Quantization, channel compensation, and optimal energy allocation for estimation in sensor networks

Xusheng Sun, E. Coyle
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引用次数: 13

Abstract

In clustered networks of wireless sensors, each sensor collects noisy observations of the environment, quantizes these observations into a local estimate of finite length, and forwards them through one or more noisy wireless channels to the cluster head (CH). The measurement noise is assumed to be zero-mean and have finite variance, and each wireless hop is modeled as a binary symmetric channel (BSC) with a known crossover probability. A novel scheme is proposed that uses dithered quantization and channel compensation to ensure that each sensor's local estimate received by the CH is unbiased. The CH fuses these unbiased local estimates into a global one, using a best linear unbiased estimator (BLUE). Analytical and simulation results show that the proposed scheme can achieve much smaller mean square error (MSE) than two other common schemes, while using the same amount of energy. The sensitivity of the proposed scheme to errors in estimates of the crossover probability of the BSC channel is studied by both analysis and simulation. We then determine both the minimum energy required for the network to produce an estimate with a prescribed error variance and how this energy must be allocated amongst the sensors in the multihop network.
量化、信道补偿和传感器网络估计的最优能量分配
在无线传感器的集群网络中,每个传感器收集环境的噪声观测,将这些观测量化为有限长度的局部估计,并通过一个或多个噪声无线信道将它们转发给簇头(CH)。假设测量噪声为零均值和有限方差,并将每个无线跳建模为具有已知交叉概率的二进制对称信道(BSC)。提出了一种利用抖动量化和信道补偿来保证CH接收到的每个传感器的局部估计是无偏的新方案。CH使用最佳线性无偏估计量(BLUE)将这些无偏局部估计融合到全局估计中。分析和仿真结果表明,在使用相同能量的情况下,该方案的均方误差(MSE)比其他两种常用方案小得多。通过分析和仿真研究了该方案对BSC信道交叉概率估计误差的敏感性。然后,我们确定了网络产生具有规定误差方差的估计所需的最小能量,以及该能量必须如何在多跳网络中的传感器之间分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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