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Application of artificial neural networks in non-destructive testing of layered structures using the surface wave method

机译:人工神经网络在面波法层状结构无损检测中的应用

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The surface wave method is an in-situ non-destructive testing procedure for estimation of elastic moduli and layers thicknesses of layered structures such as pavements and natural soil deposits. In this research, MatLab has been employed for applying artificial neural networks in solving the inversion problem of the surface wave test dispersion curve and estimating the soil profile. Multi-layer neural networks along with back propagation training procedure are used to carry out the required inversion process. The networks are trained using the Steepest Descent Gradient Algorithm, Conjugate Gradient Algorithm and Levenberg-Marquardt Algorithm. Eight training functions have been employed and assessed in three, four and five layer networks. The most optimised network with the least error rate and iteration number for convergence was selected and tested for certainty. By employing the selected optimum network, a number of real cases have been studied and the results obtained have been compared with the available actual data. The results show very good match, indicating that the selected back propagation neural network is capable of providing a useful tool for carrying out the inversion process of surface wave method.
机译:表面波方法是一种现场非破坏性测试程序,用于估算层状结构(例如人行道和天然土壤沉积物)的弹性模量和层厚。在这项研究中,MatLab已被用于应用人工神经网络来解决表面波测试色散曲线的反演问题和估算土壤剖面。多层神经网络与反向传播训练程序一起用于执行所需的反演过程。使用最速下降梯度算法,共轭梯度算法和Levenberg-Marquardt算法训练网络。在三层,四层和五层网络中已采用和评估了八种培训功能。选择最佳错误率和迭代次数最少的网络进行收敛,并进行确定性测试。通过使用选定的最佳网络,已经研究了许多实际案例,并将获得的结果与可用的实际数据进行了比较。结果表明非常匹配,表明所选择的反向传播神经网络能够为进行表面波方法的反演提供有用的工具。

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