机器学习为最小延迟移动网络提供预测性资源推荐

Yingze Wang, Qimei Cui, Kwang-Cheng Chen
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引用次数: 7

摘要

为了实现最小的延迟,提出了主动无线通信来促进主动移动网络。由于缺乏闭环控制,随机选择无线电资源单元(rru)是实现关键无线电资源分配(RRA)的唯一途径,同时使用相同的rru不可避免地会发生冲突,导致数据包丢失,特别是在上行链路上。宏观地观察上下行网络运行周期,深刻地认识到,在主动移动网络上行链路中,仍然可以构建延迟版本的半闭环运行来预测利用无线电资源。提出了一种两阶段强化学习机制,用于从网络基础设施向移动智能机器推荐无线电资源的利用,该机制由RRA的多臂强盗方案和学习rru历史利用的神经网络组成。模拟验证了机器学习可以实现智能和预测性RRA,具有卓越的性能,可以将移动网络的延迟降至最低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Enables Predictive Resource Recommendation for Minimal Latency Mobile Networking
To achieve the minimal latency, proactive wireless communication has been proposed to facilitate proactive mobile networks. Due to lacking closed-loop control, random selection of radio resource units (RRUs) serves the only way to the critical radio resource allocation (RRA), which inevitably suffers collisions of simultaneous utilizing the same RRUs to result in loss of packets, particularly in the uplink. Macroscopic view on the uplink and downlink network operation cycle insightfully suggests that it is still possible to construct a delayed version of semi-closed-loop operation to predictively utilize radio resource in the uplink of proactive mobile network. A two-stage reinforcement learning mechanism to enable the recommendation of radio resource utilization from network infrastructure to mobile smart machines is proposed, which consists of the multi-armed bandit scheme for RRA and the neural network to learn historical utilization of RRUs. Simulations verify machine learning enables smart and predictive RRA with superior performance that can lead to the minimal latency of mobile networking.
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