Thursday, September 6, 2018

DESIGN AND EFFICIENT DEPLOYMENT OF HONEYPOT AND DYNAMIC RULE BASED LIVE NETWORK INTRUSION COLLABORATIVE SYSTEM

DESIGN AND EFFICIENT DEPLOYMENT OF HONEYPOT AND DYNAMIC RULE BASED LIVE NETWORK INTRUSION COLLABORATIVE SYSTEM
Renuka Prasad.B1, Dr Annamma Abraham2, and Abhas Abhinav3,Sunil.V.Gurlahosur4, Srinivasa Y5
1Research Scholar, Dr M.G.R University, Working as Lecturer in R.V.College ofEngineering, Bengaluru, Karnataka
2Head , Department of Mathematics,BMSIT, Bengaluru, Karnataka
3Head ,Research and Development, DeepRootLinux Pvt Ltd, Bengaluru,Karnataka
4&5Student, BE ,Computer Science and Engineering, SIT,Tumkur, Karnataka

ABSTRACT

The continuously emerging, operationally and managerially independent, geographically distributed computer networks deployable in an evolutionarily manner have created greater challenges in securing them. Several research works and experiments have convinced the security expert that Network Intrusion Detection Systems (NIDS) or Network Intrusion Prevention Systems (NIPS) alone are not capable of securing the Computer Networks from internal and external threats completely. In this paper we present the design of Intrusion Collaborative System which is a combination of NIDS,NIPS, Honeypots, software tools like nmap, iptables etc. Our Design is tested against existing attacks based on Snort Rules and several customized DDOS , remote and guest attacks. Dynamic rules are generated during every unusual behavior that helps Intrusion Collaborative System to continuously learn about new attacks. Also a formal approach to deploy Live Intrusion Collaboration Systems based on System of Systems Concept is Proposed.

KEYWORDS

Network Intrusion Detection, Network Intrusion Prevention, IPTABLES, Honeypot and NICS. 

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