A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects

Project risks must be managed to deliver construction projects on time and within budget. In recent years, the New Engineering Contract (NEC) provides an alternate contracting method for procuring construction projects. As stipulated in the NEC contract, NEC risk register must be used to record any...

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Main Authors: Ming-Fung Francis Siu, Wing-Yan Jacqueline Leung, Wai-Ming Daniel Chan
Format: Article
Language:English
Published: Vilnius Gediminas Technical University 2018-12-01
Series:Journal of Civil Engineering and Management
Subjects:
Online Access:https://journals.vgtu.lt/index.php/JCEM/article/view/6483
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spelling doaj-0d4d3fe9da664cc99e8567e49d95a7f42021-07-02T11:53:38ZengVilnius Gediminas Technical UniversityJournal of Civil Engineering and Management1392-37301822-36052018-12-0124810.3846/jcem.2018.6483A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projectsMing-Fung Francis Siu0Wing-Yan Jacqueline Leung1Wai-Ming Daniel Chan2Department of Building and Real Estate, Hong Kong, ChinaDepartment of Building and Real Estate, Hong Kong, ChinaDepartment of Building and Real Estate, Hong Kong, China Project risks must be managed to deliver construction projects on time and within budget. In recent years, the New Engineering Contract (NEC) provides an alternate contracting method for procuring construction projects. As stipulated in the NEC contract, NEC risk register must be used to record any project risks. The risk register is designed to record each risk item in the context of textual description, likelihood, and consequence. However, it is time-consuming to identify, quantify, and analyse NEC project risks based on experience, questionnaire, simulation, and data-mining approach. Any method to fully utilise the records of NEC risk registers of past projects for managing NEC project risks remains unexplored. As such, a data-driven approach is proposed to categorise common risks of NEC projects and to analyse risk rating of risk categories by combining the use of text mining analysis and decision tree analysis. A practical case study in Hong Kong is used to illustrate the method of application. Top four common types of NEC project risks, which are ground and utilities, design information, structures, and workmanship, were identified, quantified, and analysed. The new approach helps NEC project planners to identify, quantify, and analyse NEC project risks time-efficiently. https://journals.vgtu.lt/index.php/JCEM/article/view/6483risk identificationrisk quantificationrisk analysisrisk registerrisk categoryrisk rating
collection DOAJ
language English
format Article
sources DOAJ
author Ming-Fung Francis Siu
Wing-Yan Jacqueline Leung
Wai-Ming Daniel Chan
spellingShingle Ming-Fung Francis Siu
Wing-Yan Jacqueline Leung
Wai-Ming Daniel Chan
A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
Journal of Civil Engineering and Management
risk identification
risk quantification
risk analysis
risk register
risk category
risk rating
author_facet Ming-Fung Francis Siu
Wing-Yan Jacqueline Leung
Wai-Ming Daniel Chan
author_sort Ming-Fung Francis Siu
title A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
title_short A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
title_full A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
title_fullStr A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
title_full_unstemmed A data-driven approach to identify-quantify-analyse construction risk for Hong Kong NEC projects
title_sort data-driven approach to identify-quantify-analyse construction risk for hong kong nec projects
publisher Vilnius Gediminas Technical University
series Journal of Civil Engineering and Management
issn 1392-3730
1822-3605
publishDate 2018-12-01
description Project risks must be managed to deliver construction projects on time and within budget. In recent years, the New Engineering Contract (NEC) provides an alternate contracting method for procuring construction projects. As stipulated in the NEC contract, NEC risk register must be used to record any project risks. The risk register is designed to record each risk item in the context of textual description, likelihood, and consequence. However, it is time-consuming to identify, quantify, and analyse NEC project risks based on experience, questionnaire, simulation, and data-mining approach. Any method to fully utilise the records of NEC risk registers of past projects for managing NEC project risks remains unexplored. As such, a data-driven approach is proposed to categorise common risks of NEC projects and to analyse risk rating of risk categories by combining the use of text mining analysis and decision tree analysis. A practical case study in Hong Kong is used to illustrate the method of application. Top four common types of NEC project risks, which are ground and utilities, design information, structures, and workmanship, were identified, quantified, and analysed. The new approach helps NEC project planners to identify, quantify, and analyse NEC project risks time-efficiently.
topic risk identification
risk quantification
risk analysis
risk register
risk category
risk rating
url https://journals.vgtu.lt/index.php/JCEM/article/view/6483
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