A Novel Deep Reinforcement Learning based service migration model for Mobile Edge Computing

S. Park, A. Boukerche, Shichao Guan
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引用次数: 11

Abstract

Cloud Computing has emerged as a foundation of smart environments by encapsulating and virtualizing the underlying design and implementation details. Concerning the inherent latency and deployment issues, Mobile Edge Computing seeks to migrate services in the vicinity of mobile users. However, the current migration-based studies lack the consideration of migration cost, transaction cost, and energy consumption on the system-level with discussion on the impact of personalized user mobility. In this paper, we implement an enhanced service migration model to address user proximity issues. We formalize the migration cost, transaction cost, energy consumption related to the migration process. We model the service migration issue as a complex optimization problem and adapt Deep Reinforcement Learning to approximate the optimal policy. We compare the performance of the proposed model with the recent Q-learning method and other baselines. The results demonstrate that the proposed model can estimate the optimal policy with complicated computation requirements.
一种基于深度强化学习的移动边缘计算服务迁移模型
通过封装和虚拟化底层设计和实现细节,云计算已经成为智能环境的基础。考虑到固有的延迟和部署问题,移动边缘计算寻求在移动用户附近迁移服务。然而,目前基于迁移的研究缺乏对系统层面迁移成本、交易成本和能源消耗的考虑,缺乏对个性化用户迁移影响的讨论。在本文中,我们实现了一个增强的服务迁移模型来解决用户接近问题。我们将迁移成本、交易成本、与迁移过程相关的能源消耗形式化。我们将服务迁移问题建模为一个复杂的优化问题,并采用深度强化学习来近似最优策略。我们将所提出的模型的性能与最近的Q-learning方法和其他基线进行了比较。结果表明,该模型可以在复杂的计算需求下估计出最优策略。
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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