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Application of hybrid forecast engine based intelligent algorithm and feature selection for wind signal prediction

  • Mahdi Mir
  • Mahdi Shafieezadeh
  • Mohammad Amin Heidari
  • Noradin GhadimiEmail author
Original Paper

Abstract

This paper presents a new prediction model based on empirical mode decomposition, feature selection and hybrid forecast engine. The whole structure of proposed model is based on nonstationarity and non-convex nature of wind power signal. The hybrid forecast engine consists of three main stages as; empirical mode decomposition, an intelligent algorithm and back propagation neural network. All parameters of proposed neural network will be optimized by intelligent algorithm. Effectiveness of the proposed model is tested with real-world hourly data of wind farms in Spain and Texas. In order to demonstrate the validity of the proposed model, it is compared with several other wind speed and power forecast techniques. Obtained results confirm the validity of the developed approach.

Keywords

Neural network Wind power forecast Hybrid forecast engine Feature selection EEMD 

Notes

References

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Copyright information

© Springer-Verlag GmbH Germany, part of Springer Nature 2019

Authors and Affiliations

  • Mahdi Mir
    • 1
  • Mahdi Shafieezadeh
    • 2
  • Mohammad Amin Heidari
    • 3
  • Noradin Ghadimi
    • 4
    Email author
  1. 1.Department of Electrical EngineeringFerdowsi University of MashhadMashhadIran
  2. 2.Yazd UniversityYazdIran
  3. 3.Shiraz Electricity Distribution Company (SHEDC)ShirazIran
  4. 4.Young Researchers and Elite Club, Ardabil BranchIslamic Azad UniversityArdabilIran

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