Cyber Swarm Algorithms – Improving Particle Swarm Optimization Using
Adaptive Memory Strategies
P-Y Yin, F. Glover, M. Laguna and J-X Zhu
February 2009

Abstract
Particle swarm optimization (PSO) has emerged as an
acclaimed approach for solving complex optimization problems. The nature
metaphors of flocking birds or schooling fish that originally motivated PSO
have made the algorithm easy to describe but have also occluded the view of
valuable strategies based on other foundations. From a complementary
perspective, scatter search (SS) and path relinking (PR) provide an
optimization framework based on the assumption that useful information about
the global solution is typically contained in solutions that lie on paths from
good solutions to other good solutions. Shared and contrasting principles
underlying the PSO and the SS/PR methods provide a fertile basis for combining
them. Drawing especially on the adaptive memory and dynamic network elements
of SS and PR, we create a combination to produce a Cyber Swarm Algorithm that
proves more effective than the Type 1 constriction PSO recently established
as a leading form of PSO. Applied to the challenge of finding global minima
for continuous nonlinear functions, the Cyber Swarm Algorithm not only is able
to obtain better solutions to a well known set of benchmark functions, but
also proves more robust under a wide range of experimental conditions.

Full text