An ecosystem for anomaly detection and mitigation in software-defined networking
L.F. Carvalho, T. Abrão, L.D.S. Mendes, M.L. Proença Jr.
ARTIGO
Inglês
Agradecimentos: This work was supported by the National Council for Scientific and Technological Development (CNPq) of Brazil under Grant of Project 308348/2016-8 and 304066/2015-0
Along with the rapid growth of computer networks comes the need for automating management functions to prevent errors in decision-making and reduce the cost of ordinary operations. Software-defined networking (SDN) is an emergent paradigm that aims to support next-generation networks through its...
Ver mais
Along with the rapid growth of computer networks comes the need for automating management functions to prevent errors in decision-making and reduce the cost of ordinary operations. Software-defined networking (SDN) is an emergent paradigm that aims to support next-generation networks through its flexible and powerful management mechanisms. Although SDN provides greater control over traffic flow, its security and availability remain a challenge. The major contribution of this paper is to present an SDN-based ecosystem that monitors network traffic and proactively detects anomalies which may impair proper network functioning. When an anomalous event is recognized, the proposal conducts a more active analysis to inspect irregularities at the network traffic flow level. Detecting such problems quickly is essential to take appropriate countermeasures. In this manner, the potential for centralized network monitoring based on SDN with OpenFlow is addressed in order to evaluate mitigation policies against threats. Experimental results demonstrate the proposed ecosystem succeeds in achieving higher detection rates compared to other approaches. In addition, the performance analysis shows that our approach can efficiently contribute to the network's resilience
Ver menos
CONSELHO NACIONAL DE DESENVOLVIMENTO CIENTÍFICO E TECNOLÓGICO - CNPQ
308348/2016-8; 304066/2015-0
Fechado
An ecosystem for anomaly detection and mitigation in software-defined networking
L.F. Carvalho, T. Abrão, L.D.S. Mendes, M.L. Proença Jr.
An ecosystem for anomaly detection and mitigation in software-defined networking
L.F. Carvalho, T. Abrão, L.D.S. Mendes, M.L. Proença Jr.
Fontes
|
Expert systems with applications (Fonte avulsa) |