Particle swarm optimization and identification of inelastic material parameters
Abstract
Purpose
Parameter identification is a technique which aims at determining material or other process parameters based on a combination of experimental and numerical techniques. In recent years, heuristic approaches, such as genetic algorithms (GAs), have been proposed as possible alternatives to classical identification procedures. The present work shows that particle swarm optimization (PSO), as an example of such methods, is also appropriate to identification of inelastic parameters. The paper aims to discuss these issues.
Design/methodology/approach
PSO is a class of swarm intelligence algorithms which attempts to reproduce the social behaviour of a generic population. In parameter identification, each individual particle is associated to hyper-coordinates in the search space, corresponding to a set of material parameters, upon which velocity operators with random components are applied, leading the particles to cluster together at convergence.
Findings
PSO has proved to be a viable alternative to identification of inelastic parameters owing to its robustness (achieving the global minimum with high tolerance for variations of the population size and control parameters), and, contrasting to GAs, higher convergence rate and small number of control variables.
Originality/value
PSO has been mostly applied to electrical and industrial engineering. This paper extends the field of application of the method to identification of inelastic material parameters.
Keywords
Acknowledgements
The first author gratefully acknowledges the support provided by CNPq (National Council for Scientific and Technological Development – Project 301991/2009-0).
Citation
Vaz Jr, M., Cardoso, E.L. and Stahlschmidt, J. (2013), "Particle swarm optimization and identification of inelastic material parameters", Engineering Computations, Vol. 30 No. 7, pp. 936-960. https://doi.org/10.1108/EC-10-2011-0118
Publisher
:Emerald Group Publishing Limited
Copyright © 2013, Emerald Group Publishing Limited