STAG-based Dynamic Two-commodity Maximum Flow Algorithm for Time-varying Networks

Zhang Tao, Hongyan Li, Shun Zhang, Peng Wang, Jiandong Li
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引用次数: 2

Abstract

The multi-commodity flow problem plays an important role in network optimization, routing and service scheduling. With the network partitioning and intermittent connectivity, the commodity flows in time-varying networks are different from that over the static networks. As an NP-hard problem, existing works can only obtain suboptimal results on maximizing the multi-commodity flow of dynamic networks, due to the time variant network characteristics and coupling commodity relationships. In this paper, we propose a graph-based flow algorithm to solve the maximum two-commodity flow problem over the time-varying networks. Specially, we exploit storage time aggregated graph (STAG) to model the time variant network topology, link contact and node buffer resources. And through analyzing the relationship between two different commodities, we simplify the coupling two-commodity flow problem as the two single-commodity flow ones. As such, a STAG-based dynamic combined flow algorithm is proposed to maximize the two-commodity flow. Finally, we demonstrate the performance of the proposed algorithm through simulations.
基于stag的时变网络动态双商品最大流量算法
多商品流问题在网络优化、路由和业务调度中起着重要的作用。时变网络中的商品流与静态网络中的商品流是不同的,因为时变网络具有网络分区和间歇性连通性。作为一个np困难问题,由于时变的网络特性和耦合的商品关系,现有的工作在动态网络的多商品流量最大化上只能得到次优结果。在本文中,我们提出了一种基于图的流算法来解决时变网络上的最大两商品流问题。特别地,我们利用存储时间聚合图(STAG)来建模时变网络拓扑、链路接触和节点缓冲资源。并通过分析两种不同商品之间的关系,将耦合双商品流问题简化为两个单商品流问题。为此,提出了一种基于staga的动态组合流算法,以实现双商品流的最大化。最后,通过仿真验证了所提算法的性能。
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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