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首页> 外文期刊>Advances in Engineering Software >Artificial neural networks for non-destructive identification of the interlayer bonding between repair overlay and concrete substrate
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Artificial neural networks for non-destructive identification of the interlayer bonding between repair overlay and concrete substrate

机译:人工神经网络可无损识别修补层和混凝土基材之间的层间粘结

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摘要

The article presents the application of artificial neural networks (ANNs) for the non-destructive identification of the pull-off adhesion f_b, values between the repair overlay with variable thickness and the substrate in concrete surface-repaired elements. For this purpose, a large database was built on the basis of the tests of model concrete elements. The numerical analyses were performed using this data and ANNs with various learning algorithms. Based on these analyses, it was shown that the ANN with the Broyden-Fletcher-Goldfarb-Shanno learning algorithm, with thirty-one input parameters and twenty hidden neurons, is the most useful for identifying the interlayer pull-off adhesion in repaired concrete elements. The reliability of the presented application of ANNs was confirmed on the basis of carried out validation, using a part of the database not used in the learning and testing. The application's reliability was also confirmed on the basis of experimental verification carried out using the results of tests performed on an additional model element made exclusively for this purpose. This is an important and original issue presented in the article. Another novelty presented in the article is the application of ANNs for a much more difficult case, which is the identification of the pull-off adhesion/b value of the repair overlay of variable thickness from the repaired element and in a very wide range of identified pull-off adhesion f_b within the range of 0.5-3.60 MPa. Moreover, the unique value of the article is the use for the first time of spatial and function related parameters to describe the concrete surface morphology of a repaired element. The investigation presented in the article has also confirmed the high usefulness of these parameters for identifying the value of pull-off adhesion f_b.
机译:本文介绍了人工神经网络(ANN)在无损识别剥离附着力f_b,可变厚度的修复覆盖层与混凝土表面修复元素中的基底之间的值方面的应用。为此,在模型具体元素的测试的基础上建立了一个大型数据库。使用该数据和具有各种学习算法的人工神经网络进行了数值分析。基于这些分析,结果表明,具有Broyden-Fletcher-Goldfarb-Shanno学习算法的神经网络,具有31个输入参数和20个隐藏的神经元,对于识别修复后的混凝土元件中的层间剥离粘附力最为有用。 。在进行的验证的基础上,使用学习和测试中未使用的部分数据库,确认了所提出的人工神经网络应用程序的可靠性。该应用程序的可靠性也基于使用专门为此目的制造的附加模型元素进行的测试结果进行的实验验证而得到确认。这是本文中提出的重要而原始的问题。本文中提出的另一个新奇之处是ANN在更困难的情况下的应用,即从修复后的元件中识别出厚度可变的修复覆盖层的剥离附着力/ b值,并且在很大范围内剥离粘合力f_b在0.5-3.60MPa的范围内。此外,该文章的独特价值在于首次使用了与空间和功能相关的参数来描述修复元件的混凝土表面形态。该文章中提出的研究也证实了这些参数对于识别剥离粘合力f_b的价值非常有用。

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