Advancing Urban Building Energy Modeling: Building Energy Simulations for Three Commercial Building Stocks through Archetype Development
Abstract
:1. Introduction
1.1. Background
1.2. Building Stock Energy Simulation and Modeling
1.3. UBEMs and Energy Simulation
1.4. Research Gap and Study Contribution
2. Methodology
2.1. Selection of the Building Stocks
2.2. Archetype Library
2.3. Photogrammetry and Image Processing for Estimating the WWR
2.4. LiDAR Analysis for Estimating the Building Height
2.5. Developing UBEM and the Energy Simulations
2.6. Energy Conservation Strategies
3. Results and Discussion
3.1. Estimating the Window to Wall Ratio (WWR) for Individual Stock Is Essential for the UBEM
3.2. Energy Use Intensity Pattern of the Studied Buildings
3.3. Variations in the Simulated EUIs in the Studied Buildings
3.4. Validation of UBEM Results
3.5. Energy Conservation Strategies of the Studied Commercial Building Stock
3.6. Limitations
4. Conclusions
- Considerable variations for the measured WWRs were found compared to the latest CBECS survey data among the studied individual building stock. Considerable variations were also observed when comparing the WWRs. For instance, a higher frequency of WWRs was found between 0.02–0.50 (83%) in the survey data compared to 93% for the studied building stocks.
- The simulated annual EUI ranged from 282–3332 kWh/m2 for the studied building stocks depending on the type of use. Lower EUIs were found for sales and shopping, while much higher ones were found for food sales and services.
- More than 70% of the buildings had annual EUIs within 500–700 kWh/m2 for sales and shopping, about 70% within 2600–2900 kWh/m2 for food sales and services, and about 65% within 600–1000 kWh/m2 for healthcare facilities.
- Validating the simulated results with the actual data showed a 9% and 11% PE for sales and shopping and healthcare facilities, respectively. The KS results also demonstrated the validity of the UBEM-simulated results for the studied stocks.
- Lighting system upgrades together with the energy-efficient appliances could reduce the annual EUI by 26%, 17%, and 14% for sales and shopping, food sales and services, and healthcare facilities, respectively.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Building Stock | Simulated EUI (kWh/m2) | Actual/Reference EUI (kWh/m2) |
---|---|---|
Sales and shopping | 528 | 486 |
Food sales and services | 2894 | 3145 * |
Healthcare facilities | 822 | 922 |
Building Stock Type | PE (%) | KS Test Results | |
---|---|---|---|
p-Value | Hypothesis | ||
Food sales and services | * | * | * |
Sales and shopping | 9 | 0.541 | 0 |
Healthcare facilities | 11 | 0.699 | 0 |
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Hossain, M.U.; Cicco, I.; Bilec, M.M. Advancing Urban Building Energy Modeling: Building Energy Simulations for Three Commercial Building Stocks through Archetype Development. Buildings 2024, 14, 1241. https://doi.org/10.3390/buildings14051241
Hossain MU, Cicco I, Bilec MM. Advancing Urban Building Energy Modeling: Building Energy Simulations for Three Commercial Building Stocks through Archetype Development. Buildings. 2024; 14(5):1241. https://doi.org/10.3390/buildings14051241
Chicago/Turabian StyleHossain, Md. Uzzal, Isabella Cicco, and Melissa M. Bilec. 2024. "Advancing Urban Building Energy Modeling: Building Energy Simulations for Three Commercial Building Stocks through Archetype Development" Buildings 14, no. 5: 1241. https://doi.org/10.3390/buildings14051241
APA StyleHossain, M. U., Cicco, I., & Bilec, M. M. (2024). Advancing Urban Building Energy Modeling: Building Energy Simulations for Three Commercial Building Stocks through Archetype Development. Buildings, 14(5), 1241. https://doi.org/10.3390/buildings14051241