大型传感器网络高斯-马尔可夫场的最优重构

Min Dong, L. Tong, B. Sadler
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引用次数: 2

摘要

研究了用大规模传感器网络测量的一维高斯马尔可夫场的重建问题。考虑了两种数据检索策略:从等间隔传感器位置收集数据的调度策略和随机访问策略。假设场中的传感器形成一个密度为/spl rho/的泊松场,我们基于两种策略下检索到的数据来检验信号场的重建性能。比较表明,最优调度下的性能对给定区域内传感器的中断概率P/sub - out/敏感。如果P/sub - out/大于阈值,则调度性能会受到丢失数据样本的影响,简单的随机访问优于最优调度。
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Optimal reconstruction of Gauss Markov field in large sensor networks
We consider the problem of reconstructing a one-dimensional Gauss Markov field measured by a large-scale sensor network. Two data retrieval strategies are considered: the scheduling that collects data from equally spaced sensors locations and random access. Assuming the sensors in the field form a Poisson field with density /spl rho/, we examine the reconstruction performance of the signal field based on the data retrieved under the two strategies. Our comparison shows that, the performance under the optimal scheduling is sensitive to the outage probability P/sub out/ of sensors in a given region. If P/sub out/ is large than the threshold, the performance of scheduling suffers from missing data samples, and simple random access outperforms optimal scheduling.
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