BIM-Based Digital Twin and XR Devices to Improve Maintenance Procedures in Smart Buildings: A Literature Review
Abstract
:1. Introduction
2. Methodology
- ScienceDirect (https://www.sciencedirect.com/) (accessed on 5 February 2021)
- Google Scholar (https://scholar.google.fr/) (accessed on 5 February 2021)
- WebOfKnowledge (https://www.webofknowledge.com/) (accessed on 5 February 2021)
- Scopus (https://www.scopus.com/) (accessed on 5 February 2021)
- “BIM” AND “Digital Twin” AND Maintenance (combination “124” in Figure 2). This combination represents 42 papers.
- “Digital Twin” AND (“Extended Reality” OR XR) AND Maintenance (combination “134” in Figure 2). This combination represents 30 papers.
- “BIM” AND “Digital Twin” AND (“Extended Reality” OR XR) AND Maintenance (combination “1234” in Figure 2). This combination represents 5 papers.
3. Benefits of a BIM-Based DT
3.1. Help to Create a DT
3.2. Usage in Lifecycle Management
3.3. Improvement for Managing Data
3.4. Existing Challenges
4. Maintenance Improvements Bring by DT into O&M Phase
4.1. Improvements for Monitoring
4.2. Improvements for Inspection
4.3. Improvements for Planning
4.4. Updating of the DT through Maintenance Operations
5. DT Improvements Brought about by eXtended Reality Technologies
5.1. Management and Data Visualisation
5.2. Main Devices Used for Visualisation
5.3. Interaction with the Model
5.4. Model Update and Collaboration
6. Maintenance Improvement Brought about by DT with XR Devices
6.1. Maintenance Improvements
6.2. Synchronous and Asynchronous Collaboration during Maintenance Procedures
7. Discussion and Challenges
7.1. General Observations
7.2. Future Usage: DT Interaction and Enhanced Maintenance Operations
- The Digital Twin is represented by three parts:
- ○
- Physical part: This represents the physical asset of the DT (e.g., equipment, building or equipment). Data can be sent from and to this part thanks to the data processing part. However, if on-site, the User can also interact directly with it, especially during maintenance operations or visual inspections.
- ○
- Digital part: This is the digital representation of the asset, with the semantic and real-time data gathered with smart sensors and processed by the data processing part. The data can then be linked to the 3D representation of the asset and then displayed to the user once processed in the appropriate language.
- ○
- Data processing: This contains all the communication protocols allowing exchanges between physical and digital parts, and the algorithms that process the raw data before sending it to the digital part. It also contains the decision and prediction algorithms as well as the ones allowing the transmission of the user’s commands to the digital part to display information and to the physical part for the control of the real system.
- HMI: The human–machine interface (HMI) part represents the communication interface between the user/expert and the DT (e.g., Information displayed and equipment’s controls). This interface can either represent an XR device or a classic computer software allowing 3D information to be visualised thanks to the data processing part that translates the commands into the appropriate language. It can also represent VR training applications using BIM-based DT to train the user on realistic situations through an immersive environment and collected data from real-life situations [78,89].
- User/Expert: The on-site user can interact with the DT thanks to both the HMI part and direct interaction with the Physical part, especially during maintenance operations. On the other hand, the remote expert can interact with the DT only by using an HMI, as the distance prevents any direct interaction with the Physical part. The blue two-way arrow represents the collaboration that can happes between the on-site user and the remote expert when needed, either using the HMI part (such as a specific MR application) or with an external device (such as a phone call).
7.3. Challenges
7.3.1. Organisational, Human and Economic Changes
7.3.2. Data Management
7.3.3. Challenges in Using XR Devices
8. Conclusions and Perspectives
8.1. Conclusions
8.2. Perspectives
Author Contributions
Funding
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Inclusion criteria (IC) | Main subject is the use of DT (concept or use case) | Exclusion criteria (EC) | Older than 2005 |
Not in informatics or engineering field | |||
Use of BIM and/or XR technologies | Not related or applicable to building maintenance |
Research Topics | Benefits | Reference |
---|---|---|
Usage of a BIM-based DT | Early optimisation of the building | [28,29,30] |
Lifecycle management of the building | [16,31,32,33,34,35,36] | |
Condition assessment | [37,38,39] | |
Optimisation of existing operations | [39,40,41,42] | |
Creation of a DT using a BIM | DT as an evolved BIM with real-time data | [29,32,35,37,38,39,40,42] |
BIM provide geometrical data/3D model | [16,29,30,31,33,35,37,38,39,40,41,42] | |
BIM contains static data | [28,35,40,42] | |
Benefits of a BIM-based DT for lifecycle management | BIM mainly used in early stages of the lifecycle | [16,28,40] |
Simulations/Predictions of building lifecycle | [28,29,31,41] | |
Improve decision-making | [28,29,31,32,33,34,35,37,38,39,40,41,42] | |
Improve operations | [32,33,36,40] | |
Improvements for data management | Centralised source/Data sharing | [16,29,32,33,38,40,41] |
Digital continuity/Interoperability | [16,28,29,32,34,35,36,37,40,41] | |
Data linked to models | [32,33,34,37,41,43] |
Challenge | Reference |
---|---|
Lack of standards | [16,28,31,33,35,36] |
Lack of up-to-date data | [28,33] |
Privacy issues | [29,31,35] |
Lack of organisational strategy | [29,35,36,41] |
Maintenance Step | Benefits | Reference |
---|---|---|
Monitoring | Better data access | [16,22,26,34,35,39,43,46,47,48,49,50,51,52,53] |
Avoiding data silos | [22,33,34,35,51] | |
Optimise consumption | [29,37,38,40,54,55] | |
Collaboration | [26,34,44,51] | |
Inspection | Damage assessment | [39,42,47,56,57,58,59] |
Deviation assessment | [42,45,60] | |
Planning | Early warning, prediction | [15,22,39,44,46,48,53,57,58,60,61,62,63,64] |
Occupancy | [35,54] | |
Collaboration | [51,65] | |
Cost optimisation | [37,38,54,65] |
Maintenance Type | Reference | |
---|---|---|
Proactive | Predictive | [15,22,37,40,43,44,46,47,49,52,55,63,64,66,67,68,69] |
Preventive | [34,39,57,58,59,60,62,64,65,70] | |
Reactive | [25,55,71,72,73] |
Functionalities and Technologies | Features | Reference |
---|---|---|
Management and data visualisation | Real-time and historical display | [26,43,53,55,64,67,68,70,72,73,77,78] |
Situated display | [25,72] | |
Asset highlight | [25,43,68,72,77] | |
3D visualisation | [43,53,67,68,69,70,72,75,76,79] | |
Interaction with the model | Gesture and voice recognition | [25,26,53,73,80] |
Standard inputs | [25,68,69,70,76,77,78] | |
Position tracking | [25,75,76] | |
Head/gaze tracking | [25,66,71,72,73] | |
MR control | [26,55,80] | |
Main devices used for visualisation | See-through HMD/ Smart-glasses (e.g., Hololens) (used for AR and MR) | [25,26,43,47,66,67,70,71,72,73,75,78,80] |
Occluded HMD (e.g., HTC Vive) (used for VR) | [25,47,75,78,79] | |
HHD (e.g., Tablet; Smartphone) (used for AR) | [22,47,53,55,68,69,75,77,81] | |
Model update and collaboration | Update digital twin | [66,71,81] |
Collaboration | [22,25,65,78] |
Supported Activity | Features | Reference |
---|---|---|
Maintenance | Visual annotation | [25,43,47,55,64,67,68,69,72,73] |
Track location | [47,55,72] | |
Ease inspection | [22,43,53,55,66,72,79] | |
Asset identification | [43,53,68,71] | |
Collaboration during maintenance procedures | Shared reports | [22,72] |
Connected systems | [43,64,70] | |
Distant expert | [43,69,72] | |
Telepresence | [70,72,78] | |
Visualisation | Real-time, historical and documentation data | [22,25,43,47,53,55,68,70,71,72] |
3D model | [43,47,67,69,70,71,72,79] | |
Filtered data | [43,47,68,72] |
DT Type | Years | Total | ||||
---|---|---|---|---|---|---|
2017 | 2018 | 2019 | 2020 | 2021 | ||
Digital Model | 0.00% | 1.47% | 8.82% | 5.88% | 1.47% | 17.65% |
Digital Shadow | 0.00% | 2.94% | 4.41% | 2.94% | 0.00% | 10.29% |
Digital Twin | 0.00% | 1.47% | 20.59% | 27.94% | 4.41% | 54.41% |
Undefined | 1.47% | 0.00% | 7.35% | 7.35% | 1.47% | 17.65% |
Total | 1.47% | 5.88% | 41.18% | 44.12% | 7.35% | 100.00% |
Category | Challenges | Reference |
---|---|---|
Organisational, human and economic changes | Implementation | [29,41,90] |
Data selection | [25,29,33,35,36,47,91] | |
Information on financial risks | [35,90] | |
New technical skills | [78,86,91] | |
Define roles | [36,47,92] | |
Collaboration management | [16,22,25,29,32,33,38,40,41,65,69,70,72,78,79] | |
Data management | Lack of data for DT creation and update | [21,32,37,38,49,61,74] |
Lack of data standards | [28,33,34,35] | |
Data ownership | [26,31,37,51,54,92] | |
Data security | [31,35,46,54,64,72] | |
Challenges in using XR devices | Ergonomic and physiological issues | [25,84] |
Calibration | [25,26,53,66,71,72,77,80,81] |
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Coupry, C.; Noblecourt, S.; Richard, P.; Baudry, D.; Bigaud, D. BIM-Based Digital Twin and XR Devices to Improve Maintenance Procedures in Smart Buildings: A Literature Review. Appl. Sci. 2021, 11, 6810. https://doi.org/10.3390/app11156810
Coupry C, Noblecourt S, Richard P, Baudry D, Bigaud D. BIM-Based Digital Twin and XR Devices to Improve Maintenance Procedures in Smart Buildings: A Literature Review. Applied Sciences. 2021; 11(15):6810. https://doi.org/10.3390/app11156810
Chicago/Turabian StyleCoupry, Corentin, Sylvain Noblecourt, Paul Richard, David Baudry, and David Bigaud. 2021. "BIM-Based Digital Twin and XR Devices to Improve Maintenance Procedures in Smart Buildings: A Literature Review" Applied Sciences 11, no. 15: 6810. https://doi.org/10.3390/app11156810
APA StyleCoupry, C., Noblecourt, S., Richard, P., Baudry, D., & Bigaud, D. (2021). BIM-Based Digital Twin and XR Devices to Improve Maintenance Procedures in Smart Buildings: A Literature Review. Applied Sciences, 11(15), 6810. https://doi.org/10.3390/app11156810