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Optimal Fusion Estimation with Multi-Step Random Delays and Losses in Transmission

机译:传输中具有多步随机时滞和损耗的最优融合估计

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摘要

This paper is concerned with the optimal fusion estimation problem in networked stochastic systems with bounded random delays and packet dropouts, which unavoidably occur during the data transmission in the network. The measured outputs from each sensor are perturbed by random parameter matrices and white additive noises, which are cross-correlated between the different sensors. Least-squares fusion linear estimators including filter, predictor and fixed-point smoother, as well as the corresponding estimation error covariance matrices are designed via the innovation analysis approach. The proposed recursive algorithms depend on the delay probabilities at each sampling time, but do not to need to know if a particular measurement is delayed or not. Moreover, the knowledge of the signal evolution model is not required, as the algorithms need only the first and second order moments of the processes involved. Some of the practical situations covered by the proposed system model with random parameter matrices are analyzed and the influence of the delays in the estimation accuracy are examined in a numerical example.
机译:本文关注具有随机随机延迟和数据包丢失的网络随机系统中的最优融合估计问题,这种问题不可避免地发生在网络中的数据传输过程中。每个传感器的测量输出都会受到随机参数矩阵和白色相加噪声的干扰,这些参数在不同传感器之间互相关。通过创新分析方法设计了最小二乘融合线性估计器,包括滤波器,预测器和定点平滑器,以及相应的估计误差协方差矩阵。所提出的递归算法取决于每个采样时间的延迟概率,但是不需要知道特定的测量是否延迟。此外,由于算法仅需要所涉及过程的一阶和二阶矩,因此不需要信号演化模型的知识。在数值示例中,分析了所提出的带有随机参数矩阵的系统模型所涵盖的一些实际情况,并研究了延迟对估计精度的影响。

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