CELLULAR ORGANISM BASED PARTICLE SWARM OPTIMIZATION ALGORITHM FOR COMPLEX NON-LINEAR PROBLEMS
Journal: MATTER: International Journal of Science and Technology (Vol.3, No. 2)Publication Date: 2017-07-15
Authors : P Subashini; T T Dhivyaprabha; M Krishnaveni;
Page : 209-229
Keywords : Cellular organism; Computational model; Moving peak benchmark function; Particle swarm optimization (PSO); Optimization; Population structure;
Abstract
Particle Swarm Optimization (PSO) is the global optimization technique that inspires many researchers to solve large scale of non-linear optimization problems. For certain complex scenarios, the premature convergence problem of PSO algorithm cannot find global optimum in dynamic environments. In this paper, a new variant motility factor based Cellular Particle Swarm Optimization (m-CPSO) algorithm is proposed which is developed by the migration behavior observed from fibroblast cellular organism to overcome this problem. The proposed m-CPSO algorithm is modeled in two different social best and individual best models. The performance of m-CPSO is tested in benchmark and real time data instances and compared with classical PSO. The outcome of experimental results has demonstrated that m-CPSO algorithm produces promising results than classical PSO on all evaluated environments.
Other Latest Articles
- SYNERGISTIC FIBROBLAST OPTIMIZATION BASED BOUNDARY DETECTION IN TAMIL SIGN LANGUAGE IMAGES
- INVESTIGATION OF AROMATICITY OF TRI AND TETRAAZANAPHTHALENE DERIVATIVES
- REFLECTIONS ON HIDDEN VOICES IN THE EFL CLASSROOM: THE “ANXIOUS” LEARNER AND THE “CARING” TEACHER
- INVESTIGATION OF VOT AS AN ACOUSTIC FEATURE OF CONSONANTS IN STRESSED SYLLABLE IN ADULTS WITH DOWN SYNDROME
Last modified: 2018-04-27 19:38:18