. However, the new algorithm still works well because it is independent of the initial value of the unknown input.
机译:在本文中,考虑了将具有未知输入的动态系统的状态估计建模为自回归AR(1)过程。我们提出了一种均方误差意义上的最优算法,该算法采用差分法消除未知输入。此外,我们考虑具有未知输入的多传感器动态系统的状态估计。证明了分布式融合状态估计等效于使用所有传感器测量的集中式卡尔曼滤波;因此,它可获得最佳性能。传统的增强状态算法的计算复杂度随增强状态维的增加而增加。同时,与传统的增强状态算法相比,该新算法显示出了良好的性能,并且计算量更少。此外,数值算例表明,传统算法的性能在很大程度上取决于未知输入的初始值,如果未知输入的初始值的估计有很大的偏差,则传统算法的性能会变得很差。但是,新算法仍然运行良好,因为它与未知输入的初始值无关。

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