Modelling compressive strength of concrete incorporating supplementary cementitious materials using machine learning technologies

Yang Yu, Ailar Hajimohammadi, Ali Nezhad, David Hocking, Farzad Moghaddam, Stephen Foster

Research output: Chapter in Book / Conference PaperChapterpeer-review

Abstract

This research utilised machine learning (ML) technologies to predict compressive strength of concrete that contains supplementary cementitious materials. A comprehensive database for concrete compressive strength was established, encompassing ten input parameters, including cement, slag, unique additive, fly ash, water-to-binder ratio, coarse aggregate with maximum diameter of 20 mm, coarse aggregate with maximum diameter of 10 mm, coarse sand, fine sand and superplasticiser, and one output parameter of compressive strength. Using this database, strength prediction models were developed based on four state-of-the-art ML methods, namely, artificial neural networks, support vector machines, Gaussian process regression (GPR) and ensemble decision tree. To improve the generalisation performance of developed ML models, Bayesian optimisation was employed to adjust the model hyperparameters during the training procedure. The performance of these models is evaluated and compared using several metrics The results show that the GRP model has the best performance and outperforms other models in terms of compressive strength prediction.
Original languageEnglish
Title of host publicationProceedings of the 26th Australasian Conference on the Mechanics of Structures and Materials: ACMSM26, 3–6 December 2023, Auckland, New Zealand
EditorsNawawi Chouw, Chunwei Zhang
Place of PublicationSingapore
PublisherSpringer
Pages25-33
Number of pages9
ISBN (Electronic)9789819733972
ISBN (Print)9789819733965
DOIs
Publication statusPublished - 2024
Externally publishedYes
EventAustralasian Conference on the Mechanics of Structures and Materials - Auckland, New Zealand
Duration: 3 Dec 20236 Dec 2023
Conference number: 26th

Publication series

NameLecture Notes in Civil Engineering
Volume513
ISSN (Print)2366-2557
ISSN (Electronic)2366-2565

Conference

ConferenceAustralasian Conference on the Mechanics of Structures and Materials
Abbreviated titleACMSM
Country/TerritoryNew Zealand
CityAuckland
Period3/12/236/12/23

Keywords

  • Compressive strength
  • Hyperparameter optimisation
  • Machine learning

Fingerprint

Dive into the research topics of 'Modelling compressive strength of concrete incorporating supplementary cementitious materials using machine learning technologies'. Together they form a unique fingerprint.

Cite this