Leveraging SDN for Load Balancing on Campus Network (CN)

Suruchi Karnani, H. K. Shakya
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引用次数: 1

Abstract

The next-generation campus network (CN) is turning into a complex network with a growing number of users, applications, wired and wireless devices. Therefore, to support all the connectivity modes and user demands CN needs to shift from a static, inflexible to a dynamic, flexible, and automated behavior. Software-Defined Networking (SDN) provides flexible network management through its programmable feature and layered architecture. Deployment of multi-controller enhances availability, scalability and brought in a new idea of load sharing between switches and controllers. The CN has thousands of internal, external, and remote users communicating with the network infrastructure. To address the above issues, this article presents SDN based load balancing strategy for campus Networks. Firstly, this article presents an overview of the SDN- based CN framework. Then discuss the conceptual design of a bi-fold load balancing module to shape traffic spikes in SDN-based CN framework. The bi-fold load balancing module consists of dynamic round-robin scheduling for switch load balancing and fractional flow request migration for controller load balancing. This paper proposes a novel load balancing module integrated into SDN-based CN framework.
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利用SDN实现校园网(CN)负载均衡
下一代校园网(CN)正在成为一个用户、应用、有线和无线设备数量不断增加的复杂网络。因此,为了支持所有的连接模式和用户需求,CN需要从静态的、不灵活的行为转变为动态的、灵活的和自动化的行为。软件定义网络(SDN)通过其可编程特性和分层架构提供灵活的网络管理。多控制器的部署提高了可用性和可扩展性,并带来了交换机和控制器之间负载共享的新思想。CN有成千上万的内部、外部和远程用户与网络基础设施通信。为了解决上述问题,本文提出了基于SDN的校园网负载均衡策略。本文首先对基于SDN的CN框架进行了概述。然后讨论了基于sdn的CN框架中双向负载均衡模块的概念设计,以形成流量峰值。双向负载均衡模块包括交换机负载均衡的动态轮循调度和控制器负载均衡的分流请求迁移。本文提出了一种集成在基于sdn的CN框架中的新型负载均衡模块。
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