ISCAS OpenIR
fast fourier transform based ip traffic classification system for sipto at h(e)nb
Han Lin; Huang Liusheng; Hu Qian; Han Xue; Shi Jinglin
2012
Conference Name2012 7th International ICST Conference on Communications and Networking in China, CHINACOM 2012
Source2012 7th International ICST Conference on Communications and Networking in China, CHINACOM 2012 - Proceedings
Pages430-435
Conference DateAugust 7, 2012 - August 10, 2012
Conference PlaceKun Ming, China
Indexed TypeEI
ISBN9781467326995
Department(1) School of Software and Engineering University of Science and Technology of China Suzhou China; (2) Wireless Communication Technology Research Center Institute of Computing Technology Chinese Academy of Sciences China; (3) Beijing Key Laboratory of Mobile Computing and Pervasive Device China; (4) Beijing Sylincom Technologies Co. Ltd. China
English Abstract3GPP has recently introduced LIPA(Local IP Access) and SIPTO(Selected IP Traffic Offload) to offload traffic from the core network, which brings new challenge to on-line traffic classification, because of the large amount of data and the difference of mobile network from wired network, such as high bit error rates(BER) and temporary disconnections. Therefore, other proposed schemes which aim at ether LIPA at H(e)NB or SIPTO at macro network could not get high accuracy and high speed at the same time, and traffic classification methodologies in wired IP network are not applicable. This paper proposes a fast fourier transform(FFT) based IP traffic classification system for SIPTO at H(e)NB, which focuses on classifying each packet at H(e)NB by extracting the application layer payload pattern using FFT. Pattern extraction and classification using machine learning algorithms are simulated, and results show that our system outperforms existing methods by offering about 3%-6% improvement in classification accuracy with about 7% time. Simulation of SIPTO shows good reduction of press to the core network and low false rates. © 2012 IEEE.; 3GPP has recently introduced LIPA(Local IP Access) and SIPTO(Selected IP Traffic Offload) to offload traffic from the core network, which brings new challenge to on-line traffic classification, because of the large amount of data and the difference of mobile network from wired network, such as high bit error rates(BER) and temporary disconnections. Therefore, other proposed schemes which aim at ether LIPA at H(e)NB or SIPTO at macro network could not get high accuracy and high speed at the same time, and traffic classification methodologies in wired IP network are not applicable. This paper proposes a fast fourier transform(FFT) based IP traffic classification system for SIPTO at H(e)NB, which focuses on classifying each packet at H(e)NB by extracting the application layer payload pattern using FFT. Pattern extraction and classification using machine learning algorithms are simulated, and results show that our system outperforms existing methods by offering about 3%-6% improvement in classification accuracy with about 7% time. Simulation of SIPTO shows good reduction of press to the core network and low false rates. © 2012 IEEE.
KeywordComputer Simulation Ethers Fast Fourier Transforms Learning Algorithms Mobile Telecommunication Systems
SponsorshipEAI; IEEE Computer Society
Language英语
Content Type会议论文
URIhttp://ir.iscas.ac.cn/handle/311060/15945
Collection中国科学院软件研究所
Recommended Citation
GB/T 7714
Han Lin,Huang Liusheng,Hu Qian,et al. fast fourier transform based ip traffic classification system for sipto at h(e)nb[C],2012:430-435.
Files in This Item:
There are no files associated with this item.
Related Services
Recommend this item
Bookmark
Usage statistics
Export to Endnote
Google Scholar
Similar articles in Google Scholar
[Han Lin]'s Articles
[Huang Liusheng]'s Articles
[Hu Qian]'s Articles
Baidu academic
Similar articles in Baidu academic
[Han Lin]'s Articles
[Huang Liusheng]'s Articles
[Hu Qian]'s Articles
Bing Scholar
Similar articles in Bing Scholar
[Han Lin]'s Articles
[Huang Liusheng]'s Articles
[Hu Qian]'s Articles
Terms of Use
No data!
Social Bookmark/Share
All comments (0)
No comment.
 

Items in the repository are protected by copyright, with all rights reserved, unless otherwise indicated.