Artificial Intelligence in the Effective Execution Process of Construction Projects in the Future

Shakibaei, Roozbeh (2024) Artificial Intelligence in the Effective Execution Process of Construction Projects in the Future. Journal of Economics, Management and Trade, 30 (6). pp. 75-87. ISSN 2456-9216

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Abstract

The construction industry currently constitutes 13% of the global gross domestic product (GDP), with projections indicating an 85% increase in value to $15.5 trillion by 2030. The widespread adoption of information technology (IT) has significantly enhanced the integration of disparate data in construction project environments. Consequently, the construction sector including full construction value chain, is undergoing a transformative phase. The increasing investment in artificial intelligence (AI) makes it impossible to keep pace with its rapid advancements. Hence, this study aims to examine the role of AI in facilitating the effective execution of construction projects in the future. This research employs a document analysis approach and scrutinizes 20 relevant papers from both domestic and international scientific databases. Methodologically, this study adopts an applied research approach, and based on the method of data collection, it is considered a descriptive survey method. Therefore, a questionnaire was designed and distributed among 100 experts and practitioners familiar with AI concepts in Tehran for data collection to conduct a census-style field study. Subsequently, Smart PLS software was employed for data analysis. The findings not only validate the model's reliability, validity and fit but also present solutions and pertinent issues related to challenges concerning AI future role in enhancing project execution efficacy.

Item Type: Article
Subjects: STM Digital Library > Social Sciences and Humanities
Depositing User: Unnamed user with email support@stmdigitallib.com
Date Deposited: 16 May 2024 09:25
Last Modified: 16 May 2024 09:25
URI: http://archive.scholarstm.com/id/eprint/1755

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