郭萌梦, 胡博, 刘怡. 基于RBF神经网络的储油罐底板缺陷量化方法[J]. 南昌航空大学学报(自然科学版), 2020, 34(2): 85-93. DOI: 10.3969/j.issn.2096-8566.2020.02.013
引用本文: 郭萌梦, 胡博, 刘怡. 基于RBF神经网络的储油罐底板缺陷量化方法[J]. 南昌航空大学学报(自然科学版), 2020, 34(2): 85-93. DOI: 10.3969/j.issn.2096-8566.2020.02.013
Meng-meng GUO, Bo HU, Yi LIU. Radial Basis Function Neural Network-based the Bottom of Oil Tank Approach for Quantification of Defects[J]. Journal of nanchang hangkong university(Natural science edition), 2020, 34(2): 85-93. DOI: 10.3969/j.issn.2096-8566.2020.02.013
Citation: Meng-meng GUO, Bo HU, Yi LIU. Radial Basis Function Neural Network-based the Bottom of Oil Tank Approach for Quantification of Defects[J]. Journal of nanchang hangkong university(Natural science edition), 2020, 34(2): 85-93. DOI: 10.3969/j.issn.2096-8566.2020.02.013

基于RBF神经网络的储油罐底板缺陷量化方法

Radial Basis Function Neural Network-based the Bottom of Oil Tank Approach for Quantification of Defects

  • 摘要: 提出一种基于RBF神经网络来提高漏磁检测对储油罐底板裂纹缺陷的量化能力的方法。首先利用有限元仿真计算了不同长度、宽度、深度和倾斜角度的槽型缺陷漏磁信号,分析漏磁信号分布规律并提取磁异常幅值和占宽作为磁信号特征量,探讨了磁信号特征量与缺陷尺寸之间的关系并组建样本集。其次,建立RBF神经网络与模拟退火算法相结合的量化模型,并使用样本集对RBF神经网络进行训练,预测缺陷大小及倾角。结果表明,磁异常特征量随缺陷尺寸及角度呈现不同变化规律,通过RBF神经网络建立复杂关系网,结合模拟退火算法可精确量化缺陷,样本集内缺陷平均量化正确率约为98.71%,样本集外缺陷平均量化正确率约为86.67%。因此,基于RBF神经网络并且结合模拟退火的方法可应用于漏磁检测对储油罐底板的缺陷量化,为储油罐的安全评估提供理论依据。

     

    Abstract: This paper presents a method based on RBF neural network to improve the quantification ability of magnetic flux leakage detection for crack defects of oil tank floor. Firstly, the finite element simulation was used to calculate the leakage magnetic flux signals of different lengths, widths, depths and inclination. The distribution law of magnetic flux leakage signals was analyzed and the amplitude and the width of the magnetic anomaly were extracted as the magnetic signal characteristics. The relationship between characteristic quantity of the magnetic signal and defect size was discussed and the sample set is established. Secondly, it was established that a quantitative model combining RBF neural network and simulated annealing algorithm. The RBF neural network was trained by the sample set of defects to predict the defect size and inclination. The results show that characteristic quantities of the magnetic anomaly vary with the size and angle of the defect. The complex network is established by RBF neural network, and the simulated annealing algorithm can accurately quantify the defect. The average correct rate of the defect quantization is about 99.14% in the sample set and 97.33% outside the sample set. Therefore, the method based on RBF neural network combined with simulated annealing algorithm can be applied to magnetic flux leakage detection to quantify the defects of bottom of oil tank, and provide theoretical basis for the safety assessment of oil tank.

     

/

返回文章
返回