DIKUL - logo
E-viri
Celotno besedilo
Recenzirano
  • Forecasting mid-long term e...
    de Oliveira, Erick Meira; Cyrino Oliveira, Fernando Luiz

    Energy (Oxford), 02/2018, Letnik: 144
    Journal Article

    In the last decades, the world's energy consumption has increased rapidly due to fundamental changes in the industry and economy. In such terms, accurate demand forecasts are imperative for decision makers to develop an optimal strategy that includes not only risk reduction, but also the betterment of the economy and society as a whole. This paper expands the fields of application of combined Bootstrap aggregating (Bagging) and forecasting methods to the electric energy sector, a novelty in literature, in order to obtain more accurate demand forecasts. A comparative out-of-sample analysis is conducted using monthly electric energy consumption time series from different countries. The results show that the proposed methodologies substantially improve the forecast accuracy of the demand for energy end-use services in both developed and developing countries. Findings and policy implications are further discussed. •Electricity demand across different countries is forecasted 24 months in advance.•The potential gains of using bagging techniques to enhance forecasts are explored.•A new variation of a bagging procedure is proposed.•The proposed techniques provided consistently accurate forecasts in most cases.