Journal of Computer Networks and Communications (Jan 2019)

Efficient Prediction of Network Traffic for Real-Time Applications

  • Muhammad Faisal Iqbal,
  • Muhammad Zahid,
  • Durdana Habib,
  • Lizy Kurian John

DOI
https://doi.org/10.1155/2019/4067135
Journal volume & issue
Vol. 2019

Abstract

Read online

Accurate real-time traffic prediction is required in many networking applications like dynamic resource allocation and power management. This paper explores a number of predictors and searches for a predictor which has high accuracy and low computation complexity and power consumption. Many predictors from three different classes, including classic time series, artificial neural networks, and wavelet transform-based predictors, are compared. These predictors are evaluated using real network traces. Comparison of accuracy and cost, both in terms of computation complexity and power consumption, is presented. It is observed that a double exponential smoothing predictor provides a reasonable tradeoff between performance and cost overhead.