多MEC系统中基于dqn的延迟优先级智能应用布局

Juan Sebastian Camargo, Estefanía Coronado, Claudia Torres-Pérez, Javier Palomares, M. S. Siddiqui
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引用次数: 0

摘要

在5G中,多接入边缘计算(MEC)对于使计算和处理更接近用户并实现超低延迟通信至关重要。在实例化应用程序时,选择最小化延迟但仍能满足应用程序需求的MEC主机是至关重要的。然而,随着未来的6G网络预计将变得更加地理分布,并由多层管理实体处理,这种劳动变得极其困难,机器学习(ML)将成为这一过程的原生部分。在这种情况下,我们提出了一个强化学习模型,该模型选择最佳主机来实例化MEC应用程序,在满足应用程序要求的同时最小化端到端延迟。提出的机器学习方法通过环境状态的几个阶段使用深度q -学习,当模型选择正确时采取行动并奖励它,否则惩罚它。通过修改奖励激励,我们已经成功地训练了一个模型,该模型可以在满足应用程序需求的同时,在多级编排场景中选择最佳的主机。通过一系列MEC场景的模拟结果表明,成功率高达96%,优化了长期延迟。
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DQN-based Intelligent Application Placement with Delay-Priority in Multi MEC Systems
In 5G Multi-access Edge Computing (MEC) is critical to bring computing and processing closer to users and enable ultra-low latency communications. When instantiating an application, selecting the MEC host that minimizes the latency but still fulfills the application's requirements is critical. However, as future 6G networks are expected to become even more geo-distributed, and handled by multiple levels of management entities, this labor becomes extremely difficult and Machine Learning (ML) is meant to be a native part of this process. In this context, we propose a Reinforcement Learning model that selects the best possible host to instantiate a MEC application, looking to minimize the end-to-end delay while fulfilling the application requirements. The proposed ML method uses Deep Q-Learning through several stages of environment state, taking an action and rewarding the model when it chooses correctly and penalizing it otherwise. By modifying the reward incentives, we have successfully trained a model that chooses the best host possible delay-wise on a multi-level orchestration scenario, while meeting the applications' requirements. The results obtained via simulation over a series of MEC scenarios show a success rate of up to 96%, optimizing the delay in the long term.
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