Quality of service issues and nonconvex Network Utility Maximization for inelastic services in the Internet

G. Abbas, A. Nagar, H. Tawfik, J. Goulermas
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引用次数: 7

Abstract

Network Utility maximization (NUM) provides an important perspective to conduct rate allocation where optimal performance, in terms of maximal aggregate bandwidth utility, is generally achieved such that each source adaptively adjusts its transmission rate. Behind most of the recent literature on NUM, common assumptions are that traffic flows are elastic and that their utility functions are strictly concave. This provides design simplicity but, in practice, limits the applicability of resulting protocols, in that severe QoS problems may be encountered when bandwidth is shared by inelastic flows. This paper investigates the problem of distributively allocating data transmission rates to multiclass services, both elastic and inelastic, and overcomes the restrictive and often unrealistic assumptions. The proposed method is based on the Lagrangian Relaxation for a dual formulation that decomposes the higher dimension NUM into a number of subproblems. We use a novel Surrogate Subgradient based stochastic method to solve the dual problem. Unlike the ordinary subgradient methods, Surrogate Subgradient can compute optimal prices without the need to solve all the subproblems. For the lower dimension, nonlinear and nonconvex subproblems we use a hybrid Particle Swarm Optimization (PSO) and Sequential Quadratic Programming (SQP) method, where the objective is to achieve fast convergence as well as accuracy. We demonstrate the efficiency of the proposed rate allocation algorithm, in terms maintaining QoS for multiclass services, and validate its scalability and accuracy for large scale flows.
互联网中非弹性服务的服务质量问题和非凸网络效用最大化
网络效用最大化(Network Utility maximization, NUM)为进行速率分配提供了一个重要的视角,在这种情况下,就最大聚合带宽效用而言,通常可以实现最佳性能,从而使每个源自适应地调整其传输速率。在最近大多数关于NUM的文献背后,常见的假设是交通流是弹性的,它们的效用函数是严格凹的。这提供了简单的设计,但在实践中,限制了最终协议的适用性,因为当带宽由非弹性流共享时可能会遇到严重的QoS问题。本文研究了弹性和非弹性的多业务数据传输速率的分布式分配问题,并克服了一些限制性和不现实的假设。该方法基于拉格朗日松弛的对偶公式,将高维NUM分解为若干子问题。我们使用一种新的基于代理子梯度的随机方法来解决对偶问题。与普通的子梯度方法不同,代理子梯度可以在不需要解决所有子问题的情况下计算最优价格。对于低维、非线性和非凸子问题,我们使用混合粒子群优化(PSO)和序列二次规划(SQP)方法,其目标是实现快速收敛和精度。我们证明了所提出的速率分配算法在维持多类别服务的QoS方面的效率,并验证了其在大规模流中的可扩展性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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