Abstract

Currently, electric energy is used in practically all modern human activities. Most of the energy produced came from fossil fuels, making irreversible damage to the environment. Lately, there has been an effort by nations to produce energy using clean methods, such as solar and wind energy, among others. Wind energy is one of the cleanest alternatives. However, the wind speed is not constant, making the planning and operation at electric power systems a difficult activity. Knowing in advance the amount of raw material (wind speed) used for energy production allows us to estimate the energy to be generated by the power plant, helping the maintenance planning, the operational management, optimal operational cost. For these reasons, the forecast of wind speed becomes a necessary task. The forecast process involves the use of past observations from the variable to forecast (wind speed). To measure wind speed, weather stations use devices called anemometers, but due to poor maintenance, connection error, or natural wear, they may present false or missing data. In this work, a hybrid methodology is proposed, and it uses a compact genetic algorithm with an artificial neural network to reconstruct wind speed time series. The proposed methodology reconstructs the time series using a ANN defined by a Compact Genetic Algorithm.

Highlights

  • Energy plays a very important role in human activities

  • Each individual in the Genetic Algorithms (GA) is defined as a binary vector that is coding the number of inputs, number of hidden neurons and the training algorithm of the Artificial Neural Networks (ANN)

  • In order to test the suitability of our proposal, experiments were carried out with time series of the wind speed coming from anemometers located in different locations inside the the state of Michoacán, México recorded hourly

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Summary

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Introduction
Published under licence by IOP Publishing Ltd
Data Reconstruction
Conjugate gradient
Results
Input Neurons Hidden Neurons Training Algorithm
Conclusions
Full Text
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