基于移动性预测的基于深度强化学习的无线边缘缓存

Yuekai Cai, Youjia Chen, Ming Ding, Peng Cheng, Jun Li
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引用次数: 0

摘要

无线网络边缘的内容缓存是一种很有前途的减少重复数据传输回程流量的技术。其关键问题在于对用户需求的准确预测。考虑到蜂窝网络中用户的普遍移动,特别是在小蜂窝网络中,我们提出了一种基于移动性预测的内容缓存替代策略。请注意,不均匀分布的文件流行程度在小计算单元中的影响要比在宏计算单元中大得多,因为它们的覆盖范围小,本地文件请求配置文件与全局文件请求配置文件不匹配。更详细地说,将长短期记忆(LSTM)预测的用户位置整合到基于深度强化学习(DRL)框架的缓存替换算法中。仿真结果表明,在各种移动场景下,移动预测在缓存命中率(CHR)方面带来了显著的性能提升,特别是对于更规律的用户移动模式。分析了算法的最优CHR阈值,并研究了学习率和存储容量对性能的影响。
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Mobility Prediction-Based Wireless Edge Caching Using Deep Reinforcement Learning
Content caching in the edge of wireless networks is a promising technology to reduce the backhaul traffic of duplicated data transmission. Its key issue lies in the accurate prediction of user requirements. Considering the pervasive movement of users in cellular networks, especially in small-cell networks, we propose a mobility prediction-based content caching replacement strategy in this paper. Note that the impact of unevenly distributed file popularity is much larger in small cells than in macro cells due to their small coverage, where the local file request profile does not match the global one. In more detail, the user location predicted by long short term memory (LSTM) is incorporated into the caching replacement algorithm based on a deep reinforcement learning (DRL) framework. Simulation results show that the mobility prediction brings significant performance improvement in terms of cache hit ratio (CHR) in various movement scenarios, especially for a more regular movement pattern of users. Moreover, the optimal CHR threshold in the proposed algorithm is analytically derived, and the performance impact of learning rate as well as the storage size is also well investigated.
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