Khan Majid, Ali Mujahid, Najeh Taoufik, Gamil Yaser
Department of Civil Engineering, COMSATS University Islamabad, Abbottabad Campus, Abbottabad, 22060, Pakistan.
Department of Transport Systems, Traffic Engineering and Logistics, Faculty of Transport and Aviation Engineering, Silesian University of Technology, Krasińskiego 8 Street, 40-019, Katowice, Poland.
Sci Rep. 2024 Mar 13;14(1):6105. doi: 10.1038/s41598-024-56088-0.
Bentonite plastic concrete (BPC) demonstrated promising potential for remedial cut-off wall construction to mitigate dam seepage, as it fulfills essential criteria for strength, stiffness, and permeability. High workability and consistency are essential attributes for BPC because it is poured into trenches using a tremie pipe, emphasizing the importance of accurately predicting the slump of BPC. In addition, prediction models offer valuable tools to estimate various strength parameters, enabling adjustments to BPC mixing designs to optimize project construction, leading to cost and time savings. Therefore, this study explores the multi-expression programming (MEP) technique to predict the key characteristics of BPC, such as slump, compressive strength (fc), and elastic modulus (Ec). In the present study, 158, 169, and 111 data points were collected from the experimental studies for the slump, fc, and Ec, respectively. The dataset was divided into three sets: 70% for training, 15% for testing, and another 15% for model validation. The MEP models exhibited excellent accuracy with a correlation coefficient (R) of 0.9999 for slump, 0.9831 for fc, and 0.9300 for Ec. Furthermore, the comparative analysis between MEP models and conventional linear and non-linear regression models revealed remarkable precision in the predictions of the proposed MEP models, surpassing the accuracy of traditional regression methods. SHapley Additive exPlanation analysis indicated that water, cement, and bentonite exert significant influence on slump, with water having the greatest impact on compressive strength, while curing time and cement exhibit a higher influence on elastic modulus. In summary, the application of machine learning algorithms offers the capability to deliver prompt and precise early estimates of BPC properties, thus optimizing the efficiency of construction and design processes.
膨润土塑性混凝土(BPC)在防渗墙施工中展现出了减轻大坝渗漏的巨大潜力,因为它满足强度、刚度和渗透性等关键指标。高工作性和稠度是BPC的重要属性,因为它是通过导管浇筑到槽孔中的,这凸显了准确预测BPC坍落度的重要性。此外,预测模型为估算各种强度参数提供了有价值的工具,能够调整BPC配合比设计以优化工程建设,从而节省成本和时间。因此,本研究探索了多表达式编程(MEP)技术来预测BPC的关键特性,如坍落度、抗压强度(fc)和弹性模量(Ec)。在本研究中,分别从坍落度、fc和Ec的试验研究中收集了158、169和111个数据点。数据集分为三组:70%用于训练,15%用于测试,另外15%用于模型验证。MEP模型表现出了出色的准确性,坍落度的相关系数(R)为0.9999,fc为0.9831,Ec为0.9300。此外,MEP模型与传统线性和非线性回归模型的对比分析表明,所提出的MEP模型预测精度显著,超过了传统回归方法的准确性。SHapley加性解释分析表明,水、水泥和膨润土对坍落度有显著影响,水对抗压强度影响最大,而养护时间和水泥对弹性模量影响更大。总之,机器学习算法的应用能够快速准确地对BPC性能进行早期估计,从而优化施工和设计过程的效率。