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Self-adaptive power control with deep reinforcement learning for millimeter-wave Internet-of-vehicles video caching

机译:用于毫米波互联网网络视频缓存的自适应功率控制视频缓存

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摘要

Video delivery and caching over the millimeter-wave (mmWave) spectrum is a promising technology for high data rate and efficient frequency utilization in many applications, including distributed vehicular networks. However, due to the short handoff duration, calibrating both optimal power allocation of each base station toward its associated vehicles and cache allocation are challenging for their computational complexity. Heretofore, most video delivery applications were based on on-line or off-line algorithms, and they were limited to compute and optimize high dimensional objectives within low-delay in large scale vehicular networks. On the other hand, deep reinforcement learning is shown for learning such scale of a problem with an optimized policy learning phase. In this paper, we propose deep deterministic policy gradient-based power control of mmWave base station (mBS) and proactive cache allocation toward mBSs in distributedmmWave Internet-of-vehicle (IoV) networks. Simulation results validate the performance of the proposed caching scheme in terms of quality of the provisioned video and playback stall in various scales of IoV networks.
机译:在毫米波(MMWAVE)频谱上的视频传送和缓存是一种有希望的技术,可用于许多应用中的高数据速率和高效的频率利用,包括分布式车辆网络。然而,由于短的切换持续时间,校准每个基站的最佳功率分配朝向其相关的车辆和高速缓存分配对其计算复杂性有挑战性。迄今为止,大多数视频传送应用程序基于在线或离线算法,它们仅限于在大规模车辆网络中计算和优化低延迟内的高维目标。另一方面,展示了深度加强学习,用于通过优化的策略学习阶段学习这种问题的规模。在本文中,我们提出了基于MMWAVE基站(MBS)的深度确定性政策梯度基于基于MMWAVE基站(MBS)的基于梯度控制,并对分布式MMWAVE Internet-Internet-Internet网络中MBSS的主动缓存分配。仿真结果验证了在IOV网络的各种尺度的供应视频和播放速度的质量方面验证了所提出的缓存方案的性能。

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