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Predicting the indirect tensile strength of self-compacting concrete using artificial neural networks

机译:使用人工神经网络预测自密实混凝土的间接拉伸强度

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摘要

This paper concentrates on the results of experimental work on tensile strength of self-compacting concrete (SCC) caused by flexure, which is called rupture modulus. The work focused on concrete mixes having water/binder ratios of 0.35 and 0.45, which contained constant total binder contents of 500 kg/m~3 and 400 kg/m~3, respectively. The concrete mixes had four different dosages of a superplasticizer based on polycarboxylic with and without silica fume. The percentage of silica fume that replaced cement in this research was 10%. Based upon the experimental results, the existing equations for anticipating the rupture modulus of SCC according to its compressive strength were not exact enough. Therefore, it is decided to use artificial neural networks (ANN) for anticipating the rupture modulus of SCC from its compressive strength and workability. The conclusion was that the multi layer perceptron (MLP) networks could predict the tensile strength in all conditions, but radial basis (RB) networks were not exact enough in some circumstances. On the other hand, RB networks were more users friendly and they converged to the final networks quicker.
机译:本文集中于由弯曲引起的自密实混凝土(SCC)的抗张强度的实验工作结果,这称为断裂模量。这项工作的重点是水/粘合剂比为0.35和0.45的混凝土混合料,其中总粘合剂含量恒定为500 kg / m〜3和400 kg / m〜3。在有和没有硅粉的情况下,混凝土混合物具有四种不同剂量的基于聚羧酸的高效减水剂。在这项研究中,硅粉替代水泥的比例为10%。根据实验结果,根据SCC的抗压强度预测SCC断裂模量的现有方程式不够精确。因此,决定使用人工神经网络(ANN)从其抗压强度和可加工性预测SCC的断裂模量。结论是,多层感知器(MLP)网络可以预测所有条件下的拉伸强度,但是径向基(RB)网络在某些情况下不够精确。另一方面,RB网络对用户更友好,它们可以更快地融合到最终网络。

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