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首页> 外文期刊>Journal of supercomputing >A modified knowledge-based ant colony algorithm for virtual machine placement and simultaneous routing of NFV in distributed cloud architecture
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A modified knowledge-based ant colony algorithm for virtual machine placement and simultaneous routing of NFV in distributed cloud architecture

机译:一种改进的基于知识的蚁群算法,用于虚拟机放置和分布式云架构中NFV的同时路由

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The emergence of the new technologies such as virtualization and distributed cloud computing has provided new opportunities for management and orchestration of the networks by software-defined networking (SDN) and network function virtualization (NFV). SDN provides centralized knowledge about the network status and NFV lets networks implement their functions virtually on servers in edge cloud, thereby reducing costs and increasing flexibility as well as scalability of the networks. One of the main challenges for orchestration is how to increase utilization of physical network and edge cloud resources for better placement and routing of virtual network functions (VNFs) in service function chaining problem. We proposed a novel chaotic grey-wolf-optimized knowledge-based modified ant colony system algorithm, in order to have placement of VNFs and simultaneously allocate main paths and redundant paths to flows for service management by using the knowledge gained by SDN controllers. Since every flow that enters the network requires multiple virtual service functions in a service-chaining workflow, so in the proposed algorithm, service-chaining is distributed fairly on different cloudlets connected to each router in the network so that services use CPU and memory resources of all the cloudlets efficiently and fairly. We have evaluated our proposed framework by two standard network topologies connected to distributed cloudlets by realistic traffic workload. The results show that the proposed framework provides more utilization of physical resources in cloudlets by better virtual machine placement and also achieves lower delay and higher available bandwidth for VNFs in addition to better routing path redundancy. In addition, the algorithm converges faster compared to rival metaheuristic algorithms such as standard PSO for routing and placement problem.
机译:虚拟化和分布式云计算等新技术的出现为通过软件定义网络(SDN)和网络功能虚拟化(NFV)进行网络管理和编排提供了新的机会。 SDN提供有关网络状态的集中知识,而NFV使网络可以在边缘云中的服务器上虚拟地实现其功能,从而降低成本,提高网络的灵活性和可扩展性。编排的主要挑战之一是如何提高物理网络和边缘云资源的利用率,以便在服务功能链问题中更好地放置和路由虚拟网络功能(VNF)。我们提出了一种新颖的基于灰狼优化的基于知识的改进蚁群系统算法,以利用SDN控制器获得的知识来放置VNF,并同时将主要路径和冗余路径分配给流以进行服务管理。由于进入网络的每个流都需要在服务链工作流程中使用多个虚拟服务功能,因此在提出的算法中,服务链公平地分布在连接到网络中每个路由器的不同小云上,因此服务使用CPU和内存资源。所有小云均有效且公平。我们已经通过通过实际流量工作负载连接到分布式小云的两种标准网络拓扑评估了我们提出的框架。结果表明,提出的框架通过更好的虚拟机放置提供了对Cloudlet中物理资源的更多利用,并且除了更好的路由路径冗余之外,还为VNF提供了更低的延迟和更高的可用带宽。此外,与诸如标准PSO的竞争对手元启发式算法相比,该算法收敛速度更快,可解决布线和放置问题。

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