A time series model for accurately predicting the WLAN traffic
J4
• Original Articles • Next Articles
CHEN Chen;PEI Chang-xing;ZHU Chang-hua;CHEN-Nan;YI Yun-hui
Received:
Revised:
Online:
Published:
Abstract: During the process of studing much random selected real environmental WLAN traffic, the multiplicative seasonal property of WLAN traffic has been discovered. By the use of differencing and specific sampling of the orginal data sequence, the seasonal property is verified in this paper. A time series model is given which can accurately predict the WLAN traffic: Multiplicative Seansonal ARIMA Model (0,1,1)(0,1,1)12. After serveral iterative computations, the model is transformed into an MA model and its parameters have been estimated using the character of the MA model. A prediction of the random selected WLAN traffic has been finished by the differencing function. The result of the prediction shows that the proposed model can short-term forecast the WLAN traffic and obtain a better result with an average relative error of only 0.0401 when the forecast steps are 10.
Key words: WLAN, ARIMA, forecasting of network traffic, time series
CLC Number:
CHEN Chen;PEI Chang-xing;ZHU Chang-hua;CHEN-Nan;YI Yun-hui.
0 / / Recommend
Add to citation manager EndNote|Reference Manager|ProCite|BibTeX|RefWorks
URL: https://journal.xidian.edu.cn/xdxb/EN/
https://journal.xidian.edu.cn/xdxb/EN/Y2006/V33/I3/337
A novel multiple access protocol for a wireless local area network to effectively support a smart antenna
Security analysis of the Chinese wireless LAN standard implementation plan
MAC protocol of WLAN using smart adaptive array antennas
ARIMA analysis method in network traffic
Cited