Energy Consumption Forecasting for Smart Meters Using Extreme Learning Machine Ensemble.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

The employment of smart meters for energy consumption monitoring is essential for planning and management of power generation systems. In this context, forecasting energy consumption is a valuable asset for decision making, since it can improve the predictability of forthcoming demand to energy providers. In this work, we propose a data-driven ensemble that combines five single well-known models in the forecasting literature: a statistical linear autoregressive model and four artificial neural networks: (radial basis function, multilayer perceptron, extreme learning machines, and echo state networks). The proposed ensemble employs extreme learning machines as the combination model due to its simplicity, learning speed, and greater ability of generalization in comparison to other artificial neural networks. The experiments were conducted on real consumption data collected from a smart meter in a one-step-ahead forecasting scenario. The results using five different performance metrics demonstrate that our solution outperforms other statistical, machine learning, and ensembles models proposed in the literature.

Authors

  • Paulo S G de Mattos Neto
    Centro de Informática, Universidade Federal de Pernambuco, Recife 50740-560, Brazil.
  • João F L de Oliveira
    Escola Politécnica de Pernambuco, Universidade de Pernambuco, Recife 50720-001, Brazil.
  • Priscilla Bassetto
    Graduate Program in Industrial Engineering, Federal University of Technology-Paraná, Ponta Grossa 84017-220, Brazil.
  • Hugo Valadares Siqueira
    Graduate Program in Industrial Engineering, Federal University of Technology-Paraná, Ponta Grossa 84017-220, Brazil.
  • Luciano Barbosa
    Centro de Informática, Universidade Federal de Pernambuco, Recife 50740-560, Brazil.
  • Emilly Pereira Alves
    Escola Politécnica de Pernambuco, Universidade de Pernambuco, Recife 50720-001, Brazil.
  • Manoel H N Marinho
    Escola Politécnica de Pernambuco, Universidade de Pernambuco, Recife 50720-001, Brazil.
  • Guilherme Ferretti Rissi
    CPFL Energia, Campinas, São Paulo 13087-397, Brazil.
  • Fu Li
    CPFL Energia, Campinas, São Paulo 13087-397, Brazil.