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A Novel Hybrid Model Based on a Feedforward Neural Network and One Step Secant Algorithm for Prediction of Load-Bearing Capacity of Rectangular Concrete-Filled Steel Tube Columns

机译:一种基于前馈神经网络的新型混合模型和一种用于预测矩形混凝土钢管柱承载能力的一步算法

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摘要

In this study, a novel hybrid surrogate machine learning model based on a feedforward neural network (FNN) and one step secant algorithm (OSS) was developed to predict the load-bearing capacity of concrete-filled steel tube columns (CFST), whereas the OSS was used to optimize the weights and bias of the FNN for developing a hybrid model (FNN-OSS). For achieving this goal, an experimental database containing 422 instances was firstly gathered from the literature and used to develop the FNN-OSS algorithm. The input variables in the database contained the geometrical characteristics of CFST columns, and the mechanical properties of two CFST constituent materials, i.e., steel and concrete. Thereafter, the selection of the appropriate parameters of FNN-OSS was performed and evaluated by common statistical measurements, for instance, the coefficient of determination ( ), root mean square error ( ), and mean absolute error ( ). In the next step, the prediction capability of the best FNN-OSS structure was evaluated in both global and local analyses, showing an excellent agreement between actual and predicted values of the load-bearing capacity. Finally, an in-depth investigation of the performance and limitations of FNN-OSS was conducted from a structural engineering point of view. The results confirmed the effectiveness of the FNN-OSS as a robust algorithm for the prediction of the CFST load-bearing capacity.
机译:在本研究中,开发了一种基于前馈神经网络(FNN)和一步算法(OSS)的新型混合替代机器学习模型,以预测混凝土钢管柱(CFST)的承载能力,而OSS用于优化用于开发混合模型(FNN-OSS)的FNN的权重和偏置。为了实现这一目标,首先将包含422个实例的实验数据库从文献中收集并用于开发FNN-OSS算法。数据库中的输入变量包含CFST列的几何特性,以及两个CFST构成材料的机械性能,即钢和混凝土。此后,通过常见的统计测量执行和评估FNN-OSS的适当参数的选择,例如,确定系数(),根均线误差()和平均误差()。在下一步中,在全局和局部分析中评估了最佳FNN-OSS结构的预测能力,显示了承载能力的实际和预测值之间的优异协议。最后,从结构工程的角度进行了对FNN-OSS性能和局限性的深入调查。结果证实了FNN-OSS作为预测CFST承载能力的强大算法的有效性。

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