CogNet:具有认知能力的网络管理体系结构

Lei Xu, H. Assem, I. B. Yahia, Teodora Sandra Buda, Ángel Martín, D. Gallico, Matteo Biancani, A. Pastor, P. Aranda, M. Smirnov, D. Raz, Olga Uryupina, A. Mozo, B. Rubio, M. Corici, Pat O'Sullivan, R. Mullins
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引用次数: 32

摘要

预计第五代移动网络(5G)将支持人与人和机器对机器的通信,连接多达数万亿设备,并达到令人生畏的复杂性和流量水平。由于网络的多样性和庞大的规模,这给网络管理带来了一系列新的挑战。网络有必要在很大程度上进行自我管理,并处理组织、配置、安全和优化问题。本文提出了一种基于网络功能虚拟化的自主自管理网络体系结构,能够实现或平衡高QoS、低能耗和运行效率等目标。该架构的主要新颖之处在于引入了认知智能引擎,以实现机器学习,特别是(近)实时学习,以便动态地调整资源以适应虚拟网络功能的即时需求,同时最大限度地降低性能降低以满足SLA要求。这个架构是在CogNet欧洲地平线2020项目中构建的,该项目指的是认知网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CogNet: A network management architecture featuring cognitive capabilities
It is expected that the fifth generation mobile networks (5G) will support both human-to-human and machine-to-machine communications, connecting up to trillions of devices and reaching formidable levels of complexity and traffic volume. This brings a new set of challenges for managing the network due to the diversity and the sheer size of the network. It will be necessary for the network to largely manage itself and deal with organisation, configuration, security, and optimisation issues. This paper proposes an architecture of an autonomic self-managing network based on Network Function Virtualization, which is capable of achieving or balancing objectives such as high QoS, low energy usage and operational efficiency. The main novelty of the architecture is the Cognitive Smart Engine introduced to enable Machine Learning, particularly (near) real-time learning, in order to dynamically adapt resources to the immediate requirements of the virtual network functions, while minimizing performance degradations to fulfill SLA requirements. This architecture is built within the CogNet European Horizon 2020 project, which refers to Cognitive Networks.
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