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Data-driven model for ternary-blend concrete compressive strength prediction using machine learning approach

机译:使用机器学习方法的三元混凝土压缩强度预测数据驱动模型

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摘要

Ternary-blend concrete is a complex composite material, and the nonlinearity in its compressive strength behavior is unquestionable. Entirely many models have been developed to accurately predict the ternary-blend concrete compressive strength, such as ANN, SVM, random forest, decision tree, to mention but a few. This study underscores the better predictive performance and successful application of the least square support vector machine (LSSVM), a machine learning model for predicting the compressive strength of ternary-blend concrete. Coupled simulated annealing (CSA) was applied to the LSSVM model as an optimization algorithm. In addition, the genetic programming (GP) model was used as a benchmark model to compare the performance of the LSSVMCSA model. The predictive performance of the LSSVM-CSA was compared with that of some of the proposed models in well-known studies where the same datasets were used. The model proposed in this study outperformed other studies, yielding an R2 value of 0.954.
机译:三元共混混凝土是复合材料的复合材料,其抗压强度行为中的非线性是毫无疑问的。完全发展了许多模型,以准确预测三元共混混凝土抗压强度,如ANN,SVM,随机林,决策树,提及几个。本研究强调了更好的预测性能和成功应用最小二乘支持向量机(LSSVM),一种用于预测三元共混混凝土的抗压强度的机器学习模型。耦合模拟退火(CSA)被应用于LSSVM模型作为优化算法。此外,遗传编程(GP)模型用作基准模型,以比较LSSVMCSA模型的性能。将LSSVM-CSA的预测性能与一些所提出的模型的预测性能进行了比较,其中使用了相同数据集的众所周知的研究。本研究提出的模型表现出其他研究,产生0.954的R2值。

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