网络流最优路由算法的验证

D. Bertsekas, E. Gafni, K. Vastola
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引用次数: 14

摘要

本文给出了用几种最近发展的优化算法求解凸多商品网络流问题的计算结果。这些算法基于Gallager的数据通信网络延迟分布优化方法[1]和非线性规划中的梯度投影思想[2],[3]。它们既可以使用,也可以不使用行搜索。这些算法与其他现有方法的一个重要的共同特征是,它们利用二阶导数,并倾向于近似牛顿方法的约束版本。计算结果表明,无论网络的流量输入水平和模式如何,算法都倾向于采用良好的搜索方向,并自动生成满意的步长。当算法用于数据通信网络中的分布式流路由时,后者的优势是至关重要的,在这些网络中使用线搜索几乎是不可能的。
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Validation of algorithms for optimal routing of flow in networks
This paper presents computational results relating to solution of convex multicommodity network flow problems by using several recently developed optimization algorithms. These algorithms are based on the ideas of Gallager's method for distributed optimization of delay in data communication networks [1], and gradient projection ideas from nonlinear programming [2], [3]. They can be used both with and without a line search. An important common feature of the algorithms which distinguishes them from other existing methods is that they utilize second derivatives and are geared towards approximating a constrained version of Newton's method. The computational results confirm that the algorithms tend to employ good search directions as well as automatically generate a satisfactory stepsize regardless of the level and pattern of traffic input to the network. This latter advantage is of crucial importance when the algorithms are used for distributed routing of flow in data communication networks where the use of line search is nearly impossible.
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