Building Information Modeling and Artificial Intelligence Based Smart Construction Management: Materials and Electrical

Author:

Adeel MuhammadORCID,Zaib ShahORCID,Awaz MuhammadORCID,Ali Md AzgorORCID,Prodhan Md Safiq RaihanORCID,Akter Mst JuliaORCID,Hasan Md MahmudulORCID,Kalsoom HabibaORCID,Ul Nissa LaraibORCID,Amir RabiaORCID

Abstract

With the development of society and technological progress, the requirements of government regulatory departments for engineering construction efficiency, quality, and safety are constantly increasing. The traditional extensive construction process can no longer meet the requirements of modern construction industry development. Based on the shortcomings of traditional construction processes, the concept of intelligent construction has been introduced. The construction of new smart and digital twin (DT) cities is entering an explosive period. The application of building rapid modeling technology based on artificial intelligence (AI) and building information modeling (BIM) integration in smart cities has gradually begun new explorations and attempts, and its application value is becoming increasingly prominent. A brand-new auto-machine learning (auto-ML) integrated algorithm technology platform for 3D building modeling is being developed and improved over time by combining AI and BIM technology in a deep way. This allows for fast and accurate modeling as well as high-value scenarios in the smart city industry, including architecture, municipal engineering, roads, and bridges. 

Publisher

AMO Publisher

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