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Machine learning in concrete science:applications,challenges,and best practices 被引量:1
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作者 zhanzhao li Jinyoung Yoon +4 位作者 Rui Zhang Farshad Rajabipour Wil V.Srubar III Ismaila Dabo Aleksandra Radlińska 《npj Computational Materials》 SCIE EI CSCD 2022年第1期1192-1208,共17页
Concrete,as the most widely used construction material,is inextricably connected with human development.Despite conceptual and methodological progress in concrete science,concrete formulation for target properties rem... Concrete,as the most widely used construction material,is inextricably connected with human development.Despite conceptual and methodological progress in concrete science,concrete formulation for target properties remains a challenging task due to the ever-increasing complexity of cementitious systems.With the ability to tackle complex tasks autonomously,machine learning(ML)has demonstrated its transformative potential in concrete research.Given the rapid adoption of ML for concrete mixture design,there is a need to understand methodological limitations and formulate best practices in this emerging computational field.Here,we review the areas in which ML has positively impacted concrete science,followed by a comprehensive discussion of the implementation,application,and interpretation of ML algorithms.We conclude by outlining future directions for the concrete community to fully exploit the capabilities of ML models. 展开更多
关键词 CONCRETE DIRECTIONS AUTONOMOUS
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