Abstract

Electricity price forecasting plays a vital role in the financial markets. This paper proposes a self-adaptive, decomposed, heterogeneous, and ensemble learning model for short-term electricity price forecasting one, two, and three-months-ahead in the Brazilian market. Exogenous variables, such as supply, lagged prices and demand are considered as inputs signals of the forecasting model. Firstly, the coyote optimization algorithm is adopted to tune the hyperparameters of complementary ensemble empirical mode decomposition in the pre-processing phase. Next, three machine learning models, including extreme learning machine, gradient boosting machine, and support vector regression models, as well as Gaussian process, are designed with the intent of handling the components obtained through the signal decomposition approach with focus on time series forecasting. The individual forecasting models are directly integrated in order to obtain the final forecasting prices one to three-months-ahead. In this case, a grid of forecasting models is obtained. The best forecasting model is the one that has better generalization out-of-sample. The empirical results show the efficiency of the proposed model. Additionally, it can achieve forecasting errors lower than 4.2% in terms of symmetric mean absolute percentage error. The ranking of importance of the variables, from the smallest to the largest is, lagged prices, demand, and supply. This paper provided useful insights for multi-step-ahead forecasting in the electrical market, once the proposed model can enhance forecasting accuracy and stability.

Highlights

  • The electricity power market is an important research topic, which has been receiving much attention from research over the last years [1,2,3]

  • A self-adaptive decomposed heterogeneous ensemble learning model was proposed in order to forecast multi-step-ahead Brazilian commercial and industrial electric energy prices

  • The coyote optimization algorithm (COA) optimizer was adopted to define the hyperparameters of pre-processing complementary ensemble empirical mode decomposition (CEEMD)

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Summary

Introduction

The electricity power market is an important research topic, which has been receiving much attention from research over the last years [1,2,3]. Climatic variables, energy demand, power supply capacity, and the impact of renewable energy sources [5,6,7] make the forecasting process a challenging task. When there is a tendency to reduce the level of the reservoir, the price of electricity is increased, both for industries in the short-term market and homes through the implementation of higher tariff flags. This procedure is used, because, in Brazil, there is a greater source of hydraulic generation, which requires adequate planning and control of the energy price to guarantee the supply of electricity reliably [9]

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