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Distributed Kalman Filtering Based on the Non-Repeated Diffusion Strategy

机译:基于非重复扩散策略的分布式卡尔曼滤波

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摘要

Estimation accuracy is the core performance index of sensor networks. In this study, a kind of distributed Kalman filter based on the non-repeated diffusion strategy is proposed in order to improve the estimation accuracy of sensor networks. The algorithm is applied to the state estimation of distributed sensor networks. In this sensor network, each node only exchanges information with adjacent nodes. Compared with existing diffusion-based distributed Kalman filters, the algorithm in this study improves the estimation accuracy of the networks. Meanwhile, a single-target tracking simulation is performed to analyze and verify the performance of the algorithm. Finally, by discussion, it is proved that the algorithm exhibits good all-round performance, not only regarding estimation accuracy.
机译:估计精度是传感器网络的核心性能指标。在本研究中,提出了一种基于非重复扩散策略的分布式卡尔曼滤波器,以提高传感器网络的估计精度。该算法应用于分布式传感器网络的状态估计。在该传感器网络中,每个节点仅与相邻节点交换信息。与现有的扩散的分布式卡尔曼滤波器相比,该研究中的算法提高了网络的估计精度。同时,执行单目标跟踪仿真来分析和验证算法的性能。最后,通过讨论,证明该算法表现出良好的全面性能,不仅仅是关于估计准确性。

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