Forecasting Electric Load Demand through Advanced Statistical Techniques

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Abstract

Traditional forecasting models have been widely used for decision-making in production, finance and energy. Such is the case of the ARIMA models, developed in the 1970s by George Box and Gwilym Jenkins [1], which incorporate characteristics of the past models of the same series, according to their autocorrelation. This work compares advanced statistical methods for determining the demand for electricity in Colombia, including the SARIMA, econometric and Bayesian methods.

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Silva, J., Senior Naveda, A., García Guliany, J., Niebles Núẽz, W., & Hernández Palma, H. (2020). Forecasting Electric Load Demand through Advanced Statistical Techniques. In Journal of Physics: Conference Series (Vol. 1432). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/1432/1/012031

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