Wind Power and Electricity Consumption Forecasting on a Smart House Location

Authors

  • H. Eliasstam Author
  • K. N. Genikomsakis Author
  • C. S. Ioakimidis Author

DOI:

https://doi.org/10.24084/repqj11.404

Keywords:

Artificial neural networks, Smart homes, Forecasting, Wind energy, Electricity

Abstract

This paper presents the use of an artificial neural network for classification on a residence house that uses wind and electricity consumption predictions to identify patterns at the desired location, in order to obtain a stochastic distribution of the daily wind and electricity profile. This is a step on the further creation of a short-term operation model that allows determining the technical and economic impact of stationary/mobile batteries of electric vehicles in presence of microrenewables along with the electricity consumption. This short-term operation model will be in the day-ahead perfect market operation (unit commitment) where specific changes are made to consider stationary and mobile operation.

Author Biographies

  • H. Eliasstam

    Department of Applied Physics and Electrical Engineering 
    Linköping University 
    SE-581 83, Linköping (Sweden) 

  • K. N. Genikomsakis

    Deusto Institute of Technology, DeustoTech Energy 
    University of Deusto 
    Avenida de las Universidades 24, 48007 Bilbao (Spain) 

  • C. S. Ioakimidis

    Deusto Institute of Technology, DeustoTech Energy 
    University of Deusto 
    Avenida de las Universidades 24, 48007 Bilbao (Spain) 

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Published

2024-01-24

Issue

Section

Articles