Economic Analysis and Modelling of Rooftop Photovoltaic Systems in Spain for Industrial Self-Consumption
Abstract
:1. Introduction
1.1. Background
- Located in Spain.
- Intended for industrial self-consumption.
- With an anti-spilling system.
- In flat roofs with high tolerance to loads.
- 100% self-consumption.
- Inverters located in the room of the General Low Voltage Board.
- Absence of obstacles.
- Absence of losses by nearby shading.
- Height of the building of 10 m.
- Technology: 72-cell modules, using PERC monocrystalline modules and polycrystalline modules.
- The inclination of the modules: leaps of 5 degrees between 10° and 30° inclination.
- Available area: 1200 m2 with low voltage connection, 4000 m2 with low voltage connection and 12,000 m2 with high voltage connection.
1.2. Economic Evolution of Photovoltaic Energy in the World
1.3. Rooftop Photovoltaic Systems
1.4. Outline of the Article
- Introduction
- 1.1
- Background
- 1.2
- Economic evolution of photovoltaic energy in the world
- 1.3
- Rooftop photovoltaic systems for industrial self-consumption
- 1.4
- Outline of the article
- Materials and methods
- 2.1
- Design and basic engineering of the facilities
- 2.2
- CAPEX calculation
- 2.3
- Simulation of installations with the Helioscope software
- 2.4
- OPEX calculation and estimation of LCOE
- 2.5
- Numerical modeling of the LCOE
- Results and discussion
- 3.1
- Installable power analysis
- 3.2
- Yield analysis
- 3.3
- CAPEX analysis
- 3.4
- LCOE analysis
- Procedure developed for the LCOE calculation
- 4.1
- Procedure compilation
- 4.2
- Accuracy of the developed models
- Conclusions, limitations of the study, and future research
- 5.1
- Conclusions
- 5.2
- Limitations of the study and future research
References
2. Materials and Methods
- Facilities located in Spain: to avoid that different weather conditions or the variation in costs from one country to another may distort the comparison.
- Industrial self-consumption facilities: since the decentralization of the electrical system and the low return on investment generated by these facilities make the installation forecasts very high [24].
- Installations on a flat roof with high tolerance to loads
- Installations with 100% self-consumption: that is, the study is carried out for installations that take advantage of all the energy they generate because their consumption is much higher at all times than photovoltaic production.
- Inverters located in the room of the General Low Voltage Module.
- Absence of obstacles.
- Absence of losses due to close shading.
- Building height of 10 m.
- Selection of standard cases: the variables that will change from one case to another will be defined to represent as many facilities as possible so that conclusions can be drawn on how they affect the different parameters studied.
- Selection of main equipment: the modules, inverters, and structures to be used will be chosen. It will represent the latest advances in the sector, using modules improved by PERC type treatments, multi MPPT inverters, and structures without the need to drill the roof.
- Use the Helioscope software to calculate the available power: the selected geometries will be generated in Helioscope, and the sizing of each of the facilities defined in step 1 will be carried out. Helioscope software has similar error ranges that other PV simulation software, while its interface facilitates making 3D simulations for the defined base cases [25].
- Design and basic engineering of the facilities: to subsequently assess the cost of the plants, the wiring, protections, control equipment, and all the necessary elements for each of the predefined facilities will be dimensioned, always from the point of view of basic engineering. The design has been made according to the Spanish legislation [26].
- Calculation of CAPEX: Each facility will be economically valued, budgeting with market prices for materials and assembly. The cost of engineering, business structure costs, and any other element that may intervene in the budget of a photovoltaic installation will also be calculated.
- Simulation of the installations with the Helioscope software: once the photovoltaic plants have been dimensioned, the data input into Helioscope will be completed. They will be simulated for each of the selected locations, compiling the results obtained.
- Calculation of OPEX and estimation of LCOE: the cost of maintenance will be economically valued. The calculated values of the LCOE for each case can be obtained in the locations studied.
- Numerical modeling of the LCOE: numerical models will be generated that allow an approximate calculation of the power, production, cost, and LCOE of a photovoltaic installation for a known roof.
2.1. Design and Basic Engineering of the Facilities
2.2. CAPEX Calculation
2.3. Simulation of Installations with the Helioscope Software
2.4. OPEX Calculation and Estimation of LCOE
2.4.1. OPEX Calculation
2.4.2. LCOE Calculation
- CAPEX: the cost of the photovoltaic plant in absolute terms. It is obtained from the price of the EPC by adding a 4% surcharge for license taxes in Spain [30].
- OPEX: the cost of annual maintenance in absolute terms, approximated according to the NREL at 1% of CAPEX (considering that maintenance does not imply an expense in building licenses).
- Production year 1: values extracted from the simulation carried out.
- r: discount rate. As it is a facility intended for self-consumption, this value is quite high since the risk associated with a location change, a decrease in consumption, or other problems related to the company’s future that owns the facility is high. A value of 6% will be used, which is between 4 and 8% recommended by Solar Bankability [31] and coincides with the NREL’s recommended values [27].
- a: loss of annual performance of the modules. The 0.7% guaranteed by the manufacturer in the characteristics of the equipment will be used. Those values are aligned with academic research on this topic [32].
- n: useful life of the plant will be considered 30 years [33].
2.5. Numerical Modeling of the LCOE
- Peak power of the installation:
- 2.
- Yield of the installation:
- 3.
- Installation CAPEX and OPEX
- 4.
- LCOE of the installation:
2.5.1. Numerical Modeling of Peak Power
2.5.2. Numerical Modeling of YIELD
2.5.3. Numerical Modeling of CAPEX and OPEX
2.5.4. Numerical Modeling of the LCOE
3. Results and Discussion
3.1. Installable Power Analysis
3.2. Yield Analysis
3.3. CAPEX Analysis
3.4. LCOE Analysis
4. Procedure Developed for the LCOE Calculation
4.1. Procedure Compilation
4.2. Accuracy of the Developed Models
5. Conclusions, Limitations of the Study and Future Research
5.1. Conclusions
5.2. Limitations of the Study and Future Research
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
AC | Alternating Current |
BIPV | Building Integrated PV |
CAPEX | Capital Expenditures |
CRF | Capital Recovery Factor |
DC | Direct Current |
DDP | Delivered Duty Paid |
EPC | Engineering, Procurement, and Construction |
G | Radiation value in kWp/m2 |
GHI | Global Horizontal Irradiation |
GM | Gross Margin |
HV | Cost of the voltage raising system |
IEA | International Energy Agency |
IRENA | International Renewable Energy Agency |
LCOE | Levelized Cost of Electricity |
LID | Light Induced Degradation |
LV | Low Voltage |
MV | Medium Voltage |
MPPT | Maximum Power Point Tracker |
NREL | National Renewable Energy Laboratory |
OPEX | Operational Expenditures |
PERC | Passivated Emitter Real Cell |
PPA | Power Purchase Agreement |
PR | Performance Ratio |
PV | Photo-voltaic |
STC | Standard Test Conditions |
TS | Transforming Station |
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Location | Latitude | Longitude |
---|---|---|
Bilbao, Basque Country | 43° 14′ N | 2° 55′ W |
Torrejón de Ardoz, Madrid | 40° 26′ N | 3° 38′ W |
Seville, Andalusia | 37° 22′ N | 5° 59′ W |
Lanzarote, Canary Islands | 28° 58′ N | 13° 32′ W |
Element | 10°-Mono-1200 Cost (€) | 10°-Mono-4000 Cost (€) | 10°-Mono-12,000 Cost (€) |
---|---|---|---|
Photovoltaic Modules | 41,325 | 143,034 | 413,201 |
Structures | 7524 | 27,462 | 77,754 |
Investors and add-ons | 9470 | 25,413 | 64,037 |
DC wiring | 1811 | 8900 | 42,351 |
AC wiring (LV and MV) | 985 | 2139 | 59,436 |
Protections and control | 4686 | 12,480 | 17,470 |
Mounting | 11,472 | 36,647 | 108,428 |
Structure of work | 12,916 | 22,176 | 29,918 |
Miscellaneous expenses | 2233 | 5430 | 14,514 |
Cost | 92,425 | 283,685 | 827,112 |
Margin | 11,091 | 34,042 | 99,253 |
Sale | 103,516 | 317,727 | 926,366 |
Element | 10°-Mono-1200 | 10°-Mono-4000 | 10°-Mono-12,000 |
---|---|---|---|
EPC (€) | 103,516 | 317,727 | 926,366 |
Power (kWp) | 142.5 | 520.1 | 1559.3 |
EPC (€/Wp) | 0.726 | 0.611 | 0.594 |
Parameter | 10°-Mono-1200 | 10°-Mono-4000 | 10°-Mono-12,000 |
---|---|---|---|
PR (%) | 84.9 | 84.5 | 84.7 |
Yield (kWh/kWp) | 1548 | 1540.5 | 1544.5 |
Production (MWh/year) | 220.6 | 801.2 | 1408 |
Case | Module (€/Wp) | Inverter (€/Wp) | Structure (€/Wp) | Assembly (€/Wp) | Other (€/Wp) |
---|---|---|---|---|---|
1200 m2—Mono | 0.290 | 0.063 | 0.086 | 0.086 | 0.231 |
1200 m2—Poly | 0.250 | 0.072 | 0.097 | 0.097 | 0.251 |
4000 m2—Mono | 0.275 | 0.053 | 0.073 | 0.073 | 0.159 |
4000 m2—Poly | 0.240 | 0.050 | 0.083 | 0.083 | 0.169 |
12,000 m2—Mono | 0.265 | 0.042 | 0.072 | 0.072 | 0.163 |
12,000 m2—Poly | 0.230 | 0.043 | 0.081 | 0.081 | 0.174 |
Module | Dimensions (mm × mm) | |
---|---|---|
320 Wp, polycrystalline | 1960 × 992 | 16.5 |
325 Wp, polycrystalline | 1960 × 992 | 16.7 |
330 Wp, polycrystalline | 1960 × 992 | 16.9 |
370 Wp, monocrystalline | 1960 × 992 | 19.0 |
375 Wp, monocrystalline | 1960 × 992 | 19.3 |
Module | 330 Wp/Polycrystalline | 375 Wp/Monocrystalline |
---|---|---|
75 kWp–250 kWp | 0.25 | 0.29 |
250 kWp–750 kWp | 0.24 | 0.28 |
750 kWp–2500 kWp | 0.23 | 0.27 |
Power | Cost (€/Wp) |
---|---|
75 kWp–250 kWp | 0.070 |
250 kWp–750 kWp | 0.055 |
750 kWp–2500 kWp | 0.045 |
Power | Counterweight, 330 Wp Module | Counterweight, 375 Wp Module | Battens, 330 Wp Module | Battens, 375 Wp Module |
---|---|---|---|---|
75kWp–750 kWp | 0.060 | 0.053 | 0.121 | 0.106 |
750kWp–2500 kWp | 0.057 | 0.05 | 0.115 | 0.101 |
Case | Model Error–Other Costs | Model Error—CAPEX |
---|---|---|
10°-Mono-1200 | 5.01% | 3.92% |
10°-Mono-4000 | 6.51% | 5.61% |
10°-Mono-12,000 | 2.22% | 2.61% |
r (%) | Years | Relative Error (%) |
---|---|---|
4 | 15 | 0.95 |
6 | 15 | 1.09 |
8 | 15 | 3.16 |
4 | 30 | 5.01 |
6 | 30 | 2.33 |
8 | 30 | 0.26 |
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Share and Cite
Rodríguez-Martinez, Á.; Rodríguez-Monroy, C. Economic Analysis and Modelling of Rooftop Photovoltaic Systems in Spain for Industrial Self-Consumption. Energies 2021, 14, 7307. https://doi.org/10.3390/en14217307
Rodríguez-Martinez Á, Rodríguez-Monroy C. Economic Analysis and Modelling of Rooftop Photovoltaic Systems in Spain for Industrial Self-Consumption. Energies. 2021; 14(21):7307. https://doi.org/10.3390/en14217307
Chicago/Turabian StyleRodríguez-Martinez, Álvaro, and Carlos Rodríguez-Monroy. 2021. "Economic Analysis and Modelling of Rooftop Photovoltaic Systems in Spain for Industrial Self-Consumption" Energies 14, no. 21: 7307. https://doi.org/10.3390/en14217307
APA StyleRodríguez-Martinez, Á., & Rodríguez-Monroy, C. (2021). Economic Analysis and Modelling of Rooftop Photovoltaic Systems in Spain for Industrial Self-Consumption. Energies, 14(21), 7307. https://doi.org/10.3390/en14217307