Study the Efficiency of the XGBoost Algorithm for Squat RC Wall Shear Strength Prediction and Parametric Analysis

Badie H. Sulaiman, Amer M. Ibrahim, Hadeel J. Imran
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Abstract

Squat-reinforced concrete (RC) shear walls with an aspect ratio of less than two are considered effective structural members, where shear is the dominant failure mechanism. Squat shear walls are widely used in nuclear power plants and building construction and feature optimal cost and outstanding performance, due to their lateral strength and high rigidity to resist lateral loads. However, since the accurate evaluation of the shear strength of squat shear walls must meet the design specifications, its calculation may be very complex, challenging, and inaccurate using experimental and theoretical equations due to many influential and overlapping design factors, so it takes more time and higher cost to determine it. This study uses machine learning (ML) methods to build a shear strength prediction efficient model for squat RC walls to address these issues. First, a huge dataset of 1424 RC squat wall test specimens gathered from the literature is utilized for developing an ML model, by employing XGBoost, to predict the shear strength. Results verified that the XGBoost model had the best accuracy and least error while assessing the squat walls' strength at shear. Moreover, an XGBoost optimum algorithm fared better than the empirical models based on mechanics, with a 99.2% accuracy. Finally, to prove that the model can identify the most important variables that significantly affect the shear strength, parameter and sensitivity analyses were performed and the results showed that the wall length is the factor that contributes most to the ultimate shear strength of the squat shear wall as a percentage (7.62%), followed by the yield strength. For the web as a ratio. (6.88%), concrete strength (6.75%), reinforcement ratio information (6.56%), and geometric properties (6.01%), while the axial load represents the smallest contribution, reaching (4.16%).
研究 XGBoost 算法在蹲式 RC 墙剪力强度预测和参数分析中的效率
长宽比小于 2 的斜面钢筋混凝土(RC)剪力墙被认为是有效的结构构件,其中剪力是主要的破坏机制。由于其抗侧向荷载的横向强度和高刚度,剪力墙被广泛应用于核电站和建筑施工中,具有成本最优、性能卓越的特点。然而,由于准确评估蹲剪力墙的抗剪强度必须满足设计规范的要求,其计算可能非常复杂、具有挑战性,并且由于影响和重叠的设计因素较多,使用实验和理论方程计算可能不准确,因此需要花费更多的时间和更高的成本来确定其抗剪强度。针对这些问题,本研究采用机器学习(ML)方法建立了一个有效的蹲式 RC 墙剪切强度预测模型。首先,利用从文献中收集的 1424 个 RC 蹲墙测试样本的庞大数据集,通过 XGBoost 建立一个 ML 模型来预测剪切强度。结果证实,XGBoost 模型在评估蹲墙的抗剪强度时具有最佳的准确性和最小的误差。此外,XGBoost 最佳算法的准确率高达 99.2%,优于基于力学的经验模型。最后,为了证明该模型能够找出对剪切强度有显著影响的最重要变量,我们进行了参数和敏感性分析,结果表明,墙体长度是对蹲式剪力墙极限剪切强度影响最大的因素(7.62%),其次是屈服强度。对于腹板的比率(6.88%)、混凝土强度(6.75%)、配筋率信息(6.56%)和几何特性(6.01%),而轴向荷载的影响最小,仅为(4.16%)。
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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