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The comparison of Holt–Winters method and Multiple regression method: A case study

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  • Ferbar Tratar, Liljana
  • Strmčnik, Ervin

Abstract

The European Union approach towards a low-carbon society in EU provides many measures. Appropriate heat load forecasting techniques offer opportunity for more effective schedule operations and cost minimization. The Company Energetika Ljubljana claims the largest district heating network in the Republic of Slovenia. Although the company has a 150-year tradition, the company has not implemented any of the advanced heat load forecasting methods. Especially long-term heat load forecasting methods offer many opportunities for the strategic planning and the optimal scheduling of heating resources, whereas short-term forecasting approach would help to reach the optimal daily operations and the maximum utilization of the company's resources. This paper presents forecasting approach for short- and long-term heat load forecasting on the three levels: monthly, weekly and daily forecasting bases. The comparison of the forecasting performances of Multiple regression and Exponential smoothing methods has been analysed. Based on chosen accuracy measures, Multiple regression was recognized as the best forecasting method for daily and weekly short-term heat load forecasting, whereas Holt–Winters methods ensured the best forecasting values in purpose of long-term heat load forecasting and monthly short-term heat load forecasting.

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  • Ferbar Tratar, Liljana & Strmčnik, Ervin, 2016. "The comparison of Holt–Winters method and Multiple regression method: A case study," Energy, Elsevier, vol. 109(C), pages 266-276.
  • Handle: RePEc:eee:energy:v:109:y:2016:i:c:p:266-276
    DOI: 10.1016/j.energy.2016.04.115
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    References listed on IDEAS

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