首页> 外文期刊>IEEE Journal on Selected Areas in Communications >An isotropic universal decentralized estimation scheme for a bandwidth constrained ad hoc sensor network
【24h】

An isotropic universal decentralized estimation scheme for a bandwidth constrained ad hoc sensor network

机译:带宽受限自组织传感器网络的各向同性通用分散估计方案

获取原文
获取原文并翻译 | 示例
       

摘要

Consider a decentralized estimation problem whereby an ad hoc network of K distributed sensors wish to cooperate to estimate an unknown parameter over a bounded interval [-U,U]. Each sensor collects one noise-corrupted sample, performs a local data quantization according to a fixed (but possibly probabilistic) rule, and transmits the resulting discrete message to its neighbors. These discrete messages are then percolated in the network and used by each sensor to form its own minimum mean squared error (MMSE) estimate of the unknown parameter according to a fixed fusion rule. In this paper, we propose a simple probabilistic local quantization rule: each sensor quantizes its observation to the first most significant bit (MSB) with probability 1/2, the second MSB with probability 1/4, and so on. Assuming the noises are uncorrelated and identically distributed across sensors and are bounded to [-U,U], we show that this local quantization strategy together with a fusion rule can guarantee a MSE of 4U/sup 2//K, and that the average length of local messages is bounded (no more than 2.5 bits). Compared with the worst case Cramer-Rao lower bound of U/sup 2//K (even for the centralized counterpart), this is within a factor of at most 4 to the minimum achievable MSE. Moreover, the proposed scheme is isotropic and universal in the sense that the local quantization rules and the final fusion rules are independent of sensor index, noise distribution, network size, or topology. In fact, the proposed scheme allows sensors in the network to operate identically and autonomously even when the network undergoes changes in size or topology.
机译:考虑一个分散的估计问题,据此,由K个分布式传感器组成的自组织网络希望合作以估计有界间隔[-U,U]上的未知参数。每个传感器收集一个受噪声破坏的样本,根据固定(但可能是概率)规则执行本地数据量化,并将结果离散消息发送到其邻居。然后,这些离散的消息将在网络中渗透,并由每个传感器根据固定的融合规则使用以形成其自身的未知参数的最小均方误差(MMSE)估计。在本文中,我们提出了一个简单的概率局部量化规则:每个传感器将其观测结果量化为概率为1/2的第一个最高有效位(MSB),概率为1/4的第二个MSB,依此类推。假设噪声是不相关的,并且在传感器之间的分布是相同的,并且受[-U,U]的限制,我们表明该局部量化策略与融合规则可以保证MSE为4U / sup 2 // K,并且平均本地消息的长度是有限制的(不超过2.5位)。与最坏情况的U / sup 2 // K的Cramer-Rao下限相比(即使对于集中式副本而言),此上限是最大MSE的4倍之内。此外,在局部量化规则和最终融合规则与传感器索引,噪声分布,网络规模或拓扑结构无关的意义上,所提出的方案是各向同性和通用的。实际上,即使网络发生大小或拓扑变化,所提出的方案也允许网络中的传感器相同且自主地运行。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号