Evaluating the efficiency of artificial neural networks and tree-based techniques for forecasting the flexural strength of concrete using waste foundry sand

Suhaib Rasool Wani, Manju Suthar
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Abstract

The numerous investigations of soft computing algorithms have been done to forecast the flexural strength (FS) of concrete using waste foundry sand (WFS). This research aims to study the application of soft-computing techniques, including random forest (RF), Reduced error pruning tree (REP tree), artificial neural network (ANN), Random tree (RT) and M5P-based model, in forecasting the FS of concrete. For this aim, a dataset of 158 experimental results with a wide range of FS values, ranging from FS 2.21 MPa to 6.98 MPa, was collected from existing literature. The input parameters for the soft computing models included the curing period (CP), slump (SL), fine aggregates (FA), coarse aggregates (CA), water/cement ratio (W/C), cement (C), waste foundry sand (WFS) content, sand (S), WFS blended with other substances (WFS/other), and water (W), with the FS of concrete as the output parameter. Various performance indices were employed to assess the reliability and accuracy of each model, including mean absolute error (MAE), relative root mean square error (RRMSE), coefficient of correlation (R), Nash–Sutcliffe model efficiency coefficient (NSE), root-mean-squared error (RMSE), Wilmott index (WI), and relative absolute error (RAE). Results from the RF model showed high accuracy with R values of 0.9936 and 0.9789, MAE values of 0.1186 and 0.2348, WI values of 0.996 and 0.987, RMSE values of 0.1538 and 0.2931, RAE values of 11.33% and 20.54%, NSE values of 0.986 and 0.953, and RRMSE values of 12.04% and 21.59% during the training as well as testing stages, respectively. The REP Tree model also displayed competitive predictive capability compared to ANN, RT, and M5P models. A sensitivity analysis revealed that the curing period (CP) was the most influential parameter in forecasting FS using the RF-based model. The research emphasises the efficiency of soft computing methods, specifically the random forest, in perfectly assessing the FS of concrete through the utilisation of waste foundry sand. Moreover, it provides researchers with a faster and more economical method to assess the impact of waste foundry sand and additional variables on FS estimation, hence avoiding the necessity for laborious and expensive experimental investigations.

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评估人工神经网络和基于树的技术预测使用废铸造砂的混凝土抗折强度的效率
为预测使用废铸造砂(WFS)的混凝土的抗折强度(FS),对软计算算法进行了大量研究。本研究旨在研究软计算技术在预测混凝土抗折强度中的应用,包括随机森林(RF)、减误剪枝树(REP 树)、人工神经网络(ANN)、随机树(RT)和基于 M5P 的模型。为此,从现有文献中收集了 158 个实验结果数据集,这些数据集的 FS 值范围很广,从 FS 2.21 MPa 到 6.98 MPa 不等。软计算模型的输入参数包括养护期 (CP)、坍落度 (SL)、细集料 (FA)、粗集料 (CA)、水灰比 (W/C)、水泥 (C)、废铸造砂 (WFS)含量、砂 (S)、WFS 与其他物质的混合 (WFS/other) 和水 (W),输出参数为混凝土的 FS。采用了多种性能指标来评估各模型的可靠性和准确性,包括平均绝对误差(MAE)、相对均方根误差(RRMSE)、相关系数(R)、纳什-苏特克利夫模型效率系数(NSE)、均方根误差(RMSE)、威尔莫特指数(WI)和相对绝对误差(RAE)。RF 模型的结果显示了较高的准确度,在训练和测试阶段的 R 值分别为 0.9936 和 0.9789,MAE 值分别为 0.1186 和 0.2348,WI 值分别为 0.996 和 0.987,RMSE 值分别为 0.1538 和 0.2931,RAE 值分别为 11.33% 和 20.54%,NSE 值分别为 0.986 和 0.953,RRMSE 值分别为 12.04% 和 21.59%。与 ANN、RT 和 M5P 模型相比,REP 树模型也显示出了极具竞争力的预测能力。灵敏度分析表明,固化期(CP)是使用基于 RF 的模型预测 FS 时影响最大的参数。这项研究强调了软计算方法(特别是随机森林)在完美评估利用废铸造砂的混凝土可行性研究方面的效率。此外,它还为研究人员提供了一种更快、更经济的方法,用于评估废铸造砂和其他变量对 FS 估算的影响,从而避免了费力且昂贵的实验研究。
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来源期刊
Asian Journal of Civil Engineering
Asian Journal of Civil Engineering Engineering-Civil and Structural Engineering
CiteScore
2.70
自引率
0.00%
发文量
121
期刊介绍: The Asian Journal of Civil Engineering (Building and Housing) welcomes articles and research contributions on topics such as:- Structural analysis and design - Earthquake and structural engineering - New building materials and concrete technology - Sustainable building and energy conservation - Housing and planning - Construction management - Optimal design of structuresPlease note that the journal will not accept papers in the area of hydraulic or geotechnical engineering, traffic/transportation or road making engineering, and on materials relevant to non-structural buildings, e.g. materials for road making and asphalt.  Although the journal will publish authoritative papers on theoretical and experimental research works and advanced applications, it may also feature, when appropriate:  a) tutorial survey type papers reviewing some fields of civil engineering; b) short communications and research notes; c) book reviews and conference announcements.
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