Artificial neural networks for electricity consumption forecasting considering climatic factors

نویسندگان

  • FRANCISCO DAVID
  • MOYA CHAVES
چکیده

This work develops Artificial Neural Networks (ANN) models applied to predict the consumption forecasting considering climatic factors. It is intended to verify the influence of climatic factors on the electricity consumption forecasting through the ANN. The case study is applied in the Campinas city, Brazil. This work used Perceptron and Backpropagation ANN models. The specific goal is comparisons the performance of neural networks as an alternative to traditional forecasting methods. In this work were observed that despite direct or indirect influence of climatic factors on electricity consumption, a good prediction can be obtained using ANN without climatic factors. Key-Words: electricity consumption forecasting, artificial neural networks

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تاریخ انتشار 2010