Evolutionary computation of unconstrained and constrained problems using a novel momentum-type particle swarm optimization

Evolutionary computation of unconstrained and constrained problems using a novel momentum-type particle swarm optimization

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Article ID: iaor20081974
Country: United Kingdom
Volume: 39
Issue: 3
Start Page Number: 287
End Page Number: 305
Publication Date: Apr 2007
Journal: Engineering Optimization
Authors: ,
Keywords: particle swarm systems
Abstract:

This study proposes a novel momentum-type particle swarm optimization (PSO) method, which will find good solutions of unconstrained and constrained problems using a delta momentum rule to update the particle velocity. The algorithm modifies Shi and Eberhart's PSO to enhance the computational efficiency and solution accuracy. This study also presents a continuous non-stationary penalty function, to force design variables to satisfy all constrained functions. Several well-known and widely used benchmark problems were employed to compare the performance of the proposed PSO with Kennedy and Eberhart's PSO and Shi and Eberhart's modified PSO. Additionally, an engineering optimization task for designing a pressure vessel was applied to test the three PSO algorithms. The optimal solutions are presented and compared with the data from other works using different evolutionary algorithms. To show that the proposed momentum-type PSO algorithm is robust, its convergence rate, solution accuracy, mean absolute error, standard deviation, and CPU time were compared with those of both the other PSO algorithms. The experimental results reveal that the proposed momentum-type PSO algorithm can efficiently solve unconstrained and constrained engineering optimization problems.

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