首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Tsallis Entropy Segmentation and Shape Feature-based Classification of Defects in the Simulated Magnetic Flux Leakage Images of Steam Generator Tubes
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Tsallis Entropy Segmentation and Shape Feature-based Classification of Defects in the Simulated Magnetic Flux Leakage Images of Steam Generator Tubes

机译:Tsallis熵分割和基于形状特征的蒸汽发生器管漏磁图像缺陷分类

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摘要

Early detection of water or steam leaks into sodium in the steam generator units of nuclear reactors is an important requirement from safety and economic considerations. Automated defect detection and classification algorithm for categorizing the defects in the steam generator tube (SGT) of nuclear power plants using magnetic flux leakage (MFL) technique has been developed. MFL detection is one of the most prevalent methods of pipeline inspection. Comsol 4.3a, a multiphysics modeling software has been used to obtain the simulated MFL defect images. Different thresholding methods are applied to segment the defect images. Performance metrics have been computed to identify the better segmentation technique. Shape-based feature sets such as area, perimeter, equivalent diameter, roundness, bounding box, circularity ratio and eccentricity for defect have been extracted as features for defect detection and classification. A feed forward neural network has been constructed and trained using a back-propagation algorithm. The shape features extracted from Tsallis entropy-based segmented MFL images have been used as inputs for training and recognizing shapes. The proposed method with Tsallis entropy segmentation and shape-based feature set has yielded the promising results with detection accuracy of 100% and average classification accuracy of 96.11%.
机译:从安全和经济考虑,及早发现水或蒸汽泄漏到核反应堆蒸汽发生器单元中的钠中是重要的要求。开发了一种利用磁通量泄漏(MFL)技术对核电厂蒸汽发生器管(SGT)中的缺陷进行分类的自动缺陷检测和分类算法。 MFL检测是管道检查中最流行的方法之一。 Comsol 4.3a,一种多物理场建模软件已用于获取模拟的MFL缺陷图像。应用不同的阈值方法来分割缺陷图像。已计算出性能指标以识别更好的细分技术。已提取出基于形状的特征集,例如面积,周长,等效直径,圆度,边界框,圆形度比和缺陷的偏心度,作为缺陷检测和分类的特征。使用反向传播算法已构建并训练了前馈神经网络。从基于Tsallis熵的分段MFL图像中提取的形状特征已用作训练和识别形状的输入。提出的基于Tsallis熵分割和基于形状的特征集的方法产生了有希望的结果,检测精度为100%,平均分类精度为96.11%。

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