Affiliation:
1. Department of Computer Science, University of Verona, 37134 Verona, Italy
2. Department of Mathematics, University of Trento, 38123 Trento, Italy
Abstract
Recent years have seen an increasing interest in developing robust, accurate and possibly fast forecasting methods for both energy production and consumption. Traditional approaches based on linear architectures are not able to fully model the relationships between variables, particularly when dealing with many features. We propose a Gradient-Boosting–Machine-based framework to forecast the demand of mixed customers of an energy dispatching company, aggregated according to their location within the seven Italian electricity market zones. The main challenge is to provide precise one-day-ahead predictions, despite the most recent data being two months old. This requires exogenous regressors, e.g., as historical features of part of the customers and air temperature, to be incorporated in the scheme and tailored to the specific case. Numerical simulations are conducted, resulting in a MAPE of 5–15% according to the market zone. The Gradient Boosting performs significantly better when compared to classical statistical models for time series, such as ARMA, unable to capture holidays.
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
Reference31 articles.
1. Weron, R. (2007). Modeling and Forecasting Electricity Loads and Prices: A Statistical Approach, John Wiley & Sons.
2. Lin, Y., Luo, H., Wang, D., Guo, H., and Zhu, K. (2017). An ensemble model based on machine learning methods and data preprocessing for short-term electric load forecasting. Energies, 10.
3. Electricity demand load forecasting of the Hellenic power system using an ARMA model;Pappas;Electr. Power Syst. Res.,2010
4. Day-ahead load forecasting using exponential smoothing;Bindiu;Acta Marisiensis. Ser. Technol.,2009
5. Long-term load forecasting: Models based on MARS, ANN and LR methods;Nalcaci;Cent. Eur. J. Oper. Res.,2019
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