Inqiad Waleed Bin, Javed Muhammad Faisal, Onyelowe Kennedy, Siddique Muhammad Shahid, Asif Usama, Alkhattabi Loai, Aslam Fahid
Military College of Engineering (MCE), National University of Science and Technology (NUST), Islamabad, 44000, Pakistan.
Department of Civil Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi, Pakistan.
Sci Rep. 2024 Aug 5;14(1):18145. doi: 10.1038/s41598-024-69271-0.
Bentonite plastic concrete (BPC) is extensively used in the construction of water-tight structures like cut-off walls in dams, etc., because it offers high plasticity, improved workability, and homogeneity. Also, bentonite is added to concrete mixes for the adsorption of toxic metals. The modified design of BPC, as compared to normal concrete, requires a reliable tool to predict its strength. Thus, this study presents a novel attempt at the application of two innovative evolutionary techniques known as multi-expression programming (MEP) and gene expression programming (GEP) and a boosting-based algorithm known as AdaBoost to predict the 28-day compressive strength ( ) of BPC based on its mixture composition. The MEP and GEP algorithms expressed their outputs in the form of an empirical equation, while AdaBoost failed to do so. The algorithms were trained using a dataset of 246 points gathered from published literature having six important input factors for predicting. The developed models were subject to error evaluation, and the results revealed that all algorithms satisfied the suggested criteria and had a correlation coefficient (R) greater than 0.9 for both the training and testing phases. However, AdaBoost surpassed both MEP and GEP in terms of accuracy and demonstrated a lower testing RMSE of 1.66 compared to 2.02 for MEP and 2.38 for GEP. Similarly, the objective function value for AdaBoost was 0.10 compared to 0.176 for GEP and 0.16 for MEP, which indicated the overall good performance of AdaBoost compared to the two evolutionary techniques. Also, Shapley additive analysis was done on the AdaBoost model to gain further insights into the prediction process, which revealed that cement, coarse aggregate, and fine aggregate are the most important factors in predicting the strength of BPC. Moreover, an interactive graphical user interface (GUI) has been developed to be practically utilized in the civil engineering industry for prediction of BPC strength.
膨润土塑性混凝土(BPC)广泛应用于防渗结构的建设,如大坝的防渗墙等,因为它具有高塑性、良好的工作性和均匀性。此外,膨润土被添加到混凝土混合料中用于吸附有毒金属。与普通混凝土相比,BPC的改进设计需要一种可靠的工具来预测其强度。因此,本研究提出了一种新颖的尝试,应用两种创新的进化技术,即多表达式编程(MEP)和基因表达式编程(GEP),以及一种基于提升的算法AdaBoost,根据其混合料组成来预测BPC的28天抗压强度( )。MEP和GEP算法以经验方程的形式表达其输出,而AdaBoost则未能如此。这些算法使用从已发表文献中收集的246个数据点的数据集进行训练,该数据集具有六个用于预测的重要输入因素。对开发的模型进行了误差评估,结果表明所有算法均满足建议标准,并且在训练和测试阶段的相关系数(R)均大于0.9。然而,AdaBoost在准确性方面超过了MEP和GEP,其测试RMSE为1.66,低于MEP的2.02和GEP的2.38。同样,AdaBoost的目标函数值为0.10,而GEP为0.176,MEP为0.16,这表明与两种进化技术相比,AdaBoost的整体性能良好。此外,对AdaBoost模型进行了Shapley加法分析,以进一步深入了解预测过程,结果表明水泥、粗骨料和细骨料是预测BPC强度的最重要因素。此外,还开发了一个交互式图形用户界面(GUI),以便在土木工程行业中实际用于预测BPC强度。