首页> 外文期刊>Journal of Materials Research and Technology >ANN, M5P-tree and nonlinear regression approaches with statistical evaluations to predict the compressive strength of cement-based mortar modified with fly ash
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ANN, M5P-tree and nonlinear regression approaches with statistical evaluations to predict the compressive strength of cement-based mortar modified with fly ash

机译:ANN,M5P树和非线性回归方法具有统计评估,以预测用粉煤灰改性水泥基砂浆的抗压强度

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This study aims to establish systematic multiscale models to predict the compressive strength of cement mortar containing a high volume of fly ash (FA) and to be used by the construction industry with no theoretical restrictions. For that purpose, a wide experimental data (a total of 450 tested cement mortar modified with FA) from different academic research studies have been statically analyzed and modeled. For that purpose, Linear and Nonlinear regression, M5P-tree, and Artificial Neural Network (ANN) technical approaches were used for the qualifications. In the modeling process, most relevant parameters affecting the strength of cement mortar, i.e. fly ash (class C and F) incorporation ratio (0?70% of cement's mass), water-to-binder ratio (0.235–1.2), and curing ages (1–365 days). According to the correlation coefficient (R), mean absolute error and the root mean a square error, the compressive strength of cement mortar can be well predicted in terms of w/b, fly ash, and curing time using various simulation techniques. The results of this study suggest that the Non-linear regression-based model (NLR) and ANN are performing better than other applied models using training and testing datasets. The sensitivity investigation concludes that the curing time is the most dominating parameter for the prediction of the compressive strength of cement mortar with this data set.
机译:本研究旨在建立系统的多尺度模型,以预测含有大量飞灰(FA)的水泥砂浆的压缩强度,并由建筑行业使用没有理论限制。为此目的,静态分析和建模了来自不同学术研究研究的广泛的实验数据(共有450个与FA修改的水泥砂浆)。为此目的,线性和非线性回归,M5p树和人工神经网络(ANN)的技术方法被用于资格。在建模过程中,大多数相关参数影响水泥砂浆强度,即飞灰(C级和F)的掺入比(0?70%的水泥质量),水 - 粘合剂比(0.235-1.2)和固化年龄(1-365天)。根据相关系数(R),平均绝对误差和根部意味着平方误差,使用各种仿真技术,可以在W / B,粉煤灰和固化时间方面进行很好地预测水泥砂浆的压缩强度。本研究结果表明,基于非线性回归的模型(NLR)和ANN的使用比使用训练和测试数据集更好地执行其他应用模型。灵敏度调查得出结论,固化时间是用该数据集预测水泥砂浆的压缩强度最大的主导参数。

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