Boundary constraint handling techniques for particle swarm optimization in high dimensional problem spaces
Loading...
Date
Authors
Oldewage, E.T. (Elre)
Engelbrecht, Andries P.
Cleghorn, Christopher Wesley
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
This paper investigates the use of boundary constraint handling mechanisms to prevent unwanted particle roaming behaviour in high dimensional spaces. The paper tests a range of strategies on a benchmark for large scale optimization. The empirical analysis shows that the hyperbolic strategy, which scales down a particle’s velocity as it approaches the boundary, performs statistically significantly better than the other methods considered in terms of the best objective function value achieved. The hyperbolic strategy directly addresses the velocity explosion, thereby preventing unwanted roaming.
Description
Keywords
Particle swarm optimization (PSO), Swarm intelligence, A-particles, Boundary constraints, Empirical analysis, High dimensional spaces, High-dimensional problems, Large-scale optimization, Objective function values, Paper tests, Hyperbolic functions
Sustainable Development Goals
Citation
Oldewage E.T., Engelbrecht A.P., Cleghorn C.W. (2018) Boundary Constraint Handling Techniques for Particle Swarm Optimization in High Dimensional Problem Spaces. In: Dorigo M., Birattari M., Blum C., Christensen A., Reina A., Trianni V. (eds) Swarm Intelligence. ANTS 2018. Lecture Notes in Computer Science, vol 11172. Springer, Cham.