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An Analysis on Mobile Visualization Connectionist IDS

K. Poongodi, B. Rosiline Jeetha

Abstract


This study introduces and describes a novel Intrusion Detection System (IDS) called MOVCIDS (MObile Visualization Connectionist IDS). By its advanced visualization facilities, the proposed IDS allows providing an overview of the network traffic as well as identifying anomalous situations tackled by computer networks, responding to the challenges presented by volume, dynamics and diversity of the traffic, including novel (0-day) attacks. MOVCIDS splits massive traffic data into segments and analyze them, thereby providing administrators with an intuitive snapshot to analyze the kinds of events taking place on the computer network. IDS have been probed through several real anomalous situations related to the Simple Network Management Protocol as it is potentially dangerous. GICAP-IDS dataset is used to protect from the external attacks. The main experimental study of MOVCIDS makes use of this dataset.


Keywords


MOVCIDS,Fuzzy Logic,Expert Systems.

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References


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