带宽受限和网络拓扑随机切换约束下NNSs分布式有限时域FIR融合估计器
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作者单位:

1.中国人民解放军海军航空大学;2.中国人民解放军第91001部队

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中图分类号:

V249.32+9

基金项目:

国家自然科学基金项目(面上项目,重点项目,重大项目)


Decentralized receding horizon FIR fusion estimator for state estimation of NNSs with finite channel capacity and randomly switching topologies constraints
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Naval Aviation University

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    摘要:

    针对带宽受限和网络拓扑随机切换约束下组网导航系统(NNSs)的分布式位姿状态估计问题,建立上述网络约束综合作用下的离散组网滤波增广系统模型,提出一种分布式有限时域FIR融合估计算法。目标节点从邻节点集合中接收经量化效应和饱和效应处理后的普通数据包和跟踪数据包,在给出无偏约束条件的前提下,以使得状态估计值的估计误差满足最小方差为准则,充分考虑有色噪声的影响,设计有限时域FIR估计器及其差分形式,通过普通数据包得到目标节点状态的区域估计值,建立系统本地状态估计的统一机制。同时,考虑网络约束,将跟踪数据包引入系统的融合过程,在以均方准则确定时变加权矩阵的前提下,给出最优权值所满足的线性代数方程以及融合误差协方差的差分形式,将目标节点状态的区域估计值与各邻节点随机发送的协作估计值加权融合,得到目标节点状态的全局融合估计值。最后通过算例仿真验证算法的有效性。

    Abstract:

    In order to solve the problem of distributed pose state estimation for networked navigation systems (NNSS) with bandwidth constraints and network topology random switching constraints, a distributed finite time-domain fir fusion estimation algorithm is proposed based on the model of discrete-time filtering augmented system under the above network constraints. The target node receives the general data packet and tracking data packet processed by quantization effect and saturation effect from the set of adjacent nodes. Under the premise of unbiased constraint, the estimation error of state estimation meets the minimum variance as the criterion, and the influence of colored noise is fully considered. The finite time domain fir estimator and its difference form are designed, and the target is obtained through the ordinary data packet A unified mechanism of local state estimation is established. At the same time, considering the network constraints, the tracking data packet is introduced into the system fusion process. Under the premise of determining the time-varying weighting matrix based on the mean square criterion, the linear algebraic equation satisfied by the optimal weight and the difference form of fusion error covariance are given. The regional estimation value of the target node state is weighted fused with the cooperative estimation value sent by each neighbor node randomly to obtain the target node status The global fusion estimator of state. Finally, an example is given to verify the effectiveness of the algorithm.

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历史
  • 收稿日期:2020-12-06
  • 最后修改日期:2021-04-07
  • 录用日期:2021-04-21
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