A data-driven approach for investigating shear strength of slender steel fiber reinforcedconcrete beams

Trần Văn Quân, N. H. Giang, N. N. Tan
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引用次数: 1

Abstract

Using a data-driven approach to study and predict the shear strength of slender steel fiber reinforced concretebeams has great applicability for the design and construction process. Based on the data-driven approach, anArtificial Neural Network (ANN) model with some hyperparameters optimized by Particle Swarm Optimization (PSO) algorithm is successfully built. The hidden two-layer ANN model with the number of neurons (5; 6) predicted shear strength with higher accuracy than the models proposed previously in the literature, withR2 = 0.9727 and RMSE = 31.9822 kN for the control dataset. By interpreting the results of the ANN model by the values of SHAP, including the Global SHAP value and SHAP independence plot, the order of influence of the variables on the shear strength value and the predictability of the ANN model can be arranged according to effective depth of section > beam width > longitudinal reinforcement ratio > steel fiber content > concretecompressive strength > shear span/effective depth ratio > fiber tensile strength > aggregate size. Fiber tensilestrength and aggregate size almost do not affect the shear strength value. An increase in the shear span-to-effective depth ratio reduces shear strength, which can be increased by increasing the value of effective depth of section, beam width, longitudinal reinforcement ratio, steel fiber content, and concrete compressive strength.The results of this paper are meaningful in the initial assessment of the shear strength of SSFRC, which helps to speed up the design process and reduce the cost of designing and testing SSFRC beams.
研究细长钢纤维混凝土梁抗剪强度的数据驱动方法
采用数据驱动的方法研究和预测细长钢纤维混凝土梁的抗剪强度,对设计和施工过程具有很强的适用性。基于数据驱动的方法,成功地建立了一个由粒子群优化算法优化的超参数人工神经网络模型。隐式两层神经网络模型,神经元数为(5;6)预测抗剪强度的精度高于文献中提出的模型,控制数据集的thr2 = 0.9727, RMSE = 31.9822 kN。通过用SHAP值(包括全局SHAP值和SHAP独立图)对人工神经网络模型的结果进行解释,各变量对抗剪强度值的影响顺序为有效截面深度>梁宽>纵向配筋率>钢纤维含量>混凝土抗压强度>抗剪跨度/有效深度比>纤维抗拉强度>骨料粒径。纤维抗拉强度和骨料粒度对抗剪强度几乎没有影响。抗剪跨度与有效深度比增大,抗剪强度减小,可通过增大截面有效深度、梁宽、纵向配筋率、钢纤维掺量和混凝土抗压强度来提高抗剪强度。本文的研究结果对SSFRC抗剪强度的初步评估具有重要意义,有助于加快SSFRC梁的设计进程,降低SSFRC梁的设计和试验成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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