Comparison of using the genetic algorithm and cuckoo search for multicriteria optimisation with limitation

Comparison of using the genetic algorithm and cuckoo search for multicriteria optimisation with limitation

The article presents an example of using two optimisation methods, a genetic algorithm and cuckoo search, to identify parameters of electric drive controllers using some quality criteria and by applying a limitation to the maximum values of signals in the controlled facility. The results for both optimisation methods are compared. The impact of the probability that the nest host discovers the laid eggs on the speed of nding the optimum solution is investigated.

___

  • [1] Doyle JC, Glover K, Khargonekar PP, Francis BA. State-space solutions to standard H 2 and H 1 control problems. IEEE T Autom Control 1989; 34: 831-847.
  • [2] Yi T, Xin Z, Liang Z. Fuzzy-genetic control strategy of hybrid electric vehicle. In: Second International Conference on Intelligent Computation Technology and Automation; 10{11 October 2009; Changsha, China. pp. 720-723.
  • [3] Juang JG, Huang MT, Liu WK. PID control using presearched genetic algorithms for a MIMO system. IEEE T Syst Man Cy C 2008; 38: 716-727.
  • [4] Sieklucki G, Sykulski R, Orzechowski T. Application of incremental encoder in direct eld oriented control of permanent magnet synchronous motor. Prz Elektrotechniczn 2010; 86: 216-220.
  • [5] Sieklucki G. Analysis of the transfer-function models of electric drives with controlled voltage source. Prz Elek- trotechniczn 2012; 88: 250-255.
  • [6] Goldberg D. Genetic Algorithms in Search, Optimisation and Machine Learning. Warsaw, Poland: Wydawnictwa Naukowo-Techniczne, 1995 (in Polish).
  • [7] Klempka R. Selection of a drive controllers' parameters using genetic algorithm and different quality criteria. Prz Elektrotechniczn 2013; 89: 125-130.
  • [8] Kwiecien J, Filipowicz B. Comparison of re y and cockroach algorithms in selected discrete and combinatorial problems. B Pol Acad Sci-Te 2014; 62: 797-804.
  • [9] Civicioglu P, Besdok E. A conceptual comparison of the cuckoo-search, particle swarm optimization, differential evolution and arti cial bee colony algorithms. Artif Intell Rev 2013; 39: 315-346.
  • [10] Yang XS, Deb S. Cuckoo search via Levy ights. In: World Congress on Nature & Biologically Inspired Computing; 9{11 December 2009; Coimbatore, India. pp. 210-214.
  • [11] Yang XS. Nature-Inspired Metaheuristic Algorithms. 2nd ed., Bristol, UK: Luniver Press, 2010.
  • [12] Civicioglu P. Comparative analysis of the cuckoo search algorithm. In: Yang XS, editor. Cuckoo Search and Fire y Algorithm: Theory and Applications. Zurich, Switzerland: Springer International Publishing, 2014. pp. 85-113.
  • [13] Kishnani M, Pareek S, Gupta R. Optimal tuning of PID controller by cuckoo search via Levy ights. In: International Conference on Advances in Engineering and Technology Research; 1{2 August 2014; Unnao, India. pp. 1-5.
  • [14] Sahithullah M, Kumar AS, Kavin KS. Shunt active lter using cuckoo search algorithm for PQ conditioning. In: International Conference on Circuit, Power and Computing Technologies; 19{20 March 2015; Nagercoil, India. pp. 1-7.
  • [15] Zexi D, Feidan H. Cuckoo search algorithm for solving numerical integration. In: International Conference on Cyber Technology in Automation, Control and Intelligent Systems; 8{12 June 2015; Shenyang, China. pp. 1508-1512.
  • [16] Rangasamy S, Manickam P. Stability analysis of multimachine thermal power systems using the nature-inspired modi ed cuckoo search algorithm. Turk J Electr Eng Co 2014; 22: 1099-1115.
  • [17] Yildiz AR. Cuckoo search algorithm for the selection of optimal machining parameters in milling operations. Int J Adv Manuf Tech 2013; 64: 55-61.
  • [18] Durgun _ I, Yildiz AR. Structural design optimization of vehicle components using Cuckoo search algorithm. Materials Testing 2012; 54: 185-188.
  • [19] Yildiz AR. A comparative study of population-based optimization algorithms for turning operations. Inform Sciences 2012; 210: 81-88.