A multiobjective memetic algorithm based on particle swarm optimization.

Dasheng Liu, K C Tan, C K Goh, W K Ho
Author Information
  1. Dasheng Liu: Control and Simulation Laboratory, Department of Electrical and Computer Engineering, National University of Singapore. 90301345@nus.edu.sg

Abstract

In this paper, a new memetic algorithm (MA) for multiobjective (MO) optimization is proposed, which combines the global search ability of particle swarm optimization with a synchronous local search heuristic for directed local fine-tuning. A new particle updating strategy is proposed based upon the concept of fuzzy global-best to deal with the problem of premature convergence and diversity maintenance within the swarm. The proposed features are examined to show their individual and combined effects in MO optimization. The comparative study shows the effectiveness of the proposed MA, which produces solution sets that are highly competitive in terms of convergence, diversity, and distribution.

MeSH Term

Algorithms
Animals
Artificial Intelligence
Behavior, Animal
Biomimetics
Computer Simulation
Models, Biological
Movement
Software
Systems Theory

Word Cloud

Created with Highcharts 10.0.0optimizationproposedparticleswarmnewmemeticalgorithmMAmultiobjectiveMOsearchlocalbasedconvergencediversitypapercombinesglobalabilitysynchronousheuristicdirectedfine-tuningupdatingstrategyuponconceptfuzzyglobal-bestdealproblemprematuremaintenancewithinfeaturesexaminedshowindividualcombinedeffectscomparativestudyshowseffectivenessproducessolutionsetshighlycompetitivetermsdistribution

Similar Articles

Cited By