2008 Eighth IEEE International Symposium on Cluster Computing and the Grid (CCGRID)
Adaptive Hybrid Model for Long Term Load Prediction in Computational Grid
May 19-May 22
ISBN: 978-0-7695-3156-4
Long term load prediction can assist task scheduling and load balancing greatly in distributed environment such as computational grid. Due to the dynamic property of grid environment, fixed-parameter prediction model can not exert its forecast capability completely. In this paper we first observe and analyze parameters’ impact on prediction accuracy for our previous long term load prediction hybrid model (HModel) in detail. And then, a parameter-level adaptive method based on previous analysis is proposed in order to make HModel adapt to the time-varying characteristics of load in computational grid. The results of the experiments demonstrate that our adaptive hybrid model (AHModel) outperforms the widely used autoregressive (AR) model in long term load prediction significantly, and it also achieves obvious reduction in prediction mean square error comparing with HModel which uses fixed parameter value.
Citation:
Yulai Yuan, Yongwei Wu, Guangwen Yang, Weimin Zheng, "Adaptive Hybrid Model for Long Term Load Prediction in Computational Grid," ccgrid, pp.340-347, 2008 Eighth IEEE International Symposium on Cluster Computing and the Grid (CCGRID), 2008