基于sdn的数据中心网络中自适应路由重构以最小化流量成本

Akbar Majidi, Xiaofeng Gao, S. Zhu, Nazila Jahanbakhsh, Guihai Chen
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引用次数: 9

摘要

数据中心网络在很大程度上依赖于软件定义的网络来协调数据传输。为了保持最优的网络配置,控制器需要解决多商品流问题,并在严格的时间约束下对网络进行全局更新。在本文中,我们的目标是在数据中心重构预算约束下最小化流成本或直观的平均传输延迟。因此,我们将这个优化问题表述为一个约束马尔可夫决策过程,并提出了一套可扩展的算法来解决它。我们首先开发了一种传播算法来识别受延迟影响最大的流,并将在下一次网络更新中进行配置。然后,我们设置了更新流的限制范围,通过每次更新较少的流来提高适应性和可扩展性,从而实现快速的操作。进一步,基于Lyapunov理论中的漂移加惩罚方法,提出了一种不含流量需求先验信息的启发式策略,并保证了性能,使加性最优性缺口最小化。据我们所知,这是第一篇研究流动重构范围和频率的论文,在相关领域具有理论和实际意义。大量的仿真和数值模拟结果表明,我们提出的策略在延迟方面优于现有算法的45%以上,同时在适应性和可扩展性方面有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Routing Reconfigurations to Minimize Flow Cost in SDN-Based Data Center Networks
Data center networks have become heavily reliant on software-defined network to orchestrate data transmission. To maintain optimal network configurations, a controller needs to solve the multi-commodity flow problem and globally update the network under tight time constraints. In this paper, we aim to minimize flow cost or intuitively average transmission delay, under reconfiguration budget constraints in data centers. Thus, we formulate this optimization problem as a constrained Markov Decision Process and propose a set of algorithms to solve it in a scalable manner. We first develop a propagation algorithm to identify the flows which are mostly affected in terms of latency and will be configured in the next network update. Then, we set a limitation range for updating them to improve adaptability and scalability by updating a less number of flows each time to achieve fast operations as well. Further, based on the Drift-Plus-Penalty method in Lyapunov theory, we propose a heuristic policy without prior information of flow demand with a performance guarantee to minimize the additive optimality gap. To the best of our knowledge, this is the first paper that studies the range and frequency of flow reconfigurations, which has both theoretical and practical significance in the related area. Extensive emulations and numerical simulations, which are much better than the estimated theoretical bound, show that our proposed policy outperform the state of the art algorithms in terms of latency by over 45% while making improvements in adaptability and scalability.
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