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Estimation of compression strength of polypropylene fibre reinforced concrete using artificial neural networks

机译:基于人工神经网络的聚丙烯纤维混凝土抗压强度估算。

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In this study, Artificial Neural Networks (ANN) analysis is used to predict the compression strength of polypropylene fibre mixed concrete. Polypropylene fibre admixture increases the compression strength of concrete to a certain extent according to mix proportion. This proportion and homogenous distribution are important parameters on compression strength. Determination of compression strength of fibre mixed concrete is significant due to the veridicality of capacity calculations. Plenty of experiments shall be completed to state the compression strength of concrete which have different fibre admixture. In each case, it is known that performing the laboratory experiments is costly and time-consuming. Therefore, ANN analysis is used to predict the 7 and 28 days of compression strength values. For this purpose, 156 test specimens are produced that have 26 different types of fibre admixture. While the results of 120 specimens are used for training process, 36 of them are separated for test process in ANN analysis to determine the validity of experimental results. Finally, it is seen that ANN analysis predicts the compression strength of concrete successfully.
机译:在这项研究中,人工神经网络(ANN)分析用于预测聚丙烯纤维混合混凝土的抗压强度。聚丙烯纤维混合物根据配合比在一定程度上提高了混凝土的抗压强度。该比例和均匀分布是抗压强度的重要参数。由于容量计算的准确性,确定纤维混合混凝土的抗压强度非常重要。必须完成大量实验,以说明具有不同纤维掺合料的混凝土的抗压强度。在每种情况下,众所周知,进行实验室实验既昂贵又费时。因此,使用ANN分析来预测7天和28天的抗压强度值。为此,生产了156个具有26种不同类型纤维混合物的试样。虽然将120个样本的结果用于训练过程,但其中的36个样本被分离出来用于ANN分析中的测试过程,以确定实验结果的有效性。最后,可以看出,人工神经网络分析成功地预测了混凝土的抗压强度。

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