Power Allocation for Remote Estimation Over Known and Unknown Gilbert-Elliott Channels

Tahmoores Farjam, Themistoklis Charalambous
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Abstract

In this paper, we consider the problem of power scheduling of a sensor that transmits over a (possibly) unknown Gilbert-Elliott (GE) channel for remote state estimation. The sensor supports two power modes, namely low power, and high power. The scheduling policy determines when to use low power or high power for data transmission over a fading channel with temporal correlation while satisfying the energy constraints. Although error-free acknowledgement/negative-acknowledgement (ACK/NACK) signals are provided by the remote estimator, they only provide meaningful information about the underlying channel state when low power is utilized. This leads to a partially observable Markov decision process (POMDP) problem and we derive conditions that preserve the optimality of a stationary schedule derived for its fully observable counterpart. However, implementing this schedule requires knowledge of the parameters of the GE model which are not available in practice. To address this, we adopt a Bayesian framework to learn these parameters online and propose an algorithm that is shown to satisfy the energy constraint while achieving near-optimal performance via simulation.
已知和未知吉尔伯特-艾略特信道远程估计的功率分配
在本文中,我们考虑了在(可能)未知的Gilbert Elliott(GE)信道上传输的传感器的功率调度问题,用于远程状态估计。传感器支持两种功率模式,即低功率和高功率。调度策略确定在满足能量约束的同时,何时在具有时间相关性的衰落信道上使用低功率或高功率进行数据传输。尽管无差错确认/否定确认(ACK/NACK)信号是由远程估计器提供的,但是当使用低功率时,它们仅提供关于底层信道状态的有意义的信息。这导致了一个部分可观测的马尔可夫决策过程(POMDP)问题,我们导出了保持为其完全可观测对应物导出的平稳调度的最优性的条件。然而,实施该时间表需要了解GE模型的参数,而这些参数在实践中是不可用的。为了解决这一问题,我们采用贝叶斯框架来在线学习这些参数,并提出了一种算法,该算法被证明可以满足能量约束,同时通过模拟实现接近最优的性能。
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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