Evolving neural network intrusion detection system for MCPS
- 주제(키워드) Intrusion detection system , Machine learning , MCPS , Neural networks
- 지원기관 Ministry of Education
- 관리정보기술 faculty
- 등재 SCOPUS
- 발행기관 Institute of Electrical and Electronics Engineers Inc.
- 발행년도 2017
- URI http://www.dcollection.net/handler/ewha/000000155641
- ISBN 9788996865094
- 본문언어 영어
- Published As http://dx.doi.org/10.23919/ICACT.2017.7890080
초록/요약
Medical Cyber Physical Systems (MCPS) are some of the most promising next generation technologies so far. Like many other systems connected to a wider network such as internet, MCPS are also vulnerable to various forms of network attacks. For detecting such diverse forms of attack, we need smart and efficient mechanisms. Human intelligence is good enough to track such attacks but when it is a huge number of traffic it is no more a feasible process to detect them manually as it is time consuming and computationally intensive. Machine learning techniques embracing artificial intelligence are emerging as powerful tools to detect abnormalities in the network data. Supervised Neural Networks are some of the most efficient techniques to perform such classification. In this paper, we propose neural network technique that evolves based on classification, elimination and prioritization while considering time, space, and accuracy to efficiently classify the four major types of network attack traffic found in an effectively pruned KDD dataset. © 2017 Global IT Research Institute - GiRI.
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