Joint Switch-Controller Association and Control Devolution for SDN Systems: An Integration of Online Control and Online Learning

Xi Huang, Yinxu Tang, Ziyu Shao, Yang Yang, Hong Xu
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引用次数: 2

Abstract

In software-defined networking (SDN) systems, it is a common practice to adopt a multi-controller design and control devolution techniques to improve the performance of the control plane. However, in such systems the decision making for joint switch-controller association and control devolution often involves various uncertainties, e.g., the temporal variations of controller accessibility, and computation and communication costs of switches. In practice, statistics of such uncertainties are unattainable and need to be learned in an online fashion, calling for an integrated design of learning and control. In this paper, we formulate a stochastic network optimization problem that aims to minimize time-average system costs and ensure queue stability. By transforming the problem into a combinatorial multi-armed bandit problem with long-term stability constraints, we adopt bandit learning methods and optimal control techniques to handle the exploration-exploitation tradeoff and long-term stability constraints, respectively. Through an integrated design of online learning and online control, we propose an effective Learning-Aided Switch-Controller Association and Control Devolution (LASAC) scheme. Our theoretical analysis and simulation results show that LASAC achieves a tunable tradeoff between queue stability and system cost reduction with a sublinear regret bound over a finite time horizon.
SDN系统的联合开关控制器关联与控制移交:在线控制与在线学习的集成
在软件定义网络(SDN)系统中,采用多控制器设计和控制下放技术来提高控制平面的性能是一种常见的做法。然而,在这种系统中,联合开关-控制器关联和控制下放的决策往往涉及各种不确定性,例如控制器可达性的时间变化、开关的计算和通信成本。在实践中,这种不确定性的统计数据是无法获得的,需要以在线方式学习,这要求学习和控制的综合设计。在本文中,我们提出了一个随机网络优化问题,其目标是最小化系统的时间平均成本和保证队列的稳定性。通过将该问题转化为具有长期稳定性约束的组合多臂强盗问题,采用强盗学习方法和最优控制技术分别处理勘探开采权衡和长期稳定性约束。通过在线学习和在线控制的集成设计,我们提出了一种有效的学习辅助开关控制器关联和控制移交(LASAC)方案。我们的理论分析和仿真结果表明,LASAC在有限时间范围内实现了队列稳定性和系统成本降低之间的可调权衡,并具有次线性遗憾界。
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