Browse > Article
http://dx.doi.org/10.7840/kics.2015.40.3.541

Big-Data Traffic Analysis for the Campus Network Resource Efficiency  

An, Hyun-Min (Dept. of Computer and Information Science, Korea University)
Lee, Su-Kang (Dept. of Computer and Information Science, Korea University)
Sim, Kyu-Seok (Dept. of Computer and Information Science, Korea University)
Kim, Ik-Han (Dept. of Applied Statistics, Korea University)
Jin, Seo-Hoon (Dept. of Applied Statistics, Korea University)
Kim, Myung-Sup (Dept. of Computer and Information Science, Korea University)
Abstract
The importance of efficient enterprise network management has been emphasized continuously because of the rapid utilization of Internet in a limited resource environment. For the efficient network management, the management policy that reflects the characteristics of a specific network extracted from long-term traffic analysis is essential. However, the long-term traffic data could not be handled in the past and there was only simple analysis with the shot-term traffic data. However, as the big data analytics platforms are developed, the long-term traffic data can be analyzed easily. Recently, enterprise network resource efficiency through the long-term traffic analysis is required. In this paper, we propose the methods of collecting, storing and managing the long-term enterprise traffic data. We define several classification categories, and propose a novel network resource efficiency through the multidirectional statistical analysis of classified long-term traffic. The proposed method adopted to the campus network for the evaluation. The analysis results shows that, for the efficient enterprise network management, the QoS policy must be adopted in different rules that is tuned by time, space, and the purpose.
Keywords
Enterprise network; Big data traffic; Statistical analysis; Long-term traffic; Network policy;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
연도 인용수 순위
1 Y. Wang, Y. Xiang, W. L. Zhou, and S. Z. Yu, "Generating regular expression signatures for network traffic classification in trusted network management," J. Network Comput. Appl., vol. 35, pp. 992-1000, May 2012.   DOI   ScienceOn
2 B. Park, Y. Won, J. Chung, M. S. Kim, and J. W. K. Hong, "Fine-grained traffic classification based on functional separation," Int. J. Network Management, vol. 23, pp. 350-381, Sept. 2013.   DOI   ScienceOn
3 C. S. Park, J. S. Park, and M. S. Kim, "Automatic Payload Signature Generation System," J. KICS, vol. 38B, no. 08, pp. 615-622, Aug. 2013.   DOI
4 J. H. Choi, J. S. Park, and M. S. Kim, "Processing speed improvement of HTTP traffic classification based on hierarchical structure of signature," J. KICS, vol. 39B, no. 04, pp. 191-199, Apr. 2014.   DOI
5 J. S. Park, S. H. Yoon, and M. S. Kim, "Performance improvement of the payload signature based traffic classification system using application traffic locality," J. KICS, vol. 38B, no. 7, pp. 519-525, Jul. 2013.   DOI
6 S. Lohr, The age of big data, New York Times, 11, 2012.
7 T. Oetiker, "Monitoring your IT gear: the MRTG story," IT Professional, vol. 3, no. 6, pp. 44-48, 2001.   DOI
8 RRDtool, Available at: http://oss.oetiker.ch/rrdtool/.
9 Bro, Available: http://www.bro.org/.
10 Ntop, Available: http://www.ntop.org/.
11 Snort, Available at: http://www.snort.org.
12 B. H. Hong and H. J. Joo, "A study on the monitoring model for traffic analysis and application of big data," 2013.
13 S. P. Huang and G. E. Meng, "Research on the application of hadoop platform in the big data processing," Modern Computer, vol. 29, no. 4, 2013.
14 Hadoop, Available: http://hadoop.apache.org/docs/r1.2.1/hdfs_design.html.
15 A. D. Sarma, F. N. Afrati, S. Salihoglu, and J. D. Ullman, "Upper and lower bounds on the cost of a map-reduce computation," Very Large Data Bases(VLDB) Endownment, pp. 277-288, Riva del Garda, Italy, 2013.