4.7 Article

Inspired grey wolf optimizer for solving large-scale function optimization problems

Journal

APPLIED MATHEMATICAL MODELLING
Volume 60, Issue -, Pages 112-126

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.apm.2018.03.005

Keywords

Grey wolf optimizer; Large-scale global optimization; Engineering design optimization; Electricity load forecasting

Funding

  1. National Natural Science Foundation of China [61463009]
  2. Science and Technology Foundation of Guizhou Province [[2016]1022]
  3. Program for the Science and Technology Top Talents of Higher Learning Institutions of Guizhou [KY[2017]070]
  4. Guizhou University of Finance and Economics [2016SWBZD13]
  5. Ministry of Commerce [2016SWBZD13]
  6. Education Department of Guizhou Province Projects [KY[2017]004]
  7. Central Support Local Projects [PXM 2013-014210-000173]
  8. Project of High Level Creative Talents in Guizhou Province [20164035]
  9. Natural Science Foundation of Hunan Province [2016JJ3079]

Ask authors/readers for more resources

Grey wolf optimizer algorithm was recently presented as a new heuristic search algorithm with satisfactory results in real-valued and binary encoded optimization problems that are categorized in swarm intelligence optimization techniques. This algorithm is more effective than some conventional population-based algorithms, such as particle swarm optimization, differential evolution and gravitational search algorithm. Some grey wolf optimizer variants were developed by researchers to improve the performance of the basic grey wolf optimizer algorithm. Inspired by particle swarm optimization algorithm, this study investigates the performance of a new algorithm called Inspired grey wolf optimizer which extends the original grey wolf optimizer by adding two features, namely, a nonlinear adjustment strategy of the control parameter, and a modified position-updating equation based on the personal historical best position and the global best position. Experiments are performed on four classical high-dimensional benchmark functions, four test functions proposed in the IEEE Congress on Evolutionary Computation 2005 special session, three well-known engineering design problems, and one real-world problem. The results show that the proposed algorithm can find more accurate solutions and has higher convergence rate and less number of fitness function evaluations than the other compared techniques. (C) 2018 Elsevier Inc. All rights reserved.

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