多元自适应回归样条
火星探测计划
抗压强度
极限学习机
人工神经网络
计算机科学
软计算
硅粉
机器学习
人工智能
秩(图论)
多元统计
数据挖掘
回归分析
数学
贝叶斯多元线性回归
材料科学
组合数学
物理
复合材料
天文
作者
Manish Kumar,Rahul Biswas,Divesh Ranjan Kumar,Pijush Samui,Mosbeh R. Kaloop,Mohamed Eldessouki
标识
DOI:10.1016/j.cscm.2023.e02321
摘要
The complexity of concrete's composition makes it difficult to predict its compressive strength, which is a highly valuable and desired characteristic. Traditional methods for prediction are expensive and time-consuming, resulting in limited data availability. However, modern soft-computing models have emerged as a reliable solution for accurately forecasting concrete's compressive strength. The research proposes a novel Deep Neural Network (DNN), Multivariate Adaptive Regression Splines (MARS) and Extreme Learning Machine (ELM) based machine learning (ML) models for forecasting the compressive strength of concrete added with various proportions of fly ash and silica fume. For this purpose, a dataset of 144 trials, having 8 input parameters is taken from the literature. The performance of the models is confirmed using various statistical parameters. Rank Analysis reveals that DNN is the best-performing model (Rank =52, RTR2 =0.983 and RTs2 =0.954), closely followed by MARS (Rank =38, RTR2 =0.974 and RTs2 =0.956); while ELM lags behind the other two counterparts. The results are further confirmed using an error matrix, external validation and AIC criteria. The visual interpretation is provided using the Taylor diagram. MARS has the edge over the other two models in terms of providing a user-friendly solution.
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