抗压强度
极限抗拉强度
材料科学
磨细高炉矿渣
粉煤灰
抗弯强度
复合材料
作者
Beibei Sun,Luchuan Ding,Guang Ye,Geert De Schutter
标识
DOI:10.1016/j.conbuildmat.2023.133933
摘要
In this paper, 871 data were collected from literature and trained by the 4 representative machine learning methods, in order to build a robust compressive strength predictive model for slag and fly ash based alkali activated concretes. The optimum models of each machine learning method were verified by 4 validation metrics and further compared with an empirical formula and experimental results. Besides, a literature study was carried out to investigate the connection between compressive strength and other mechanical characteristics. As a result, the gradient boosting regression trees model and several predictive formulas were eventually proposed for the prediction of the mechanical behavior including compressive strength, elastic modulus, splitting tensile strength, flexural strength, and Poisson's ratio of BFS/FA-AACs. The importance index of each parameter on the strength of BFS/FA-AACs was elaborated as well.
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