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A Novel Feature Selection Approach Based on Tree Models for Evaluating the Punching Shear Capacity of Steel Fiber-Reinforced Concrete Flat Slabs

机译:一种基于树模型的新型特征选择方法用于评估钢纤维钢筋混凝土平板的冲压剪切容量

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摘要

When designing flat slabs made of steel fiber-reinforced concrete (SFRC), it is very important to predict their punching shear capacity accurately. The use of machine learning seems to be a great way to improve the accuracy of empirical equations currently used in this field. Accordingly, this study utilized tree predictive models (i.e., random forest (RF), random tree (RT), and classification and regression trees (CART)) as well as a novel feature selection (FS) technique to introduce a new model capable of estimating the punching shear capacity of the SFRC flat slabs. Furthermore, to automatically create the structure of the predictive models, the current study employed a sequential algorithm of the FS model. In order to perform the training stage for the proposed models, a dataset consisting of 140 samples with six influential components (i.e., the depth of the slab, the effective depth of the slab, the length of the column, the compressive strength of the concrete, the reinforcement ratio, and the fiber volume) were collected from the relevant literature. Afterward, the sequential FS models were trained and verified using the above-mentioned database. To evaluate the accuracy of the proposed models for both testing and training datasets, various statistical indices, including the coefficient of determination (R2) and root mean square error (RMSE), were utilized. The results obtained from the experiments indicated that the FS-RT model outperformed FS-RF and FS-CART models in terms of prediction accuracy. The range of R2 and RMSE values were obtained as 0.9476–0.9831 and 14.4965–24.9310, respectively; in this regard, the FS-RT hybrid technique demonstrated the best performance. It was concluded that the three hybrid techniques proposed in this paper, i.e., FS-RT, FS-RF, and FS-CART, could be applied to predicting SFRC flat slabs.
机译:在设计由钢纤维混凝土(SFRC)制成的平板时,准确预测其冲压剪切容量非常重要。机器学习的使用似乎是提高目前在该领域目前使用的经验方程式的准确性的好方法。因此,本研究利用树预测模型(即随机林(RF),随机树(RT)和分类和回归树(推车))以及引入一种新型模型的新颖特征选择(FS)技术估计SFRC平板的冲压剪切容量。此外,为了自动创建预测模型的结构,目前的研究采用了FS模型的连续算法。为了对所提出的模型进行训练阶段,数据集由140个样本组成,具有六个有影响力的组件(即板坯的深度,板坯的有效深度,柱的长度,混凝土的抗压强度从相关文献中收集,加强率和纤维体积)。之后,使用上述数据库训练并验证顺序FS模型。为了评估所提出的测试和训练数据集的模型的准确性,利用了各种统计指标,包括确定系数(R2)和均方根误差(RMSE)。从实验中获得的结果表明,在预测精度方面,FS-RT模型表明FS-RF和FS购物车模型。 R2和RMSE值的范围分别获得为0.9476-0.9831和14.4965-24.9310;在这方面,FS-RT混合技术证明了最佳性能。得出结论,本文提出的三种混合技术,即FS-RT,FS-RF和FS-Cart,可以应用于预测SFRC平板。

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