Submitted:
26 August 2025
Posted:
27 August 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
- Precise modeling of AgroPV load-bearing structures: Adapting Eurocodes to specific AgroPV geometries, including advanced wind and snow load analyses for tall and complex structures.
- Dual-function design optimization: Designing systems that are not only stable but also actively support agricultural production by optimizing shading, water management, and providing access for agricultural machinery.
- Materials research: Development and testing of materials resistant to specific agricultural environmental conditions (e.g., ammonia, moisture).
- Economic analysis and social acceptance: Developing cost-effective design solutions that increase investment profitability and address farmers’ concerns.
- Development of national regulations: There is an urgent need to create a specific Polish regulatory framework for AgroPV that will provide clear guidelines on structural design, permits and land classification, thereby reducing investment risks and accelerating their implementation.
2. Materials and Methods
2.1. Wind Calculations
- Determination of the basic wind speed;
- Determination of the reference height;
- Selection of the terrain category;
- Selection of the topography and roughness coefficients;
- Calculation of the mean wind speed;
- Calculation of turbulence intensity;
- Determination of the peak velocity pressure;
- Calculation of the structural factor;
- Determination of the wind force acting on the entire structure or its elements.
2.2. Snow Load Calculations
3. Results
4. Discussion
4.1. Simulation Analysis
4.2. The Impact of Agro PV Design Parameters on Energy and Agricultural Efficiency
4.2.1. PV Module Inclination Angle
4.2.2. Density of PV Modules
4.3. An Integrated Approach to Modeling Agro PV Systems
- Shading models: To quantify the distribution of photosynthetically active radiation (PAR).
- Microclimate models (CFD): To simulate airflow, temperature, humidity, and their effects on plants and panels.
- Electrical performance models: To predict PV energy yield under variable conditions.
- Crop growth models: To quantify yield potential based on light, temperature, and water availability.
- Structural models (FEM): To ensure the physical integrity of the system under varying loads.
5. Conclusions
- Structural strength: Numerical simulations demonstrated that the proposed Agro PV system support structure, taking into account wind and snow loads in accordance with Eurocode standards, is capable of withstanding Polish climatic conditions. Stress and displacement analysis demonstrated that even in the most extreme scenarios, the structure maintains an adequate safety margin. This is crucial for ensuring the reliability and longevity of the installation, which has a direct impact on the profitability of the investment.
- Energy efficiency: Studies have shown that Agro PV systems, despite the need to adjust the orientation and tilt of the panels to suit the crops, can achieve high energy efficiency. Optimizing installation parameters, such as module spacing and tilt, minimizes energy losses while ensuring adequate light for plants. This confirms that combining agricultural production with photovoltaic energy is technically feasible and effective.
- Impact on crops: Although modeling strength and energy efficiency was the primary goal, this analysis also highlights important implications for agriculture. Designing a structure that minimizes shading and provides adequate space for agricultural machinery is fundamental to the success of the entire Agro PV concept. The results suggest that flexibility in the selection of design parameters is possible without significantly compromising stability and energy efficiency.
- Field studies: Studies on actual Agro PV installations are necessary to verify the simulation results and provide empirical data on both energy production and the impact on long-term yields.
- Economic optimization: Further analyses should incorporate complex economic models that integrate construction and maintenance costs, energy production, market prices, and the impact on crop value and yield.
- Integration with the energy system: Research should also address the impact of agro-PV systems on local distribution networks and the potential for energy storage, which is crucial for increasing the stability and reliability of the energy system.
6. Future Research Directions
- Development of advanced aerodynamic and material models of Agro PV systems: It is necessary to deepen research into the complex aerodynamic phenomena affecting Agro PV structures, especially in high-rise and tracker systems. Fluid-Structure Interaction (FSI) models should be developed and innovative methods for mitigating wind loads should be explored. Further modeling of long-term material degradation under the influence of environmental factors (UV, temperature, moisture, corrosion) is equally important to increase the predictability of structure life.
- In regions with heavy snowfall, models should more precisely account for dynamic structural loading phenomena and their impact on panel performance (verification by using sensors to measure deflections and stresses in real time under various weather conditions), including the energy gain resulting from snow reflection by double-sided panels.
- More advanced optimization models are needed that integrate structural, energy, agronomic, and economic aspects into a single framework. These models should be able to effectively manage trade-offs between competing objectives and adapt to local conditions, translating expert knowledge into quantitative guidelines.
- Conduct a controlled experiment to measure crop yield, soil moisture, and microclimate parameters (temperature, humidity, light distribution) under the photovoltaic panels compared to a control plot. It is also necessary to develop and implement an integrated, multi-criteria modeling framework, as proposed by the authors in the discussion. This approach would allow for simulating the complex interactions between all system components and conducting true optimization.
- Promote and develop hybrid models combining physical simulations with machine learning for yield and energy yield prediction. It is also crucial to collect and share more empirical data from real-world Agro PV projects, in various climates and configurations, for model validation and benchmarking. Conducting a comprehensive techno-economic analysis that goes beyond simple LCOE and considers the full financial picture, including crop revenues, maintenance costs and potential subsidies, to ensure a solid business case for Agro PV in Poland.
- Further development of Agro PV requires close collaboration between scientists, engineers, farmers, and policymakers. Governments should actively create a clear and coherent legal framework that supports the implementation of Agro PV, eliminating regulatory barriers and offering economic incentives that reflect the dual benefits of these systems.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
| Agro PV | Agro Photovoltaic |
| AI | Artificial Intelligence |
| APyV | Agrivoltaic System Planning with Python - Python-based tool designed to optimize the design of Agro PV facilities |
| bPV | Bifacial Photovoltaic |
| CAGR | Compound Annual Growth Rate |
| CAPEX | capital expenditures |
| CFD | Computational Fluid Dynamics |
| DiffHor | Horizontal diffuse irradiation |
| EArray | Effective energy at the output of the array |
| E_Grid | Energy injected into grid |
| FSI | Fluid-Structure Interaction |
| FEM | Finite Element Modeling |
| FP | Functional Programming |
| GlobEff | Effective Global, corr. for IAM and shadings |
| GlobHor | Global horizontal irradiation |
| GlobInc | Global incident in coll. plane |
| IoT | Internet of Things |
| kWh | kilowatt hours |
| kWp | kilowatt-peak |
| LCOE | Levelized Cost of Electricity |
| Lc | Collection Loss (PV-array losses) |
| Ls | System Loss (inverter, ...) |
| MINLP | Mixed-Integer Nonlinear Programming |
| NPV | Net Present Value |
| PAR | Photosynthetically Active Radiation |
| PV | Photovoltaics |
| PR | Performance Ratio |
| ROI | Return On Investment |
| SAM | System Advisor Model |
| T_Amb | Ambient Temperature |
| Yf | Produced useful energy (inverter output) |
| $ | United States dollars |
References
- Kumpanalaisatit, M.; Setthapun, W.; Sintuya, H.; Pattiya, A.; Jansri, S.N. Current status of agrivoltaic systems and their benefits to energy, food, environment, economy, and society. Sustain. Prod. Consum. 2022, 33, 952–963. [Google Scholar] [CrossRef]
- Ghosh, A. Nexus between agriculture and photovoltaics (agrivoltaics, agriphotovoltaics) for sustainable development goal: A review. Solar Energy 2023, 266, 112146. [Google Scholar] [CrossRef]
- Bosman, L.; Kádár, J.; Yonnie, B.; LeGrande, A. How Market Transformation Policies Can Support Agrivoltaic Adoption. Sustainability 2024, 16, 11172. [Google Scholar] [CrossRef]
- Chalgynbayeva, A.; Gabnai, Z.; Lengyel, P.; Pestisha, A.; Bai, A. Worldwide Research Trends in Agrivoltaic Systems—A Bibliometric Review. Energies 2023, 16, 611. [Google Scholar] [CrossRef]
- Al Mamun, M.A.; Dargusch, P.; Wadley, D.; Zulkarnain, M.A.; Aziz, A.A. A review of research on agrivoltaic systems. Renewable and Sustainable Energy Reviews 2022, 161, 112351. [Google Scholar] [CrossRef]
- Zahrawi, A.A.; Aly, A.M. A Review of Agrivoltaic Systems: Addressing Challenges and Enhancing Sustainability. Sustainability 2024, 16, 8271. [Google Scholar] [CrossRef]
- Mehta, K.; Zörner, W. Optimizing Agri-PV System: Systematic Methodology to Assess Key Design Parameters. Energies 2025, 18, 3877. [Google Scholar] [CrossRef]
- Birchall, M.; Hussain, S.N.; Ghosh, A. Review of agrivoltaic demonstration site studies with comparable configurations for a UK-based application. Solar Compass 2025, 15, 100135. [Google Scholar] [CrossRef]
- Zainali, S.; Qadir, O.; Parlak, S.C.; Ma Lu, S.; Avelin, A.; Stridh, B.; Campana, P.E. Computational fluid dynamics modelling of microclimate for a vertical agrivoltaic system. Energy Nexus 2023, 9, 100173. [Google Scholar] [CrossRef]
- Li, Y.; Armstrong, A.; Simmons, C.; Krasner, N.Z.; Hernandez, R.R. Ecological impacts of single-axis photovoltaic solar energy with periodic mowing on microclimate and vegetation. Front. Sustain. 2025, 6, 1497256. [Google Scholar] [CrossRef]
- Schindele, S.; Trommsdorff, M.; Schlaak, A.; Obergfell, T.; Bopp, G.; Reise, Ch.; Braun, Ch.; Weselek, A.; Bauerle, A.; Högy, P.; Goetzberger, A.; Weber, E. Implementation of agrophotovoltaics: Techno-economic analysis of the price-performance ratio and its policy implications, Applied Energy 2020, 265, 114737. [CrossRef]
- Riaz, M.H.; Younas, R.; Imran, H.; Butt, N.Z. Module Technology for Agrivoltaics: Vertical Bifacial vs. Tilted Monofacial Farms. 47th IEEE Photovoltaic Specialists Conference (PVSC), Calgary, AB, Canada, 2020; pp. 1349–1352. [CrossRef]
- Schuck, F.; Bach, H.; Bousi, E.; Schindele, S. Agrivoltaics Crop Yield Modeling: Quantifying the Effects of Light Limitations on Crop Growth. AgriVoltaics Conf Proc 2025, 3. [Google Scholar] [CrossRef]
- Khan, M.R.; Hanna, A.; Sun, X.; Alam, M.A. Vertical bifacial solar farms: Physics, design, and global optimization, Applied Energy 2017, 206, 240–248. [CrossRef]
- Bruno, M.; Gfüllner, J.J.; Matthew, F. Enhancing agrivoltaic synergies through optimized tracking strategies. Berwind J. Photonics Energy 2025, 15, 032703. [Google Scholar] [CrossRef]
- Sollazzo, L.; Mangherini, G.; Diolaiti, V.; Vincenzi, D. A Comprehensive Review of Agrivoltaics: Multifaceted Developments and the Potential of Luminescent Solar Concentrators and Semi-Transparent Photovoltaics. Sustainability 2025, 17, 2206. [Google Scholar] [CrossRef]
- Simonenko, S.; Loya, J.A.; Rodriguez-Millan, M. An Experimental and Numerical Study on the Influence of Helices of Screw Piles Positions on Their Bearing Capacity in Sandy Soils. Materials 2024, 17, 525. [Google Scholar] [CrossRef]
- Kumdokrub, T.; Fengqi, Y. Techno-economic and environmental optimization of agrivoltaics: A case study of Cornell University, Applied Energy 2025, 384, 125436. [CrossRef]
- Ryyan, K.M.; Sacr, E.; Sun, X.; Bermel, P. , Alam, M.A.: Ground sculpting to enhance energy yield of vertical bifacial solar farms. Applied Energy 2019, 241, 592–598. [Google Scholar] [CrossRef]
- Dinesh, H.; Pearce, J. M. The potential of agrivoltaic systems. Renewable and Sustainable Energy Reviews 2016, 54, 299–308. [Google Scholar] [CrossRef]
- Agostini, A.; Colauzzi, M.; Amaducci, S. Innovative agrivoltaic systems to produce sustainable energy: An economic and environmental assessment. Applied Energy 2021, 281, 116102. [Google Scholar] [CrossRef]
- Amaducci, S.; Yin, X. , Colauzzi, M. Agrivoltaic systems to optimise land use for electric energy production. Applied energy 2018, 220, 545–561. [Google Scholar] [CrossRef]
- Schindele, S.; Trommsdorff, M.; Schlaak, A.; Obergfell, T.; Bopp, G.; Reise, C.; Braun, C.; Weselek, A.; Bauerle, A.; Högy, P. Implementation of agrophotovoltaics: Techno-economic analysis of the price-performance ratio and its policy implications. Appl. Energy 2020, 265, 114737. [Google Scholar] [CrossRef]
- Rojek, I.; Mroziński, A.; Kotlarz, P.; Macko, M.; Mikołajewski, D. AI-Based Computational Model in Sustainable Transformation of Energy Markets. Energies 2023, 16, 8059. [Google Scholar] [CrossRef]
- Walichnowska, P. ; Mroziński; A.; Idzikowski, A.; Fröhlich, S.R. Energy efficiency analysis of 1 MW PV farm mounted on fixed and tracking systems, Construction of Optimized Energy Potential, (CoOEP), 11, 2022, 75-83. [CrossRef]
- Walichnowska, P.; Mroziński, A.; Idzikowski, A. : The impact of selected parameters on the efficiency of PV installations - simulation test of the 1 MW PV farm in the PVSYST program. CzOTO 2022, 4, 179–185. [Google Scholar] [CrossRef]
- Flizikowski, J.; Mroziński, A. Photovoltaic installation engineering. Wydawnictwo Grafpol, Bydgoszcz, 2016. https://scholar.google.com/scholar?cluster=17366722294280522267&hl=en&oi=scholarr.
- Mroziński, A. . Poradnik dobrych praktyk wdrażania instalacji odnawialnych źródeł energii. 1studio. pl Arkadiusz Bartnik, Bydgoszcz, 2015. Available online: https://scholar.google.com/scholar?cluster=13900899847970099663&hl=en&oi=scholarr.
- Rahman, M.M.; Khan, I.; Field, D.L.; Techato, K.; Alameh, K. Powering agriculture: Present status, future potential, and challenges of renewable energy applications. Renewable Energy 2022, 188, 731–749. [Google Scholar] [CrossRef]
- Reina, G.P.; De Stefano, G. Computational evaluation of wind loads on sun-tracking ground-mounted photovoltaic panel arrays, Journal of Wind Engineering and Industrial Aerodynamics 2017, 170, 283–293. [CrossRef]
- Aly, A.M.; Whipple, J. Wind Forces on Ground-Mounted Photovoltaic Solar Systems: A Comparative Study. Appl. Sol. Energy 2021, 57, 444–471. [Google Scholar] [CrossRef]
- Asa’a, S.; Reher, T.; Rongé, J.; Diels, J.; Poortmans, J.; Radhakrishnan, H.S.; Van der Heide, A.; Van de Poel, B.; Daenen, M. A multidisciplinary view on agrivoltaics: Future of energy and agriculture. Renewable and Sustainable Energy Reviews 2024, 200, 114515. [Google Scholar] [CrossRef]
- Özdemir, Ö.E.; Bretzel, T.; Gfüllner, L.; Gorjian, S.; Katircioglu, Y.; Dur, B.; Trommsdorff, M. Design, simulation, and experimental evaluation of an agrivoltaic greenhouse in Turkey. Results in Engineering 2025, 26, 105278. [Google Scholar] [CrossRef]
- Zainol Abidin, M.A.; Mahyuddin, M.N.; Mohd Zainuri, M.A.A. Solar Photovoltaic Architecture and Agronomic Management in Agrivoltaic System: A Review. Sustainability 2021, 13, 7846. [Google Scholar] [CrossRef]
- Sarr, A.; Soro, Y.M.; Tossa, A.K.; Diop, L. Agrivoltaic, a Synergistic Co-Location of Agricultural and Energy Production in Perpetual Mutation: A Comprehensive Review. Processes 2023, 11, 948. [Google Scholar] [CrossRef]
- Agrivoltaics Global Market Report 2025. Available online: https://www.thebusinessresearchcompany.com/report/agrivoltaics-global-market-report (accessed on 8 August 2025).
- Czechia introduces first rules for agrivoltaics. Available online: https://www.pv-magazine.com/2024/05/10/czechia-introduces-first-rules-for-agrivoltaics/ (accessed on 8 August 2025).
- The Ministry of Agriculture does not plan to change regulations regarding agrovoltaics. Available online: https://www.agropolska.pl/zielona-energia/energia-sloneczna/ministerstwo-rolnictwa-nie-planuje-zmian-przepisow-pod-katem-agrowoltaiki,167.html (accessed on 8 August 2025).
- Poland has the potential for 119 GW of agrivoltaics, but the government does not plan to facilitate. Available online: https://wysokienapiecie.pl/103676-polska-ma-potencjal-na-119-gw-agrowoltaiki-ale-rzad-nie-planuje-ulatwien/ (accessed on 8 August 2025).
- Windloads on agrivoltaic PV-systems. Available online: https://ifi-ac.com/en/news/details/windloads-on-agrivoltaic-pv-systems (accessed on 8 August 2025).
- Impact of Solar Panel Density on the Photothermal Environment of Photovoltaic Arrays. Available online: https://www.voltcoffer.com/impact-of-solar-panel-density-on-the-photothermal-environment-of-photovoltaic-arrays/ (accessed on 8 August 2025).













| Barrier | Design-Related Solution | Technology-Related Solution |
|---|---|---|
| The need to adapt PV construction to agricultural needs |
Flexible height and spacing: PV module constructions adapted to the requirements of agricultural machinery. Adequate row spacing: Sufficient space between rows of PV modules to allow for mechanized harvesting and free access to crops. |
Semi-transparent modules: The use of PV modules that let some light through allows for photosynthesis and plant growth. |
| Optimization of PV construction for sunlight for crops |
Orientation and tilt angle of PV modules: Adjusting the orientation (e.g., east-west) and tilt angle of the panels to minimize shading - uniform access to light for crops. Shading dynamics: Projects that take into account the plant growth cycles and light requirements. |
Tracking systems: The use of movable structures that follow the sun can optimize both energy production and light access for plants. |
| Financial and profitability issues |
Hybrid systems: Designing Agro PV as an integral part of the agricultural economy, where revenues from crops and energy sales complement each other. Cooperation with local communities: Creating projects that involve the participation of local farmers and investors. |
Efficient modules: The use of panels with higher efficiency, which generate more energy from a smaller area, which increases profitability. High-Efficiency Modules or Technologies (e.g., Bifacial Module - bPV Technology) Energy storage systems: Integration of batteries that allow for storing surplus energy and using it on the farm or selling it during peak hours. |
| Water and microclimate management |
Rainwater harvesting systems: Designing structures in such a way as to collect rainwater flowing from the panels and direct it to irrigate crops. | Intelligent irrigation control: Systems that monitor soil moisture and automatically start irrigation based on the data collected. Integration of Internet of Things (IoT) - enabled sensors and wireless sensor networks to provide real-time data on key parameters such as crop health, soil health (including moisture and nutrient levels), and solar energy production. |
| Impact on soil and the environment |
Minimal invasiveness: The use of structures that require a minimal number of foundations and allow for the protection of soil structure. | Ecological materials: The use of materials that are durable, but at the same time can be easily recycled. |
| Maintenance and servicing | Easy access: Designing structures that facilitate the servicing of PV modules. | The use of automatic cleaning robots that independently remove dirt from PV modules. |
| Type of PV Installation | Open Space > 20 MWp |
Agro PV > 5 MWp |
Rooftop Installations > 10 kWp |
|||
|---|---|---|---|---|---|---|
| Min. | Max | Min | Max | Min | Max | |
| Investment Costs (EUR/kWp) | 550 | 800 | 700 | 1100 | 750 | 1200 |
| Financing Costs | 5% | 5% | 5% | 5% | 6% | 6% |
| Lifespan (years) | 25 | 25 | 25 | 25 | 25 | 25 |
| Operational Costs (EUR/kWp/year) | 10 | 14 | 9 | 16 | 12 | 18 |
| Revenue (kWh/kWp/year) | 950 | 890 | 920 | 870 | 950 | 860 |
| Capital Costs (EUR/year) | 39 | 57 | 50 | 78 | 59 | 94 |
| Electricity Production Costs (ct/kWh) | 5.16 | 7.95 | 6.38 | 10.81 | 7.44 | 13.01 |
| C% | Si% | Mn% | P% | S% | N% | Cu% |
|---|---|---|---|---|---|---|
| 0.170 | - | 1.400 | 0.040 | 0.040 | 0.012 | 0.550 |
| Dimension (mm) |
Nominal Yield Strength | Tensile Strength | Elongation at Break |
|---|---|---|---|
| Rp0.2 N/mm2 | Rm | A% | |
| ≥ 5 ≤ 10 | 355 | 470 ÷ 840 | 8 |
| > 10 ≤ 16 | 300 | 420 ÷ 770 | 9 |
| > 16 ≤ 40 | 260 | 390 ÷ 730 | 10 |
| > 40 ≤ 63 | 235 | 380 ÷ 670 | 11 |
| > 63 ≤ 100 | 215 | 360 ÷ 640 | 11 |
| Wind load characteristics | |
| Direction | All directions |
| Wind zone | 1 |
| Fundamental value of basic wind speed | 22.00 m/s |
| Directional factor | X+:1.00 X-:1.00 ; Y+:1.00 Y-:1.00 |
| Seasonal factor | 1.00 |
| Terrain category | III |
| Orographic factor | 1.00 |
| Turbulence coefficient | 1.00 |
| Basic wind pressure | 0.30 kN/m2 |
| Exposure coefficient | 1.75 |
| Snow Load Characteristics | |
| Snow Zone | 3 |
| Snow Pressure | 1.20 kN/m2 |
| Exceptional Snow Load Coefficient | 1.20 kN/m2 |
| Exposure Coefficient | 0.80 |
| Thermal Coefficient | 1.00 |
| Height | 80.00 m |
| List of Load Cases | |
| Designation | List of Load Cases |
| Permanent Load | 1 |
| Wind (PN-EN 1991-1-4) | 23; 24; 25; 26; 2; 3; 4; 5; 6; 7; 8; 9; 10; 11; 12; 13; 14; 15; 16; 17; 18; 19; 20; 21; 22; 27; 28; 29; 30; 31 |
| Snow (PN-EN 1991-1-3) | 32; 33; 34 |
| Month | GlobHor (kWh/m²) | DiffHor (kWh/m²) | T_Amb (°C) | GlobInc (kWh/m²) | GlobEff (kWh/m²) | EArray (MWh) | E_Grid (MWh) | PR ratio |
|---|---|---|---|---|---|---|---|---|
| January | 18.6 | 13.74 | -1.42 | 30.3 | 19.7 | 1.98 | 1.90 | 0.628 |
| February | 35.5 | 21.44 | -0.34 | 55.4 | 40.3 | 4.07 | 3.94 | 0.712 |
| March | 78.8 | 41.53 | 3.24 | 105.8 | 89.8 | 8.80 | 8.53 | 0.806 |
| April | 122.4 | 59.18 | 8.95 | 145.6 | 134.5 | 12.72 | 12.31 | 0.846 |
| May | 158.2 | 73.17 | 14.22 | 165.5 | 155.9 | 14.41 | 13.93 | 0.837 |
| June | 161.1 | 80.76 | 17.05 | 161.3 | 150.2 | 13.78 | 13.33 | 0.829 |
| July | 159.2 | 79.51 | 19.42 | 161.4 | 153.1 | 13.81 | 13.47 | 0.817 |
| August | 132.8 | 68.48 | 18.82 | 155.6 | 143.0 | 13.31 | 12.95 | 0.828 |
| September | 94.2 | 54.70 | 13.69 | 122.8 | 108.1 | 10.16 | 9.84 | 0.801 |
| October | 54.3 | 26.98 | 8.92 | 81.6 | 63.4 | 6.10 | 5.91 | 0.725 |
| November | 21.5 | 13.77 | 4.55 | 36.0 | 23.9 | 2.35 | 2.26 | 0.627 |
| December | 13.3 | 9.40 | 0.79 | 24.1 | 14.2 | 1.41 | 1.34 | 0.558 |
| Year | 1056.8 | 542.57 | 9.05 | 1248.8 | 1096.0 | 102.95 | 99.57 | 0.797 |
|
Legends: GlobHor: Global horizontal irradiation DiffHor: Horizontal diffuse irradiation T_Amb: Ambient Temperature GlobInc: Global incident in coll. plane |
GlobEff: Effective Global, corr. for IAM and shadings EArray: Effective energy at the output of the array E_Grid: Energy injected into grid PR: Performance Ratio |
|||||||
| Tool - Modeling Methodology / Category of actions |
Application in Agro PV | Key benefits |
|---|---|---|
| Computational Fluid Dynamics (CFD) / Structural - Microclimate |
Analysis of wind loads on tall PV structures; Simulation of air flow, temperature, and humidity distribution under panels [40]; Informs structural design and microclimate management [9]. |
Quantifies complex aerodynamic forces on the Agro PV mounting structure; Predicts microclimate changes (soil/air temperature, wind speed) [10]; Provides information on construction design and microclimate management |
| Finite Element Method (FEM) / Structural - Geotechnical |
Structural analysis of support frames under various loads (wind, snow); Modeling the behavior of screw piles and other foundations under axial and lateral loads [17]. |
Assesses structural integrity and deformations; Optimizes material use and foundation design; Predicts mounting stability in different soil conditions. |
| Ray Tracing - Radiation Models (e.g., APyV) / Agricultural - Energy |
Quantifying the distribution of photosynthetically active radiation (PAR) on crops [7]; Simulating shading patterns [13]; Optimizing light management for crops and PV panels [15]. |
Provides highly accurate data on light distribution; Key for understanding the impact on yields; Informs dynamic tracking strategies for light sharing. |
| Crop Growth Models / Agricultural |
Predicting crop yields under Agro PV shading and microclimate conditions [13]; Assessing the impact of light limitations on crop growth [13]. |
Quantifies agricultural productivity; Enables yield prediction before Agro PV installation; Helps identify suitable crop types for specific Agro PV projects. |
| Techno-Economic Models (e.g., SAM, MINLP, FP) / Economic |
Cost-benefit analysis, ROI, NPV, LCOE for Agro PV projects [7,8]; Optimizing economic profits and operational costs [18]. |
Assesses financial viability and profitability; Compares different design scenarios; Supports investment decisions by quantifying revenue streams and costs. |
| Artificial Intelligence (AI) - Big Data / Integrated |
Predictive analytics for energy and crop yields [7,8]; Smart control systems for dynamic PV module tracking [15]; Monitoring and optimizing system performance. |
Increases prediction accuracy; Enables real-time optimization and adaptive control; Supports data-driven decision-making in complex systems. |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).