Age-optimal Sampling and Transmission Scheduling in Multi-Source Systems

A. Bedewy, Yin Sun, S. Kompella, N. Shroff
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引用次数: 63

Abstract

In this paper, we consider the problem of minimizing the age of information in a multi-source system, where samples are taken from multiple sources and sent to a destination via a channel with random delay. Due to interference, only one source can be scheduled at a time. We consider the problem of finding a decision policy that determines the sampling times and transmission order of the sources for minimizing the total average peak age (TaPA) and the total average age (TaA) of the sources. Our investigation of this problem results in an important separation principle: The optimal scheduling strategy and the optimal sampling strategy are independent of each other. In particular, we prove that, for any given sampling strategy, the Maximum Age First (MAF) scheduling strategy provides the best age performance among all scheduling strategies. This transforms our overall optimization problem into an optimal sampling problem, given that the decision policy follows the MAF scheduling strategy. While the zero-wait sampling strategy (in which a sample is generated once the channel becomes idle) is shown to be optimal for minimizing the TaPA, it does not always minimize the TaA. We use Dynamic Programming (DP) to investigate the optimal sampling problem for minimizing the TaA. Finally, we provide an approximate analysis of Bellman's equation to approximate the TaA-optimal sampling strategy by a water-filling solution which is shown to be very close to optimal through numerical evaluations.
多源系统中年龄最优采样与传输调度
在本文中,我们考虑了在多源系统中最小化信息年龄的问题,其中样本从多个源获取并通过随机延迟的信道发送到目的地。由于干扰,一次只能调度一个信号源。为了最小化源的总平均峰值年龄(TaPA)和总平均年龄(TaA),我们考虑了寻找一个决策策略来确定源的采样次数和传输顺序的问题。我们对这一问题的研究得出了一个重要的分离原则:最优调度策略和最优抽样策略是相互独立的。特别是,我们证明了对于任何给定的采样策略,最大年龄优先(MAF)调度策略在所有调度策略中具有最佳的年龄性能。假设决策策略遵循MAF调度策略,这将我们的整体优化问题转化为最优抽样问题。虽然零等待采样策略(在通道空闲时生成采样)被证明是最小化TaPA的最佳方法,但它并不总是最小化TaA。我们使用动态规划(DP)来研究最小化TaA的最优抽样问题。最后,通过对Bellman方程的近似分析,用充水解逼近taa -最优采样策略,数值计算表明充水解非常接近最优。
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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