The Construction 4.0 term represents an attempt to adapt Industry 4.0 for civil construction, using advanced technologies to overcome the specific problems of this sector. The evolution of the digital ecosystems based on Building Information Modeling (BIM) makes possible the creation of Digital Twins from physical building environments. These Digital Twins can monitor physical resources (materials, equipment, and personnel) at the construction site and can be incorporated into the Construction Management to support decision-making. For that, appropriate auxiliary tools must be used for data capture, storage, and visualization. This study aims to present a framework and an application of Digital Twins to monitor physical resources in construction sites and display the information in real-time, focusing on the approach of the technologies involved. The object of study is the metallic formworks for concrete walls constructive systems. The methodology used is experimental research. The Digital Twin is created with the digital ecosystem of Forge, based on a model first generated in Revit. On-site data collection takes place using a Radio Frequency Identification (RFID) system. The collected information is stored in Firebase, which is a non-relational database with real-time Cloud synchronization. A Web application allows the visualization of the three-dimensional model generated in Forge, as well as the generation of reports for monitoring and dashboards to display the collected information. The main result of the study is the Digital Twin that integrates a derived BIM model, a non-relational database, an RFID system, and the Web application to meet the proposed objective.
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1 November 2021
INTERNATIONAL CONFERENCE ON CONSTRUCTION DIGITALISATION FOR SUSTAINABLE DEVELOPMENT: TRANSFORMATION THROUGH INNOVATION
24–25 November 2020
Hanoi, Vietnam
Research Article|
November 01 2021
Digital twins to monitor physical resources at construction sites with web application Available to Purchase
Emerson de Andrade Marques Ferreira;
Emerson de Andrade Marques Ferreira
a)
Federal University of Bahia
, Salvador BA 40210-630, Brazil
a)Corresponding author: [email protected]
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Beatriz Souza Vilas Bôas de Jesus;
Beatriz Souza Vilas Bôas de Jesus
Federal University of Bahia
, Salvador BA 40210-630, Brazil
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Caroline Silva Araújo;
Caroline Silva Araújo
Federal University of Bahia
, Salvador BA 40210-630, Brazil
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Yago Cunha Martins Rodrigues;
Yago Cunha Martins Rodrigues
Federal University of Bahia
, Salvador BA 40210-630, Brazil
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Dayana Bastos Costa
Dayana Bastos Costa
Federal University of Bahia
, Salvador BA 40210-630, Brazil
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Emerson de Andrade Marques Ferreira
a)
Beatriz Souza Vilas Bôas de Jesus
Caroline Silva Araújo
Yago Cunha Martins Rodrigues
Dayana Bastos Costa
Federal University of Bahia
, Salvador BA 40210-630, Brazil
a)Corresponding author: [email protected]
AIP Conf. Proc. 2428, 050006 (2021)
Citation
Emerson de Andrade Marques Ferreira, Beatriz Souza Vilas Bôas de Jesus, Caroline Silva Araújo, Yago Cunha Martins Rodrigues, Dayana Bastos Costa; Digital twins to monitor physical resources at construction sites with web application. AIP Conf. Proc. 1 November 2021; 2428 (1): 050006. https://doi.org/10.1063/5.0070688
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