多源系统中AoI感知VNF放置的深度强化学习

Zhenke Chen, He Li, K. Ota, M. Dong
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引用次数: 0

摘要

信息时代(AoI)是一种新兴的性能指标,用于从目的地的角度量化数据的新鲜度。本文对多源更新系统中的AoI进行了研究和分析。在这种系统中,多个loT设备通过支持NFV (Network Function Virtualization)的网络,持续监控物理环境,并将数据发送到远程目的地进行状态更新。考虑到虚拟网络功能(VNF)的放置会对更新的AoI产生不必要的影响,我们研究了虚拟网络功能(VNF)在该系统中的放置问题。因此,这个问题被表述为一个数学优化问题,旨在最小化在目的地接收到的所有更新的长期平均AoI。为了解决这个问题,我们提出了一种基于深度强化学习(DRL)的VNF放置方法,称为VNF- aoi,其中学习代理或决策者与系统环境交互,从而根据其所学到的经验提供最佳的VNF放置策略。最后,我们进行了大量的仿真来验证我们提出的方法的有效性。数值结果清楚地表明,我们的VNF-AoI比其他两种基线算法的平均接受率高13.8%,目的地平均AoI低20.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning for AoI Aware VNF Placement in Multiple Source Systems
Age of Information (AoI) is a newly emergent performance metric to quantify the freshness of data from destinations' perspectives. In this paper, we investigate and analyze AoI in the context of a multiple source updating system. In such a system, multiple loT devices continuously monitors physical environment and sends data to a remote destination for status updates through a Network Function Virtualization (NFV)-enabled network. Considering that the Virtual Network Function (VNF) placement can unnecessarily influence the AoI of the updates, we study the VNF placement problem in such a system. The problem is hence formulated as a mathematical optimization problem aiming to minimize the long-term average AoI of all updates received at the destination. To solve this prob-lem, we propose a Deep Reinforcement Learning (DRL)-based VNF placement approach called VNF-AoI, where a learning agent or decision-maker interacts with a system environment and consequently provides an optimal VNF placement policy according to the experience it has learned. Finally, we conduct extensive simulations to validate the effectiveness of our proposed approach. Numerical results clearly demonstrate that our VNF-AoI surpasses other two baseline algorithms by averagely 13.8 % higher acceptance ratio and 20.3 % lower average AoI at the destination.
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