An openBIM Approach to IoT Integration with Incomplete As-Built Data
Abstract
:Featured Application
Abstract
1. Introduction
1.1. Digital Modelling in Asset Management
1.2. Data Integration Management
- BIM models are often created during the design, manufacturing, and construction phases using unclear procedures, and updated as-built models are hardly accessible or even not available. In addition to the static nature of BIM, outdated and unreliable (i.e., inaccurate and incomplete) building information impedes the full potential of the AM applications during the use phase.
- Even when updated as-built BIM data is available, scarce attention is still paid during the design phase to the information management process across the whole asset life cycle. Consequently, the information requirements (IRs) during the use phase are often not met because of the way information is created and aggregated (e.g., classified), during the design and construction phase. BIM is a flexible modelling approach, which supports the inclusion of geometries, assets and systems as part of the model. However this flexibility may result in chaos if recognisable hierarchies and classification systems are not defined in the design phase and adopted during the assets’ life cycle.
- Static and real-time data are managed differently because of their nature. For instance, some asset information is designed to be static (e.g., asset locations and geometries), whereas asset performance is measured in real-time in DTs throughout the use phase. Static data is not updated frequently (or at all) and is stored in passive repositories (e.g., relational data-bases or files to query or in COBie spreadsheets). Real-time data is variable, requiring special storage and management (e.g., actively publishing new data for active subscribers). IRs are clearly different for static and real-time data, leading to AM applications that cannot use both sources of information.
1.3. Aim of the Paper
- Improved accessibility of the integrated information;
- Users’ profiling and access to the right data at the right moment;
- Dynamic AM application support, with limited as-built information availability and
- Enhanced information quality by better matching with the domain specific requirements from different AM applications.
2. State of the Art
- It improves the quality of building data (e.g., preventing data replication and limiting redundancy and inconsistency);
- It facilitates data integration during the building life cycle;
- It improves communication between stakeholders;
- It enables smoother workflows among involved parties according to standardised procedures;
- It allows a reduction in time and cost in the retrieval of FM related information;
- It enables a faster verification process.
2.1. Uses of the BIM and IoT Technologies
2.2. Integration Architectures
3. The Proposed Openbim Methodology
4. Case Study
- Geometries and location of the HVAC components, including primary air loop, variable refrigerant flow (VRF), water circulation pumps and radiators;
- Relevant data in the civil components of the building (technical specifications, active contracts, maintenance records, models and producer of the components);
- Sensor location and technical specifications;
- System architecture, that is, the way the HVAC system is organised from multiple components, according to a classification system;
- Interface requirements with the real-time platform.
- Set points for the HVAC system (e.g., the temperature of the rooms, relative humidity, CO2 concentration);
- Data on comfort parameters measurements (BMS, Monnit sensors);
- Data on the BMS and IoT sensors status.
5. Discussion
- Flexible schema: Data in the OpenBIM approach is not constraint by a classical relation data schema. A flexible data schema is proposed to facilitate data collection from diverse data sources.
- Standardised metadata: Predefined common metadata attributes to tag data from different sources homogeneously in the data platform. These agreed metadata attributes also enable dynamic data integration and multi-format conversion.
- Real-time perspective: One of the main goals is to enable rapid data transfers by limiting the size of data packages. This reduces the latency of data end-to-end and allows timely decision-making.
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Method | Advantages | Drawbacks |
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BIM tools’ APIs + relational database: Sensor and BIM data are stored in a relational DB. Virtual objects are connected to sensor data through unique identifiers [38,39]. |
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New data schema creation: Transform BIM data into relational database using new data schema [40,41]. |
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Create a new Query Language (QL): for querying time-series and IFC data [42,43]. |
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Semantic web approach: for storing, sharing, using heterogeneous data [44,45]. |
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Hybrid approach: semantic web + relational database: both approaches are used for storing cross-domain data [46,47]. |
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Code | Asset | Sensor Name | Location | Sensor Type | Unit | IFC Entities | Existing |
---|---|---|---|---|---|---|---|
G44 | G.44 (lev.0) | IfcSpace | yes | ||||
G44_1 | Monnit sensor | G.44 room | sensor unit | C/% | IfcSensorType | no | |
G44_2 | Temperature VRF | Air terminal at VRF 36 | sensor unit | C | IfcEnergyConversionDevice | yes | |
G44_3 | Temperature VRF | Air terminal at VRF 37 | sensor unit | C | IfcEnergyConversionDevice | yes | |
G44_4 | Fan speed VRF | Air terminal at VRF 36 | integrated | level (1-n) | IfcFanType | no | |
G44_5 | Fan speed VRF | Air terminal at VRF 37 | integrated | level (1-n) | IfcFanType | no | |
AHU | AHU2 | IfcAsset | no | ||||
AHU_1 | AHU extract air temperature | after the air mixer | sensor unit | C | IfcSensorType | no | |
AHU_2 | AHU extract fan speed | AHU extract fan | integrated | ls-1/% | IfcFanType | no | |
AHU_3 | AHU extract air filter DPS | AHU extract air filter | integrated | Pa | IfcFilterType | no | |
AHU_4 | AHU supply air filter DPS | AHU supply air filter | integrated | Pa | IfcFilterType | no | |
AHU_5 | AHU supply fan speed | AHU supply fan | integrated | ls-1/% | IfcFanType | no | |
AHU_6 | AHU supply air reheat level | AHU supply air reheat | integrated | % | IfcCoilType | no | |
AHU_7 | AHU supply air temperature | before the air splitter | sensor unit | C/Pa | IfcSensorType | no | |
AHU_9 | Thermowheel exchange rate | Thermowheel | integrated | % heat | IfcAirToAirHeatRecoveryType | no | |
WR2 | WR2 | IfcAsset | no | ||||
WR2_1 | WR2 supply temperature | before WR2 loop | sensor unit | C | IfcSensorType | no | |
WR2_2 | WR2 cooling pump DPS | WR2 cooling pump | integrated | Pa | IfcPumpType | no | |
WR2_3 | WR2 return temp | leaving WR2 loop | sensor unit | C | IfcSensorType | no | |
DAC_1 | Dry air cooler DPS | DAC | integrated | Pa | IfcChillerType | no | |
DAC_2 | DAC on temp | before DAC | integrated | C | IfcSensorType | no | |
DAC_3 | DAC off temp | after DAC | integrated | C | IfcSensorType | no | |
DIAL | 1.58 (lev. 1) | IfcSpace | yes | ||||
DIAL_1 | Space temp | space | sensor unit | C | IfcSensorType | no | |
RAD | Radiators | IfcAsset | no | ||||
RAD_1 | Radiator pump DPS | Radiator pump | integrated | Pa | IfcPumpType | no | |
RAD_2 | VT flow supply temp | radiator inlet | sensor unit | C | IfcSensorType | no | |
RAD_3 | VT flow return temp | radiator outlet | sensor unit | C | IfcSensorType | no | |
RAD_4 | VT heat meter | sensor unit | Kwh | IfcFlowMeterType | no |
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Moretti, N.; Xie, X.; Merino, J.; Brazauskas, J.; Parlikad, A.K. An openBIM Approach to IoT Integration with Incomplete As-Built Data. Appl. Sci. 2020, 10, 8287. https://doi.org/10.3390/app10228287
Moretti N, Xie X, Merino J, Brazauskas J, Parlikad AK. An openBIM Approach to IoT Integration with Incomplete As-Built Data. Applied Sciences. 2020; 10(22):8287. https://doi.org/10.3390/app10228287
Chicago/Turabian StyleMoretti, Nicola, Xiang Xie, Jorge Merino, Justas Brazauskas, and Ajith Kumar Parlikad. 2020. "An openBIM Approach to IoT Integration with Incomplete As-Built Data" Applied Sciences 10, no. 22: 8287. https://doi.org/10.3390/app10228287
APA StyleMoretti, N., Xie, X., Merino, J., Brazauskas, J., & Parlikad, A. K. (2020). An openBIM Approach to IoT Integration with Incomplete As-Built Data. Applied Sciences, 10(22), 8287. https://doi.org/10.3390/app10228287