Adaptive multipath routing for large-scale layered networks

Erina Takeshita, N. Wakamiya
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引用次数: 1

Abstract

Network virtualization technologies enable multiple virtual networks to be laid over common physical networks and provide application or service-oriented networking functionalities in each virtual network. Since virtual networks share and compete for physical network resources, cooperation between virtual networks is necessary to accomplish the system-level optimization. Furthermore, system-wide adaptation is required to react to dynamically changing traffic conditions which cannot be controlled nor predicted by each virtual network. In this paper we propose an adaptive multipath routing mechanism with which globally suboptimal control can be accomplished. For this purpose, we adopt a bio-inspired algorithm, more specifically, an attractor selection model which is a nonlinear mathematical model of biological adaptation. We consider layered network architecture where a virtual network consists of virtual nodes and links which are generated by virtualizing physical domain networks and physical links. In our proposal each of physical and virtual nodes adaptively selects one of pre-established paths in accordance with dynamically changing network conditions. For cooperative routing decisions, we introduce a mechanism for routing controls operating at different virtual networks to share optimization objectives. With such loose inter-network coupling, our proposal is superior to existing control from viewpoints of adaptability and stability.
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大规模分层网络的自适应多径路由
网络虚拟化技术支持在公共物理网络上铺设多个虚拟网络,并在每个虚拟网络中提供应用程序或面向服务的网络功能。由于虚拟网络共享和竞争物理网络资源,因此需要虚拟网络之间的协作来完成系统级优化。此外,系统范围的适应需要对每个虚拟网络无法控制和预测的动态变化的流量条件作出反应。本文提出了一种可实现全局次优控制的自适应多径路由机制。为此,我们采用了一种生物启发算法,更具体地说,是一种生物适应的非线性数学模型——吸引子选择模型。我们考虑分层网络结构,其中虚拟网络由虚拟节点和虚拟链路组成,这些节点和链路是通过虚拟化物理域网络和物理链路生成的。在我们的建议中,每个物理节点和虚拟节点根据动态变化的网络条件自适应地选择预先建立的路径之一。对于协同路由决策,我们引入了在不同虚拟网络上运行的路由控制机制,以共享优化目标。在这种松散的网络间耦合下,从适应性和稳定性的角度来看,我们的方案优于现有的控制方案。
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