An Adaptive Balance Search Based Complementary Heterogeneous Particle Swarm Optimization Architecture
Journal:
arXiv
Published Date:
Dec 17, 2024
Abstract
A series of modified cognitive-only particle swarm optimization (PSO)
algorithms effectively mitigate premature convergence by constructing distinct
vectors for different particles. However, the underutilization of these
constructed vectors hampers convergence accuracy. In this paper, an adaptive
balance search based complementary heterogeneous PSO architecture is proposed,
which consists of a complementary heterogeneous PSO (CHxPSO) framework and an
adaptive balance search (ABS) strategy. The CHxPSO framework mainly includes
two update channels and two subswarms. Two channels exhibit nearly
heterogeneous properties while sharing a common constructed vector. This
ensures that one constructed vector is utilized across both heterogeneous
update mechanisms. The two subswarms work within their respective channels
during the evolutionary process, preventing interference between the two
channels. The ABS strategy precisely controls the proportion of particles
involved in the evolution in the two channels, and thereby guarantees the
flexible utilization of the constructed vectors, based on the evolutionary
process and the interactions with the problem's fitness landscape. Together,
our architecture ensures the effective utilization of the constructed vectors
by emphasizing exploration in the early evolutionary process while exploitation
in the later, enhancing the performance of a series of modified cognitive-only
PSOs. Extensive experimental results demonstrate the generalization performance
of our architecture.