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Quantile regression for the qualifying match of GEFCom2017 probabilistic load forecasting
Institution:1. Electricité de France Research & Development Division, 1 av du Général de Gaulle, 92141 Clamart Cedex, France;2. INRIA, Research Team SELECT, Université Paris Sud, Bât. 425, 91405 Orsay Cedex, France;1. Europa-Universität Viadrina, Frankfurt (Oder), Germany;2. University of North Carolina at Charlotte, Charlotte, NC, USA;1. Budapest University of Technology and Economics, Hungary;2. Ericsson, Hungary;3. Dmlab, Hungary;4. Enbritely, United Kingdom
Abstract:We present a simple quantile regression-based forecasting method that was applied in the probabilistic load forecasting framework of the Global Energy Forecasting Competition 2017 (GEFCom2017). The hourly load data are log transformed and split into a long-term trend component and a remainder term. The key forecasting element is the quantile regression approach for the remainder term, which takes into account both weekly and annual seasonalities, such as their interactions. Temperature information is used only for stabilizing the forecast of the long-term trend component. Information on public holidays is ignored. However, the forecasting method still placed second in the open data track and fourth in the definite data track, which is remarkable given the simplicity of the model. The method also outperforms the Vanilla benchmark consistently.
Keywords:Load forecasting  Probabilistic forecasting  Quantile regression  Periodic pattern  Seasonal interaction  Long-term trend  GEFCom
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