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Analysis of the Possibility of Non-Destructive Identification of the Interlayer Bond of Variably Thick Concrete Layers using Artificial Neural Networks

机译:使用人工神经网络分析可变厚度混凝土层的层间粘结的非破坏性可能性

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This paper presents the results of research and analysis of the possibility of non-destructive identification of the interlayer bond of variably thick concrete layers. In previous research the authors showed that it is possible to nondestructively identify the values of the pull-off adhesion of the top layer to the base layer by means of artificial neural networks on the basis of the base layer surface roughness parameters evaluated on the floor surface using three-dimensional optical laser scanning and the parameters evaluated by the acoustic impact echo and impulse-response techniques. However, if one considers the fact that the acoustic parameters determined by the acoustic techniques strongly depend on top layer thickness, the above method of assessment cannot be universally applied to floors differing in their top layer thickness. Since the concrete element which occurs in building practice differs in their top layer thicknesses, the aim of the research, presented in this paper, is to develop a way of identifying pull-off adhesion values by means of artificial intelligence on the basis of parameters independent of top layer thickness. The results of the training and testing of the selected artificial neural networks are presented in this paper. At the end the analysis, the possibility of non-destructive identification of the interlayer bond of variably thick concrete layers has been be presented. Successively the number of parameters included in the database used for the training and testing of artificial neural networks has been be reduced, but leaving each time parameter of the top surface layer thickness.
机译:本文介绍了对可变厚度混凝土层的层间粘结进行非破坏性识别的可能性的研究和分析结果。在先前的研究中,作者表明,可以基于在地板表面上评估的基础层表面粗糙度参数,通过人工神经网络以无损方式确定顶层对基础层的剥离附着力值。使用三维光学激光扫描,并通过声冲击回波和冲激响应技术评估参数。但是,如果考虑到由声学技术确定的声学参数强烈取决于顶层厚度这一事实,则上述评估方法不能普遍应用于顶层厚度不同的地板。由于在建筑实践中出现的混凝土元素的顶层厚度不同,因此,本文的研究目的是开发一种在不依赖参数的基础上通过人工智能识别剥离附着力值的方法。顶层的厚度。本文介绍了所选人工神经网络的训练和测试结果。在分析的最后,提出了可变厚度混凝土层的层间粘结的非破坏性识别的可能性。依次减少了用于训练和测试人工神经网络的数据库中包含的参数数量,但每次都保留了顶层表面厚度的参数。

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