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Fitness estimation based particle swarm optimization algorithm for layout design of truss structures - MaRDI portal

Fitness estimation based particle swarm optimization algorithm for layout design of truss structures (Q1718898)

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scientific article; zbMATH DE number 7016974
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Fitness estimation based particle swarm optimization algorithm for layout design of truss structures
scientific article; zbMATH DE number 7016974

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    Fitness estimation based particle swarm optimization algorithm for layout design of truss structures (English)
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    8 February 2019
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    Summary: Due to the fact that vastly different variables and constraints are simultaneously considered, truss layout optimization is a typical difficult constrained mixed-integer nonlinear program. Moreover, the computational cost of truss analysis is often quite expensive. In this paper, a novel fitness estimation based particle swarm optimization algorithm with an adaptive penalty function approach (FEPSO-AP) is proposed to handle this problem. FEPSO-AP adopts a special fitness estimate strategy to evaluate the similar particles in the current population, with the purpose to reduce the computational cost. Further more, a laconic adaptive penalty function is employed by FEPSO-AP, which can handle multiple constraints effectively by making good use of historical iteration information. Four benchmark examples with fixed topologies and up to 44 design dimensions were studied to verify the generality and efficiency of the proposed algorithm. Numerical results of the present work compared with results of other state-of-the-art hybrid algorithms shown in the literature demonstrate that the convergence rate and the solution quality of FEPSO-AP are essentially competitive.
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