论文标题
通过基于学习的无线网络中的基于学习的分布式MAC改善AOI
Improving AoI via Learning-based Distributed MAC in Wireless Networks
论文作者
论文摘要
在这项工作中,我们考虑了一个远程监视方案,其中多个传感器共享一个无线通道,以通过接入点(AP)将其状态更新传递到过程监视器。此外,我们认为传感器在积极和不活动的情况下随机到达并偏离网络。传感器的目的是设计一种中等访问策略,以将其在远程监视器上各自流程的长期平均网络\ ac {aoi}共同最小化。为此,我们建议对Aloha-QT算法进行特定修改,Aloha-QT算法是一种使用策略树(PT)和加固学习(RL)来实现高通量的分布式媒体访问算法。我们为提出的算法提供了信息的上限(AOI)以及选择其关键参数的指示器。结果表明,所提出的算法将平均网络\ ac {aoi}减少了50%以上,而最先进的随机策略,同时成功地调整了网络中有效用户数量的变化。在AOI方面,该算法比Aloha-QT所需的内存和计算要少于Aloha-QT。
In this work, we consider a remote monitoring scenario in which multiple sensors share a wireless channel to deliver their status updates to a process monitor via an access point (AP). Moreover, we consider that the sensors randomly arrive and depart from the network as they become active and inactive. The goal of the sensors is to devise a medium access strategy to collectively minimize the long-term mean network \ac{AoI} of their respective processes at the remote monitor. For this purpose, we propose specific modifications to ALOHA-QT algorithm, a distributed medium access algorithm that employs a policy tree (PT) and reinforcement learning (RL) to achieve high throughput. We provide the upper bound on the mean network Age of Information (AoI) for the proposed algorithm along with pointers for selecting its key parameter. The results reveal that the proposed algorithm reduces mean network \ac{AoI} by more than 50 percent for state of the art stationary randomized policies while successfully adjusting to a changing number of active users in the network. The algorithm needs less memory and computation than ALOHA-QT while performing better in terms of AoI.