Analysis of Internet Traffic in Educational Network based on Users' Preferences

The demand for Internet services and network resour ces in Educational networks are increasing rapidly. Specifically, the revolution of web 2.0 “also refer red to as the Read-Write Web” has changed the way of information exchange and distribution. Although web 2.0 has gained attraction in all sectors of the education industry, but it results in high-traffic loads on networks which often leads to the Internet users’ dissatisfaction. Therefore, analyzing Internet traf fic becomes an urgent need to provide high-quality service, monitoring bandwidth usage. In this study, we focus on analyzing the Internet traffic in Universiti Ut ara Malaysia (UUM) main campus. We performed measurement analysis form the application level characteristics based on users’ preferences. A tota l of three methodological steps are carried out to meet the objective of this study namely data collection, dat a analysis and data presentation. The finding shows that social networks are the most web applications visit ed in UUM. These findings lead to facilitate the enhancement of Educational network performance and Internet bandwidth strategies.

[1]  Marios Iliofotou Exploring Graph-Based Network Traffic Monitoring , 2009, IEEE INFOCOM Workshops 2009.

[2]  Yaohui Jin,et al.  A high-speed real-time HTTP performance measurement architecture based on network processor , 2011, ICTC 2011.

[3]  Michalis Faloutsos,et al.  Internet traffic classification demystified: myths, caveats, and the best practices , 2008, CoNEXT '08.

[4]  Brice Augustin,et al.  On Traffic Patterns of HTTP Applications , 2011, 2011 IEEE Global Telecommunications Conference - GLOBECOM 2011.

[5]  Yuan Xue,et al.  Locality Analysis of BitTorrent-Like Peer-to-Peer Systems , 2010, 2010 7th IEEE Consumer Communications and Networking Conference.

[6]  Stephen W. Liddle,et al.  Web 2.0 Learning Platform: Harnessing Collective Intelligence. , 2007 .

[7]  Jiahai Yang,et al.  A study of traffic, user behavior and pricing policies in a large campus network , 2011, Comput. Commun..

[8]  H. Hassan,et al.  Modeling Internet Traffic: Performance Limits , 2006, International Conference on Internet Surveillance and Protection (ICISP’06).

[9]  Phuoc Tran-Gia,et al.  On Traffic Characteristics of a Broadband Wireless Internet Access , 2009, 2009 Next Generation Internet Networks.

[10]  Angela Orebaugh,et al.  Wireshark & Ethereal Network Protocol Analyzer Toolkit , 2007 .

[11]  Vivek S. Pai,et al.  Towards understanding modern web traffic , 2011, SIGMETRICS '11.