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Original Articles

Particle swarm optimisation algorithm for crack shape reconstruction in magnetic flux leakage nondestructive testing

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Pages 243-250 | Received 06 Mar 2008, Accepted 29 Jul 2008, Published online: 24 Sep 2010
 

Abstract

Magnetic flux leakage testing is widely used to examine ferromagnetic materials. Considering the importance of estimating the size of surface crack in metals, which is used in nuclear power, railway and piping industries, a method based on particle swarm optimisation algorithm is proposed in this article. This approach maps the size of crack to the location of particles. After initialising the locations and velocities of the particle population, it evaluates the fitness value of the individual particle and tracks the optimal one. It then updates the positions and velocities of particles with the previous fitness values and repeats these steps until the best possible result is obtained. The fitness value is obtained by summing the absolute measurement error of the magnetic leakage field intensity of the crack. The results of simulation experiments demonstrate the effectiveness of the proposed method.

Acknowledgements

This work is supported by Science and Research Development Foundation of Hefei University of Technology (2007GDBJ046).

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