Title :
A Perceptron Based Classifier for Detecting Malicious Route Floods in Wireless Mesh Networks
Author :
Santhanam, Lakshmi ; Mukherjee, Anindo ; Bhatnagar, Raj ; Agrawal, Dharma P.
Author_Institution :
Dept. of ECECS, Cincinnati Univ., Cincinnati, OH
Abstract :
Wireless mesh networks (WMN) are evolving as a new paradigm for broadband Internet, in which a group of static mesh routers employ multihop forwarding to provide wireless Internet connectivity. All routing protocols in WMNs naively assume nodes to be non- malicious. But, the plug-in-and-play architecture of WMNs paves way for malicious users who could exploit some loopholes of the underlying routing protocol. A malicious node can inundate the network by conducting frequent route discovery which severely reduces the network throughput. In this paper, we investigate the detection of route floods by incorporating a machine learning technique. We use a perceptron training model as a tool for intrusion detection. We train the perceptron model by feeding various network statistics and then use it as a classifier. We illustrate using an experimental wireless network (ns-2) that the proposed scheme can accurately detect route misbehaviors with a very low false positive rate.
Keywords :
Internet; learning (artificial intelligence); routing protocols; security of data; intrusion detection; machine learning technique; malicious route floods; multihop forwarding; perceptron based classifier; routing protocols; wireless Internet connectivity; wireless mesh networks; Floods; IP networks; Intrusion detection; Machine learning; Routing protocols; Spread spectrum communication; Statistics; Throughput; Wireless mesh networks; Wireless networks; AODV; Anomaly Detection; Intrusion Detection System; Normalization; Perceptron; and Wireless Mesh Networks.;
Conference_Titel :
Computing in the Global Information Technology, 2007. ICCGI 2007. International Multi-Conference on
Conference_Location :
Guadeloupe City
Print_ISBN :
0-7695-2798-1
DOI :
10.1109/ICCGI.2007.6