Publication detail
Wide adoption of AI in Construction: A Case study on machine learning for delay prediction and schedule enhancement with external factors
VENKRBEC, V.
Original Title
Wide adoption of AI in Construction: A Case study on machine learning for delay prediction and schedule enhancement with external factors
Type
journal article - other
Language
English
Original Abstract
Construction industry frequently faces delays due to both internal and external factors, impacting project schedules and costs. This study explores the use of machine learning (ML) algorithms to predict delays and optimize construction schedules. By integrating various factors, including workforce availability, material delivery timelines, weather conditions, and geopolitical events, the algorithm estimates potential delays in construction projects. Data is extracted from Building Information Modeling (BIM) systems using Industry Foundation Classes (IFC), ensuring a comprehensive and up-to-date dataset. The model leverages regression techniques like XGBoost to train on historical data, enabling accurate predictions of project delays. The results show that machine learning can significantly improve delay prediction accuracy compared to traditional methods, offering a more proactive approach to project management. The integration of external factors such as economic instability and geopolitical tensions further enhances the model’s precision, making it a valuable tool for risk management in modern construction projects.
Keywords
Machine Learning; Construction Delays; BIM; IFC; Schedule Optimization; External Factors.
Authors
VENKRBEC, V.
Released
31. 12. 2024
Publisher
Czech Journal of Civil Engineering
Location
Brno
ISBN
2336-7148
Periodical
Czech Journal of Civil Engineering
Year of study
2024
Number
01
State
Czech Republic
Pages from
91
Pages to
103
Pages count
13
URL
BibTex
@article{BUT196504,
author="Václav {Venkrbec}",
title="Wide adoption of AI in Construction: A Case study on machine learning for delay prediction and schedule enhancement with external factors",
journal="Czech Journal of Civil Engineering",
year="2024",
volume="2024",
number="01",
pages="91--103",
doi="10.51704/cjce.2024.vol10.iss1.pp91-103",
issn="2336-7148",
url="https://cjce.cz/journal/article/view/231"
}
Responsibility: Ing. Marek Strakoš