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Multi-Level Network Resilience: Traffic Analysis, Anomaly Detection and Simulation


Affiliations
1 5School of Computing and Communications, Lancaster University, United Kingdom
2 Department of Computer Science and Engineering, Indian Institute of Technology Madras, India
3 School of Computing and Communications, Lancaster University, United Kingdom
     

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Traffic analysis and anomaly detection have been extensively used to characterize network utilization as well as to identify abnormal network traffic such as malicious attacks. However, so far, techniques for traffic analysis and anomaly detection have been carried out independently, relying on mechanisms and algorithms either in edge or in core networks alone. In this paper we propose the notion of multi-level network resilience, in order to provide a more robust traffic analysis and anomaly detection architecture, combining mechanisms and algorithms operating in a coordinated fashion both in the edge and in the core networks. This work is motivated by the potential complementarities between the research being developed at IIT Madras and Lancaster University. In this paper we describe the current work being developed at IIT Madras and Lancaster on traffic analysis and anomaly detection, and outline the principles of a multi-level resilience architecture.

Keywords

Traffic Analysis, Core and Edge Networks, Network Resilience, Anomaly Detection.
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  • Multi-Level Network Resilience: Traffic Analysis, Anomaly Detection and Simulation

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Authors

Angelos Marnerides
5School of Computing and Communications, Lancaster University, United Kingdom
Cyriac James
Department of Computer Science and Engineering, Indian Institute of Technology Madras, India
Alberto Schaeffer-Filho
School of Computing and Communications, Lancaster University, United Kingdom
Saad Yunus Sait
Department of Computer Science and Engineering, Indian Institute of Technology Madras, India
Andreas Mauthe
School of Computing and Communications, Lancaster University, United Kingdom
Hema Murthy
Department of Computer Science and Engineering, Indian Institute of Technology Madras, India

Abstract


Traffic analysis and anomaly detection have been extensively used to characterize network utilization as well as to identify abnormal network traffic such as malicious attacks. However, so far, techniques for traffic analysis and anomaly detection have been carried out independently, relying on mechanisms and algorithms either in edge or in core networks alone. In this paper we propose the notion of multi-level network resilience, in order to provide a more robust traffic analysis and anomaly detection architecture, combining mechanisms and algorithms operating in a coordinated fashion both in the edge and in the core networks. This work is motivated by the potential complementarities between the research being developed at IIT Madras and Lancaster University. In this paper we describe the current work being developed at IIT Madras and Lancaster on traffic analysis and anomaly detection, and outline the principles of a multi-level resilience architecture.

Keywords


Traffic Analysis, Core and Edge Networks, Network Resilience, Anomaly Detection.