提高关键任务物联网信息时代的深度强化学习方法

Hossam M. Farag, M. Gidlund, Č. Stefanović
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引用次数: 4

摘要

新兴的任务关键型物联网(IoT)在远程医疗保健、触觉交互和工业自动化中发挥着至关重要的作用,在这些领域,及时提供状态更新至关重要。信息时代(AoI)是捕获和评估目的地信息新鲜度的有效度量。仅仅基于平均AoI优化的系统设计可能不足以捕获关键任务应用程序的需求,因为平均可以消除极端事件的影响。在本文中,我们引入了一种基于深度强化学习(DRL)的算法来改善关键任务物联网应用中的AoI。目标是最小化基于AoI的度量,该度量由平均AoI和超过AoI阈值的概率的加权和组成。我们利用actor-critic方法对算法进行训练,以获得最优的调度策略来解决制定的问题。在模拟设置中评估了我们提出的方法的性能,结果表明,与相关工作相比,该方法在平均AoI和AoI违反概率方面有显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning Approach for Improving Age of Information in Mission-Critical IoT
The emerging mission-critical Internet of Things (IoT) play a vital role in remote healthcare, haptic interaction, and industrial automation, where timely delivery of status updates is crucial. The Age of Information (AoI) is an effective metric to capture and evaluate information freshness at the destination. A system design based solely on the optimization of the average AoI might not be adequate to capture the requirements of mission-critical applications, since averaging eliminates the effects of extreme events. In this paper, we introduce a Deep Reinforcement Learning (DRL)-based algorithm to improve AoI in mission-critical IoT applications. The objective is to minimize an AoI-based metric consisting of the weighted sum of the average AoI and the probability of exceeding an AoI threshold. We utilize the actor-critic method to train the algorithm to achieve optimized scheduling policy to solve the formulated problem. The performance of our proposed method is evaluated in a simulated setup and the results show a significant improvement in terms of the average AoI and the AoI violation probability compared to the related-work.
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