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      Integrating knowledge management and BIM for safety risk identification of deep foundation pit construction

      , , ,
      Engineering, Construction and Architectural Management
      Emerald

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          Abstract

          Purpose

          The outbreak of COVID-19 pandemic has posed severe challenges to infrastructure construction in China. Particularly, the complex technology and high process uncertainty of deep foundation pit construction make its safety risk identification a challenging issue of general concern. To address these challenges, Building Information Modeling (BIM) can be used as an important tool to enhance communication and decision-making among stakeholders during the pandemic. The purpose of this study is to propose a knowledge management and BIM-integrated safety risk identification method for deep foundation pit construction to improve the management efficiency of project participants.

          Design/methodology/approach

          This paper proposes a risk identification method that integrates BIM and knowledge management for deep foundation pit construction. In the framework of knowledge management, the topological relationships between objects in BIM are extracted and visualized in the form of knowledge mapping. After that, formal expressions of codes are established to realize the structured processing of specification provisions and special construction requirements. A comprehensive plug-in for deep foundation pit construction is designed based on the BIM software.

          Findings

          The proposed method was verified by taking a sub-project in deep foundation pit project construction as an example. The result showed the new method can make full use of the existing specification and special engineering requirements knowledge. In addition, the developed visual BIM plug-in proves the feasibility and applicability of the proposed method, which can help to increase the risk identification efficiency and refinement.

          Originality/value

          The deep foundation pit safety risk identification is challenged by the confusion of deep foundation pit construction safety knowledge and the complexity of the BIM model. By establishing the standardized expression of normative knowledge and special construction requirements, the efficiency and refinement of risk identification are improved while ensuring the comprehensiveness of results. Moreover, the topology-based risk identification method focuses on the project objects and their relations in the way of network, eliminating the problem of low efficiency from the direct BIM-based risk identification method due to massive data.

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          Most cited references31

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          Overview and analysis of safety management studies in the construction industry

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            Hazard recognition and risk perception in construction

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              BIM-based fall hazard identification and prevention in construction safety planning

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                Author and article information

                Journal
                Engineering, Construction and Architectural Management
                ECAM
                Emerald
                0969-9988
                August 09 2022
                September 01 2023
                August 09 2022
                September 01 2023
                : 30
                : 8
                : 3242-3258
                Article
                10.1108/ECAM-10-2021-0934
                af673180-f345-4ca3-a088-9773b4e14bb2
                © 2023

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