Development of a BIM-Based Framework Using Reverberation Time (BFRT) as a Tool for Assessing and Improving Building Acoustic Environment
Abstract
:1. Introduction
2. Objectives and Research Methodology: Problem Identification and the Use of BIM as a Framework to Assess Acoustical Performance of Buildings
3. Parameters and Tools Used for the Development of the BIM-Based Framework
3.1. Using Visual Programming Language in BIM Methodology
3.2. Reverberation Time (RT) for the Assessment of Acoustic Room Behaviour
4. Proposed BIM Framework for Acoustic RT-Based Design in Indoor Areas (BFRT)
4.1. Stage 1—BIM Modelling
4.2. Stage 2—Data Extraction and RT Calculation
4.2.1. First Node Group—Stage 2: Room Level Selection
4.2.2. Second Node Group—Stage 2: Room Data Extraction
4.2.3. Third Node Group—Stage 2: RT Optimum Calculation
4.2.4. Fourth Node Group—Stage 2: RT Calculation and Visualization
4.3. Stage 3—Optimization Algorithm
- From the y limits of the acceptance interval, it is possible to calculate the minimum acoustic absorption surface () y and the maximum acoustic surface absorption () that the room under analysis should have. The bounding strategy is set from the Equations (4) and (5),
- 2.
- For each individual solution that meets the acceptance criterion, the objective functions are computed. These functions are two: the first one denoted as Ci is the cost of the investment (Equation (9)) and the second one is denoted as Di (Figure 9) which is the absolute value of the difference between the total absorption surface area that provides such a solution with respect to the optimal absorbent surface area () of the enclosure (Equation (10)).
- 3.
- Once obtained the set of solutions for the studied problem, the optimum solutions are calculated using of the Pareto front or frontier. The criterion of optimization has been the minimization of the cost and the difference between the absorbent surface area of the solution and the optimum absorbent surface area.The Pareto front is the set of possible solutions of optimization that are not dominated; a non-dominated solution being a solution that is not dominated by any other solution. The optimal Pareto solution will be that solution such that there is no other solution that will improve in a goal without becoming worse at least one of the other ones.
- 4.
- This algorithm ends by showing the solutions that belong to the Pareto fronts corresponding to each one of the 7 types of actions proposed in Table 3. Thus, the designer will be able to choose between the proposed solutions, as they all fulfil the criterion of a suitable RT.
5. Results: Case Study
5.1. Building for the Case Study
5.2. Data Extraction and RT Calculation (Application of the Stage 2 of the Proposed Procedure)
5.3. Optimization (Application of Stage 3 of the Proposed Procedure)
5.4. Solutions for the Study Case in Different Locations: Comparison of Results
5.5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Country | Type of Room | Requirement RT | Frequency Band | Comment |
---|---|---|---|---|
Spain [34] | classrooms and conference rooms | 0.7 s | 500–1000–2000 Hz | Unfurnished and unoccupied room. ≤ 350 m3 |
classrooms and conference rooms | 0.5 s | 500–1000–2000 Hz | Furnished room. ≤ 350 m3 | |
Restaurants and canteens rooms | 0.9 s | 500–1000–2000 Hz | Unfurnished and unoccupied room | |
France [35] | Classrooms and polyvalent rooms | 0.4 ≤ RT < 0.8 s | 500–1000–2000 Hz | Furnished and unoccupied room. ≤ 250 m3 |
Classrooms and polyvalent rooms | 0.6 ≤ RT < 1.2 s | 500–1000–2000 Hz | Furnished and unoccupied room. > 250 m3 | |
Restaurant (School) | 0.4 ≤ RT < 0.8 s | 500–1000–2000 Hz | Furnished and unoccupied room. ≤ 250 m3 | |
Restaurant (School) | 0.6 ≤ RT < 1.2 s | 500–1000–2000 Hz | Furnished and unoccupied room. > 250 m3. Special study required | |
Sport | 0.6 s | 500–1000–2000 Hz | Furnished and unoccupied room. ≤ 250 m3 | |
Portugal [36] | Sport | 500–1000–2000 Hz | Furnished and unoccupied room. | |
Sport | 500–1000–2000 Hz | Furnished and unoccupied room. With Public address | ||
Auditory, conference and polyvalent rooms | 500–1000–2000 Hz | Furnished and unoccupied room. if < 250 m3. | ||
Auditory, conference and polyvalent rooms | 500–1000–2000 Hz | Furnished and unoccupied room. if 250 ≤ < 9000 m3. | ||
Auditory, conference and polyvalent rooms | 500–1000–2000 Hz | Furnished and unoccupied room. ≥ 9000 m3. | ||
Belgium [37] | classrooms and conference rooms | 500–1000–2000 Hz | Unfurnished and unoccupied room. | |
Sport | 500–1000–2000 Hz | Unfurnished and unoccupied room. | ||
Restaurant (School) | 1.0 s | 500–1000–2000 Hz | Unfurnished and unoccupied room. | |
United Kingdom [38] | Clasrooms (primary school) | RT ≤ 0.6 s1 RT ≤ 0.8 s2 | 500–1000–2000 Hz | Furnished and unoccupied room. |
Clasrooms (secondary school) | RT ≤ 0.8 s1 RT ≤ 1.0 s2 | 500–1000–2000 Hz | Furnished and unoccupied room. | |
Lecture rooms | RT ≤ 0.8 s1 RT ≤ 1.0 s2 | 500–1000–2000 Hz | Furnished and unoccupied room. Fewer than 50 people | |
Lecture rooms | RT ≤ 1.0 s1 RT ≤ 1.0 s2 | 500–1000–2000 Hz | Furnished and unoccupied room. More than 50 people | |
Gymnasium/activity studio | RT ≤ 1.5 s1 RT ≤ 2.0 s2 | 500–1000–2000 Hz | Furnished and unoccupied room. |
Shared Parameter | Definition | Type Parameter | Caegory |
---|---|---|---|
RT | Reverberation time of room | Number | Room |
Type room | Type of room | String | Room |
Id | Identification number of material with Acoustic material Database | Number | Material/Door/Window |
Afurn | Equivalent sound absorption area of furniture | Number | Room |
Element | Data-Type | Description |
---|---|---|
Name | String | Name or description of the construction material |
Id | Number | Identification number of the acoustic material |
α | Number | Absorption coefficient in the 125–250–500–1000–2000–4000 Hz frequency band. |
Location | Number | Each finish material has a specific type of location (wall or/and ceiling or/and floor). |
Cost | Number | Cost of material (€/m2) |
Type | Replaced Material |
---|---|
Type 1 | Replace the wall |
Type 2 | Replace the ceiling |
Type 3 | Replace the floor |
Type 4 | Replace the wall-ceiling |
Type 5 | Replace the wall-floor |
Type 6 | Replace the ceiling-floor |
Type 7 | Replace the wall-ceiling-floor |
Type of Room | Element | Finishing Material |
---|---|---|
Classroom/Reading room/Office/Laboratory | Wall | Plaster |
Ceiling | 15 mm gypsum board | |
Floor | Ceramics | |
Storage/Facilities/Bathroom | Wall | Tile |
Ceiling | Ceiling | |
Floor | Terrazzo | |
Library/Conference room | Wall | 15 mm gypsum board |
Ceiling | Drop ceiling | |
Floor | Parquet |
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Aguilar, A.J.; de la Hoz-Torres, M.L.; Martínez-Aires, M.D.; Ruiz, D.P. Development of a BIM-Based Framework Using Reverberation Time (BFRT) as a Tool for Assessing and Improving Building Acoustic Environment. Buildings 2022, 12, 542. https://doi.org/10.3390/buildings12050542
Aguilar AJ, de la Hoz-Torres ML, Martínez-Aires MD, Ruiz DP. Development of a BIM-Based Framework Using Reverberation Time (BFRT) as a Tool for Assessing and Improving Building Acoustic Environment. Buildings. 2022; 12(5):542. https://doi.org/10.3390/buildings12050542
Chicago/Turabian StyleAguilar, Antonio J., María L. de la Hoz-Torres, Mª Dolores Martínez-Aires, and Diego P. Ruiz. 2022. "Development of a BIM-Based Framework Using Reverberation Time (BFRT) as a Tool for Assessing and Improving Building Acoustic Environment" Buildings 12, no. 5: 542. https://doi.org/10.3390/buildings12050542
APA StyleAguilar, A. J., de la Hoz-Torres, M. L., Martínez-Aires, M. D., & Ruiz, D. P. (2022). Development of a BIM-Based Framework Using Reverberation Time (BFRT) as a Tool for Assessing and Improving Building Acoustic Environment. Buildings, 12(5), 542. https://doi.org/10.3390/buildings12050542