Abstract

Digital twin (DT) is gaining increasing attention due to its ability to present digital replicas of existing assets, processes and systems. DT can integrate artificial intelligence, machine learning, and data analytics to create real-time simulation models. These models learn and update from multiple data sources to predict their physical counterparts’ current and future conditions. This has promoted its relevance in various industries, including the construction industry (CI). However, recognising the existence of a distinct set of factors driving its adoption has not been established. Therefore, this study aims to identify the drivers and integrate them into a classification framework to enhance its understanding. Utilising popular databases, including Scopus, Web of Science, and ScienceDirect, a systematic literature review of 58 relevant DT adoptions in the CI research was conducted. From the review, the drivers for DT adoption in the CI were identified and classified. The results show that developed countries such as the UK, US, Australia, and Italy have been the top countries in advancing DT adoption in the CI, while developing countries have made commendable contributions. A conceptual framework has been developed to enhance the successful adoption of DT in the CI based on 50 identified drivers. The major categories of the framework include concept-oriented drivers, production-driven drivers, operational success drivers, and preservation-driven drivers. The developed framework serves as a guide to propel DT adoption in the CI. Furthermore, this study contributes to the body of knowledge about DT adoption drivers, which is essential for DT promotion in the CI.

Highlights

  • The computerization and digitalization of activities and processes significantly impact how physical assets are managed [1]

  • This study is grounded on a systematic review of the literature that focuses on the previous research on the adoption of Digital twin (DT) technology in the construction industry

  • This study identified the main driving forces for DT adoption in the construction industry by systematically reviewing 58 journal and conference publications

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Summary

Introduction

The computerization and digitalization of activities and processes significantly impact how physical assets are managed [1]. Various technologies, including artificial intelligence (AI), the internet of things (IoT), building information modelling (BIM), digital twins (DTs), blockchain, machine learning, data analytics, deep learning, and the like, are being utilised to enhance productivity across several industries. Several economies are confident in utilising these technologies to enhance their growth and development. Gartner [4] predicted that half of the large industrial companies would be using DTs by 2021 to achieve a possible 10% improvement in these organisations’ effectiveness. This is possible because DTs align better with other emerging paradigms like cyber-physical systems (CPS) and Industry 4.0. DT helps to integrate the physical world to the digital world and increases productivity using predictive analytics [5,6,7]

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