Details

Title Machine learning model for the BIM classification in IFC format // Magazine of Civil Engineering. – 2024. – Т. 17, № 2. — С. 12602
Creators Petrochenko M. V.; Nedviga P. N.; Kukina A. A.; Strelets K. I.; Sherstyuk V. V.
Imprint 2024
Collection Общая коллекция
Subjects Строительство; Технология строительного производства в целом; machine learning; classification of construction information; classifiers of machine intelligence; BIM elements; artificial intelligence algorithms; building modeling; машинное обучение; классификация строительной информации; классификаторы машинного интеллекта; элементы BIM; алгоритмы искусственного интеллекта; моделирование зданий
UDC 69.05
LBC 38.6
Document type Article, report
File type PDF
Language English
DOI 10.34910/MCE.126.2
Rights Свободный доступ из сети Интернет (чтение, печать, копирование)
Additionally New arrival
Record key RU\SPSTU\edoc\73946
Record create date 9/18/2024

Allowed Actions

Read Download (1.3 Mb)

Group Anonymous
Network Internet

In the rapid development of information technology in the field of Building Information Modeling (BIM) there is a growing need for efficient classification of construction information. One of the key steps to move towards digital construction involves creating reliable systems for classifying BIM elements, providing the foundation for various use cases, from facilitating model navigation to obtaining practical outcomes such as cost estimates and materials quantities. However, the BIM classification process in practice is labor-intensive and time-consuming and leads to an increase in the cost. This study explores the application of an innovative method, based on artificial intelligence algorithms. This method automates the assignment of codes to information model components. The research investigates classification systems, machine learning models and selects the most accurate one for the classification task. It is based on metrics such as accuracy and F1-score in order to achieve an optimal balance between the efficiency and accuracy according to predefined parameters. The article presents software for automatic prediction and assignment of codes in accordance with the selected classifier, developed on selected algorithms.

Network User group Action
ILC SPbPU Local Network All
Read Print Download
Internet All

Access count: 52 
Last 30 days: 15

Detailed usage statistics