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Defect Profile Estimation from Magnetic Flux Leakage Signal via Efficient Managing Particle Swarm Optimization

机译:通过有效管理粒子群算法从磁通量泄漏信号估计缺陷轮廓

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摘要

In this paper, efficient managing particle swarm optimization (EMPSO) for high dimension problem is proposed to estimate defect profile from magnetic flux leakage (MFL) signal. In the proposed EMPSO, in order to strengthen exchange of information among particles, particle pair model was built. For more efficient searching when facing different landscapes of problems, velocity updating scheme including three velocity updating models was also proposed. In addition, for more chances to search optimum solution out, automatic particle selection for re-initialization was implemented. The optimization results of six benchmark functions show EMPSO performs well when optimizing 100-D problems. The defect simulation results demonstrate that the inversing technique based on EMPSO outperforms the one based on self-learning particle swarm optimizer (SLPSO), and the estimated profiles are still close to the desired profiles with the presence of low noise in MFL signal. The results estimated from real MFL signal by EMPSO-based inversing technique also indicate that the algorithm is capable of providing an accurate solution of the defect profile with real signal. Both the simulation results and experiment results show the computing time of the EMPSO-based inversing technique is reduced by 20%–30% than that of the SLPSO-based inversing technique.
机译:本文提出了针对高维问题的有效管理粒子群算法(EMPSO),以根据磁通量泄漏(MFL)信号估计缺陷轮廓。在提出的EMPSO中,为了加强粒子之间的信息交换,建立了粒子对模型。为了在面对不同的问题时更有效地进行搜索,还提出了包括三个速度更新模型的速度更新方案。此外,为了有更多机会搜索最佳解,还实施了用于重新初始化的自动粒子选择。六个基准函数的优化结果表明,EMPSO在优化100维问题时表现良好。缺陷仿真结果表明,基于EMPSO的反演技术优于基于自学习粒子群优化器(SLPSO)的反演技术,并且在MFL信号中存在低噪声的情况下,估计的轮廓仍然接近所需的轮廓。通过基于EMPSO的反演技术从实际MFL信号估计的结果还表明,该算法能够为具有真实信号的缺陷轮廓提供准确的解决方案。仿真结果和实验结果均表明,基于EMPSO的反演技术的计算时间比基于SLPSO的反演技术的计算时间减少了20%–30%。

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