Solar Irradiance Reduction Using Optimized Green Infrastructure in Arid Hot Regions: A Case Study in El-Nozha District, Cairo, Egypt
Abstract
:1. Introduction
1.1. MENA Region Climates
1.2. Urban Trees
1.3. Mitigation Strategies: Numerical Assessment of Different Proposed Tree Patterns
1.4. Problem Statement
2. Methodology
2.1. Case Study
2.2. Methods and Scenarios
2.2.1. Urban Trees
2.2.2. ENVI-Met Modeling Scenarios, Calibration, and Sensitivity
- In the designed scenarios, the spacing between trees was 5 m and equidistant, as Abu Ali et al. have shown that 6 m spacing performs better than 8 m, with respect to climate moderation. A 5 m spacing was selected, according to the developed horizontal grid (dx = dy = 5) for the site ENVI-met model.
- Following the previous point, no spacing was added to the scenarios, in order to maximize the tree density with no overlap. The superior performance of small, dense trees has been discussed by Zhao et al. (2008) [24].
- Small-sized trees were selected in the first place, knowing that their performance for moderating temperature is less than large trees during the day; however, at night, the smallest temperature increase has been observed with small trees [16].
2.2.3. ENVI-Met Model Validation
3. Results
3.1. Current Design and No-Vegetation Scenarios
3.2. Results of the Proposed Scenarios
Temporal Responses to Trees Coverage
- At 11:00
- At 16:00
- At 19:00
3.3. Correlation of Meteorology and Pedestrian Thermal Comfort
3.3.1. No Vegetation
3.3.2. With Vegetation
- The major impact of vegetation was witnessed between Tmrt with the PET index and V; the relationship between Tmrt and PET changed from an inverse strong relation to a moderate relation. The inverse relationship was seen between Tmrt and V, and the strong relationship was changed to no relationship when the vegetative pattern was present.
- The relationship between PET and V decreased to a moderate relationship (r = −0.65).
- A strong negative association developed between PET and Tmrt, to a positive moderate relationship (r = 0.54).
- Slight and negligible changes were witnessed between PET with RH and Ta.
- The lack of relationship between PET and V turned into a moderate correlation (0.51).
- Otherwise, relationships were maintained between the other parameters.
- The strong associations between PET, Ta, Tmrt, and Ta with Tmrt were maintained.
- Moderate relationships between Tmrt with V and RH were also maintained, when vegetation was considered.
- It is notable that a strong correlation existed between PET and Tmrt (0.99), as shown in Figure 11; differing from the case of no vegetation, where a moderate relation was observed between these parameters.
- Other parameters, such as PET and Ta, did not show any significant correlation (and PET and RH, in the no-vegetation case).
- There was no significant impact of vegetation on PET and V, and Tmrt and V.
- Generally, there was a significant correlation between PET and the mean radiant temperature when vegetation was present, as shown in Figure 12.
4. Discussion
5. Conclusions
- In the western part of the street, where trees are placed next to the buildings’ east side, the area is mostly shaded by the building throughout the day. The air temperature range is minorly changed by a maximum 0.016 °C and the mean radiant temperature by 28 K. Thus, grass would be recommended for climate moderation, or the present trees’ size should be maintained, as larger canopies may hinder or trap the airflow.
- In the eastern part of the street, where trees are placed next to the buildings’ west side, small-sized evergreen trees perform well throughout the day. The air temperature decreases by 0.1 °C and mean radiant temperature is lower by 26 K. An inverse outcome was observed in the lower part of the street, where the temperature increased by 0.14 °C. Thus, it is recommended that the upper evergreen is maintained, with the addition of grass surfaces to enhance the radiant temperature values. Meanwhile, in the lower part of the street, deciduous trees are suggested, with grass as a ground cover.
- In the middle island, among the different developed plantation patterns, the highest canopy coverage (4%) led to better mean radiant reduction: 1.3, 1, and 0.75 °C for the average receptor points under the single-side and cluster trees, cluster side trees with single center arrangement, and cluster side trees arrangements, respectively.
- Finally, to investigate the responses of trees under thermal extremes and heat waves under the same geometrical attributes, the correlational analysis mentioned earlier can be adopted for rapid prediction. This should be applied cautiously, as the outcome varies according to the weather conditions, tree percent, and its type. It is valid when considering high ambient temperatures, as the cooling capacity of trees is highly dependable on the saturation vapor pressure released during plant transpiration [58].
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
MENA | Middle East and North Africa region |
PET | Physiological Equivalent Temperature |
Tmrt | Mean Radiant Temperature |
Ta | Air Temperature |
V | Wind speed |
RH | Relative Humidity |
TMY | Typical Meteorological Year |
UHI | Urban Heat Island |
TC | Tree Canopy |
WMO | World Metrological Organization |
EPW | Energy Plus Weather format |
Appendix A
Time Frame | Scenario | Overall Min. Ta | Overall Max. Ta. | Receptor 1 | Receptor 2 | Receptor 3 | Receptor 4 | Receptor 5 | Receptor 6 | Average |
---|---|---|---|---|---|---|---|---|---|---|
11:00 | No-veg. | 36.11 | 38.11 | 36.54 | 36.46 | 36.93 | 36.50 | 36.40 | 37.08 | 36.65 |
Current design | 35.35 | 38.10 | 36.54 | 36.33 | 36.79 | 36.50 | 36.29 | 37.17 | 36.61 | |
Δ Ta | 0.76 | 0.01 | −0.003 | 0.127 | 0.135 | −0.001 | 0.111 | −0.097 | 0.045334 | |
16:00 | No-veg. | 38.21 | 40.37 | 38.555 | 38.752 | 39.261 | 38.507 | 38.717 | 39.294 | 38.84 |
Current design | 38.14 | 40.29 | 38.556 | 38.752 | 39.148 | 38.523 | 38.678 | 39.433 | 38.84 | |
Δ Ta | 0.07 | 0.08 | −0.001 | 0 | 0.113 | −0.016 | 0.039 | −0.139 | 0 | |
19:00 | No-veg. | 34.60 | 35.40 | 35.082 | 35.051 | 35.284 | 35.07 | 35.072 | 35.288 | 35.14 |
Current design | 34.67 | 35.40 | 35.073 | 35.064 | 35.264 | 35.075 | 35.085 | 35.258 | 35.136 | |
Δ Ta | −0.07 | 0 | 0.009 | −0.013 | 0.02 | −0.005 | −0.013 | 0.03 | 0.0046 |
Time Frame | Scenario | Overall Min. Temperature | Overall, Max. Temp. | Receptor 1 | Receptor 2 | Receptor 3 | Receptor 4 | Receptor 5 | Receptor 6 | Average |
---|---|---|---|---|---|---|---|---|---|---|
11:00 | Sc1 | 36.10 | 38.12 | 36.548 | 36.519 | 36.961 | 36.512 | 36.505 | 37.151 | 36.69933 |
Sc2 | 36.10 | 38.12 | 36.546 | 36.475 | 36.924 | 36.51 | 36.477 | 37.103 | 36.6725 | |
Sc3 | 36.09 | 38.12 | 36.549 | 36.523 | 36.996 | 36.513 | 36.509 | 37.179 | 36.7115 | |
Sc4 | 36.10 | 38.12 | 36.546 | 36.485 | 36.935 | 36.51 | 36.473 | 37.071 | 36.67 | |
Sc5 | 36.10 | 38.12 | 36.547 | 36.52 | 36.974 | 36.511 | 36.507 | 37.15 | 36.7015 | |
Sc6 | 36.10 | 38.12 | 36.549 | 36.549 | 37.014 | 36.514 | 36.528 | 37.204 | 36.72633 | |
Sc7 | 36.10 | 38.12 | 36.548 | 36.521 | 36.992 | 36.512 | 36.506 | 37.175 | 36.709 | |
No-veg. | 36.11 | 38.11 | 36.54 | 36.46 | 36.93 | 36.50 | 36.40 | 37.08 | 36.65 | |
16:00 | Sc1 | 38.20 | 40.37 | 38.565 | 38.91 | 39.319 | 38.518 | 38.87 | 39.367 | 38.92483 |
Sc2 | 38.21 | 40.37 | 38.56 | 38.822 | 39.273 | 38.514 | 38.847 | 39.318 | 38.889 | |
Sc3 | 38.20 | 40.37 | 38.566 | 38.986 | 39.342 | 38.521 | 38.839 | 39.394 | 38.94133 | |
Sc4 | 38.20 | 40.37 | 38.561 | 38.855 | 39.285 | 38.515 | 38.836 | 39.331 | 38.89717 | |
Sc5 | 38.20 | 40.37 | 38.564 | 38.95 | 39.318 | 38.518 | 38.876 | 39.366 | 38.932 | |
Sc6 | 38.20 | 40.37 | 38.568 | 39.02 | 39.359 | 38.498 | 38.905 | 39.415 | 38.96083 | |
Sc7 | 38.20 | 40.37 | 38.566 | 38.957 | 39.334 | 38.52 | 38.923 | 39.386 | 38.94767 | |
No-veg. | 38.20 | 40.37 | 38.555 | 38.752 | 39.261 | 38.507 | 38.717 | 39.294 | 38.84767 | |
19:00 | Sc1 | 34.69 | 35.43 | 32.688 | 33.411 | 32.956 | 32.707 | 33.447 | 32.931 | 33.023 |
Sc2 | 34.69 | 35.42 | 32.741 | 34.718 | 32.919 | 32.762 | 33.321 | 32.996 | 33.24 | |
Sc3 | 34.70 | 35.44 | 32.741 | 34.718 | 32.919 | 32.762 | 33.321 | 32.996 | 33.24 | |
Sc4 | 34.69 | 35.42 | 32.696 | 33.16 | 32.879 | 32.723 | 33.28 | 32.94 | 32.946 | |
Sc5 | 34.69 | 35.43 | 32.706 | 34.631 | 32.912 | 32.732 | 33.342 | 32.968 | 33.215 | |
Sc6 | 34.70 | 35.45 | 32.748 | 34.825 | 32.978 | 32.768 | 34.825 | 33.06 | 33.534 | |
Sc7 | 34.70 | 35.44 | 32.731 | 33.482 | 32.924 | 32.756 | 34.805 | 32.972 | 33.278 | |
Mean Radiant Temperature | ||||||||||
11:00 | Sc1 | 71.94 | 77.1 | 74.029 | 76.031 | 73.797 | 74.074 | 75.975 | 75.732 | 74.93967 |
Sc2 | 71.99 | 77.04 | 74.132 | 72.116 | 73.899 | 74.176 | 75.715 | 75.65 | 74.28133 | |
Sc3 | 71.88 | 77.21 | 74.056 | 75.74 | 73.772 | 74.127 | 75.684 | 75.668 | 74.84117 | |
Sc4 | 71.98 | 77 | 74.102 | 75.71 | 73.859 | 74.171 | 75.65 | 74.216 | 74.618 | |
Sc5 | 71.94 | 77.16 | 74.061 | 75.827 | 73.835 | 74.132 | 75.769 | 75.701 | 74.8875 | |
Sc6 | 71.84 | 77.21 | 74.012 | 76.703 | 73.761 | 74.082 | 72.942 | 75.622 | 74.52033 | |
Sc7 | 71.89 | 77.38 | 74.045 | 72.974 | 73.816 | 74.113 | 72.913 | 75.665 | 73.921 | |
16:00 | Sc1 | 55.01 | 82.08 | 55.294 | 77.439 | 80.855 | 55.335 | 81.701 | 80.838 | 71.91033 |
Sc2 | 55.06 | 81.86 | 55.391 | 73.088 | 80.804 | 55.429 | 76.008 | 80.912 | 70.272 | |
Sc3 | 54.99 | 82.19 | 55.341 | 73.769 | 80.785 | 55.417 | 73.546 | 80.904 | 69.96033 | |
Sc4 | 55.05 | 81.84 | 55.368 | 73.341 | 80.825 | 55.44 | 77.102 | 80.92 | 70.49933 | |
Sc5 | 55.02 | 82.13 | 55.326 | 73.567 | 80.825 | 55.401 | 81.503 | 80.903 | 71.25417 | |
Sc6 | 54.97 | 82.21 | 55.319 | 73.965 | 80.799 | 55.369 | 71.478 | 80.885 | 69.63583 | |
Sc7 | 55.01 | 82.1 | 55.347 | 77.572 | 80.841 | 55.419 | 73.896 | 80.905 | 70.66333 | |
19:00 | Sc1 | 29.51 | 34.10 | 29.709 | 31.177 | 29.862 | 29.718 | 31.241 | 29.727 | 30.239 |
Sc2 | 29.49 | 33.77 | 29.825 | 34.472 | 29.823 | 29.843 | 30.915 | 29.851 | 30.78817 | |
Sc3 | 29.53 | 34.81 | 29.825 | 34.472 | 29.823 | 29.843 | 30.915 | 29.851 | 30.78817 | |
Sc4 | 29.49 | 34.09 | 29.732 | 30.581 | 29.767 | 29.76 | 30.826 | 29.772 | 30.073 | |
Sc5 | 29.51 | 34.30 | 29.751 | 34.286 | 29.825 | 29.777 | 30.995 | 29.806 | 30.74 | |
Sc6 | 29.54 | 34.73 | 29.836 | 34.684 | 29.877 | 29.854 | 34.709 | 29.881 | 31.4735 | |
Sc7 | 29.53 | 34.70 | 29.801 | 31.344 | 29.835 | 29.829 | 34.684 | 29.835 | 30.888 |
Appendix B
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Tree | No. of Trees | Canopy | ||||||
---|---|---|---|---|---|---|---|---|
Tree Details and Code | East Side | Middle Island | West Side | Total No. | Coverage (m2) | % | Albedo | Shape and Size |
Evergreen (small), SS | 58 | 0 | 18 | 76 | 532 | 12% | 0.12 | Conic, small trunk, sparse, small (5 m) |
Palm (large), DM | 0 | 26 | 2 | 28 | 1781.36 | 41% | 0.18 | Palm |
Evergreen (medium), SM | 0 | 6 | 21 | 27 | 1717.74 | 40% | 0.12 | Conic, large trunk, sparse, medium (15 m) |
Evergreen (large), SL | 0 | 2 | 0 | 2 | 190.06 | 4% | 0.12 | Spherical, large trunk, sparse, large (25 m) |
Deciduous dense (small), DS | 0 | 0 | 18 | 18 | 126 | 3% | 0.18 | Spherical, small trunk, dense, small (5 m) |
Specification | Proposed Tree | |
Name | Cassia nodosa | |
Alternative Name | Pink shower | |
Foliage profile based on [30], analyzed by LAI2200 data analyzer | ||
Total tree height | 7 | |
Maximum LAD at height | 5 | |
Foliage height | 3 | |
Foliage Albedo | 0.18 | |
LAI Leaf Area Index | 1.61 | |
LAD Leaf Area Density | ||
1 m | 0 | |
2 m | 0 | |
3 m | 0.189712729 | |
4 m | 0.392133918 | |
5 m | 0.604495398 | |
6 m | 0.518514321 | |
7 m | 0 |
Input Parameter | Value(s) Used |
---|---|
City location | Cairo, Egypt (Lat: 30.06°; Long: 31.25°) |
Simulation day | 20th July, 2020 |
Simulation duration | 24 h |
Model resolution | 42 × 191 × 12 m |
Climate system | Hot arid |
Windspeed and direction | 3 m/s at 240° |
Temperature | Min: 26.4 °C; Max: 39.70 °C (forced sampling) |
Relative humidity | Min: 27%; Max: 59% |
Cloud cover | Default setting in ENVI-met |
Material albedo | Grass = 0.2; yellow tiles = 0.5; asphalt = 0.2 |
Soil | Sandy soil (physical properties based on ENVI-met database) |
Building wall and roof materials | Default settings in ENVI-met |
Green Design Scenario | Description | Vegetative Share (%) (inc. (a) Grass Area. (b) Canopy Coverage) | Number of Trees | Visualization |
---|---|---|---|---|
Sc_0 | Current greening pattern within the street. | (a) 17% (b) 2% | 151 | |
No_Veg | No vegetation | 0% | 0 | |
Sc_1 | Single-side trees with 5 m spacing | (a) 17% (b) 3% | 224 | |
Sc_2 | Single centered tree with 5 m spacing | (a) 17% (b) 2% | 112 | |
Sc_3 | Clustered trees on side | (a) 17% (b) 4% | 252 | |
Sc_4 | Clustered trees centered | (a) 17% (b) 2% | 126 | |
Sc_5 | Side staggered clustered trees | (a) 17% (b) 3% | 231 | |
Sc_6 | Side clustered trees and single tree centered | (a) 17% (b) 4% | 315 | |
Sc_7 | Single-side trees clustered center trees | (a) 17% (b) 4% | 252 |
Measurement Instrument | Measuring Parameter | Accuracy | Photo |
---|---|---|---|
Portable TroTec Bc 20 | Air Temperature Relative humidity | ±1 °C ±2% | |
Techno Line ea3000 | Wind speed | ±5% |
Parameter/Error | R2 | IA | RMSE |
---|---|---|---|
Wind Speed (m/s) | 0.6957 | 0.177 | 0.4 |
Air Temperature (°C) | 0.8946 | 0.5 | 5.6 |
Relative Humidity (%) | 0.971 | 0.839 | 8.5 |
PET (°C) | Ta (°C) | Tmrt (°C) | RH (%) | ||
---|---|---|---|---|---|
11:00 | PET (°C) | 1 | −0.02 | −0.88 | −0.24 |
V (m/s) | −0.95 | −0.21 | 0.97 | 0.46 | |
Ta (°C) | −0.02 | 1.00 | −0.28 | −0.95 | |
Tmrt (°C) | −0.88 | −0.28 | 1.00 | 0.50 | |
16:00 | PET (°C) | 1 | 0.93 | 0.90 | −0.91 |
V (m/s) | 0.26 | −0.09 | 0.65 | 0.16 | |
Ta (°C) | 0.93 | 1.00 | 0.69 | −1.00 | |
Tmrt (°C) | 0.90 | 0.69 | 1.00 | −0.64 | |
19:00 | PET (°C) | 1 | 0.48 | 0.56 | −0.70 |
V (m/s) | 0.54 | −0.48 | 0.71 | 0.22 | |
Ta (°C) | 0.48 | 1.00 | −0.16 | −0.95 | |
Tmrt (°C) | 0.56 | −0.16 | 1.00 | −0.11 | |
Strong correlation | Moderate correlation | Same parameters |
PET (°C) | Ta (°C) | Tmrt (°C) | RH (%) | ||
---|---|---|---|---|---|
11:00 | PET (°C) | 1.00 | −0.14 | 0.54 | −0.21 |
V (m/s) | −0.66 | −0.19 | 0.24 | 0.50 | |
Ta (°C) | −0.14 | 1.00 | −0.22 | −0.90 | |
Tmrt (°C) | 0.54 | −0.22 | 1.00 | 0.12 | |
16:00 | PET (°C) | 1.00 | 0.84 | 0.94 | −0.89 |
V (m/s) | 0.19 | 0.07 | 0.52 | 0.00 | |
Ta (°C) | 0.84 | 1.00 | 0.75 | −0.98 | |
Tmrt (°C) | 0.94 | 0.75 | 1.00 | −0.77 | |
19:00 | PET (°C) | 1.00 | −0.06 | 0.99 | −0.34 |
V (m/s) | 0.62 | −0.21 | 0.60 | −0.14 | |
Ta (°C) | −0.06 | 1.00 | −0.19 | −0.15 | |
Tmrt (°C) | 0.99 | −0.19 | 1.00 | −0.32 | |
Strong correlation | Moderate correlation | Same parameters |
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Elbardisy, W.M.; Salheen, M.A.; Fahmy, M. Solar Irradiance Reduction Using Optimized Green Infrastructure in Arid Hot Regions: A Case Study in El-Nozha District, Cairo, Egypt. Sustainability 2021, 13, 9617. https://doi.org/10.3390/su13179617
Elbardisy WM, Salheen MA, Fahmy M. Solar Irradiance Reduction Using Optimized Green Infrastructure in Arid Hot Regions: A Case Study in El-Nozha District, Cairo, Egypt. Sustainability. 2021; 13(17):9617. https://doi.org/10.3390/su13179617
Chicago/Turabian StyleElbardisy, Wesam M., Mohamed A. Salheen, and Mohammed Fahmy. 2021. "Solar Irradiance Reduction Using Optimized Green Infrastructure in Arid Hot Regions: A Case Study in El-Nozha District, Cairo, Egypt" Sustainability 13, no. 17: 9617. https://doi.org/10.3390/su13179617
APA StyleElbardisy, W. M., Salheen, M. A., & Fahmy, M. (2021). Solar Irradiance Reduction Using Optimized Green Infrastructure in Arid Hot Regions: A Case Study in El-Nozha District, Cairo, Egypt. Sustainability, 13(17), 9617. https://doi.org/10.3390/su13179617