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引用次数: 5
摘要
近年来,随着各种互联网设备的普及,网络功能虚拟化(network functions virtualization, NFV)作为下一代网络的核心技术,日益受到人们的关注。随着NFV的发展,出现了针对特定网络业务的业务功能链(service function chains, SFC), SFC是一种对业务功能进行顺序抽象的技术。结合已有研究通过强化学习动态生成服务链的动态服务链方法,考虑NFV环境下业务功能运行的节点,以及CPU、内存、网络等资源的使用情况,通过灵活计算r值的固定权值,研究了一种更稳定的动态服务功能链方法。这是由实验得出的,根据相关节点的剩余资源量。
Dynamic Service Function Chaining by Resource Usage Learning in SDN/NFV Environment
Recently, to reflect diverse service requirements increasing with the popularization of various Internet devices, network functions virtualization (NFV) is attracting attention as the core technology of the next-generation network. In keeping with the progress of NFV, service function chaining (SFC) for specific network service appeared, and SFC refers to a technique for the sequential abstraction of service functions. In connection with the existing study's method for dynamic service chaining that dynamically generates a service chain through reinforcement learning, considering a node, at which service functions operate for efficient service chaining in the NFV environment, and the usage of resources such as CPU, memory, and network usage, this paper investigated a method for more stable dynamic service function chaining by flexibly calculating a fixed weight for the $r$ value, which was derived from an experiment, according to the amount of remaining resources at the relevant node.