论协同在多维位置估计中的价值

J. Schloemann, R. Buehrer
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引用次数: 5

摘要

本文研究了节点间协作在多维位置估计中的优势。特别地,对于参考节点位置已知和源节点位置未知且待估计的网络,我们通过在协同位置估计问题中引入额外的源节点(满足某些最小连接要求)来证明cram r- rao下界的递减,从而建立了源节点位置估计的协作值。先前的工作已经证明了一维位置估计;然而,前面提出的证明不容易扩展到多维位置估计。在证明完成后,讨论了利用到达时间和接收信号强度测距信息进行二维定位的最小连通性条件。最后,通过仿真将理论结果与数值结果进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the value of collaboration in multidimensional location estimation
In this paper, we investigate the benefit of inter-node collaboration in multidimensional location estimation. In particular, for networks with reference nodes at known locations and source nodes whose locations are unknown and to be estimated, we establish the value of collaboration for source node position estimation by presenting proof of a decreasing Cramér-Rao lower bound as additional source nodes (meeting some minimum connectivity requirements) are introduced into the collaborative position estimation problem. Prior work has shown this for one-dimensional location estimation; however, the previous proof as presented is not easily extendable to multidimensional location estimation. Following the completion of the proof, the minimum connectivity conditions for two-dimensional positioning using time-of-arrival and received-signal-strength ranging information are discussed. Lastly, the theoretical result is verified with numerical results through simulation.
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