A Rigorous Examination of Twelve Cutting-Edge Machine-Learning Techniques for Predicting Time and Cost in Tunneling Projects

Arsalan Mahmoodzadeh, Hamid Reza Nejati, Laith R. Flaih, Hawkar Hashim Ibrahim, Farhan A. Alenizi, Yahya Alassaf

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

This study aimed to investigate and analyze the performance of twelve machine learning (ML) algorithms in estimating the construction time and cost of drill and blast tunnels. Thirteen tunnels located in different regions of Iran were selected, resulting in 900 data sets. Ten parameters were identified as influential factors affecting the construction time and cost of these tunnels. 80% of the data set was used for training, while the remaining 20% was reserved for testing. Additionally, 288 unseen data sets were utilized for evaluation purposes. All the algorithms demonstrated accurate performance on the test data sets, with R-squared values exceeding 0.93. However, only the Gaussian process regression algorithm achieved satisfactory results on the unseen data sets. Furthermore, a graphical user interface (GUI) was developed based on the trained ML models. This GUI allows real-time estimation of the time and cost of drill and blast tunnels and can be updated during construction.

Original languageEnglish
Article number04024176
JournalJournal of Construction Engineering and Management - ASCE
Volume150
Issue number12
DOIs
StatePublished - 1 Dec 2024

Keywords

  • Construction cost
  • Construction time
  • Drill and blast tunnels
  • Graphical user interface (GUI)
  • Machine learning (ML)

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