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MFL Inspection Defect Reconstruction Based on Self-learning PSO

机译:基于自学PSO的MFL检查缺陷重建

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As an efficient optimization method, iterative approach plays an important role in the signal inversion of magnetic flux leakage (MFL) technology. Particle swarm optimization (PSO), a new population-based iterative optimization technique, has been applied for many real world problems with promising results. Self-learning particle swarm optimization (SLPSO), a recently proposed variant of PSO, has been proved to have superior performance in diverse global optimization benchmark problems with 100 dimensions or even more. In this paper, as an iterative approach, SLPSO is applied to defect profile reconstruction for magnetic flux leakage inspection. RBFNN is also used as forward model in the SLPSO-based defect reconstruction method. The experimental results show the profiles processed by the SLPSO-based defect reconstruction method are significantly precise.
机译:作为一种有效的优化方法,迭代方法在磁通量泄漏(MFL)技术的信号反转中起重要作用。粒子群优化(PSO)是一种新的基于人口的迭代优化技术,已应用于许多具有有前途的世界问题。自学习粒子群优化(SLPSO)是最近提出的PSO变体,已被证明在不同的全球优化基准问题中具有卓越的性能,100维度甚至更多。本文作为迭代方法,SLPSO应用于缺陷型磁通泄漏检查的轮廓重建。 RBFNN也被用作基于SLPSO的缺陷重建方法的前向模型。实验结果表明,基于SLPSO的缺陷重建方法处理的曲线显着精确。

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