Abstract

Nowadays, electricity is a basic commodity necessary for the well-being of any modern society. Due to the growth in electricity consumption in recent years, mainly in large cities, electricity forecasting is key to the management of an efficient, sustainable and safe smart grid for the consumer. In this work, a deep neural network is proposed to address the electricity consumption forecasting in the short-term, namely, a long short-term memory (LSTM) network due to its ability to deal with sequential data such as time-series data. First, the optimal values for certain hyper-parameters have been obtained by a random search and a metaheuristic, called coronavirus optimization algorithm (CVOA), based on the propagation of the SARS-Cov-2 virus. Then, the optimal LSTM has been applied to predict the electricity demand with 4-h forecast horizon. Results using Spanish electricity data during nine years and half measured with 10-min frequency are presented and discussed. Finally, the performance of the proposed LSTM using random search and the LSTM using CVOA is compared, on the one hand, with that of recently published deep neural networks (such as a deep feed-forward neural network optimized with a grid search) and temporal fusion transformers optimized with a sampling algorithm, and, on the other hand, with traditional machine learning techniques, such as a linear regression, decision trees and tree-based ensemble techniques (gradient-boosted trees and random forest), achieving the smallest prediction error below 1.5%.

Highlights

  • IntroductionElectrical energy is one of the main sources of energy in our society. In addition, the demand for electric energy has a growing trend due to great challenges such as the electric vehicle, and new restrictions are emerging related to the use of renewable energy while ensuring a reliable and secure supply

  • Nowadays, electrical energy is one of the main sources of energy in our society

  • A deep neural network is proposed to address the electricity consumption forecasting in the short-term, namely, a long short-term memory (LSTM) network due to its ability to deal with sequential data such as time-series data

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Summary

Introduction

Electrical energy is one of the main sources of energy in our society. In addition, the demand for electric energy has a growing trend due to great challenges such as the electric vehicle, and new restrictions are emerging related to the use of renewable energy while ensuring a reliable and secure supply. The demand forecasting is often classified as short-term, medium-term and long-term. The electricity consumption profile for a working day in Spain usually has a valley corresponding to sleeping hours and two demand peaks, a high peak of consumption corresponding to the hours from 08:00 to 09:00 pm and a lower peak of demand corresponding to working hours during the morning. Some days this peak occurring in the morning is divided into two peaks obtaining a camel type profile

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