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首页> 外文期刊>Steel & Composite Structures: An International Journal >Predicting the axial compressive capacity of circular concrete filled steel tube columns using an artificial neural network
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Predicting the axial compressive capacity of circular concrete filled steel tube columns using an artificial neural network

机译:使用人工神经网络预测圆形混凝土填充钢管柱的轴向压缩容量

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摘要

Circular concrete filled steel tube (CFST) columns have an advantage over all other sections when they are used in compression members. This paper proposes a new approach for deriving a new empirical equation to predict the axial compressive capacity of circular CFST columns using the Artificial Neural Network (ANN). The developed ANN model uses 5 input parameters that include the diameter of circular steel tube, the length of the column, the thickness of steel tube, the steel yield strength and the compressive strength of concrete. The only output parameter is the axial compressive capacity. Training and testing the developed ANN model was carried out using 219 available sets of data collected from the experimental results in the literature. An empirical equation is then proposed as an important result of this study, which is practically used to predict the axial compressive capacity of a circular CFST column. To evaluate the performance of the developed ANN model and the proposed equation, the predicted results are compared with those of the empirical equations stated in the current design codes and other models. It is shown that the proposed equation can predict the axial compressive capacity of circular CFST columns more accurately than other methods. This is confirmed by the high accuracy of a large number of existing test results. Finally, the parametric study result is analyzed for the proposed ANN equation to consider the effect of the input parameters on axial compressive strength.
机译:当它们用于压缩构件时,圆形混凝土填充钢管(CFST)柱具有优于所有其他部分的优势。本文提出了一种推导新的经验方程来预测使用人工神经网络(ANN)来预测圆形CFST柱的轴向压缩容量的新方法。开发的ANN型号采用5个输入参数,包括圆形钢管直径,柱的长度,钢管厚度,钢屈服强度和混凝土的抗压强度。唯一的输出参数是轴向压缩容量。培训和测试开发的ANN模型采用了从文献中的实验结果中收集的219种可用的数据组进行。然后提出了经验方程作为本研究的重要结果,其实际上用于预测圆形CFST柱的轴向压缩容量。为了评估开发的ANN模型和所提出的方程的性能,将预测结果与当前设计代码和其他模型中所述的经验方程的性能进行比较。结果表明,所提出的等式可以比其他方法更精确地预测圆形CFST柱的轴向压缩容量。这通过大量现有测试结果的高精度确认。最后,分析了参数研究结果,以考虑输入参数对轴向抗压强度的影响。

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