Proceedings of the KIEE Conference (대한전기학회:학술대회논문집)
- 2004.11c
- /
- Pages.301-303
- /
- 2004
GOP ARIMA based Bandwidth Prediction for Non-stationary VBR Traffic
MPEG VBR 트래픽을 위한 GOP ARIMA 기반 대역폭 예측기법
Abstract
In this work, we develop on-line traffic prediction algorithm for real-time VBR traffic. There are a number of important issues: (i) The traffic prediction algorithm should exploit the stochastic characteristics of the underlying traffic and (ii) it should quickly adapt to structural changes in underlying traffic. GOP ARIMA model effectively addresses this issues and it is used as basis in our bandwidth prediction. Our prediction model deploy Kalman filter to incorporate the prediction error for the next prediction round. We examine the performance of GOP ARIMA based prediction with linear prediction with LMS and double exponential smoothing. The proposed prediction algorithm exhibits superior performam againt the rest.