基于自适应遗传算法和支持向量机的金属磁记忆信号管道裂纹诊断模型

L. Gong, Z. Li, Zhen Zhang
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引用次数: 3

摘要

金属磁记忆(MMM)信号可以反映铁磁元件表面的应力集中和裂纹,但传统的应力集中和裂纹位置判别标准不够准确。本研究从原始的MMM信号中提取了22个指标,并比较了4种支持向量机(SVM)核函数的诊断结果。其中,径向基函数(RBF)核在模拟中表现最好,诊断准确率为94.03%。利用自适应遗传算法(AGA)的原理,建立了AGA-SVM联合诊断模型,使用与RBF核SVM模拟相同的训练集和测试集,准确率提高到95.52%。结果表明,AGA-SVM能准确区分应力集中和裂缝与法向点,使其定位更加准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis Model of Pipeline Cracks According to Metal Magnetic MemorySignals Based on Adaptive Genetic Algorithm and Support VectorMachine
Metal magnetic memory (MMM) signals can reflect stress concentration and cracks on the surface of ferromagnetic components, but the traditional criteria used to distinguish the locations of these stress concentrations and cracks are not sufficiently accurate. In this study, 22 indices were extracted from the original MMM signals, and the diagnosis results of 4 kernel functions of support vector machine (SVM) were compared. Of these 4, the radial basis function (RBF) kernel performed the best in the simulations, with a diagnostic accuracy of 94.03%. Using the principles of adaptive genetic algorithms (AGA), a combined AGA-SVM diagnosis model was created, resulting in an improvement in accuracy to 95.52%, using the same training and test sets as those used in the simulation of SVM with an RBF kernel. The results show that AGA-SVM can accurately distinguish stress concentrations and cracks from normal points, enabling them to be located more accurately.
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