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首页> 外文期刊>Journal of Civil Engineering and Management >NON-DESTRUCTIVE EVALUATION OF THE PULL-OFF ADHESION OF CONCRETE FLOOR LAYERS USING RBF NEURAL NETWORK
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NON-DESTRUCTIVE EVALUATION OF THE PULL-OFF ADHESION OF CONCRETE FLOOR LAYERS USING RBF NEURAL NETWORK

机译:基于RBF神经网络的混凝土地板剥离粘结强度的无损评价。

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摘要

The interlayer bond is one of the primary qualities assessed during an inspection of floor concrete workmanship. The measure of this bond is the value of pull-off adhesion f_b determined in practice by the pull-off method. The drawback of this method is that the tested floor is damaged in each of the test points and then needs to be repaired. This drawback can be overcome by developing a way which will make it possible to test floors in any point without damaging them locally. In this paper it is proposed to evaluate the pull-off adhesion of the top layer to the base layer in concrete floors by means of the radial basis function (RBF) artificial neural network using the parameters evaluated by the non-destructive acoustic impulse response technique and the non-destructive optical laser triangulation method. Presented RBF neural network model is useful tool in the non-destructive evaluation of the pull-off adhesion of concrete floor layers without the need to damage the top layer fragment from the base.
机译:层间粘结是地板混凝土工艺检查中评估的主要质量之一。该结合的量度是实际上通过剥离方法确定的剥离粘附力f_b的值。这种方法的缺点是被测试的地板在每个测试点都被损坏,然后需要维修。通过开发一种可以在任何位置测试地板而不会局部损坏地板的方法,可以克服此缺点。本文提出使用径向基函数(RBF)人工神经网络,使用无损声脉冲响应技术评估的参数,评估混凝土地板中顶层对基础层的剥离粘附力。以及无损光学激光三角测量法。提出的RBF神经网络模型是无损评估混凝土地板层剥离粘着力的有用工具,而无需破坏底层的顶层碎片。

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