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Intelligent Traffic Adaptive Resource Allocation for Edge Computing-Based 5G Networks

机译:基于边缘计算的5G网络的智能流量自适应资源分配

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The popularity of smart mobile devices has led to a tremendous increase in mobile traffic, which has put a considerable strain on the fifth generation of mobile communication networks (5G). Among the three application scenarios covered by 5G, ultra-high reliability and ultra-low latency (uRLLC) communication can best be realized with the assistance of artificial intelligence. For a combined 5G, edge computing and IoT-Cloud (a platform that integrates the Internet of Things and cloud) in particular, there remains many challenges to meet the uRLLC latency and reliability requirements despite a tremendous effort to develop smart data-driven methods. Therefore, this paper mainly focuses on artificial intelligence for controlling mobile-traffic flow. In our approach, we first develop a traffic-flow prediction algorithm that is based on long short-term memory (LSTM) with an attention mechanism to train mobile-traffic data in single-site mode. The algorithm is capable of effectively predicting the peak value of the traffic flow. For a multi-site case, we present an intelligent IoT-based mobile traffic prediction-and-control architecture capable of dynamically dispatching communication and computing resources. In our experiments, we demonstrate the effectiveness of the proposed scheme in reducing communication latency and its impact on lowering packet-loss ratio. Finally, we present future work and discuss some of the open issues.
机译:智能移动设备的普及导致移动流量增加,这对第五代移动通信网络(5G)进行了相当大的应变。在5G涵盖的三个应用方案中,可以最好地在人工智能的帮助下实现超高可靠性和超低延迟(URIFLC)通信。对于一个组合的5G,边缘计算和IOT-Cloud(一个集成了物联网和云的平台),仍然存在许多挑战,尽管有巨大的努力来开发智能数据驱动方法,但仍然可以满足URILC延迟和可靠性要求。因此,本文主要侧重于控制移动交通流量的人工智能。在我们的方法中,我们首先开发一种基于长短短期存储器(LSTM)的流量预测算法,其注意机制在单站点模式下训练移动流量数据。该算法能够有效地预测业务流的峰值。对于多站点案例,我们提供了一种能够动态调度通信和计算资源的智能物联网的移动流量预测和控制架构。在我们的实验中,我们展示了提出方案减少沟通潜伏期及其对降低分组损失率的影响的有效性。最后,我们展示未来的工作并讨论一些公开问题。

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