Network Design for WAN Traffic and Cost Generator

Authors

  • Khean Ouk Department of Computer Science, Royal University of Phnom Penh, Phnom Penh, Cambodia
  • Kimsoung Lim Department of IT, Emperor Bank PLC, Phnom Penh, Cambodia
  • Sen samnang Ouk Department of IT, Amrith Microfinance, Phnom Penh, Cambodia

Keywords:

Traffic, Traffic generator, Site, population, Traffic Normalization, node

Abstract

Wide Area Network (WAN) is an interconnected network round the world to share such as voice, data and video. So there are many types of traffic flow in and out of all directions and much type of data is transferring such as email (internal email, external email), Web Access, Database Access, file transfer and Video Conferencing or Online Meeting or Online Learning during the Covid-19. Those types of data can cause more traffic loading during the busy hours or days. As a network designer must optimize the traffic of network flow to avoid the congestion and cost much money. In this research paper focus on the way how to design the best Wide Area Network. To become an expert Network Designer we need a sample problem to study the algorithms and to hone our skills. Real networks carry real traffic and cost real money. If you can’t get the actual tariff and traffic, you will have to fill in the missing information. The generators here can be used to create a simple scenario. Solving such problems is the only way to learn the effective network design.

 

References

Dr.Mark Sinclair, “Network Design for WAN”, Phnom Penh,2003.

Aaron Kershenbaum,“Telecommunication Network Design Algorithm”, New York , McGraw-Hill,1993.

Robert S.chahn ,“Wide Area Network Design”,Morgan Kaufmann; First Printing edition,1998.

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Published

2020-12-31

How to Cite

[1]
K. Ouk, K. Lim, and S. samnang Ouk, “Network Design for WAN Traffic and Cost Generator”, Int. J. Sci. Res. Comp. Sci. Eng., vol. 8, no. 6, pp. 43–49, Dec. 2020.

Issue

Section

Research Article

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