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Multiple linear regression models for shear strength prediction and design of simply-supported deep beams subjected to symmetrical point loads

机译:多重线性回归模型用于抗剪强度预测和承受对称点荷载的简支深梁设计

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Because of nonlinear strain distributions caused either by abrupt changes in geometry or in loading in deep beam, the approach for conventional beams is not applicable. Consequently, strut-and-tie model (STM) has been applied as the most rational and simple method for strength prediction and design of reinforced concrete deep beams. A deep beam is idealized by the STM as a truss-like structure consisting of diagonal concrete struts and tension ties. There have been numerous works proposing the STMs for deep beams. However, uncertainty and complexity in shear strength computations of deep beams can be found in some STMs. Therefore, improvement of methods for predicting the shear strengths of deep beams are still needed. By means of a large experimental database of 406 deep beam test results covering a wide range of influencing parameters, several shapes and geometry of STM and six state-of-the-art formulation of the efficiency factors found in the design codes and literature, the new STMs for predicting the shear strength of simply supported reinforced concrete deep beams using multiple linear regression analysis is proposed in this paper. Furthermore, the regression diagnostics and the validation process are included in this study. Finally, two numerical examples are also provided for illustration.
机译:由于几何形状的突然变化或深梁的载荷引起的非线性应变分布,常规梁的方法不适用。因此,拉杆-拉杆模型(STM)已被用作钢筋混凝土深梁强度预测和设计的最合理,最简单的方法。 STM将深梁理想化为由对角混凝土支柱和拉力带组成的桁架状结构。提出了针对深光束的STM的众多著作。但是,在一些STM中可以发现深梁抗剪强度计算的不确定性和复杂性。因此,仍然需要改进用于预测深梁抗剪强度的方法。通过406个深梁测试结果的大型实验数据库,涵盖了广泛的影响参数,STM的几种形状和几何形状以及设计规范和文献中找到的六种最先进的效率系数公式,本文提出了使用多元线性回归分析预测钢筋混凝土深梁抗剪强度的新STM。此外,回归诊断和验证过程也包括在本研究中。最后,还提供了两个数值示例以进行说明。

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