4.7 Article

Optimization of high-performance concrete mix ratio design using machine learning

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.engappai.2023.106047

关键词

High-performance concrete; Durability; Mix ratio design; Random forest; NSGA-II

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A hybrid intelligent framework based on random forest (RF) and non-dominated sorting genetic algorithm version II (NSGA-II) is developed to predict the durability and optimize the mix ratio of high-durability concrete. The proposed RF-NSGA-II framework effectively predicts concrete durability and achieves a high standard of frost resistance and chloride ion permeability coefficient at a low cost. The developed RF model has excellent regression learning ability, with high goodness of fit and low error values. This framework can provide guidance for optimizing concrete mix design and similar projects.
High-durability concrete is required in extremely cold or ocean environments, making the design of concrete mixes highly important and complicated. In this study, a hybrid intelligent framework for multi-objective optimization based on random forest (RF) and the non-dominated sorting genetic algorithm version II (NSGA-II) is developed to efficiently predict concrete durability and optimize the concrete mix ratio. The relative dynamic elastic modulus of concrete after 300 freeze-thaw cycles and the chloride ion permeability coefficient at 28 days are defined as the standard measures of durability. The concrete mix ratio is taken as the influencing parameter, and orthogonal test data and engineering practice data are collected as the datasets. The proposed framework is applied to a realistic expressway project in a cold region of China. The results demonstrate that (1) a hybrid intelligent framework based on RF-NSGA-II can effectively predict concrete durability and optimize the mix ratio. (2) The developed RF model has an excellent regression learning ability, while the goodness of fit (R2) of concrete durability reaches 0.9503 and 0.9551, respectively, with root mean square error (RMSE) values of only 0.096 and 0.043, the mean absolute percentage error (MAPE) values of 2.54% and 2.17%. (3) After optimization, the concrete durability reaches a high standard, with a frost resistance of >95% and a chloride ion permeability coefficient of <3*10-8 cm2/s, at a unit volume cost of only 376.77 yuan. Hence, the proposed framework can be used to effectively optimize the concrete mix design and provide guidance for similar projects.

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