Combining forecasts of electricity consumption in China with time-varying weights updated by a high-order Markov chain model

Weigang Zhao, Jianzhou Wang*, Haiyan Lu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

81 Citations (Scopus)

Abstract

Electricity consumption forecasting has been always playing a vital role in power system management and planning. Inaccurate prediction may cause wastes of scarce energy resource or electricity shortages. However, forecasting electricity consumption has proven to be a challenging task due to various unstable factors. Especially, China is undergoing a period of economic transition, which highlights this difficulty. This paper proposes a time-varying-weight combining method, i.e. High-order Markov chain based Time-varying Weighted Average (HM-TWA) method to predict the monthly electricity consumption in China. HM-TWA first calculates the in-sample time-varying combining weights by quadratic programming for the individual forecasts. Then it predicts the out-of-sample time-varying adaptive weights through extrapolating these in-sample weights using a high-order Markov chain model. Finally, the combined forecasts can be obtained. In addition, to ensure that the sample data have the same properties as the required forecasts, a reasonable multi-step-ahead forecasting scheme is designed for HM-TWA. The out-of-sample forecasting performance evaluation shows that HM-TWA outperforms the component models and traditional combining methods, and its effectiveness is further verified by comparing it with some other existing models.

Original languageEnglish
Pages (from-to)80-91
Number of pages12
JournalOmega (United Kingdom)
Volume45
DOIs
Publication statusPublished - Jun 2014
Externally publishedYes

Keywords

  • High-order Markov chain model
  • Monthly electricity consumption in China
  • Multi-step-ahead combination forecasting
  • Out-of-sample forecasting accuracy
  • Time-varying-weight combining method

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