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A Dynamic and Collaborative Multi-Layer Virtual Network Embedding Algorithm in SDN Based on Reinforcement Learning

机译:基于强化学习的SDN动态与协作多层虚拟网络嵌入算法

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Most of existing virtual network embedding (VNE) algorithms only consider how to construct virtual networks more efficiently on a physical infrastructure, without considering the possibility that the constructed virtual networks may be further virtualized to multiple smaller ones. We define the former scenario as single-layer VNE and the later as multi-layer VNE. As the increasing popularity of deploying large datacenter networks and wide area networks with Software Defined Network (SDN) architectures, it becomes a new requirement and possibility to provide multi-layer encapsulated network services for large tenants who have hierarchical organizational structures or need fine-grained service isolation. However, existing VNE algorithm are not specifically designed for the above requirement and not flexible enough to deal with mapping virtual network requirements (VNRs) to a physical network and smaller VNRs to a mapped virtual network. In this paper, we aim to propose a unified and flexible multi-layer VNE algorithm combining with reinforcement learning to solve the embedding of multi-layer VNRs, which can better distinguish the differences between VNRs and physical networks. Simulation results show that our algorithm achieves good performance both in single-layer and multi-layer VNE scenarios.
机译:现有的大多数现有虚拟网络嵌入(VNE)算法仅考虑如何更有效地在物理基础架构上构建虚拟网络,而不考虑构造的虚拟网络可以进一步虚拟化到多个较小的网络的可能性。我们将前一个场景定义为单层VNE,后来作为多层VNE。随着使用软件定义的网络(SDN)架构的大型数据中心网络和广域网的越来越越来越越来越多,它成为一个新的要求和提供具有分层组织结构的大型租户的多层封装网络服务或需要细粒度服务隔离。然而,现有的VNE算法没有专门为上述要求设计,并且不足以使映射虚拟网络要求(VNR)映射到物理网络和较小的VNR到映射的虚拟网络。在本文中,我们的目标是提出一个统一和灵活的多层VNE算法,该统一和柔性的多层VNE算法结合了加强学习,以解决多层VNR的嵌入,这可以更好地区分VNR和物理网络之间的差异。仿真结果表明,我们的算法在单层和多层VNE场景中实现了良好的性能。

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