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PRUDIL, M.
Original Title
Application of Machine Learning for Prediction of Mechanical Properties of Mortars and Concretes
Type
conference paper
Language
English
Original Abstract
This paper deals with the application of machine learning (ML) in the field of concrete technology. Two databases of test mortars and concretes were created from selected academic theses, which include mechanical properties in relation to their composition. These databases were used to develop two ML models that predict the mechanical properties of mortars and concretes depending on their composition. The mortar test database contains a total of 242 mechanical property records and the concrete test database contains 111 records. The materials in the database are CEM I, CEM II and CEM III cements combined with additives such as ground granulated blast furnace slag, high temperature fly ash and micro-ground limestone.
Keywords
Concrete technology, machine learning, mechanical properties, compressive strength, flexural strength
Authors
Released
7. 5. 2024
Publisher
ECON publishing s.r.o.
Location
Brno
ISBN
978-80-86433-83-7
Book
Juniorstav 2024: Proceedings 26th International Scientific Conference Of Civil Engineering
3029-5904
Periodical
Juniorstav 2024
State
Czech Republic
Pages count
8
URL
https://dspace.vut.cz/server/api/core/bitstreams/309c6a7b-3f57-49a0-9112-e09d7699f002/content
BibTex
@inproceedings{BUT193490, author="Matěj {Prudil}", title="Application of Machine Learning for Prediction of Mechanical Properties of Mortars and Concretes", booktitle="Juniorstav 2024: Proceedings 26th International Scientific Conference Of Civil Engineering", year="2024", journal="Juniorstav 2024", pages="8", publisher="ECON publishing s.r.o.", address="Brno", doi="10.13164/juniorstav.2024.24085", isbn="978-80-86433-83-7", issn="3029-5904", url="https://dspace.vut.cz/server/api/core/bitstreams/309c6a7b-3f57-49a0-9112-e09d7699f002/content" }