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首页> 外文期刊>IEEE Transactions on Signal Processing >Channel-Aware Random Access Control for Distributed Estimation in Sensor Networks
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Channel-Aware Random Access Control for Distributed Estimation in Sensor Networks

机译:传感器网络中分布式估计的信道感知随机访问控制

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摘要

A cross-layered slotted ALOHA protocol is proposed and analyzed for distributed estimation in sensor networks. Suppose that the sensors in the network record local measurements of a common event and report the data back to the fusion center through direct transmission links. We employ a channel-aware transmission control where the transmission probability of each sensor is chosen according to the quality of its local observation and transmission channels. As opposed to maximizing the system throughput, our goal is to design transmission control policies that optimize the estimation performance. Two transmission control strategies are proposed: the maximum mean-square-error (MSE) reduction (MMR) scheme and the suboptimal two-mode MSE-reduction (TMMR) scheme. The MMR maximizes the MSE-reduction of the estimate after each time slot. However, this method requires knowledge of the number of active sensors and the accumulated estimation performance in each time slot, which must be provided through feedback from the fusion center. In TMMR, the sensors switch between two predetermined transmission control functions without explicit knowledge of the estimation performance and the number of active sensors in each time slot. Moreover, we notice that, if new observations are made by the sensors in each time slot, diversity combining techniques can be employed to fully exploit the data that the sensors measure over their idle time slots. Specifically, we perform selective combining on the observations that are made in between transmissions. As a result, we are able to exploit both the spatial and temporal diversity gains inherent in the multi-sensor system.
机译:提出并分析了跨层时隙ALOHA协议,用于传感器网络中的分布式估计。假设网络中的传感器记录常见事件的本地测量值,并通过直接传输链路将数据报告回融合中心。我们采用通道感知的传输控制,其中每个传感器的传输概率根据其本地观察和传输通道的质量进行选择。与最大化系统吞吐量相反,我们的目标是设计可优化估计性能的传输控制策略。提出了两种传输控制策略:最大均方误差(MSE)降低(MMR)方案和次优两模MSE降低(TMMR)方案。 MMR将每个时隙后的估计的MSE减少最大化。但是,该方法需要知道每个时隙中的有源传感器的数量和累积的估计性能,这必须通过融合中心的反馈来提供。在TMMR中,传感器在两个预定的变速箱控制功能之间切换,而无需明确了解每个时隙中的估计性能和活动传感器的数量。此外,我们注意到,如果传感器在每个时隙中进行了新的观察,则可以采用分集组合技术来充分利用传感器在其空闲时隙中测量的数据。具体来说,我们对两次传输之间的观察结果进行选择性组合。结果,我们能够利用多传感器系统固有的空间和时间分集增益。

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