Author_Institution :
Sch. of Comput. Sci. & Technol., Huazhong Univ. of Sci. & Technol., Wuhan, China
Abstract :
To obtain precise solutions in optimization problems and decrease the risk of being trapped in local optima, researchers have studied on various improved particle swarm optimizations (PSO) and made a series of achievements. However, these methods focus on artificially altering the physical rules of motion, rather than strengthening the individual self-learning and adjustment during the optimization process, which is the original motive of the swarm-based evolutionary algorithms. In this paper, we propose a fresh self-adaptive variant, MMARO-PSO, which employs motivation mechanism to simulate the behavior of intelligent organisms more vividly. We manage to simplify the update formulas and give each term a definite bio-psychic sense. Furthermore, we introduce a vectorized operator to restrain particle´s acceleration, instead of the inertia weight parameter in conventional methods. Large number of experiments were conducted and the results illustrate that these innovations make the technique perform more consistently to find a better balance between global exploration and local exploitation, compared with the existing versions, e.g. SPSO, e1-PSO, ARFPSO, and (k, l)PSO.
Keywords :
particle swarm optimisation; MMARO-PSO; adaptive PSO; global exploration; intelligent organisms; local exploitation; motivation mechanism and acceleration restraint operator; particle swarm optimizations; vectorized operator; Acceleration; Educational institutions; Optimization; Particle swarm optimization; Standards; Tuning; Vectors; acceleration restraint operator; adaptive; motivation mechanism; optimization problems; particle swarm optimization;