Q-DATA:应用q -学习增强的软件定义网络交通流监测

Trung V. Phan, S. Islam, Tri Gia Nguyen, T. Bauschert
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引用次数: 9

摘要

软件定义网络SDN (software defined Networking)通过数据平面和控制平面的分离,实现了网络的集中控制和管理,便于流量监控、安全分析和策略制定。然而,如何在主动保护转发设备不过载的同时,选择合适的流量处理粒度是一个挑战。在本文中,我们提出了一种名为Q-DATA的新型流量匹配控制框架,该框架应用强化学习来提高基于SDN网络的流量监控性能并防止流量转发性能下降。我们首先描述和分析了一个基于sdn的交通流匹配控制系统,该系统采用基于q -学习算法的强化学习方法来最大化交通流粒度。它还考虑了基于支持向量机的SDN交换机的转发性能状态。接下来,我们概述了Q-DATA框架,该框架结合了来自交通流匹配控制系统的最优交通流匹配策略,以有效地提供其他机制所需的最详细的交通流信息。我们的新方法作为REST SDN应用程序实现,并在SDN环境中进行了评估。通过综合实验,结果表明,与常见SDN控制器的默认行为和我们之前的DATA机制相比,新的Q-DATA框架在SDN交换机的流量转发性能降级保护方面有了显着改善,同时仍然提供了最详细的流量流信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Q-DATA: Enhanced Traffic Flow Monitoring in Software-Defined Networks applying Q-learning
Software-Defined Networking (SDN) introduces a centralized network control and management by separating the data plane from the control plane which facilitates traffic flow monitoring, security analysis and policy formulation. However, it is challenging to choose a proper degree of traffic flow handling granularity while proactively protecting forwarding devices from getting overloaded. In this paper, we propose a novel traffic flow matching control framework called Q-DATA that applies reinforcement learning in order to enhance the traffic flow monitoring performance in SDN based networks and prevent traffic forwarding performance degradation. We first describe and analyse an SDN-based traffic flow matching control system that applies a reinforcement learning approach based on Q-learning algorithm in order to maximize the traffic flow granularity. It also considers the forwarding performance status of the SDN switches derived from a Support Vector Machine based algorithm. Next, we outline the Q-DATA framework that incorporates the optimal traffic flow matching policy derived from the traffic flow matching control system to efficiently provide the most detailed traffic flow information that other mechanisms require. Our novel approach is realized as a REST SDN application and evaluated in an SDN environment. Through comprehensive experiments, the results show that—compared to the default behavior of common SDN controllers and to our previous DATA mechanism—the new Q-DATA framework yields a remarkable improvement in terms of traffic forwarding performance degradation protection of SDN switches while still providing the most detailed traffic flow information on demand.
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