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Defect Recognition in Concrete Ultrasonic Detection Based on Wavelet Packet Transform and Stochastic Configuration Networks

机译:基于小波包变换和随机配置网络的混凝土超声检测中的缺陷识别

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摘要

Aiming to detect concrete defects, we propose a new identification method based on stochastic configuration networks. The presented model has been trained by time-domain and frequency-domain features which are extracted from filtering and decomposing ultrasonic detection signals. This method was applied to ultrasonic detection data collected from 5 mm, 7 mm, and 9 mm penetrating holes in C30 class concrete. In particular, wavelet packet transform (WPT) was then used to decompose the detected signals, thus the information in different frequency bands can be obtained. Based on the data from the fundamental frequency nodes of the detection signals, we calculated the means, standard deviations, kurtosis coefficients, skewness coefficients, and energy ratios to characterize the detection signals. We also analyzed their typical statistical features to assess the complexity of identifying these signals. Finally, we used the stochastic configuration networks (SCNs) algorithm to embed four-fold cross-validation for constructing the recognition model. Based upon the experimental results, the performance of the presented model has been validated and compared with the genetic algorithm based on BP neural network model, where the comparison shows that the SCNs algorithm has superior generalization abilities, better fitting abilities, and higher recognition accuracy for recognizing defect signals. In addition, the test and analysis results show that the proposed method is feasible and effective in detecting concrete hole defects.
机译:旨在检测混凝土缺陷,我们提出了一种基于随机配置网络的新识别方法。所呈现的模型已经受到时域和频域特征的训练,这些功能从过滤和分解超声检测信号中提取。将该方法应用于从C30级混凝土中的5mm,7mm和9毫米穿透孔收集的超声波检测数据。特别地,然后使用小波分组变换(WPT)来分解检测到的信号,因此可以获得不同频带中的信息。基于来自检测信号的基本频率节点的数据,我们计算了表征检测信号的平均值,标准偏差,峰度系数,偏移系数和能量比。我们还分析了它们的典型统计特征,以评估识别这些信号的复杂性。最后,我们使用随机配置网络(SCNS)算法来嵌入四倍的交叉验证来构建识别模型。基于实验结果,已经验证了所提出的模型的性能,并与基于BP神经网络模型的遗传算法进行了验证,比较表明,SCNS算法具有卓越的泛化能力,更好的拟合能力和更高的识别精度识别缺陷信号。此外,测试和分析结果表明,该方法可行,可有效地检测混凝土孔缺陷。

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