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Hybrid artificial bee colony algorithm with variable neighborhood search and memory mechanism 被引量:50

Hybrid artificial bee colony algorithm with variable neighborhood search and memory mechanism
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摘要 Artificial bee colony(ABC) is one of the most popular swarm intelligence optimization algorithms which have been widely used in numerical optimization and engineering applications. However, there are still deficiencies in ABC regarding its local search ability and global search efficiency. Aiming at these deficiencies,an ABC variant named hybrid ABC(HABC) algorithm is proposed.Firstly, the variable neighborhood search factor is added to the solution search equation, which can enhance the local search ability and increase the population diversity. Secondly, inspired by the neuroscience investigation of real honeybees, the memory mechanism is put forward, which assumes the artificial bees can remember their past successful experiences and further guide the subsequent foraging behavior. The proposed memory mechanism is used to improve the global search efficiency. Finally, the results of comparison on a set of ten benchmark functions demonstrate the superiority of HABC. Artificial bee colony(ABC) is one of the most popular swarm intelligence optimization algorithms which have been widely used in numerical optimization and engineering applications. However, there are still deficiencies in ABC regarding its local search ability and global search efficiency. Aiming at these deficiencies,an ABC variant named hybrid ABC(HABC) algorithm is proposed.Firstly, the variable neighborhood search factor is added to the solution search equation, which can enhance the local search ability and increase the population diversity. Secondly, inspired by the neuroscience investigation of real honeybees, the memory mechanism is put forward, which assumes the artificial bees can remember their past successful experiences and further guide the subsequent foraging behavior. The proposed memory mechanism is used to improve the global search efficiency. Finally, the results of comparison on a set of ten benchmark functions demonstrate the superiority of HABC.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2018年第2期405-414,共10页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(71771216 71701209)
关键词 artificial bee colony(ABC) hybrid artificial bee colony(HABC) variable neighborhood search factor memory mechanism artificial bee colony(ABC) hybrid artificial bee colony(HABC) variable neighborhood search factor memory mechanism
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  • 1Coit DW, Smith AE. Reliability optimization of series-parallel systems using a genetic algorithm. IEEE Trans Reliab 1996;45(2): 254-60.
  • 2Billionnet A. Redundancy allocation for series-parallel systems using integer linear programming. IEEE Trans Reliab 2008;57(3): 507-16.
  • 3Huang HZ, Qu J, Zuo MJ. Genetic-algorithm-based optimal apportionment of reliability and redundancy under multiple objectives. IIE Trans 2009;41(4):287-98.
  • 4Liang YC, Lo MH. Multi-objective redundancy allocation optimization using a variable neighborhood search algorithm. J Heuristics 2010;16(3):511-35.
  • 5Kaveh KD, Abtahi AR, Tavana M. A new multi-objective particle swarm optimization method for solving reliability redundancy allocation problems. Reliab Eng Syst Safe 2013;111:58-75.
  • 6Zadeh LA. Fuzzy sets. Inform Control 1965;8(3):338-53.
  • 7Verma AK, Srividya A, Gaonkar RSP. Fuzzy-reliability engineering: concepts and applications. New Delhi: Narosa; 2007. p. 13-6.
  • 8Utkin LV, Gurov SV. New reliability models based on imprecise probabilities. Advanced signal processing technology by soft computing; 2001. p. 110-39.
  • 9Garg H, Sharma SP. Multi-objective reliability-redundancy allocation problem using particle swarm optimization. Comput Ind Eng 2013;64(1):247-55.
  • 10Zadeh LA. Fuzzy sets as a basis for a theory of possibility. Fuzzy Set Syst 1978;1(1):3-38.

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