4.8 Article

A survey of big bang big crunch optimisation in power systems

Journal

RENEWABLE & SUSTAINABLE ENERGY REVIEWS
Volume 155, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.rser.2021.111848

Keywords

Big bang big crunch; Controllers Distributed generation (DG); Generation dispatch; Maximum power point tracking; Optimal power flow; Reconfiguration

Funding

  1. University of South Africa, South Africa
  2. Eskom Holdings SoC, South Africa

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This paper presents a survey on the application of the Big Bang Big Crunch algorithm in solving power system optimization problems. The authors found that the algorithm has been extensively used and researchers have introduced variants and hybrids to improve its capability.
Big Bang Big Crunch (BBBC) is a metaheuristic algorithm that was first published in 2006 and has since been applied in solving a variety of optimisation problems. In this paper, the authors present a survey of the use of BBBC for solving power system optimisation problems. The survey established that the BBBC has been used extensively in studying a broad variety of power system problems. In addition to the standard BBBC algorithm, researchers have introduced several variants and hybrids of the BBBC with a view to expanding its capability to solve particular problems and/or improve the quality of the solutions obtained. The type of power system optimisation problems that the BBBC algorithm has been used to solve is broad, spanning generation, transmission, and distribution. In many publications, researchers have reported the efficiency of the BBBC algorithm in solving the optimisation problems, and have found it to outperform many competing techniques in terms of the optimal values of the objective function obtained and the speed of convergence to the optimal solution.

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