LawNFO:最优位置感知网络功能外包的决策框架

K. Suksomboon, M. Fukushima, M. Hayashi, Rathachai Chawuthai, Hideaki Takeda
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引用次数: 5

摘要

通过将网络功能与底层专用硬件分离,企业可以从将网络功能外包给云计算中获益。由于缺乏分析工具,人们不能简单地证明外包网络功能的价值。本文提出了一个网络功能外包的决策支持框架,称为位置感知网络功能外包(LawNFO),旨在确定哪些网络功能值得外包给云。LawNFO构造一个网络函数图,并将网络函数处理单元的代价和任意网络函数对之间的数据传输映射到图上。将网络功能外包问题表述为以网络成本最小为目标的优化问题。为了解决基于图输入的优化问题,我们开发了一种高效快速的启发式算法,称为节点加权收缩(NowCont),它包含了图划分和图增强技术。本文通过仿真来评估使用NowCont算法的LawNFO在两个方面的性能:1)与最优解的接近度;2)与全内部和大部分在云中的网络功能放置模型相比的网络成本。仿真结果表明,NowCont算法得到的解最接近最优解。通过两个用例的评价表明,LawNFO对企业的网络功能外包决策有一定的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LawNFO: A decision framework for optimal location-aware network function outsourcing
By decoupling the network function from the underlying dedicated hardware, enterprises can reap the benefit of outsourcing network functions to the cloud. Due to a lack of analytical tools, one cannot simply justify the worthiness of outsourcing network functions. This paper proposes a decision support framework for network function outsourcing, called Location-aware Network Function Outsourcing (LawNFO), aiming to identify which network function is worth to be outsourced to the cloud. LawNFO constructs a network-function graph and maps the cost of network function processing units and the data transmission between any network-function pairs onto the graph. The network function outsourcing problem is formulated as an optimization problem targeting on the minimum network cost. To solve the optimization problem based on the graph input, we develop an efficient and fast heuristic algorithm, called Node-weighted Contraction (NowCont), that encompasses the graph partitioning and graph augmentation techniques. This paper performs simulation to evaluate the performance of LawNFO with NowCont algorithm in two aspects: 1) the closeness ratio to the optimal solutions and 2) the network cost comparing to that of all-in-house and most-in-cloud network function placement models. The simulation results illustrate that the NowCont algorithm yields the solution closest to the optimal solution. The evaluation through two use cases show that LawNFO is of benefit to the enterprises for the decision of network function outsourcing.
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