3D Variables Requirements for Property Valuation Modeling Based on the Integration of BIM and CIM
Abstract
:1. Introduction
2. Related Works
3. 3D Relevant Variables for Property Valuation
3.1. Indoor/Outdoor Variables
- (a)
- Indoor variables: refer to specific 3D characteristics of indoor property units in terms of structural and physical elements (property geometry, size, cost, etc.), as well as to indoor living quality: variables simulated and assessed based on the indoor 3D space of the property (spatial daylight autonomy, sound level etc.).
- (b)
- Outdoor variables: refer to the 3D environmental variables assessed at the property level. These variables include noise level, air quality, view quality, and sunlight exposure, as well as the proximity to relevant amenities such as distance to industries, to road, and to view types, and buildings elevation since they are needed for assessing the view quality, noise level, and air quality.
- Indoor daylight: the spatial daylight autonomy is considered as the relevant one. It is defined as the indoor spatial distribution of sufficient natural light for each property unit floor, which measures the percentage of the property unit floor area that receives enough ambient natural light. This variable is assessed based on illuminance level distributed spatially in each floor area. The existing definition-based energy performance considers the value for SDA (spatial daylight autonomy) for each building floor level. We applied the same concept for each property unit floor [16].
- Indoor Quietness: the sound level is considered as the relevant variable since it refers to the amount of indoor noise level diffused from the adjacent property units to the different indoor parts (e.g., room). This variable is determined based on information related to the property unit 3D geometry, information about construction materials-based isolation, and thickness. We excluded the energy acoustic comfort, since the degree of indoor sound is largely sufficient for assessing the impact of indoor noise on property value [25,26].
- Indoor ventilation: it is represented by two parameters: (1) “air flow” and (2) “indoor air quality”. “Air flow” consists of the amount of natural ventilated air to the different property unit’s parts based on the opening’s dimensions and materials properties and information about the surrounding wind data. “Indoor air quality” estimates the air conditions of the ventilated space to get good performance [25,26]. We excluded the energy HVAC (heating ventilation and conditioning) comfort since we are not concerned by the ventilated system value (the same for acoustic comfort).
- Indoor temperature: is defined by the temperature level which refers to the natural heating level conditions of every property unit part based on close surrounding temperature data which is relevant to determine to which extent every room and indoor unit is heated without using any heating system (the reason why the thermal comfort is not relevant). That is why information-based property unit’s construction materials and openings size are important to determine temperature levels [25,26].
- Energy Efficiency: this variable is relevant for new construction since the efficiency of energy systems changes for each property unit within the same building. It is more significant at the operations phase. However, simulations at the design/conception phase can already assess the energy efficiency and show differences between the building units [27].
- Solar Potential: defined as the impact the solar radiation potential of the roof or external building envelop on the building property value which is a constant value in the case of our model since it is related to the same building.
- Noise level defines the outdoor noise disturbance level assessed at property unit level that is perceived from surrounding roads (traffic noise) and the reflected noise on the 3D surrounding environment [28].
- Air quality defines air pollution level assessed at the property unit. We differentiate two relevant pollutants sources: the first one is directly imminent from the nearest industries and roads while the second is propagated due to obstructing building and surrounding vegetation elements [23].
- View quality defines the quality of the view perceived from every property unit’s openings based on two relevant indicators: proximity to view (building, vegetation) and the quality of the view (visibility analysis result). The second indicator considers an obstacle model derived from the surrounding city elements to perceive which views are obstructed by these elements and which views are open. This definition is partially based on a recent study about assessing 3D view characteristics to be introduced to the LADM-Valuation Information Model [5].
- Sunlight exposure defines the sunlight assessed at the property outdoor surface, which includes already the reflected and obstructed light from neighboring obstacles (building, shadowing, vegetation, etc.) [29]. Sunlight has different definitions. For example, it can be defined as the amount of sunlight hours during the day or as a cumulative sun radiation mainly related to the outdoor walls and roof solar potential which we consider not relevant to our model [20]. Table A1, in the Appendix sections, presents an example of the technical specification’s table, which is analyzed for each variable based on previous studies relevant to 3D valuation.
3.2. Variables Classification: Spatial/Non-Spatial Elements
- 3D variables-based spatial elements: defined either by directly 3D property elements (e.g., property height, volume) or indirectly where the spatial extent of these elements is needed to determine the quality or the quantity of these 3D variables. They can be either 2D or 3D elements related to the small building constructive element (construction quantities), to the building scale including building parts (room volume, wall surface, virtual spaces, etc.) and to building exterior envelope elements necessary for locating noise sources, elevation of noise barriers, absorption attenuation factor in vertical noise propagation, etc.).
- 3D variables-based non-spatial elements: defined without using 3D/2D spatial extent of variables. They concern information (attributes) related to spatial elements (e.g., material properties of 3D building part, thermal characteristics, costs, etc.), (noise level, etc.) atmospheric conditions in a specific 3D location (pollutant concentration at a specific floor level), etc.
- Construction materials: defined by two main elements: materials properties (non-spatial) and quantities of specific building elements (e.g., wall, openings) related to the property unit or building part elements (spatial element). These construction materials can be also relevant in the case of any changes impacting the interior’s constructive elements (e.g., new interior wall, new materials type (wood)) or in the context of renovations operations.
- Openings: defined by two relevant elements: the first one refers to 3D openings location and size (spatial element) while the second one is related to openings properties (non-spatial). The location of external openings is one of the relevant elements defining view quality, the indoor diffused daylight. Since the view quality and the amount of solar radiation is changing from each property unit openings. Considering the verticality of urban features, the view can be obstructed by a building from one opening and opened from the other within the same property unit.
- Building parts: define the building elements such as room, wall, roof. Determined by their spatial extent (room volume, thermal zone etc.) and non-spatial extent (e.g., cost estimation). The indoor living quality variables are one of the main variables-based building parts. Since the simulation of these variables requires a 3D indoor space, boundaries and specific thermal properties impact their assessment.
- Building envelope: defines which property unit’s building elements is required from the external envelope to determine a variables value. e.g., the spatial extent of the external wall exposed to sunlight. This element is determined by two quantities: the external wall surface and location (spatial element) and its materials properties (non-spatial element).
- Surrounding amenities: define the relevant urban features in the close surrounding which are relevant elements to assess outdoor variables. They are based on two categories: spatial elements including distance and elevation of amenities while the non-spatial ones refer to the amenities type: source (e.g., road) or barriers (e.g., buildings).
- Atmospheric conditions: define the atmospheric properties impacting the propagation of noise, air flow, or solar radiation in 3D space.
4. CIM and BIM Capabilities for 3D Property Valuation
4.1. BIM/IFC
4.2. CIM/CityGML
4.3. 3D Variables Classification
4.3.1. Indoor Variables Based BIM/IFC
- BIM/IFC models maintain rich semantic information about the architectural and physical space of building and building parts which allow to extract specific building elements (walls, openings, etc.) for a specific property unit [38]. This allows the extraction of structural variables spatial elements related to property position at a specific opening position, to define its storey level. Information related to indoor 3D physical space make it possible to provide property elements size (volume, room area etc.). Figure 7 shows an example of the architectural elements of a residential building model based on IFC standard. These IFC elements can be used to model the property opening’s location, size and property area etc.
- Moreover, BIM provides information about the structural materials of building elements and their thermal properties. Combining this information with the building elements cost, the property cost estimation can be extracted. This process can be modeled based on IFC classes for quantity take-off “building elements” and information related to elementary fabrication cost ‘’cost item”. However, this process is mainly relevant for new or future residential properties where information related to cost fabrication is introduced accurately. Table 3 summarize a concrete example of cost estimation based on structural BIM models elements.
- However, the process to estimate cost variable for each property unit is not an automated process. That is why the extraction-based IFC classes need to be explored.
4.3.2. Indoor Living Quality Variables-Based BIM/IFC and CIM/CityGML
4.3.3. Outdoor Variables Based CIM/CityGML
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Appendix A.1. Example of Technical Specifications Review for the 3D Variables
- Variable name: Sunlight
- Variable type: Environmental Variable (Outdoor)
- Relevant references: (Helbich et al., 2013); (Zhang et al., 2014); (Yu, 2014); (LIU, 2016); (Ricker, 2019); (Li et al., 2019); (Zhang, 2019); (Amoruso et al., 2019); (Fleming et al., 2018).
- Definitions:
- -
- Solar Radiation: solar radiation is defined as the sum of direct and diffuse solar radiation. Diffuse means that the radiation was already reflected before reaching the surface, while direct radiation reaches the surface of interest directly without being scattered by the atmosphere or reflected by any other objects (Helbich et al., 2013).
- -
- Sun exposition: Determine the sun exposure for each house unit; Classify every house units depending to the longest/lowest sun exposure in order to define the sunshine indexes.
- -
- Sunlight duration time (quantitative method of computing sunlight): The number of cumulative or continuous hours of sunlight received by the building (site) during the period of effective sunlight.
- -
- Period of effective sunlight: The period of effective sunlight based on the solar elevation angle and azimuth, the intensity of solar radiation, and the indoor sunlight condition on the reference day, which is represented by true solar time.
- -
- Standards of buildings sunlight: The minimum number of sunlight hours received by the building (site) during the period of effective sunlight. This quantity depends on the climate region, the scale of the city, and the function of the building (site).
- -
- Direct sunlight hours: the average daily hours of direct sunlight received during the year by each house.
- -
- Sunlight quality: calculated whether a building could receive direct sunlight at the specific orientation during different times of a day. The orientation was determined based on the questionnaire on buyers’ preferences.
- -
- Sunlight duration professional analysis: using software for simulation (BIM sunlight analysis module) simulate the sun movement in a particular day and result in a grid with sunlight hours on the surface of buildings.
Variable Definition | Data Attributes | Measurement Building Unit | Technical Analysis | Standards Classification | Authors |
---|---|---|---|---|---|
Solar Radiation (kwh/m2/year) |
| Apartment Openings (3D) | Solar radiation analysis | --- | [28] |
Indoor Sun Exposition |
| Openings (Windows) Apartment (2.5) | Viewshed analysis based sightline | Qualification classes (moderate, best, good) Depends on the sunlight value quantity | [17] |
Direct sunlight hours (h) |
| Apartment (2.5D) | Viewshed analysis | [31] | |
Sunlight quality | Based on Fleming sunlight definition but determined by qualitative survey | Apartment (2.5D) | People’s Preference(contingence) | [16] | |
Sunlight duration Time (h) |
| sun-path diagram methods and shadow diagram methods | >2 h (sunlight duration standard) 8–16 h (period for effective sunlight) | [42] | |
Sunlight duration (every hour) |
| Room based sunshine quantification |
|
| [24] |
Average sunlight radiation levels (year) |
| Building units (based rooms) |
| --- | [43] |
Appendix A.2. Variables Material Properties
Materials Properties | Description | References |
---|---|---|
Absorption | Define building materials capacity of absorbing sound and noise level while the noise is propagated through a building or a barrier, the resulting value is noise attenuation in the case of high absorption factor. | [26] |
Reflectance | Some types of materials dispose of high reflectance for solar radiation, sound, and noise level such as glass. | [43,44] |
Transmittance | The fraction of solar radiation diffused through a specific type of materials related to its opacity or transparence (called also solar heat gain coefficient) | [45] |
Conductivity | The thermal conductivity of the material (W/mK) | [44] |
Specific heat | Specific heat capacity of the material (J/kgK) | |
Glazing properties | Openings (windows, doors) with double/triple glazing properties decrease the amount of diffused noise and air from outdoor to indoor or within indoors different units. | [46] |
References
- El Yamani, S.; Ettarid, M.; Hajji, R. Building Information Modeling Potential for an Enhanced Real Estate Valuation Approach Based on the Hedonic Method. In Building Information Modelling (BIM) in Design Construction and Operations III; WIT Press: Southampton, UK, 2019; Volume 1, pp. 305–316. [Google Scholar] [CrossRef] [Green Version]
- RICS International Valuation Standards. Int. Valuat. Stand. 2020. [CrossRef]
- Wyatt, P.J. The development of a GIS-based property information system for real estate valuation. Int. J. Geogr. Inf. Sci. 1997, 11, 435–450. [Google Scholar] [CrossRef]
- Hussain, T.; Abbas, J.; Wei, Z.; Nurunnabi, M. The effect of sustainable urban planning and slum disamenity on the value of neighboring residential property: Application of the hedonic pricing model in rent price appraisal. Sustainability 2019, 11, 1144. [Google Scholar] [CrossRef] [Green Version]
- Higgins, C.D. A 4D spatio-temporal approach to modelling land value uplift from rapid transit in high density and topographically-rich cities. Landsc. Urban Plan. 2019, 185, 68–82. [Google Scholar] [CrossRef]
- Li, X.; Chen, W.Y.; Cho, F.H.T. 3-D spatial hedonic modelling: Environmental impacts of polluted urban river in a high-rise apartment market. Landsc. Urban Plan. 2020, 203, 103883. [Google Scholar] [CrossRef]
- Toppen, T. The Use of 3D City Models in Real Estate Valuation and Transactions. Master’s Thesis, Eindhoven University of Technology, Eindhoven, The Netherlands, 2016. [Google Scholar]
- Kara, A.; Oosterom, P.V.A.N. 3D Data for Better Property Value Estimation in the context of LADM Valuation Information Model 3D Data for Better Property Value Estimation in the context of LADM Valuation Information Model. In Proceedings of the 6th International FIG Workshop on 3D Cadastres, Delft, The Netherlands, 2–4 October 2018; pp. 549–570. [Google Scholar]
- Ying, Y.; Koeva, M.; Kuffer, M.; Asiama, K.O.; Li, X.; Zevenbergen, J. Making the Third Dimension (3D) Explicit in Hedonic Price Modelling: A Case Study of Xi’an, China. Land 2021, 10, 24. [Google Scholar] [CrossRef]
- Kara, A.; van Oosterom, P.; Çağdaş, V.; Işıkdağ, Ü.; Lemmen, C. 3 Dimensional data research for property valuation in the context of the LADM Valuation Information Model. Land Use Policy 2020, 98, 104179. [Google Scholar] [CrossRef]
- Gröger, G.; Plümer, L. CityGML—Interoperable semantic 3D city models. ISPRS J. Photogramm. Remote Sens. 2012, 71, 12–33. [Google Scholar] [CrossRef]
- Yu, H.; Liu, Y.; Zhang, C. China, Integrating Geographic Information System and Building Information Model for Real Estate Valuation. 2016. Available online: https://www.oicrf.org/-/integrating-geographic-information-system-and-building-information-model-for-real-estate-valuation (accessed on 2 March 2021).
- Arcuri, N.; De Ruggiero, M.; Salvo, F.; Zinno, R. Automated Valuation Methods through the Cost Approach in a BIM and GIS Integration Framework for Smart City Appraisals. Sustainability 2020, 12, 7546. [Google Scholar] [CrossRef]
- Yu, H.; Liu, Y.; Zhang, C. Using 3D Geographic Information System to Improve Sales Comparison Approach for Real Estate Valuation. Available online: https://www.oicrf.org/-/using-3d-geographic-information-system-to-improve-sales-comparison-approach-for-real-estate-valuation (accessed on 2 March 2021).
- Edler, D.; Keil, J.; Wiedenlübbert, T.; Sossna, M.; Kühne, O.; Dickmann, F. Immersive VR Experience of Redeveloped Post-industrial Sites: The Example of “Zeche Holland” in Bochum-Wattenscheid. KN J. Cartogr. Geogr. Inf. 2019, 69, 267–284. [Google Scholar] [CrossRef] [Green Version]
- Ricker, B.A. Assessment of 2D and 3D Methods for Property Valuation Using Remote Sensing Data At the Neighbourhood Scale in Xi’an, China. Master’s Thesis, University of Twente, Enschede, The Netherlands, 2019. [Google Scholar]
- Zhang, H.; Li, Y.; Liu, B.; Liu, C. The application of GIS 3D modeling and analysis technology in real estate mass appraisal—Taking landscape and sunlight factors as the example. Int. Arch. Photogramm. Remote Sens. Spat. Inf. Sci. 2014, 40, 363–367. [Google Scholar] [CrossRef] [Green Version]
- Juan, H. A 3D Gis-Based Valuation System for Assessing the Scenic View in Residential Property Valuations. Ph.D. Thesis, The Hong Kong Polytechnic University, Hong Kong, China, 2019. [Google Scholar]
- Sirmans, S.; Macpherson, D.; Zietz, E. The Composition of Hedonic Pricing Models. J. Real Estate Lit. 2005, 13, 1–44. [Google Scholar]
- Yu, S.M.; Han, S.S.; Chai, C.H. Modeling the value of view in high-rise apartments: A 3D GIS approach. Environ. Plan. B Plan. Des. 2007, 34, 139–153. [Google Scholar] [CrossRef]
- Isikdag, U.; Horhammer, M.; Zlatanova, S.; Kathmann, R.; Van Oosterom, P. Utilizing 3D Building and 3D Cadastre Geometries for Better Valuation of Existing Real Estate. In Proceedings of the FIG Working Week 2015, Sofia, Bulgaria, 17–21 May 2015; pp. 1–18. [Google Scholar]
- Wyatt, P. The development of a property information system for valuation using a geographical information system (GIS). J. Prop. Res. 2010, 9916. [Google Scholar] [CrossRef]
- Zhang, J. Developing a Comprehensive Framework for Property Valuation Using 3D and Remote Sensing Techniques in China. Master’s Thesis, University of Twente, Enschede, The Netherlands, 2019. [Google Scholar]
- Turan, I.; Chegut, A.; Fink, D.; Reinhart, C. The value of daylight in office spaces. Build. Environ. 2020, 168, 106503. [Google Scholar] [CrossRef]
- Kim, M.K.; Barber, C.; Srebric, J. Traffic noise level predictions for buildings with windows opened for natural ventilation in urban environments. Sci. Technol. Built Environ. 2017, 23, 726–735. [Google Scholar] [CrossRef]
- Šujanová, P.; Rychtáriková, M.; Mayor, T.S.; Hyder, A. A healthy, energy-efficient and comfortable indoor environment, a review. Energies 2019, 12, 1414. [Google Scholar] [CrossRef] [Green Version]
- Helbich, M.; Jochem, A.; Mücke, W.; Höfle, B. Boosting the predictive accuracy of urban hedonic house price models through airborne laser scanning. Comput. Environ. Urban Syst. 2013, 39, 81–92. [Google Scholar] [CrossRef] [Green Version]
- Wen, H.; Gui, Z.; Zhang, L.; Hui, E.C.M. An empirical study of the impact of vehicular traffic and floor level on property price. Habitat Int. 2020, 97, 102132. [Google Scholar] [CrossRef]
- Szczepańska, A.; Senetra, A.; Wasilewicz-Pszczółkowska, M. The influence of traffic noise on apartment prices on the example of a European Urban Agglomeration. Sustainability 2020, 12, 801. [Google Scholar] [CrossRef] [Green Version]
- Fleming, D.; Grimes, A.; Lebreton, L.; Maré, D.; Nunns, P. Valuing sunshine. Reg. Sci. Urban Econ. 2018. [Google Scholar] [CrossRef]
- Xu, Z.; Zhuo, Y.; Li, G.; Liao, R.; Wu, C. Towards a Valuation and Taxation Information Model for Chinese Rural Collective Construction Land. Sustainability 2019, 11, 6610. [Google Scholar] [CrossRef] [Green Version]
- Kitsakis, D.; Kalantari, M.; Rajabifard, A.; Atazadeh, B.; Dimopoulou, E. Exploring the 3rd dimension within public law restrictions: A case study of Victoria, Australia. Land Use Policy 2019, 85, 195–206. [Google Scholar] [CrossRef]
- Atazadeh, B.; Kalantari, M.; Rajabifard, A.; Ho, S.; Ngo, T. Building Information Modelling for High-rise Land Administration. Trans. GIS 2017, 21, 91–113. [Google Scholar] [CrossRef]
- Atazadeh, B.; Rajabifard, A.; Zhang, Y.; Barzegar, M. Querying 3D Cadastral Information from BIM Models. ISPRS Int. J. Geo-Inf. 2019, 8, 329. [Google Scholar] [CrossRef] [Green Version]
- Biljecki, F.; Kumar, K.; Nagel, C. CityGML Application Domain Extension (ADE): Overview of developments. Open Geospat. Data Softw. Stand. 2018, 3, 1–17. [Google Scholar] [CrossRef] [Green Version]
- Kutzner, T.; Chaturvedi, K.; Kolbe, T.H. CityGML 3.0: New Functions Open Up New Applications. PFG J. Photogramm. Remote Sens. Geoinf. Sci. 2020, 88, 43–61. [Google Scholar] [CrossRef] [Green Version]
- Plebankiewicz, E.; Zima, K.; Skibniewski, M. Construction cost and time planning using BIM-based applications. In Proceedings of the Creative Construction Conference, Krakow, Poland, 21–24 June 2015; pp. 537–545. [Google Scholar]
- Kumar, K.; Ledoux, H.; Commandeur, T.J.F.F.; Stoter, J.E. Modelling Urban Noise in Citygml Ade: Case of the Netherlands. ISPRS Ann. Photogramm. Remote Sens. Spat. Inf. Sci. 2017, 4, 73–81. [Google Scholar] [CrossRef] [Green Version]
- Arco, E.; Boccardo, P.; Gandino, F.; Lingua, A.; Noardo, F.; Rebaudengo, M. An Integrated Approach For Pollution Monitoring: Smart Acquirement and Smart Information. ISPRS Ann. Photogramm. Remote Sens. Spat. Inf. Sci. 2016, 4, 67–74. [Google Scholar] [CrossRef]
- Casazza, M.; Lega, M.; Jannelli, E.; Minutillo, M.; Jaffe, D.; Severino, V.; Ulgiati, S. 3D monitoring and modelling of air quality for sustainable urban port planning: Review and perspectives. J. Clean. Prod. 2019, 231, 1342–1352. [Google Scholar] [CrossRef]
- Li, L.; Lei, Y.; Tang, L.; Yan, F.; Luo, F.; Zhu, H.; Atazadeh, B.; Rajabifard, A.; Zhang, Y.; Barzegar, M. A 3D spatial data model of the solar rights associated with individual residential properties. Comput. Environ. Urban Syst. 2019, 74, 88–99. [Google Scholar] [CrossRef]
- Amoruso, F.M.; Dietrich, U.; Schuetze, T. Integrated BIM-Parametric Workflow-Based Analysis of Daylight Improvement for Sustainable Renovation of an Exemplary Apartment in Seoul, Korea. Sustainability 2019, 11, 2699. [Google Scholar] [CrossRef] [Green Version]
- Rosser, J.F.; Long, G.; Zakhary, S.; Boyd, D.S.; Mao, Y.; Robinson, D. Modelling urban housing stocks for building energy simulation using CityGML energyade. ISPRS Int. J. Geo Inf. 2019, 8, 163. [Google Scholar] [CrossRef] [Green Version]
- OGC; 3D GIS. CityGML Energy Application Domain Extension. 2016. Available online: https://www.citygmlwiki.org/index.php/CityGML_Energy_ADE (accessed on 2 March 2021).
- Warren-Myers, G.; Kain, C.; Davidson, K. The wandering energy stars: The challenges of valuing energy efficiency in Australian housing. Energy Res. Soc. Sci. 2020, 67, 101505. [Google Scholar] [CrossRef]
- Benloukilia, S.; Darkaoui, W.; Hajji, R.; El Yamani, S. L’apport du BIM Dans L’évaluation Immobilière: Cas d’un Bien Résidentiel. Master Thesis, IAV Hassan II Institute, Rabat, Morocco, 2019. Available online: http://ametop.ma/wp-content/uploads/2020/02/BENLOUKILIA-Siham-DARKAOUI-Wafae.pdf (accessed on 2 March 2021).
Requirements Elements | Spatial Elements | Non-Spatial Elements |
---|---|---|
Construction materials |
|
|
Openings |
|
|
Building parts |
|
|
Building envelops |
|
|
Surrounding amenities |
|
|
Atmospheric conditions |
|
|
Var. Type | Requirements Elements Variables | Construction Materials | Openings | Building Part | Building Envelops | Building Surrounding Amenities | Atmospheric Conditions |
---|---|---|---|---|---|---|---|
Indoor Structural variables | Property position | Building unit height | |||||
Property size | Building unit 3D Volume/area | ||||||
Property floor | Floor area | ||||||
Property cost | Materials cost Materials quantities | Cost estimation | |||||
Property quality | Materials cost Materials quantities | Openings properties | Installation quality Installation type | ||||
Indoor Living Quality (ILQ) | Spatial daylight autonomy (SDA) | Solar absorptance Transmittance Conductivity | Internal and external opening 3D localization Openings materials | Room (materials/size) Walls (materials/size) Building unit: SDA Value | External Wall material properties | Solar position Solar intensity Sky luminance and distribution Sunlight direction | |
Sound Level | Absorbing + scattering properties | Internal opening 3D localization | Room (materials/size) Walls (materials/size) Thermal Space Sound level Value | ||||
Air flow | Absorbing + scattering properties | Internal opening 3D localization | Room (materials/size) Walls (materials/size) Thermal Space Air flow Value | ||||
Level of temperature | Materials properties | Openings 3D location and properties | Thermal Space Temperature Value | External Wall material properties | Temperature degree | ||
Outdoor environmental | Noise level | Absorption + reflectance properties | External openings 3D location | Room Volume Noise level Value | External Wall absorption and scattering properties | Distance to Amenities (road) Elevation of Amenities (building, vegetation) | Absorption conditions Noise direction |
Air Quality | External openings 3D location and properties | Room Volume Air Quality Value | External Wall absorption and scattering properties | Distance to Amenities (road, industries) Elevation of Amenities (building, vegetation) | Absorption conditions Pollutants concentration Degree of fogginess | ||
View quality | External openings 3D location | View Quality Value View type | Distance to Amenities Elevation of Amenities (building, vegetation) | ||||
Sunlight exposure | Solar conductivity, transmittance, reflectance | External openings 3D location Openings materials | Sunlight exposure value | External Wall material properties | Distance to Amenities Elevation of Amenities (building, vegetation, building shadowing) | Solar position Solar intensity Sky luminance and distribution Sunlight direction |
Building Elements | Constructive Element Cost € | Total € |
---|---|---|
Walls | 23,428 | 1,715,882 |
Pillars | 36,036 | |
Foundations | 76,045 | |
Stairs | 3000 | |
Roof | 33,079 | |
Doors | 30,460 | 94,527 |
Windows | 19,800 | |
Wood furniture | 11,040 | |
Electronical equipment’s | 33,227 | |
Sanitary installations | 15,060 | 16,796 |
Fixed appliance | 1736 | |
Total | 28,291,100 € |
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El Yamani, S.; Hajji, R.; Nys, G.-A.; Ettarid, M.; Billen, R. 3D Variables Requirements for Property Valuation Modeling Based on the Integration of BIM and CIM. Sustainability 2021, 13, 2814. https://doi.org/10.3390/su13052814
El Yamani S, Hajji R, Nys G-A, Ettarid M, Billen R. 3D Variables Requirements for Property Valuation Modeling Based on the Integration of BIM and CIM. Sustainability. 2021; 13(5):2814. https://doi.org/10.3390/su13052814
Chicago/Turabian StyleEl Yamani, Siham, Rafika Hajji, Gilles-Antoine Nys, Mohamed Ettarid, and Roland Billen. 2021. "3D Variables Requirements for Property Valuation Modeling Based on the Integration of BIM and CIM" Sustainability 13, no. 5: 2814. https://doi.org/10.3390/su13052814
APA StyleEl Yamani, S., Hajji, R., Nys, G. -A., Ettarid, M., & Billen, R. (2021). 3D Variables Requirements for Property Valuation Modeling Based on the Integration of BIM and CIM. Sustainability, 13(5), 2814. https://doi.org/10.3390/su13052814