Optimizing Window Configuration Counterbalancing Energy Saving and Indoor Visual Comfort for Sydney Dwellings
Abstract
:1. Introduction
2. Literature Review
3. Materials and Method
3.1. Methodology
- Minimizing Energy Use Intensity (EUI) [kWhr/m2/yr];
- Maximizing LEED Quality view (v4.1) [%area];
- Maximizing Spatial Daylight Autonomy (sDA) [%area];
- Minimizing Annual Solar Exposure (ASE) [%time];
- Minimizing Predicted Percentage Dissatisfied (PPD) [%occupants];
- Minimizing Daylight Glare Probability (DGP) [%occupants]; and
- Maximizing Useful Daylight Illuminance (UDI) [% time].
- The window width (Ww) [m];
- The window height (Wh) [m];
- The horizontal and vertical window to the envelope relative distance (C/C) [m].
- Fast-sorting as in this algorithm, “the maximum number of accesses in the non-dominant ordering of non-first dominance i is (N − 1), and the number of non-dominated frontiers is a non-zero constant, that is n ≥ 1” [40];
- Elite, that “ensures that the fitness of the best solution in a population does not deteriorate as the generation advances” [41];
- Multi-objective Genetics Algorithm generates offspring using crossover to vary the programming of a chromosome(s) from one generation to the next. Crossover acts as a genetic operator (recombination) and mutation, a unary operator which only needs one parent to work on, selecting according to nondominated-sorting and crowding distance comparison. The algorithm acts by selecting lower-rank solutions from the population combining the parent population with offspring based on the cardinality of the solution sets and their distance to the solution boundaries [35,42]. It sorts the solution as close to the Pareto-optimal solution as possible. Compared to frequently-used Pareto-optimal methods, NSGA-II provides fast, accurate, and efficient convergence, making searching possible in a wide range and tackling problems that start with non-feasible solutions with diversity in solutions and uses elitist techniques to preserve the best solution for the current population in the next generation [41]. It does so through a better spread of solutions near the true Pareto-optimal [43] and can find a good approximation for the Pareto front [44,45].
Algorithm 1: NSGA-II. |
1: t←0 |
2: initialization:initialize population P(0) |
3: while termination condition ≠ true do |
4: evaluate P(t) |
5: selection:mating pool M(t)←select(P(t)) |
6: crossover:M′ (t)←crossover(M(t)) |
7: mutation:M′′(t)←mutation(M′(t)) |
8: update population:P(t + 1)←update(P(t) ∪ M′′(t)) |
9: t←t + 1 |
10: end while |
- Defining a case determining independent variables (local climate and construction, window properties, etc.);
- Optimizing a multiobjective function of lighting, heating, and cooling electricity consumption (dependent variables);
- Finding Pareto Front solutions, filtering them against local code requirements, ranking them (using TOPSIS technique), and field measurements.
- Applying a mixed approach for validating the solutions both by human subjects’ declaration and sensor measurement (Figure 3).
3.2. Employed Methods and Metrics
3.2.1. Spatial Daylight Autonomy (sDA)
3.2.2. Useful Daylight Illuminance (UDI)
3.2.3. Annual Solar Exposure (ASE)
3.2.4. View Quality
- Multiple lines of sight to the window in different directions at least 90 degrees apart;
- Views that include at least two of the following: (1) flora, fauna, or sky; (2) movement; and (3) objects at least 7.62 m from the outer side of the glazing;
- Unblocked views within a distance of three times the head height of the window; and
- View factor of >=3 or greater.
3.2.5. Daylight Glare Probability (DGP)
3.2.6. Energy Use Intensity (EUI)
3.2.7. Predicted Percentage Dissatisfied (PPD)
4. Result and Discussion
4.1. View to the Outside
4.2. North-Facing Window Optimization
4.2.1. Visual Comfort
4.2.2. Energy Consumption
4.2.3. Thermal Comfort
4.3. East-Facing Window Optimization
4.4. West-Facing Window Optimization
4.5. South-Facing Window Optimization
5. Validation
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Independent Variables | |||||||
---|---|---|---|---|---|---|---|
Room Dimensions | Length | Width | Height | ||||
6 m | 6 m | 3 m | |||||
Climate | Location | Latitude | Longitude | Time zone | Elevation | ||
Sydney, NSW, Australia | 33.83 | 151.07 | GMT+10.0 | 4.00 | |||
Construction | Thickness | Thermal Conductivity [W/m.°K] | U-value [W/m2.°K] | ||||
Wall | 12mm Insulation + 78mm solid wood + 13mm gypsum | 0.03 | 0.264 | ||||
Roof | 400mm | 0.027 | 0.15 | ||||
Floor | 150m m screed with insulation+ 140mm wood | 0.115 | 0.18 | Reflectance factor | |||
0.2 | |||||||
Window | Glazing | Visible Light Transmission [%] | U-value [W/m2.°K] | Vision [%] | SHGC | Frame conductance [W/m2.°K] | |
4 mm single-pane, clear | 68 | 5.9 | 0.76 | 0.70 | 5 | ||
4 mm single-pane, low-E | 42 | 3.22 | 0.68 | 0.41 | 5 | ||
8 mm double-pane, clear + 6 mm gap | 48 | 2.48 | 0.59 | 0.51 | 5 | ||
8 mm double-pane, low-E + 12 mm gap, Krypton filled | 50 | 1.32 | 0.66 | 0.47 | 5 | ||
8 mm double-pane, low-E + 12 mm gap, Argon filled | 50 | 1.27 | 0.6 | 0.47 | 5 | ||
Parameters in EnergyPlus Engine | |||||||
Equipment | off | ||||||
Hot water | off | ||||||
Ventilation | Wind-driven flow | off | |||||
Buoyancy-driven flow | off | ||||||
Natural ventilation | on | ||||||
Scheduled ventilation setpoint | 18 °C | Humidity air change | 0.6 [ACH] | ||||
Infiltration | 0.5 [ACH] | ||||||
Humidity control | on | ||||||
Mechanical ventilation | on | Fresh air | 8.33 [L/s/person] | Heat recovery | Sensible (0.6) | ||
Heating | Constant setpoint | 19°C | Max. supply air temp. | 30°C | Heating limit | 100[W/m2] | |
Cooling | Constant setpoint | 26°C | Max. supply air temp. | 18°C | Heating limit | 100 [W/m2] | |
People | People density | 0.1 [person/m2] | Metabolic rate | 1.2 | |||
Lighting | Lighting power density | 9.5 [W/m2] | Illuminance target | 200 [lx] | Dimming | Stepped |
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Sorooshnia, E.; Rashidi, M.; Rahnamayiezekavat, P.; Samali, B. Optimizing Window Configuration Counterbalancing Energy Saving and Indoor Visual Comfort for Sydney Dwellings. Buildings 2022, 12, 1823. https://doi.org/10.3390/buildings12111823
Sorooshnia E, Rashidi M, Rahnamayiezekavat P, Samali B. Optimizing Window Configuration Counterbalancing Energy Saving and Indoor Visual Comfort for Sydney Dwellings. Buildings. 2022; 12(11):1823. https://doi.org/10.3390/buildings12111823
Chicago/Turabian StyleSorooshnia, Ehsan, Maria Rashidi, Payam Rahnamayiezekavat, and Bijan Samali. 2022. "Optimizing Window Configuration Counterbalancing Energy Saving and Indoor Visual Comfort for Sydney Dwellings" Buildings 12, no. 11: 1823. https://doi.org/10.3390/buildings12111823
APA StyleSorooshnia, E., Rashidi, M., Rahnamayiezekavat, P., & Samali, B. (2022). Optimizing Window Configuration Counterbalancing Energy Saving and Indoor Visual Comfort for Sydney Dwellings. Buildings, 12(11), 1823. https://doi.org/10.3390/buildings12111823