Net Auto-Solver: OpenFlow异常自动解析的正式方法

Ramtin Aryan, A. Yazidi, A. Bouhoula, P. Engelstad
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引用次数: 0

摘要

由于当前计算机网络配置的复杂性不断增加,策略异常在网络中非常常见。解决策略异常通常需要网络管理员的干预,这是一个耗时且容易出错的过程。在本文中,我们提出了Net Auto-Solver,一种用于自动解决OpenFlow异常的正式方法。该方法采用高级策略的概念,不仅可以检测策略违规,还可以即时纠正它们。我们的方法是完全自动化的,不需要与网络管理员进行交互。尽管在检测SDN异常方面有大量的研究工作,但以自动方式纠正这些异常的研究却非常少。在我们方法的核心,我们提出了两个推理系统来执行对策略的纠正操作。我们提供了一些涉及实际网络配置的实验结果来展示我们的方法的性能。最初的结果非常有希望。
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Net Auto-Solver: A formal approach for automatic resolution of OpenFlow anomalies
Policy anomalies are frequent in nowadays’s computer networks due to their increasing configuration complexity. Resolving policy anomalies usually requires network administrator intervention, which is a time-intensive and error-prone process. In this paper, we present Net Auto-Solver, a formal approach for automatic resolution of OpenFlow anomalies. The approach resorts to the concept of high-level policies to not only detect policy violations but also correct them on-the-fly. Our approach is fully automated and does not require interaction with the network administrator. Although there is a multitude of research works on detecting anomalies in SDN, research to correct those anomalies in an automatic manner is extremely scarce. At the heart of our approach, we propose two inference systems to perform corrective actions to the policy. We provide some experimental results involving real-life network configurations to show the performance of our approach. The first results are very promising.
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