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首页> 外文期刊>International Journal of Physical Sciences >General regression neural network (GRNN) for the first crack analysis prediction of strengthened RC one-way slab by CFRP
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General regression neural network (GRNN) for the first crack analysis prediction of strengthened RC one-way slab by CFRP

机译:广义回归神经网络(GRNN)用于CFRP加固钢筋混凝土单板的首次裂缝分析预测

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In this study, six strengthened RC one-way slabs with different lengths and thicknesses of CFRP were tested and compared with a similar RC slab without CFRP. The dimensions of the slabs were1800 x 400 x 120 mm and the lengths of CFRP used were 700, 1100, and 1500 mm, with different thicknesses of 1.2 and 1.8 mm. The results of the experimental operation for the first crack were used to generate general regression neural networks (GRNNs). Concerning the limited data for training and testing, the different data were extracted seven times for use as training and testing data. In this case, the optimum run was evaluated and compared with the experimental results. The results indicate that the amount of MSE and RMSE was acceptable and the correlation coefficient was close to 1.
机译:在这项研究中,测试了六种不同长度和厚度的CFRP加固RC单向板,并将其与没有CFRP的类似RC板进行了比较。平板的尺寸为1800 x 400 x 120 mm,所用CFRP的长度为700、1100和1500 mm,厚度分别为1.2和1.8 mm。第一个裂纹的实验操作结果用于生成通用回归神经网络(GRNN)。关于用于训练和测试的有限数据,提取了七次不同的数据以用作训练和测试数据。在这种情况下,评估最佳运行并将其与实验结果进行比较。结果表明,MSE和RMSE的量是可以接受的,相关系数接近1。

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