Fuzzy Adaptive Artificial Fish Swarm Algorithm

نویسندگان

  • Danial Yazdani
  • Adel Nadjaran Toosi
  • Mohammad Reza Meybodi
چکیده

Artificial Fish Swarm Algorithm (AFSA) is a kind of swarm intelligence algorithms which usually employs in optimization problems. There are many parameters to adjust in AFSA like visual and step. Through constant initializing of visual and step parameters, algorithm is only able to do local searching or global searching. In this paper, two new adaptive methods based on fuzzy systems are proposed to control the visual and step parameters during the AFSA execution in order to control the capability of global and local searching adaptively. First method uniformly adjusts the visual and step of all fish while in the second method, each artificial fish has its own fuzzy controller for adjusting its visual and step parameters. The experiments and evaluations of the proposed methods were performed on eight well known benchmark functions in comparison with standard AFSA and Particle Swarm Optimization (PSO). The overall results show that proposed algorithm can be effective surprisingly.

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تاریخ انتشار 2010