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2020 | OriginalPaper | Chapter

An Integrated Approach to Network Intrusion Detection and Prevention

Authors : B. Bhanu Prakash, Kaki Yeswanth, M. Sai Srinivas, S. Balaji, Y. Chandra Sekhar, Aswathy K. Nair

Published in: Inventive Communication and Computational Technologies

Publisher: Springer Singapore

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Abstract

At present, with the expansion of size of the internet, security plays a crucial role in computer networks. Also with the advancement of Internet of things, earlier technology like firewall, authentication and encryption are not effective in ensuring the complete security. This has lead to the development of Intrusion Detection Systems (IDS) which monitors the events in computer networks to recognize the threats that violates computer security. With the help of various machine learning algorithms we have carried out the implementation of IDS. Machine learning technique increases the accuracy of anomaly detection in real-time scenario. This work focuses on K-Nearest Neighbor (KNN) classifier and Support Vector Machine (SVM), which classify the program behavior as intrusive or not. To prevent DoS (Denial-of-Service) attacks, a new method is implemented in this paper. The KNN classified data which provides malicious IP address are blocked in routers through Standard Access-list.

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Literature
1.
go back to reference Prem Sankar AU, Poornachandran P, Ashok A, Manu RK, Hrudya P (2017) B-secure: a dynamic reputation system for identifying anomalous BGP paths. Adv Intell Syst Comput 515:767–775 Prem Sankar AU, Poornachandran P, Ashok A, Manu RK, Hrudya P (2017) B-secure: a dynamic reputation system for identifying anomalous BGP paths. Adv Intell Syst Comput 515:767–775
2.
go back to reference Sankaran S, Sridhar R (2015) Modeling and analysis of routing for IoT networks. In: International conference on computing and network communications (CoCoNet). IEEE, Trivandrum, India Sankaran S, Sridhar R (2015) Modeling and analysis of routing for IoT networks. In: International conference on computing and network communications (CoCoNet). IEEE, Trivandrum, India
3.
go back to reference Hindy H, Brosset D, Bayne E, Seeam A, Tachtatzis C, Atkinson R, Bellekens X A Taxonomy and survey pf intrusion detection system, design techniques, network threats and datasets Hindy H, Brosset D, Bayne E, Seeam A, Tachtatzis C, Atkinson R, Bellekens X A Taxonomy and survey pf intrusion detection system, design techniques, network threats and datasets
4.
go back to reference Vijayarani1 S, Sylviaa M Assistant Professor and M. Phil Research Scholar from the Department of Computer Science Intrusion detection system a study. Bharathiar University, Coimbatore Vijayarani1 S, Sylviaa M Assistant Professor and M. Phil Research Scholar from the Department of Computer Science Intrusion detection system a study. Bharathiar University, Coimbatore
5.
go back to reference Paliwal S, Gupta R (2012) Denial-of-service, probing remote to user (R2L) attack detection using genetic algorithm. Int J Comput Appl Paliwal S, Gupta R (2012) Denial-of-service, probing remote to user (R2L) attack detection using genetic algorithm. Int J Comput Appl
6.
go back to reference Panda M, Patra MR Network intrusion detection using naive bayes. Department of E TC Engineering, G.I.E.T, Gunupur, India and from Department of Computer Science, Berhampur University, Berhampur, India Panda M, Patra MR Network intrusion detection using naive bayes. Department of E TC Engineering, G.I.E.T, Gunupur, India and from Department of Computer Science, Berhampur University, Berhampur, India
7.
go back to reference Zhang M, Xu B, Gong J (2015) An anamoly detection model based on one-class SVM to detect network intrusions. In: 11th conference on mobile ad-hoc and sensor networks Zhang M, Xu B, Gong J (2015) An anamoly detection model based on one-class SVM to detect network intrusions. In: 11th conference on mobile ad-hoc and sensor networks
8.
go back to reference Xiaofeng Z, Xiaohong H (2017) Research on intrusion detection based on improved combination of k-means and multi-level SVM. In: K. Elissa (ed) 17th international conference on communication technology. Title of paper if known, unpublished Xiaofeng Z, Xiaohong H (2017) Research on intrusion detection based on improved combination of k-means and multi-level SVM. In: K. Elissa (ed) 17th international conference on communication technology. Title of paper if known, unpublished
9.
go back to reference Ghanem K, Aparacio Navarro FJ, Chambers JA (2017) Support vector machine for network intrusion and cyber-attack detection. IEEE 2017 Ghanem K, Aparacio Navarro FJ, Chambers JA (2017) Support vector machine for network intrusion and cyber-attack detection. IEEE 2017
10.
go back to reference Seo J, Lee C, Shon T, Cho K-H, Moon J (2005) A new DDoS detection model using multiple SVMs and TRA, IFIP Seo J, Lee C, Shon T, Cho K-H, Moon J (2005) A new DDoS detection model using multiple SVMs and TRA, IFIP
11.
go back to reference Hutchins E, Cloppert M, Amin RM (2011) Intelligence-driven computer network defence informed by analysis of adversary campaigns and intrusion kill chains, USA. In: 6th International conference on warfare and security Hutchins E, Cloppert M, Amin RM (2011) Intelligence-driven computer network defence informed by analysis of adversary campaigns and intrusion kill chains, USA. In: 6th International conference on warfare and security
12.
go back to reference Yan F, Jain-Wen Y, Lin C (2015) Computer network security and technology research. IEEE 2015 Yan F, Jain-Wen Y, Lin C (2015) Computer network security and technology research. IEEE 2015
Metadata
Title
An Integrated Approach to Network Intrusion Detection and Prevention
Authors
B. Bhanu Prakash
Kaki Yeswanth
M. Sai Srinivas
S. Balaji
Y. Chandra Sekhar
Aswathy K. Nair
Copyright Year
2020
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-0146-3_5