最大最小公平原则在电信网络设计中的应用

M. Pióro, M. Dzida, E. Kubilinskas, P. Nilsson
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引用次数: 17

摘要

互联网业务带来的业务量的快速增长使得简单的资源过度供应变得不经济,从而对量纲方法提出了新的要求。因此,以成本最小化为目标,同时解决业务数据流最大化与所有需求公平处理之间的权衡关系的网络设计问题变得越来越重要。在这种情况下,所谓的最大最小公平(MMF)原则被广泛认为有助于为竞争需求找到合理的带宽分配方案。粗略地说,MMF假设最差的服务性能被最大化,然后是第二差的性能,第三差的性能,依此类推,从而导致按字典顺序排序的需求带宽分配向量的最大化。事实证明,MMF最优解不能以标准方式(即作为数学规划问题)处理,因为有序数量(按需求分配的带宽)必须按字典顺序最大化。尽管如此,对于凸模型,有可能为这种字典优化制定有效的顺序过程。本文的目的有三个方面。首先,讨论了与电信网络设计相关的通用MMF问题的求解算法。其次,给出了通用公式的网络设计实例,并说明了通用算法在这些特定情况下的效率。最后,本文讨论了将公式问题扩展到更实际的(不幸的是非凸的)情况,其中一般的凸MMF问题方法失败了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of the max-min fairness principle in telecommunication network design
The rapid growth of traffic induced by Internet services makes the simple over-provisioning of resources not economical and hence imposes new requirements on the dimensioning methods. Therefore, the problem of network design with the objective of minimizing the cost and at the same time solving the tradeoff between maximizing the service data flows and providing fair treatment of all demands becomes more and more important. In this context, the so-called max-min fair (MMF) principle is widely considered to help finding reasonable bandwidth allocation schemes for competing demands. Roughly speaking, MMF assumes that the worst service performance is maximized, and then is the second worst performance, the third one, and so on, leading to a lexicographically maximized vector of sorted demand bandwidth allocations. It turns out that the MMF optimal solution cannot be approached in a standard way (i.e., as a mathematical programming problem) due to the necessity of lexicographic maximization of ordered quantities (bandwidth allocated to demands). Still, for convex models, it is possible to formulate effective sequential procedures for such lexicographic optimization. The purpose of the presented paper is three-fold. First, it discusses resolution algorithms for a generic MMF problem related to telecommunications network design. Second, it gives a survey of network design instances of the generic formulation, and illustrates the efficiency of the general algorithms in these particular cases. Finally, the paper discusses extensions of the formulated problems into more practical (unfortunately non-convex) cases, where the general for convex MMF problems approach fails.
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