Optimization Model and Algorithm for Dynamic Service-Aware Traffic Steering in Network Functions Virtualization

Thi-Thuy-Lien Nguyen, Tuan-Minh Pham
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引用次数: 3

Abstract

Network Functions Virtualization (NFV) has emerged as a paradigm for efficient, flexible and agile network function provisioning. In such NFV-based networks, ensuring network performance and cost efficiency is an important challenge to tackle when network traffic is steered through a chain of virtual network functions (VNF). In this work, we consider the dynamics of traffic demand in different time periods, and multipath routing for minimizing the routing cost in NFV. We focus primarily on optimization models and algorithms for finding a traffic steering solution that effectively splits a demand volume into several flows and selects appropriate links and nodes for these flows. We formulate the problem as a mixed linear integer programming model for obtaining an optimal solution taking into account the dynamics of service demand, multipath routing and service function chaining. For the large scale problem, we propose a heuristic algorithm to find an approximation solution. Particularly, our proposed model and algorithm allows a controller to update a link weight system for effectively steering traffic demand to appropriate nodes in a NFV infrastructure. The evaluation results show that our approach to traffic steering significantly improves a number of major performance metrics including the routing cost, the maximum link utilization, and the accepted demands. In addition, the approximation solution is very close to the optimal solution.
网络功能虚拟化中动态业务感知流量导向的优化模型与算法
网络功能虚拟化(NFV)已经成为高效、灵活和敏捷的网络功能配置范例。在这种基于nfv的网络中,当网络流量通过一系列虚拟网络功能(VNF)引导时,确保网络性能和成本效率是一个重要的挑战。在这项工作中,我们考虑了不同时间段的流量需求动态,并考虑了在NFV中最小化路由成本的多路径路由。我们主要关注优化模型和算法,以找到一种交通导向解决方案,有效地将需求量分成几个流,并为这些流选择适当的链接和节点。考虑到服务需求、多路径路由和业务功能链的动态性,将问题表述为一个获得最优解的混合线性整数规划模型。对于大规模问题,我们提出了一种启发式算法来寻找近似解。特别是,我们提出的模型和算法允许控制器更新链路权重系统,以有效地将流量需求引导到NFV基础设施中的适当节点。评估结果表明,我们的流量控制方法显著改善了许多主要性能指标,包括路由成本、最大链路利用率和可接受的需求。此外,近似解非常接近最优解。
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