Title :
Degradation detection of wireless IP links based on local stationary binomial distribution models
Author :
Matsumoto, Kaname ; Muramatsu, Shigeki ; Inoue, Naoko
Author_Institution :
KDDI R&D Labs. Inc., Saitama, Japan
Abstract :
A degradation detection problem of link quality in a long-distance 2.4 GHz wireless system is discussed. The time series to be monitored is periodic and non-stationary. The decision algorithm for degradation is difficult to define, and methods based on conventional traffic theory are not useful for IP link quality. Thus we should introduce some kind of intelligent data analysis technique. The authors propose to apply an AI-based method which solves a similar problem in a commercial switching telephone and ISDN network. The method partitions a target time-series into local stationary segments. Optimization of partitioning is based on the minimal Akaike (1974) information criterion principle. The technique called sequential probability ratio test is also applied to make efficient decisions about degradation. Thus experiments to apply our proposed method to this domain are conducted with wireless systems at a real field. The result shows the AI-based method is also effective for the degradation detection of wireless IP links.
Keywords :
Internet; artificial intelligence; binomial distribution; mobile communication; radio links; time series; AI-based method; degradation detection; intelligent data analysis techniques; local stationary binomial distribution models; local stationary segments; long-distance wireless system; minimal information criterion principle; partitioning optimization; sequential probability ratio test; time series; wireless IP link quality; Data analysis; Degradation; IP networks; ISDN; Laboratories; Monitoring; Research and development; Sequential analysis; Telecommunication traffic; Telephony;
Conference_Titel :
Applications and the Internet Workshops, 2003. Proceedings. 2003 Symposium on
Print_ISBN :
0-7695-1873-7
DOI :
10.1109/SAINTW.2003.1210176