Optimizing the View Percentage, Daylight Autonomy, Sunlight Exposure, and Energy Use: Data-Driven-Based Approach for Maximum Space Utilization in Residential Building Stock in Hot Climates
Abstract
:1. Introduction
2. Multi-Objective Evolutionary Algorithms
3. Research Aim and Contribution
4. Materials and Methods
5. Description of Case Studies
6. Objectives, Variables, Energy Sources and Climate Context
7. Modeling and Settings for Simulation and Optimization
8. Internal Loads
9. Constructive Parameters
10. Natural Ventilation Versus Cooling and Heating Demands
11. Research Framework
12. Research Working Flow
13. Results and Discussion
13.1. First Scenario
- is the energy use intensity in kWh/m2.
- is the window-to-wall ratio for the Living Room oriented towards the south.
- is the window-to-wall ratio for the Master Bedroom oriented towards the east.
- is the window-to-wall ratio for Corner Bedroom oriented towards the south.
- is the window-to-wall ratio for the Salon oriented towards the south.
13.2. Second Scenario
- is the space proportion for the Living Room oriented and shifted towards the south.
- is the space proportion for the Master Bedroom oriented and shifted towards the east.
- is the space proportion for the Corner Bedroom oriented and shifted towards the east.
- is the space proportion for the Corner Bedroom oriented and shifted towards the south.
- is the space proportion for the Salon oriented and shifted towards the south.
13.3. Third Scenario
14. Study Limitations
15. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Reference | Typology | Case Study | Site | Simulation Tool | Dynamic Parameters | Objectives |
---|---|---|---|---|---|---|
[21] | O | HB | Cairo, London, and Chicago. | Rhinoceros Grasshopper Ladybug + Honeybee Octopus | lattice incubates boxes form generation method | Energy efficiency in addition to daylitghting and views to the outdoor in the second and third parts |
[55] | O | HB | Cairo, Aswan, and Alexandria | Rhinoceros Grasshopper Ladybug + Honeybee Octopus | Optimized building form and envelope of a three floor open plan | Thermal energy performance and daylighting |
[56] | O | HB | Atlanta, Miami, and Chicago. | Rhinoceros Grasshopper Ladybug + Honeybee Octopus | Building form (including roof shape) and envelope | Energy performance Daylighting |
[57] | RMF | HB | Budapest, Hungary. | Rhinoceros Grasshopper Ladybug + Honeybee Octopus python | Form, materials, and envelope in addition to heating energy source. | Six common life-cycle assessment metrics such as acidification potential, stratospheric ozone depletion |
[58] | O | HB | Shanghai, Beijing, and Shenzhen. | Rhinoceros Grasshopper Galapagos DIVA. | Form and envelope of two building forms | Energy performance |
[59] | R | HB | Three cities in the USA | GA optimizer GENE_ARCH DOE-2 | Form (including roof shape) and envelope parameters such as dimensions of the rooms and the window size. | Daylight Energy performance |
[53] | U | HB | Philadelphia | Energy plus Matlab M file | Manipulating a single-zone box to generate complex forms | Energy performance |
[54] | U | HB | Three different climates (hot, cold, and temperate) | Energy plus Matlab M file | Manipulating a single-zone box to generate complex forms | Energy performance |
[60] | O | HB | Cairo | Rhinoceros Grasshopper Ladybug + Honeybee Octopus Python | Building form and orientation of four new proposed form genetion methods including polygons, pixels, letters, and round families. | Thermal energy performance |
[50] | O | HB | Cairo, London, and Chicago. | Rhinoceros Grasshopper Ladybug + Honeybee Octopus | Building form and orientation | Thermal energy performance |
[48] | RMF | HB | Singapore | Rhino + grasshopper/Ladybug + Honeybee | 2 shapes, orientation + 16 variables | Daylight performance, energy efficiency, and thermal comfort |
[61] | RMF | HB | Yazd, Tehran, Tabriz, Rasht, Bandar Abbas, Iran | EnergyPlus | 4 variables | Payback period and the predicted percentage dissatisfied |
[62] | I | HB | Kjevik, Norway | IDA ICE | 17 variables | Energy consumption and thermal comfort |
[63] | O | HB | Qingdao, China | EnergyPlus | Orientation + 27 variables | Carbon emissions, discomfort hours, and global cost |
[64] | I | RB | Guangzhou, China | Grasshopper | Orientation + 29 variables | Energy, thermal comfort, and daylighting |
[65] | I | HB | Nanjing, China | EnergyPlus | 22 variables | Daylighting, thermal comfort, energy savings, and economy |
[66] | I | RB | Tianjin, China | EnergyPlus | 13 variables | Improve energy efficiency and thermal comfort |
[67] | I | RB | Wuhan, China | DesignBuilder, EnergyPlus | 6 variables | Energy consumption and indoor thermal comfort |
[68] | RSF | HB | Serbia | DesignBuilder, EnergyPlus | 7 variables | Improve energy efficiency and thermal comfort |
[69] | RSF | HB | Marrakech, Morocco | TRNSYS | 7 variables | Improve thermal comfort and energy performance |
[70] | RMF | HB | Agadir, Tangier, Fez, Ifrane, Marrakech and Errachidia, Morroco | TRNSYS | Orientation + 8 variables | LCC, energy saving, and thermal comfort |
[71] | RSF | HB | Darwin, Alice Springs, Brisbane, Perth, Sydney, Mildura, Melbourne, and Hobart, Australia | TRNSYS and Daysim | 9 variables | Thermal discomfort hours, unsatisfied daylight hours, and LCC |
[72] | – | HB | Boston, MA, USA | EnergyPlus | Orientation + 4 variables | Energy consumption for annual heating, cooling, and electric lighting |
[73] | RMF | RB | Osmaniye and Erzurum, Turkey | EnergyPlus | Orientation + 7 variables | Thermal energy and investment cost |
[11] | RMF | RB | Hanzhong, Chengdu, Wuhan, Changsha, Xinyang, Yichang, Chongqing, Shaoguan, China | EnergyPlus | Orientation + 13 variables | EUI for heating and cooling, thermal discomfort cooking rate, and LCC |
[74] | RSF | HB | Bento Gonçalves, Santa Maria, and Florianopólis, Brazil | EnergyPlus | 4 variables | Energy demand and thermal discomfort |
[75] | RSF | HB | Chapecó, Brazil | EnergyPlus + Archsim | Window orientation + 12 variables | Degrees of hours of cooling and heating |
[76] | RMF | HB | South Korea | TRNSYS | 12 variables | Building energy demand, LCA, and LCC |
[57] | RMF | HB | Budapest, Hungary | Rhinoceros 3D Grasshopper EnergyPlus | Number of floors, building width + 12 variables | Embodied and operational impact |
[77] | RMF | HB | Roma, Italy | EnergyPlus | 11 variables | Investment cost, energy cost, energy Demand, and CO2 emissions |
[78] | RMF | HB | 19 different cities | EnergyPlus | 11 variables | CO2 emission, annual energy costs, and energy retrofit costs. |
[79] | O | HB | Hohhot, Tianjin, Shanghai, Guangzhou, China | DesignBuilder | Orientation + 9 variables | Heating, cooling, lighting energy consumption, and discomfort hours |
[80] | HB | Curitiba, Brazil | EnergyPlus | Orientation + 6 variables | Degrees of hours of cooling and heating | |
[81] | RMF | HB | Roma, Italy | EnergyPlus | (Phase I): Shape, shape proportion, orientation + 5 variables | Total energy demand, heating and cooling demand |
[82] | O | HB | Athens, Greece | Rhino and Grasshopper software via the plugins Honeybee and Ladybug EnergyPlus | 4 shapes + 4 orientations + 5 variables | Energy demand, energy production, and adaptive thermal comfort |
[83] | RMF | HB | Stockholm, Sweden | Grasshopper, EnergyPlus, Honeybee, | Rectangular, H, U, L, T, and cross shapes, orientation + 10 variables | Embodied and operational energy |
[84] | RSF | HB | Singapore | EnergyPlus | Phase I: Orientation + 8 variables—Phase II: 4 variables | Phase I: thermal discomfort rate and daylighting ineffective time. Phase II: LCC and energy consumption |
[85] | RMF | HB | Palermo, Naples, Florence, and Milan, Italy | EnergyPlus | Orientation + 15 variables | Primary energy consumption, energy-related global cost, and discomfort hours |
[85] | RSF | HB | Naples, Italy, and Athens, Greece | EnergyPlus | 9 variables | Global cost and primary energy consumption |
[86] | RMF | HB | Hong Kong, China | EnergyPlus | Orientation + 10 variables | Heating, cooling, and lighting demand |
[87] | RSF | HB | Québec, Canada | 39 variables | LCC, greenhouse gases emissions, and the thermal discomfort | |
[85] | O | HB | Milan, Italy | EnergyPlus | Orientation + 53 variables | Primary energy consumption, global cost, and CO2-eq emissions |
[9] | HB | Curitiba, Florianópolis, Campo Grande, and Belém, Brazil | EnergyPlus | Shape of a module (array), orientation + 6 variables | Energy consumption and constructive cost | |
[88] | RSF | HB | Curitiba, Santa Maria and Florianopólis, Brazil | EnergyPlus | 4 variables | Heating demand and degree-hours of cooling |
[43] | O | HB | Beijing, Shangai, and Guangzhou, China | Radiance + DesignBuilder | Rectangle, L-shaped, H-shaped, U-shaped, cross, T-shaped and trapezoidal + 11 variables | Building proportion, daylight, and energy consumption |
[89] | RMF | HB | Embrun, La Rochelle, Nice, Nancy and Limoges, France. Beirut, Qartaba, Zahle, Cedars, Lebanon | TRNSYS | 14 variables | Thermal and electrical demands, and LCC |
[90] | RMF | HB | Shanghai, China | EnergyPlus | Orientation + 19 variables | Comfort Time Ratio and energy demand |
[91] | RMF | HB | Hong Kong, Guangzhou, China. Taipei, Taiwan. Bangkok, Thailand. Singapore. | EnergyPlus | Orientation + 6 variables | Lighting and cooling energy consumption |
[92] | RMF | HB | Hong Kong, China | EnergyPlus | Orientation + 9 variables | Lighting energy and cooling energy |
[93] | RSF | HB | Paraná, Argentina | EnergyPlus | Orientation + 6 variables | The comfort of naturally ventilated rooms and energy consumption in air-conditioned rooms |
[94] | RSF | HB | Viçosa, Brazil | Rhino + Grasshopper + Archsim + EnergyPlus | 8 variables | Degrees of hours of cooling and heating and cost |
[95] | O | HB | Naples, Italy | EnergyPlus | Orientation + 47 variables | Energy consumption, thermal discomfort hours, and the global cost of energy |
[96] | I | HB | Benevento, Italy | EnergyPlus | 10 variables | St1: discomfort hours, heating and cooling demands St2: investment cost, primary energy consumption, and LCC |
Objective/Variable/Energy Source | Units | Quantification Method | Quantification Values | ||
---|---|---|---|---|---|
Objective | EUI | kWh/m2 | Minimize | - | |
ASE | % | Minimize | - | ||
sDA | % | Maximize | - | ||
VPO | % | Maximize | - | ||
Space proportions | Living Room oriented towards the south direction | m | A ratio from the original dimension of each side of the space | X, Y (OV) = 3.85 0.8 (80%) = 3.08 0.9 = 3.465 1.1 = 4.235 1.2 = 4.62 | |
Master Bedroom oriented towards the east direction | m | A ratio from the original dimension of each side of the space | X, Y = 3.55 0.8 = 2.84 0.9 = 3.195 1.1 = 3.905 1.2 = 4.26 | ||
Bedroom oriented towards the east direction | m | A ratio from the original dimension of each side of the space | X, Y = 3.55 0.8 = 2.84 0.9 = 3.195 1.1 = 3.905 1.2 = 4.26 | ||
Bedroom oriented towards the south direction | m | A ratio from the original dimension of each side of the space | X, Y = 4.15 0.8 = 3.32 0.9 = 3.735 1.1 = 4.565 1.2 = 4.98 | ||
Salon oriented towards the south direction | m | A ratio from the original dimension of each side of the space | X, Y = 5.5 0.8 = 4.40 0.9 = 4.95 1.1 = 6.05 1.2 = 6.6 | ||
Window Wall Ratio | Living Room oriented towards the south direction | % | Window ratio compared to wall area | 0.24 (24%) 0.48 0.72 | |
Bedroom oriented towards the east direction | % | Window ratio compared to wall area | 0.15 0.3 0.45 | ||
Bedroom oriented towards the south direction | % | Window ratio compared to wall area | 0.18 0.36 0.54 | ||
Salon oriented towards the south direction | % | Window ratio compared to wall area | 0.2 0.4 0.6 | ||
Energy Sources | Cooling | kWh/m2 | Minimize | - | |
Interior Light | kWh/m2 | Minimize | - | ||
Electric Equipment | Minimize | - | |||
Residential HVAC Fans | kWh/m2 | Minimize | - |
Months | January | February | March | April | May | June | July | August | September | October | November | December | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Seasons | Fall | Spring | Summer | Fall | |||||||||
AC Condition: On/Off | NO AC operated | NO AC operated | NO AC operated | NO AC operated | NO AC operated | 2 AC units operated/1 bedroom & Living room | 3 AC units operated/2 bedrooms & Living room | 3 AC units operated/2 bedrooms & Living room | 4 AC units operated/2 bedrooms & Living room | NO AC operated | NO AC operated | NO AC operated | |
EUI Breakdown | Cooling | 0 | 0 | 0 | 0 | 0 | 1.07 | 2.297 | 2.48 | 2.323 | 0 | 0 | 0 |
Interior Light | 0.209 | 0.209 | 0.209 | 0.209 | 0.209 | 0.287 | 0.287 | 0.287 | 0.287 | 0.287 | 0.209 | 0.209 | |
Electric Equipment | 1.07 | 1.07 | 1.07 | 1.07 | 1.07 | 1.122 | 1.148 | 1.148 | 1.148 | 1.148 | 1.07 | 1.07 | |
Residential HVAC Fans | 0 | 0 | 0 | 0 | 0 | 0.052 | 0.104 | 0.104 | 0.104 | 0 | 0 | 0 | |
Total EUI in kWh/m2/y | 1.28 | 1.28 | 1.28 | 1.28 | 1.28 | 2.53 | 3.83 | 4.02 | 3.86 | 1.43 | 1.28 | 1.279 |
Condition | Space Definition | Area | Number of Occupants | Interior Light | Electric Equipment | Schedule |
---|---|---|---|---|---|---|
AC spaces | Living room | 14 m2 | 3 persons | 17 watts × 2 lamps | 37 watts | During the summer season, both zones of the residential unit are heavily occupied and require air conditioning, resulting in higher energy consumption for cooling. However, during the fall and spring seasons, there is no need for air conditioning, and the energy consumption for appliances and lighting is reduced by half for bedrooms, while the living room is found to be used more frequently than the bedrooms, which also contributed to differences in energy consumption during the whole year. |
Master bedroom, bedroom, and living room | 34 m2 | 3 persons | 13 watts × 3 lamps | 45 watts | ||
Non-AC spaces | Salon, corridor, entrance lobby, and toilets | 53 m2 | 3 persons | 9 watts × 4 lamps | 15 watts | These areas have consistent energy consumption levels throughout the year with little to no significant variation. |
Kitchen | 12 m2 | 2 persons | 9 watts × 1 lamps | 550 watts | It is important to note that equipment such as the refrigerator is often operated without rest throughout the whole year, while the equipment and lamps are primarily used during the cooking process. |
Scenario | Constant Inputs | Variable Inputs | R-squared |
---|---|---|---|
First Scenario | Space Proportions (SP) | Window-to-wall ratio (WWR) | 0.61 |
Second Scenario | Window to Wall Ratio (WWR) | Space proportions (SPs) | 0.27 |
Third Scenario | N.A. | (WWR) and (SPs) | 0.89 |
Space proportions | Window-to-wall ratio | EUI (kWh/m2) | Daylight | Visual comfort | |||||||||||
Living Room | Master Bedroom | The Corner Bedroom Shifted toward the east | The Corner Bedroom Shifted towards the south | Salon, southern orientation | WWR for Living Room | WWR for Master Bedroom, eastern orientation | WWR for Corner Bedroom, southern orientation | WWR for Salon, southern orientation | 300 lux for 50% of the Occupied Period | sDA_LEED Status of Your Geometry | ASE_LEED Status of Your Geometry | 1000 Lux or More for At Least 250 Occupied Hours per Year | VPO Percentage | VPO (Pass or Fail) | |
1.1 | 1.1 | 1.1 | 1.2 | 1.2 | 0.24 | 0.15 | 0.18 | 0.2 | 3.674 | 20.00% | 2 | 1 | 0.00% | 6.70% | 2 |
0.9 | 1.2 | 1 | 1 | 1 | 0.48 | 0.15 | 0.36 | 0.6 | 4.162 | 47.90% | 2 | 1 | 0.00% | 10.50% | 2 |
0.8 | 0.8 | 0.9 | 0.8 | 1.1 | 0.72 | 0.3 | 0.36 | 0.6 | 4.769 | 63.90% | 1 | 1 | 0.00% | 14.30% | 2 |
1.2 | 1.2 | 0.8 | 1.2 | 0.9 | 0.72 | 0.45 | 0.36 | 0.6 | 4.978 | 58.60% | 1 | 1 | 0.00% | 14.70% | 2 |
1.2 | 0.8 | 0.9 | 0.9 | 0.9 | 0.72 | 0.45 | 0.54 | 0.4 | 5.636 | 59.60% | 1 | 1 | 0.00% | 18% | 2 |
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Kamel, T.M.; Khalil, A.; Lakousha, M.M.; Khalil, R.; Hamdy, M. Optimizing the View Percentage, Daylight Autonomy, Sunlight Exposure, and Energy Use: Data-Driven-Based Approach for Maximum Space Utilization in Residential Building Stock in Hot Climates. Energies 2024, 17, 684. https://doi.org/10.3390/en17030684
Kamel TM, Khalil A, Lakousha MM, Khalil R, Hamdy M. Optimizing the View Percentage, Daylight Autonomy, Sunlight Exposure, and Energy Use: Data-Driven-Based Approach for Maximum Space Utilization in Residential Building Stock in Hot Climates. Energies. 2024; 17(3):684. https://doi.org/10.3390/en17030684
Chicago/Turabian StyleKamel, Tarek M., Amany Khalil, Mohammed M. Lakousha, Randa Khalil, and Mohamed Hamdy. 2024. "Optimizing the View Percentage, Daylight Autonomy, Sunlight Exposure, and Energy Use: Data-Driven-Based Approach for Maximum Space Utilization in Residential Building Stock in Hot Climates" Energies 17, no. 3: 684. https://doi.org/10.3390/en17030684
APA StyleKamel, T. M., Khalil, A., Lakousha, M. M., Khalil, R., & Hamdy, M. (2024). Optimizing the View Percentage, Daylight Autonomy, Sunlight Exposure, and Energy Use: Data-Driven-Based Approach for Maximum Space Utilization in Residential Building Stock in Hot Climates. Energies, 17(3), 684. https://doi.org/10.3390/en17030684