Prediction and Evaluation of Hardened Concrete Strength
Based on Machine Learning and Mixture Composition
Author(s)
Xu, Yidong
Mao, Jianghong
Zhuge, Weijie
Yu, Xiaoniu
Wu, Ping
Language
EnglishAbstract
This open access book monitors the development of the temperature field within concrete structures and, based on the Arrhenius equation, constructs F-P maturity equations applicable to different temperature ranges. It investigates the impact of hydration rate on the strength prediction method of the maturity equation. Furthermore, the book employs artificial neural network theory to improve the accuracy of early concrete strength predictions, optimizing the neural network model to develop a more precise and widely applicable prediction model. An intelligent program is developed using MATLAB, facilitating rapid strength prediction and assessment on construction sites using measured parameters.
Keywords
Open Access; F-P maturity model; Particle Swarm Optimization; Ant Colony Optimization; Artificial Neural Network; Intelligent Prediction ProgramDOI
10.1007/978-981-96-8237-9ISBN
9789819682379, 9789819682379, 9789819682362Publisher
Springer NaturePublisher website
https://www.springernature.com/gp/products/booksPublication date and place
Singapore, 2026Series
Engineering; Engineering (R0),Classification
Civil engineering, surveying and building
Materials science


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