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Deep learning-based procedure for structural design of cold-formed steel channel sections with edge-stiffened and un-stiffened holes under axial compression

机译:基于深度学习的冷成型钢通道部分结构设计的过程,轴向压缩下的边缘加强和未加强孔

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This paper proposes a framework of deep belief network (DBN) for studying the structural performance of cold-formed steel (CFS) channel sections with edge-stiffened/un-stiffened web holes, under axial compression. A total of 50,000 data points for training the DBN are generated from elasto plastic finite element analysis, which incorporates both initial geometric imperfections and residual stresses. A comparison against 23 experimental results was conducted, and it was found that the DBN predictions were conservative by 3% for columns with un-stiffened web holes, and 8% for columns with edge-stiffened web holes. When compared with Backpropagation Neural Network (a typical shallow artificial neural network) and linear regression model based on PaddlePaddle, it was found that the proposed DBN outperformed better than both the methods, using the same big training data used in this paper. When the same comparison was made for Effective Width Method and Direct Strength Method, the results from them were conservative by 5% and 12% against the experimental results, respectively for columns with un-stiffened web holes. Hole effects on the structural performance of channel sections under axial compression were also investigated. Based on the DBN output data, design recommendations of axial capacity enhancement/reduction factors were given for columns (stub, intermediate and slender) with edge-stiffened/un-stiffened web holes. Based on DBN prediction data, a comprehensive reliability analysis was conducted, which shows the proposed equations can predict the enhanced and reduced axial capacity of CFS channel sections with edge-stiffened/un-stiffened web holes accurately.
机译:本文提出了深度信仰网络(DBN)的框架,用于研究冷成型钢(CFS)通道段的结构性能,在轴向压缩下。从Elasto塑料有限元分析中产生总共50,000个用于训练DBN的数据点,其包括初始几何缺陷和残余应力。对23例实验结果进行了比较,发现DBN预测对于具有未加强的腹板孔的柱的柱子是保守的3%,并且对于具有边缘加强的腹板孔的柱的8%。与基于PaddlePaddle的反向慢化神经网络(典型的浅人工神经网络)和线性回归模型相比,发现所提出的DBN比本文中使用的相同大训练数据更好地表现优于这两种方法。当对有效宽度法和直接强度法进行相同的比较时,对于具有未加强的腹板孔的柱,它们的结果分别抵抗实验结果的保守5%和12%。还研究了对轴压下沟道部分结构性能的孔效应。基于DBN输出数据,轴向容量增强/降低因子的设计建议是针对边缘加强/未加强的网孔的柱(短管,中间和细长)。基于DBN预测数据,进行了全面的可靠性分析,其示出了所提出的等式可以准确地预测CFS通道部分的增强和降低的CFS通道部分的轴向容量。

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