Machines (Nov 2022)

A Fast Globally Convergent Particle Swarm Optimization for Defect Profile Inversion Using MFL Detector

  • Senxiang Lu,
  • Jinhai Liu,
  • Jing Wu,
  • Xuewei Fu

DOI
https://doi.org/10.3390/machines10111091
Journal volume & issue
Vol. 10, no. 11
p. 1091

Abstract

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For the problem of defect inversion in magnetic flux leakage technology, a fast, globally convergent particle swarm optimization algorithm based on the finite-element forward model is introduced as an inverse iterative algorithm in this paper. Two aspects of the traditional particle swarm optimization algorithm have been improved: self-adaptive inertia weight and speed updating strategy. For the inertia weight, it can be adaptively adjusted according to the particle position. The speed update strategy mainly uses the best experience positions of other particles in a randomly selected population to realize the algorithm’s learning. At the same time, the learning factor of the position variable is designed to change with the number of iteration steps. The particle with a good position is added to jump out of the local minimum and accelerate the optimization process. Through the comparison experiment, the improved particle swarm optimization algorithm has a faster convergence speed compared with other traditional particle swarm optimization algorithms. It is more difficult for it to fall into the local minimum value and it is more easily converted to a higher precision.

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