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Generative AI in construction risk management: a bibliometric analysis of the associated benefits and risks

Generative AI in construction risk management: a bibliometric analysis of the associated benefits and risks
Generative AI in construction risk management: a bibliometric analysis of the associated benefits and risks
Purpose: the construction industry is under increasing pressure to improve risk management due to the complexity and uncertainty inherent in its projects. Generative AI (GenAI) has emerged as a promising tool to address these challenges, however, there remains limited understanding of its benefits and risks in Construction Risk Management (CRM). This study conducts a bibliometric analysis of current research on GenAI in CRM, exploring publication trends, citations, keywords, intellectual linkages, key contributors, and methodologies.

Design/methodology/approach: a review of Scopus publications from 2014 to 2024 identifies key categories of GenAI’s benefits and risks for CRM. Using VOSViewer, visual maps illustrate research trends, collaboration networks, and citation patterns.

Findings: the findings reveal a notable increase in research interest in GenAI for CRM, with benefits classified into technical, operational, technological, and integration categories. Risks are grouped into nine areas, including social, security, data, and performance.

Research limitations/implications: despite its comprehensive scope, this research focuses exclusively on peer-reviewed articles published between 2014 and 2024, potentially excluding relevant studies from outside this period or non-peer-reviewed sources. Additionally, the bibliometric analysis relied on a specific set of keywords, which may have excluded articles using alternative terminology for GenAI or categorized under related fields.

Practical implications: the categorisation of GenAI risks in CRM provides a foundation for critical risk management processes, such as risk analysis, evaluation, and response planning. Additionally, understanding the identified benefits, such as improved risk prediction, alongside associated risks, such as ethical and data security issues, enables practitioners to balance innovation with caution, ensuring effective and responsible adoption of GenAI technologies.

Originality/value: this research offers a novel bibliometric analysis of the benefits and risks of GenAI in CRM, providing a comprehensive understanding of the field's evolution and global research landscape. Through the categorisation of the benefits and risks of GenAI in CRM, the study lays the groundwork for developing comprehensive risk management models. Additionally, it identifies key methodologies and research trends, enabling academics and practitioners to refine approaches and bridge research gaps. This work not only enhances theoretical insights but also provides actionable strategies for integrating GenAI into CRM practices effectively and responsibly.
2976-8993
196-228
Mohamed, Mohamed Abdelwahab Hassan
f8cd5ab0-e311-450b-a914-9f13df1c6735
Al-Mhdawi, M.K.S.
b0b5c056-ae04-47a4-815e-9a282ce7120f
Ojiako, Udechukwu
ba4aa342-5408-48d7-b71d-8197388bbb80
Dacre, Nicholas
90ea8d3e-d0b1-4a5a-bead-f95ab32afbd1
Qazi, Abroon
a52beaff-aef6-4a48-8d11-5dcbe6dde2d7
Rahimian, Farzad
73b2c53f-c29e-440c-bbc0-64e64e1b5d62
Mohamed, Mohamed Abdelwahab Hassan
f8cd5ab0-e311-450b-a914-9f13df1c6735
Al-Mhdawi, M.K.S.
b0b5c056-ae04-47a4-815e-9a282ce7120f
Ojiako, Udechukwu
ba4aa342-5408-48d7-b71d-8197388bbb80
Dacre, Nicholas
90ea8d3e-d0b1-4a5a-bead-f95ab32afbd1
Qazi, Abroon
a52beaff-aef6-4a48-8d11-5dcbe6dde2d7
Rahimian, Farzad
73b2c53f-c29e-440c-bbc0-64e64e1b5d62

Mohamed, Mohamed Abdelwahab Hassan, Al-Mhdawi, M.K.S., Ojiako, Udechukwu, Dacre, Nicholas, Qazi, Abroon and Rahimian, Farzad (2025) Generative AI in construction risk management: a bibliometric analysis of the associated benefits and risks. Urbanization, Sustainability and Society, 2 (1), 196-228. (doi:10.1108/USS-11-2024-0069).

Record type: Article

Abstract

Purpose: the construction industry is under increasing pressure to improve risk management due to the complexity and uncertainty inherent in its projects. Generative AI (GenAI) has emerged as a promising tool to address these challenges, however, there remains limited understanding of its benefits and risks in Construction Risk Management (CRM). This study conducts a bibliometric analysis of current research on GenAI in CRM, exploring publication trends, citations, keywords, intellectual linkages, key contributors, and methodologies.

Design/methodology/approach: a review of Scopus publications from 2014 to 2024 identifies key categories of GenAI’s benefits and risks for CRM. Using VOSViewer, visual maps illustrate research trends, collaboration networks, and citation patterns.

Findings: the findings reveal a notable increase in research interest in GenAI for CRM, with benefits classified into technical, operational, technological, and integration categories. Risks are grouped into nine areas, including social, security, data, and performance.

Research limitations/implications: despite its comprehensive scope, this research focuses exclusively on peer-reviewed articles published between 2014 and 2024, potentially excluding relevant studies from outside this period or non-peer-reviewed sources. Additionally, the bibliometric analysis relied on a specific set of keywords, which may have excluded articles using alternative terminology for GenAI or categorized under related fields.

Practical implications: the categorisation of GenAI risks in CRM provides a foundation for critical risk management processes, such as risk analysis, evaluation, and response planning. Additionally, understanding the identified benefits, such as improved risk prediction, alongside associated risks, such as ethical and data security issues, enables practitioners to balance innovation with caution, ensuring effective and responsible adoption of GenAI technologies.

Originality/value: this research offers a novel bibliometric analysis of the benefits and risks of GenAI in CRM, providing a comprehensive understanding of the field's evolution and global research landscape. Through the categorisation of the benefits and risks of GenAI in CRM, the study lays the groundwork for developing comprehensive risk management models. Additionally, it identifies key methodologies and research trends, enabling academics and practitioners to refine approaches and bridge research gaps. This work not only enhances theoretical insights but also provides actionable strategies for integrating GenAI into CRM practices effectively and responsibly.

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More information

Accepted/In Press date: 18 February 2025
Published date: 25 March 2025

Identifiers

Local EPrints ID: 499718
URI: http://eprints.soton.ac.uk/id/eprint/499718
ISSN: 2976-8993
PURE UUID: 65453032-85b6-4269-8158-9801bb0be020
ORCID for Nicholas Dacre: ORCID iD orcid.org/0000-0002-9667-9331

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Date deposited: 01 Apr 2025 16:40
Last modified: 22 Aug 2025 02:26

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Contributors

Author: Mohamed Abdelwahab Hassan Mohamed
Author: M.K.S. Al-Mhdawi
Author: Udechukwu Ojiako
Author: Nicholas Dacre ORCID iD
Author: Abroon Qazi
Author: Farzad Rahimian

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