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Smart Scaling of the 5G Core Network: An RNN-Based Approach

机译:5G核心网络的智能缩放:基于RNN的方法

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The upcoming mobile core network, which will be based on Virtual Network Functions (VNF), will face an increase of data traffic on both data and control planes. This is due to the increase of the number of connected devices and the newly 5G supported-services like IoT, Connected Health Care etc. Therefore dynamic and accurate scalability techniques should be envisioned in order to answer the needs, in term of resource provisioning, without degrading the Quality Of Service (QoS) already offered by hardware based core networks. Although provisioning new resources is easier as it is a matter of software deployment, the strategy to use (when to scale and how much to scale) remains complex. In this paper we propose scaling techniques based on neural networks to forecast the upcoming load. Hence scheduling the resource provisioning should be in a manner that all the needed resources will be deployed and active when the load increases. In the same way, it will scale-in the unneeded resources when the traffic load decreases. The proposal is tested via discrete event simulations using a traffic load dataset provided by a Network Operator. The results show clearly the robustness of our proposal compared to a threshold-based scaling technique.
机译:即将到来的移动核心网络,将基于虚拟网络功能(VNF),将面临数据和控制平面上的数据流量的增加。这是由于连接设备的数量和新的5G支持服务,如物联网,连接的医疗保健等,因此应该设想动态和准确的可伸缩性技术,以便在资源配置期间回答需求,而无需劣化基于硬件的核心网络提供的服务质量(QoS)。虽然配置新资源更容易,因为软件部署的问题,但使用的策略(何时扩展以及扩展的速度)仍然很复杂。在本文中,我们提出了基于神经网络的缩放技术来预测即将到来的负荷。因此,调度资源供应应该是在负载增加时部署和活动的所有方式的方式。以同样的方式,当流量负荷减小时,它将缩放不需要的资源。通过使用网络运营商提供的流量负载数据集来测试该提案。结果表明,与基于阈值的缩放技术相比,我们提案的鲁棒性。

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