Particle swarm optimization with a modified learning strategy and blending crossover | IEEE Conference Publication | IEEE Xplore

Particle swarm optimization with a modified learning strategy and blending crossover


Abstract:

Particle Swarm Optimization (PSO) is a simple yet elegant derivative-free algorithm for solving continuous, multi-modal, non-convex and multi-dimensional optimization pro...Show More

Abstract:

Particle Swarm Optimization (PSO) is a simple yet elegant derivative-free algorithm for solving continuous, multi-modal, non-convex and multi-dimensional optimization problems of widely different nature. However, one concern about the conventional PSO is that, it suffers from premature convergence, due to quick loss of diversity. In this paper, we propose an improvised version of the standard PSO (PSO-ML), which integrates a novel learning strategy with a genetic crossover scheme to circumvent this limitation. The suggested novel learning strategy generates a single robust exemplar vector by dynamically learning from individual dimensions of three guiding solutions: personal best, global best, and local best for each particle. A genetic crossover scheme, the blending crossover is also integrated with the PSO model, to enhance exploration through rapid search of the function space between and around each pair of particles in the swarm. PSO-ML is tested on 25 standard benchmark functions of the IEEE CEC (Congress on Evolutionary Computation) 2013. The results are then compared against other state-of-the-art algorithms, thus illustrating the advantages of PSO-ML in terms of accuracy and computational cost.
Date of Conference: 27 November 2017 - 01 December 2017
Date Added to IEEE Xplore: 08 February 2018
ISBN Information:
Conference Location: Honolulu, HI, USA

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