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Network-Wide Forwarding Anomaly Detection and Localization in Software Defined Networks

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A crucial requirement for Software Defined Network (SDN) is that data plane forwarding behaviors should always agree with control plane policies. Such requirement cannot be met when there are forwarding… Click to show full abstract

A crucial requirement for Software Defined Network (SDN) is that data plane forwarding behaviors should always agree with control plane policies. Such requirement cannot be met when there are forwarding anomalies, where packets deviate from the paths specified by the controller. Most anomaly detection methods for SDN install dedicated rules to collect statistics of each flow, and check whether the statistics conform to the “flow conservation principle”. We find these methods have a limited detection scope: they look at one flow each time, thus can only check a small number of flows simultaneously. In addition, dedicated rules for statistics collection can impose a large overhead on flow tables of SDN switches. To this end, this paper presents FOCES, a network-wide forwarding anomaly detection and localization method in SDN. Different from previous methods, FOCES applies a new kind of flow conservation principle at network wide, and can check forwarding behaviors of all flows in the network simultaneously, without installing any dedicated rules. Finally, FOCES applies a voting-based method to localize malicious switches when anomalies are detected. Experiments with four network topologies show that FOCES can achieve a detection precision higher than 90%, when the packet loss rate is no larger than 10%, and a localization accuracy of around 80% when the packet loss rate is no larger than 5%.

Keywords: forwarding; network wide; anomaly detection; network; detection; localization

Journal Title: IEEE/ACM Transactions on Networking
Year Published: 2021

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