Power scheduling between channel and parameter estimation for homogeneous sensor networks

Li Zhang, Xinyuan Wang, Xianda Zhang
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Abstract

This paper investigates the effect of channel estimation error (CEE) on the performance of distributed estimation of an unknown parameter in wireless sensor networks (WSNs). Firstly, considering the maximum likelihood estimator (MLE) of the unknown parameter has a high complexity preventing its practical implementation, a suboptimal ML estimator is derived as a low complexity alternative. Considering training pilots are used to estimate the unknown channel, the power scheduling between the training pilots and sensor observation in the homogeneous sensing environment is derived. Since the final average mean square error (MSE) depends on the unknown parameter, a lower bound of the MSE is minimized to compensate the CEE. A closed-form power scheduling policy is presented, which shows that more than 50% power should be allocated to sensor observation transmission. Simulation results demonstrate that the presented power scheduling policy has better performance than the equal power scheduling policy, and even performs close to the optimal power scheduling, which is derived based on the knowledge of the unknown parameter.
均匀传感器网络的信道间功率调度与参数估计
研究了无线传感器网络中信道估计误差(CEE)对未知参数分布估计性能的影响。首先,考虑到未知参数的最大似然估计量(MLE)具有较高的复杂性,阻碍了其实际实现,推导出次优的最大似然估计量作为一种低复杂度的替代方案。考虑训练飞行员用于估计未知信道,推导了均匀感知环境下训练飞行员与传感器观测之间的功率调度。由于最终的平均均方误差(MSE)取决于未知参数,因此最小化MSE的下界以补偿CEE。提出了一种闭式的功率调度策略,该策略表明应将50%以上的功率分配给传感器观测传输。仿真结果表明,所提出的功率调度策略比等功率调度策略具有更好的性能,甚至接近基于未知参数知识推导的最优功率调度。
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