Investigation of the Interaction of Water and Energy in Multipurpose Bio-Solar Green Roofs in Mediterranean Climatic Conditions
Abstract
:1. Introduction
1.1. Water Consumption in Conventional and Bio-Solar Green Roofs
1.2. Efficiency of Solar Panels in Conventional and Bio-Solar Systems
- Active cooling techniques, including active air, water, nanofluids, and thermoelectric cooling, can enhance efficiency by around 3.0–36.0%;
- Passive cooling techniques such as passive air, water, phase-change material, radiative, and hybrid cooling can enhance efficiency by 1.6–19.0%.
2. Materials and Methods
- Step 1 (case study parameters’ definition): Determine bio-solar green roof configurations, such as the coverage of the solar panels on the roof area, which in the current study, included 10%, 20%, 30%, 40%, 50%, and 60%. In addition, select the types of PV panels, which in our study, were the following four: polycrystalline, monocrystalline, PERC, and bifacial. Finally, select the roof type, as the reflection of solar radiation from roofs (albedo) toward solar panels depends on it; in the current study, we considered two types of roofs, and the corresponding albedos were 20% for conventional roofs and 60% for green roofs;
- Step 2 (PV power computation): Perform power output calculation for the selected (in step 1) types and percentages of solar panels on the conventional and green roofs in PVSOL 2024 R3/PVGIS 5.3 software. For this purpose, PVGIS can be applied to have the optimum inclination (tilt) of the PV panels in the case study location, which in this study, for the city of Cosenza, is equal to 33°. Moreover, since the radiation depends not only on the location of the case study but also on weather conditions (i.e., cloudy and rainy conditions), and to have an accurate calculation, MeteoNorm 8.2 software can be applied to provide the hourly climate data. In the last stage, PVSOL 2024 R3 software can be used (with the optimum inclination by PVGIS 5.3 and climate data by MeteoNorm 8.2) for separate calculation of the power output for four types of PV panels, six types of percentages, and two types of albedos, meaning 48 simulations. At the end of this stage, the power production by PV modules for all conditions can be determined;
- Step 3 (shade frequency pattern of PV panels on the roof surface): Analyze the shadow frequency of PV panels on the roof, which is a geographic parameter and depends on the location (Cosenza in our case study), weather conditions (calculated in step 2 using MeteoNorm 8.2), the installation inclination of PV panels (determined in step 2 using PVGIS 5.3; in our case study, equal to 33°), and configuration of PV modules on the roof surface (10% to 60% in our study), which can be simulated by PVSOL 2024 R3. For this purpose, PVSOL 2024 R3 estimates the shape of the PV module shadow on the roof for all solar hours in a year and provides shade frequency images. The produced images can show the shade condition in four colors: white (meaning area with % shade), green (meaning near zero % shade), yellow (meaning 33% of the time is shade), and red (meaning 100% of the time is shade);
- Step 4 (percentages of shade by PV on the roof): Determine the amount (percentage) of zero shade area or full shade area, for which image processing of the provided images by PVSOL 2024 R3 is required. For this purpose, we developed a code in MATLAB R2024b (Appendix A), which can determine the percentages of four colors (white, green, yellow, and red) in an image by applying different color masks. In that regard, in this stage, the images of step 3 are analyzed using image processing, and the results provide the numerical quantity of the full shadow, 33%, as well as those for the near 0% shadow and 0% shadow due to the PV modules on a roof;
- Step 5: Prepare the database for the Vensim PLE 10.2.1 model:
- (a)
- Providing the PV power production amounts for different configurations: for four types, six patterns, and two types of roofs, as calculated in step 2 by PVSOL 2024 R3;
- (b)
- Providing the increase in the efficiency with a decrease in surface temperature due to the installation of PVs on green roofs based on data presented in Table 2;
- (c)
- Providing the maximum and minimum efficiency of each type of solar panel based on the data in Table 3. In this way, the PV power production will not be limited to the selected modules in PVSOL 2024 R3 (in our cases, four types of panels with specific efficiency);
- (d)
- Arranging the data about water consumption of conventional green roofs in different climates, which are available in Table 4, and in cases where data are not available, applying Equation (3);
- (e)
- Providing the data about the water consumption decline of green roofs due to shadow, which are available in Table 1;
- (f)
- Providing the amount (percentage) of shade on the roof in each pattern of PV modules, according to the results of step 4.
- Step 6 (generalizing the results by developing a dynamic model): In this stage, the databanks in step 5 can be used to provide a dynamic analysis model in Vensim PLE 10.2.1 software. The input of the Vensim PLE 10.2.1 can be single data, tables, or graphs. For example, it can be the minimum or maximum efficiency of polycrystalline modules or green roofs’ water consumption in different climates. Therefore, in this stage and for our case study, according to the results of PV production (by 48 simulations in PVSOL 2024 R3), the data can be added based on the type of module, type of roof, percentage of the PV on the roof, etc. The same can be performed for water consumption by green roofs in the Mediterranean climate, for the decline in water demand (ET reduction for each color of shadow provided by PVSOL 2024 R3, and amounts based on percentages of the roof area in MATLAB R2024b) with a full shadow and 33% shadow;
- Step 7: Analyze water and energy interactions in bio-solar green roofs with the developed dynamic model in Vensim PLE 10.2.1. In this step, instead of calculating each state separately (new simulations based on the type of PV, percentage of PV, size of roof, type of roof, etc.), different scenarios can be easily evaluated with a single run in Vensim PLE 10.2.1 software. For this purpose, just the boundary conditions (roof area, PV type, PV efficiency, and percentage of PV to the roof area) need to be selected, and the model can provide the impact of a conventional roof or green roof on the power production of a type of PV module with specific efficiency dynamically. The same goes for water demands and by choosing the roof area—the percentage of PV panels on the roof to the roof area—the shadow impact will be considered, and the model will provide the water consumption levels of conventional (0% PV module) and bio-solar green roofs.
2.1. Bio-Solar Green Roof Configurations and Analysis Procedures
- The determination of irradiance on the module surface is based on the tilt and orientation of the PV array, diffuse and direct radiation from weather data, shading effects from obstacles from 3D analysis, and reflection losses due to the module surface.
- Calculating the temperature effect on the PV module efficiency in PVSOL 2024 R3 is based on Equation (1).
- Calculate the power output at the maximum power point (MPP) operating condition, which is the highest possible power output of PV panels under given conditions. The MPP power output is calculated based on the solar irradiance and module’s efficiency using Equation (2).
- Deduct the losses from the efficiency of the modules due to the deviation from the standard spectrum AM1.5 (standard test conditions: 1000 W/m2 vertical radiation, 25 °C module temperature, and radiation spectrum), mismatch or reduced yield as a result of deviation from manufacturer information, and losses in diodes. The mentioned losses are deducted percentages from the module output in PVSOL 2024 R3.
2.2. Study Limitations and Potential Weaknesses
- The impact of the green roof type and irrigation technique is not taken into account;
- This study does not consider the type of plant and age of the green roof;
- The hodological performance of BS-GRs is not investigated in this study.
3. Results and Discussion
3.1. Shade Frequency of PV Panels on Panel Surfaces and the Impact on Annual Electricity Production
3.2. Shade Frequency of PV Panels on Green Roof Surfaces and the Impact on ET
3.3. Evaluation of Bio-Solar Green Roof Water–Energy Performance
3.4. Scope for Future Works
- Analysis of other inclinations (tilts) of solar panels in bio-solar green roofs and comparison with the optimized tilt angle in conventional roofs. In bio-solar green roofs, other angles might further decline the temperature of PV (effect of the power production) and also affect shade frequency (impact on the ET value). Therefore, optimization of PV inclination is suggested for future works;
- Further studies can be conducted for other roofs with higher values of albedos (such as white roofs) to investigate the impact of green roofs in comparison;
- Analyses of a windy climate and the impacts of PV on wind reduction and wind on PV panel temperature can improve the knowledge in this field and are suggested for future investigations;
- Analysis of different types of plants and green roofs is suggested for future studies;
- Finally, the thermal impact of bio-solar green roofs on building envelopes and the energy efficiency of buildings in the Mediterranean climate can be analyzed in future studies.
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AET | Actual evapotranspiration |
ET | Evapotranspiration |
GRs | Green roofs |
Mono | Monocrystalline |
PERC | Passivated Emitter and Rear Contact |
PV | Photovoltaic |
Poly | Polycrystalline |
UV | Ultraviolet |
Appendix A. MATLAB Code Development
- input_image = imread(‘C:\Users\\Desktop\test.jpg’);
- sharpened_image = imsharpen(input_image);
- resized_image = imresize(sharpened_image, 2);
- hsv_image = rgb2hsv(resized_image);
- hue = hsv_image(:,:,1);
- saturation = hsv_image(:,:,2);
- value = hsv_image(:,:,3);
- yellow_mask = (hue >= yellow_hue_min) & (hue <= yellow_hue_max) & (saturation > 0.2) & (value > 0.2);
- green_mask = (hue >= green_hue_min) & (hue <= green_hue_max) & (saturation > 0.2) & (value > 0.2);
- red_mask = ((hue >= red_hue_min_1) & (hue <= red_hue_max_1)|(hue >= red_hue_min_2) & (hue <= red_hue_max_2)) & (saturation > 0.2) & (value > 0.2);
- white_mask = (saturation <= white_saturation_max) & (value >= white_value_min);
- total_pixels = numel(hue);
- fprintf(‘Yellow: %.2f%%\n’, yellow_percentage);
- fprintf(‘Green: %.2f%%\n’, green_percentage);
- fprintf(‘Red: %.2f%%\n’, red_percentage);
- fprintf(‘White: %.2f%%\n’, white_percentage);
- figure;
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Case Study | Shade Analysis Condition | ET Reduction in Shade | Climate | Ref. |
---|---|---|---|---|
Montpellier (France) | Agrivoltaic | 33% the ET0 level | Mediterranean climate | [20] |
14–29% decrease in actual evapotranspiration (AET) | [21] | |||
Oregon (US) | Water efficiency increased by 328% | Warm summer Mediterranean climate | [22] | |
Toronto (Canada) | Bio-solar | 81% in summer and 38% in fall | Continental | [23] |
Fuyang (China) | Concentrated-lighting Agrivoltaic System (CAS) | Reduced water evaporation in soil surface: 21% | Temperate semi-humid | [24] |
Even-lighting Agrivoltaic System (EAS) | Reduced water evaporation in soil surface: 33% | |||
California (US) | Shading greenhouses | 25% | Mediterranean, Arid, Semi-arid | [25] |
Berlin (Germany) | Tree (Tilia cordata) | 50% | Humid continental | [26] |
Cooling Technique | Method | PV Temperature Reduction [°C] | Efficiency Enhancement [%] | Study Type | Refs. |
---|---|---|---|---|---|
Active air cooling | An inlet/outlet manifold is attached to a parallel array of ducts on the panel’s rear | 30.0 | 4.0 | Experimental | [30] |
Geothermal air cooling | 9.8 | 23.0 | [31] | ||
Cooling with a channel under the PV | 5.0 | 2.6 | [32] | ||
Forced air cooling | 15.0 | 5.7 | [33] | ||
Active water cooling | Back-surface water cooling | 11.0 | 9.0 | [34] | |
Water flowing on the anterior surface of the panel | 30.0 | 12.0 | Theoretical and experimental | [35] | |
Converging channel heat exchanger | 19.0 | 36.0 | [36] | ||
Heat exchanger cooling | 29.1 | 22.8 | Experimental | [37] | |
The pipe for water cooling is linked to the PV’s back surface | 12.0 | 2.4 | [38] | ||
Pulsed-spray water cooling | 26.9 | 28.9 | [39] | ||
Back-surface spray cooling | 28.2 | 7.8 | [40] | ||
Active cooling by nanofluids | Heat exchanger on the rear of the panel (Zn-H2O nanofluid) | 18.0 | 7.8 | [41] | |
Active thermoelectric cooling | Heat sink with thermoelectric module | 35.0 | 18.0 | Theoretical | [42] |
Heat sink with thermoelectric module | 10.0 | 10.5 | Experimental | [43] | |
Passive water cooling | Solar-driven rainwater cooling system | 19.0 | 8.3 | Theoretical | [44] |
Underwater cooling | 34.0 | 11.8 | Experimental | [45] | |
Heat spreaders and cotton wicks together | 6.1 | 14.0 | [46] | ||
Atmospheric water sorption–desorption cycle | 10.0 | 16.0 | [47] | ||
Solar-driven PV cooling | 47.0 | 8.0 | Theoretical and experimental | [48] | |
Evaporative cooling (Burlap cloth and water) | 20.0 | 14.8 | Experimental | [49] | |
Passive air cooling | Heat sink (Al and Cu fins) and wick structure on the rear of the panel | 5.2 | 3.1 | [50] | |
Heat sink | 10.0 | 6.3 | Theoretical | [51] | |
Natural cooling with a channel under the PV | 10.0 | 4.0 | Theoretical and experimental | [52] | |
Fin-attached heat sink | 9.5 | 1.1 | Experimental | [53] | |
Air duct (fins, flat and curved) placed on the rear of the panel | 18.1 | 18.9 | Theoretical | [54] | |
Passive phase-change material | PCM (RT35HC paraffin wax) | 24.9 | 11.0 | [55] | |
PCM (paraffin wax) | 4.2 | 1.5 | Experimental | [56] | |
PCM-integrated natural cooling | 5.4 | 12.4 | Experimental | [57] | |
Passive radiative cooling | Radiative cooling | 17.2 | 1.6 | Experimental | [58] |
Night radiative cooling | 5.0 | 6.2 | Theoretical | [59] | |
Hybrid cooling | Thermoelectric cooling with PCM (RT25) integrated | 27.7 | 3.0 | Theoretical | [60] |
Radiative cooling with nano- and microstructuring | 5.1 | 3.0 | Theoretical | [61] |
Type of PV | Efficiency (%) | Temperature Coefficient of Pmax (%) | Refs. | |
---|---|---|---|---|
Monocrystalline | 15.0–24.7 | −0.3 to −0.4 | [62,63,64,65] | |
Polycrystalline | 13.0–20.4 | −0.3 to −1.0 | ||
PERC | Mono PERC | 17.0–25.0 | −0.4 | [65,66,67,68,69] |
Poly PERC | 16.0–17.0 | −0.4 | ||
Thin-film panels | CIGS | 13.0–19.2 | −0.4 | [17,67,70,71,72,73] |
GaAs | 20.0–25.1 | −0.1 | ||
CdTe | 9.0–19.5 | −0.2 | ||
Amorphous silicon (a-Si) | 6.0–12.3 | −0.1 to −0.2 | ||
Bifacial | Mono or poly | 18.9–23.0 | −0.3 to −0.4 | [74,75,76] |
Case Study | Type of Analysis | Increase in PV Efficiency | Type of System | Climate | Ref. |
---|---|---|---|---|---|
Kansas (US) | Experiment | 1.4% annually, 2.4% in summer | PV-GR | Humid subtropical | [82] |
Berlin (Germany) | 6.0% | Moderate continental | [83] | ||
Hong Kong (China) | Experiment (in summer) | 4.3% | Subtropical | [14] | |
Simulation | 8.3% | ||||
Toronto (Canada) | - | 2.0% | Continental | [84] | |
New York (US) | Experiment | 2.4% | Humid subtropical | [85] | |
Singapore | Experiment and simulation | 2% | Tropical | [86] | |
Pittsburgh (Russia) | Experiment | 0.8–1.5% | Humid continental | [87] | |
Malaysia | 1.6% | Tropical climate | [88] | ||
Sydney (Australia) | 4.5% | Humid subtropical | [10] | ||
Bucaramanga (Colombia) | 1–1.3% | Warm tropical | [89] | ||
Nagpur (India) | Model | 18.0% | Agrophotovoltaics | Tropical wet and dry | [90] |
Portland (US) | Experiment (summer) | 0.7–1.2% | Dianthus PV-GR | Mediterranean climate | [9] |
Lleida (Spain) | Experiment (a sunny, five-day time period) | 3.3% | Sedum PV-GR | Subtropical (Mediterranean) | [91] |
1.3% | Gazania PV-GR |
Item | Description |
---|---|
Solar panel coverage percentage | Six patterns: 10, 20, 30, 40, 50, and 60% |
Weather data | MeteoNorm 8.2 (2001–2020) |
Albedo | 20% conventional roof [96], 60% green roof [97] |
Model for irradiation on the inclined plane | Hay and Davies (software method) |
Types of PV panels | Polycrystalline, monocrystalline, PERC, and bifacial |
Inclination (Tilt) | 33° |
Polycrystalline module specification | Width: 1 m × 1.6 m, Efficiency: 14.7%, Nominal power: 240.0 W, MPP voltage: 29.9 V, MPP current: 8.0 A |
Monocrystalline module specification | Width: 1 m × 1.6 m, Efficiency: 15.6%, Nominal power: 255.0 W, MPP voltage: 30.9 V, MPP current: 8.3 A |
PERC module specification | Width: 1 m × 1.6 m, Efficiency: 20.3%, Nominal power: 335.0 W, MPP voltage: 35.66 V, MPP current: 9.4 A |
Bifacial module specification | Width: 1 m × 1.6 m, Efficiency: 18.9%, Nominal power: 310.0 W, MPP voltage: 31.1 V, MPP current: 10.0 A |
Dimensions of solar panels | Length: 1.5 m, Width: 1 m, Installation height: 0.4 m |
ET (Water Consumed by Plants) Reduction Rate in Different Sections of Bio-Solar GR | White | Green | Yellow | Red | |
---|---|---|---|---|---|
0% Shade | Near 0% Shade | 33% Shade | 100% Shade | ||
Min | 14% | 1.0 | 1.0 | 1.0 | 0.9 |
Max | 33% | 1.0 | 1.0 | 0.9 | 0.7 |
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Pirouz, B.; Naghib, S.N.; Kontoleon, K.J.; Bibin, B.S.; Javadi Nejad, H.; Piro, P. Investigation of the Interaction of Water and Energy in Multipurpose Bio-Solar Green Roofs in Mediterranean Climatic Conditions. Water 2025, 17, 950. https://doi.org/10.3390/w17070950
Pirouz B, Naghib SN, Kontoleon KJ, Bibin BS, Javadi Nejad H, Piro P. Investigation of the Interaction of Water and Energy in Multipurpose Bio-Solar Green Roofs in Mediterranean Climatic Conditions. Water. 2025; 17(7):950. https://doi.org/10.3390/w17070950
Chicago/Turabian StylePirouz, Behrouz, Seyed Navid Naghib, Karolos J. Kontoleon, Baiju S. Bibin, Hana Javadi Nejad, and Patrizia Piro. 2025. "Investigation of the Interaction of Water and Energy in Multipurpose Bio-Solar Green Roofs in Mediterranean Climatic Conditions" Water 17, no. 7: 950. https://doi.org/10.3390/w17070950
APA StylePirouz, B., Naghib, S. N., Kontoleon, K. J., Bibin, B. S., Javadi Nejad, H., & Piro, P. (2025). Investigation of the Interaction of Water and Energy in Multipurpose Bio-Solar Green Roofs in Mediterranean Climatic Conditions. Water, 17(7), 950. https://doi.org/10.3390/w17070950