Cognitive Bare Bones Particle Swarm Optimisation with Jumps
The ‘bare bones' (BB) formulation of particle swarm optimisation (PSO) was originally advanced as a model of PSO dynamics. The idea was to model the forces between particles with sampling from a probability distribution in the hope of understanding swarm behaviour with a conceptually simpler particle update rule. ‘Bare bones with jumps' (BBJ) proposes three significant extensions to the BB algorithm: (i) two social neighbourhoods, (ii) a tuneable parameter that can advantageously bring the swarm to the ‘edge of collapse' and (iii) a component-by-component probabilistic jump to anywhere in the search space. The purpose of this paper is to investigate the role of jumping within a specific BBJ algorithm, cognitive BBJ (cBBJ). After confirming the effectiveness of cBBJ, this paper finds that: jumping in one component only is optimal over the 30 dimensional benchmarks of this study; that a small per particle jump probability of 1/30 works well for these benchmarks; jumps are chiefly beneficial during the early stages of optimisation and finally this work supplies evidence that jumping provides escape from regions surrounding sub-optimal minima.
Year of publication: |
2016
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Authors: | al-Rifaie, Mohammad Majid ; Blackwell, Tim |
Published in: |
International Journal of Swarm Intelligence Research (IJSIR). - IGI Global, ISSN 1947-9271, ZDB-ID 2703801-4. - Vol. 7.2016, 1 (01.01.), p. 1-31
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Publisher: |
IGI Global |
Subject: | Bare Bones PSO | Global Optimization | Optimisation | Particle Swarm Optimisation | Swarm Intelligence |
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