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Research Article | Open Access

Development of permit-to-work management system based on POP model for petrochemical construction safety

Shida Chen2Weiguang Jiang1,3Cheng Zhou1,3( )
National Center of Technology Innovation for Digital Construction, Huazhong University of Science and Technology, Wuhan 430074, China
Department of Prefabricated Building Construction Engineering Technology, School of Digital Construction, Shanghai Urban Construction Vocational College, Shanghai 200438, China
Department of Construction Management, School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology, Wuhan 430074, China
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Abstract

The process of new construction and reconstruction projects in the petrochemical industry is complicated, and the construction accidents have a domino effect. Construction permit-to-work management is an important part of petrochemical engineering, mainly to ensure the identity of workers entering the construction area and permit-to-work qualification. The previous research on permit-to-work management mainly focused on the standardization of the permit-to-work issuing process and the precision of the implementation process rather than specific and implementable technological means. However, with the increase of new construction and reconstruction projects in the petrochemical industry, the traditional and paper-based work permit management model cannot effectively prevent people without working qualifications from entering the construction site at the source, and these solutions do not take into account the compliance, feasibility, and timeliness of the use of qualified permit-to-work. Therefore, from the perspective of brand-new management theory, this study organizes the elements of petrochemical construction permit-to-work management into three levels of product, organization, and process (POP). Then the permit-to-work management system of petrochemical construction based on the POP model is proposed. The face recognition technology is used to realize the real-time dynamic control of the system. The results show that the validity of the petrochemical construction permit-to-work management system based on the POP model in the actual project can realize the transformation permit-to-work from paper to electronic. In addition, it can effectively and quickly verify the permit-to-work qualification of the entry personnel and prevent the retired personnel from returning to the site.

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Journal of Intelligent Construction
Article number: 9180012
Cite this article:
Chen S, Jiang W, Zhou C. Development of permit-to-work management system based on POP model for petrochemical construction safety. Journal of Intelligent Construction, 2023, 1(2): 9180012. https://doi.org/10.26599/JIC.2023.9180012

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Received: 04 May 2023
Revised: 09 June 2023
Accepted: 13 June 2023
Published: 19 July 2023
© The Author(s) 2023. Published by Tsinghua University Press.

The articles published in this open access journal are distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

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