Peter
Tillmann‡
ab,
Klaus
Jäger‡
ab and
Christiane
Becker
*a
aHelmholtz-Zentrum Berlin für Materialien und Energie, Albert-Einstein-Straße 16, D-12489 Berlin, Germany. E-mail: christiane.becker@helmholtz-berlin.de
bZuse Institute Berlin, Takustraße 7, D-14195 Berlin, Germany
First published on 4th November 2019
Bifacial solar module technology is a quickly growing market in the photovoltaics (PV) sector. By utilising light impinging on both, front and back sides of the module, actual limitations of conventional monofacial solar modules can be overcome at almost no additional costs. Optimising large-scale bifacial solar power plants with regard to minimum levelised cost of electricity (LCOE), however, is challenging due to the vast amount of free parameters such as module inclination angle and distance, module and land costs, character of the surroundings, weather conditions and geographic position. We present a detailed illumination model for bifacial PV modules in a large PV field and calculate the annual energy yield exemplary for four locations with different climates. By applying the Bayesian optimisation algorithm we determine the global minimum of the LCOE for bifacial and monofacial PV fields at these two locations considering land costs in the model. We find that currently established design guidelines for mono- and bifacial solar farms often do not yield the minimum LCOE. Our algorithm finds solar panel configurations yielding up to 23% lower LCOE compared to the established configuration with the module tilt angle equal to the latitude and the module distance chosen such that no mutual shading of neighboring solar panels occurs at winter solstice. Our algorithm enables the user to extract clear design guidelines for mono- and bifacial large-scale solar power plants for most regions on Earth and further accelerates the development of competitively viable photovoltaic systems.
The levelised cost of electricity (LCOE) is a very relevant economic metric of a solar power plant.12 The performance of bifacial solar modules is heavily affected by their surroundings, because they can accept light from almost every direction. Hence, a vast amount of parameters influence the resulting LCOE, for example the module and land costs, module distance and inclination angle, albedo of the ground, geographical position and the weather conditions at the location of the solar farm. Liang et al. recently identified comprehensive simulation models for energy yield analysis as one of the key enabling factors.4 As an example, we briefly discuss how only two free parameters – land cost and module distance – affect the resulting LCOE, which makes it challenging to identify the sweet spot yielding a minimum LCOE: if two rows of tilted solar modules are installed close to each other, many modules can be installed per area. However, at too small distances shadowing will limit the rear side irradiance and consequently the total energy yield.13,14 In contrast, putting the rows of modules far apart from each other maximizes the irradiance at the rear side and the energy yield per module. The number of modules installed per area, however, is lower and the overall energy yield of the solar farm decreases. The module inclination angle is a third free parameter, closely connected to the two aforementioned module distance and land cost, and obviously affects shadowing of neighboring solar panel rows and hence energy yield and LCOE of a bifacial solar farm, too.
Historically, the module inclination angle was usually set to the geographical latitude of the solar farm location, and the module distance was either set to a fixed value based on experience15 or to the minimum module distance without mutual shadowing on the day of winter solstice at 9 am16 or noon.17 However, it has turned out that these rule-of-thumb estimates often do not lead to a minimised LCOE.18 One reason is that these models did not consider the cost of land. Recently Patel et al. considered land costs when optimising bifacial solar farms.16 However, also in this study the module distance and inclination angle were preset according to above mentioned winter solstice rule. Considering the enormous market growth of bifacial solar cell technology, finding the optimum configuration yielding minimum LCOE is highly desired. With the PV system costs in $ per Watt peak (Wp), land costs in $ per area and the geographic location of the solar farm as known input variables, inversely finding the optimal geometrical configuration of a bifacial PV field is a computational challenging multi-dimensional optimisation task.
In this study, we apply a multi-parameter Bayesian optimisation in order to minimise the LCOE of large-scale bifacial solar power plants. We present a comprehensive illumination model for bifacial solar arrays and calculate the annual energy yield (EY) based on TMY3 (Typical Meteorological Year 3) data for four exemplary locations near Seattle, Dallas, Mojave Desert and Havana. We calculate optimal module inclination angles and module distances yielding minimal LCOE for various module to land cost ratios. We find that our calculated optima strongly depend on both the module to land cost ratio and the geographical location. We conclude that currently used rule-of-thumb estimates for optimal module distance and tilting angle must be reconsidered. Our method enables the user to extract clear design guidelines for mono- and bifacial large-scale solar power plants principally anywhere on Earth.
Fig. 1 Illustrating the geometrical configuration of a (periodic) PV field and the illumination components, which reach each module on the front. The modules are labeled with #1–#5. At #1, the geometrical parameters h, , d and θm are illustrated – d is the horizontal length of a unit cell. At #2, the two irradiance components illuminating the module from the sky at Pm are indicated: 1. direct and 2. diffuse. Below #3, the I. direct and II. diffuse illumination of point Pg on the ground are illustrated – here diffuse illumination origins from three angular intervals. On #5 the angular range of light reaching Pm from the ground is indicated. It consists of 3. direct and 4. diffuse light being reflected from the ground. Components 1.–4. are summarized in Table 1. Here, we assume w.l.o.g. that the PV system is located on the northern hemisphere and oriented towards South. |
The PV field is irradiated from direct sunlight under the Direct Normal Irradiance (DNI)§ and the direction nS, which is determined by the solar azimuth ϕS and the solar zenith θS. The latter is connected to the solar altitude aS (the height above the ground) via aS = 90° − θS. Further, the PV field receives diffuse light from the sky, which is given as Diffuse Horizontal Irradiance (DHI). However, for calculating the total irradiance onto the module, also light reflected from the ground and shadowing by the other modules must be taken into account.
Due to the typical geometry of a power plant the specular reflected DNI from the front side will seldom reach the back side of the front row. The diffuse reflectivity of the module should be significantly lower. In the current model we therefore assume the solar modules to be completely black and to not reflect any light. This might lead to a slight underestimation of the illumination.
Fig. 1 shows the different components of light, which can reach the front of a PV module at point Pm. The numbers 1.–4. correspond to the numbers in the figure – illumination on the sky is w.l.o.g. indicated for module #2 while illumination from the ground is indicated w.l.o.g. for module #5.
(1) Direct sunlight hits the modules under the direction nS. It leads to the irradiance component Iskydir,f(s) = DNIcosσmS, where s is the distance between the lower end of the module B2 and Pm, , and σmS is the angle between the module surface normal and the direct incident sunlight.
(2) Diffuse skylight Iskydiff,f(s) hits the module at Pm from directions within the wedge determined by ∢D1PmD2. Diffuse light does not only reach the module from directions within the xz-plane but from a spherical wedge, which is closely linked to the sky view factor as for example used by Calcabrini et al.20
(3) Igr.dir,f(s) denotes direct sunlight that hits the module after it was reflected from the ground.
(4) Finally, Igr.diff,f(s) denotes diffuse skylight that hits the module after it was reflected from the ground.
All four components are summarized in Table 1. Table 2 denotes all parameters that are used as input to the model.
1. | Direct irradiance from the sky + circumsolar brightening | I skydir(s) |
2. | Diffuse irradiance from the sky | I skydiff(s) |
3. | Diffuse irradiance from the ground originating from direct sunlight + circumsolar brightening | I gr.dir(s) |
4. | Diffuse irradiance from the ground originating from diffuse skylight | I gr.diff(s) |
a This parameter also can be spectral. Then, the unit would be W (m2 nm)−1. | |
---|---|
Module parameters (depicted in Fig. 1 ) | |
Module length (m) | |
w | Module width (m) |
d | Module spacing (m) |
h | Module height above the ground (m) |
θ m | Module tilt angle |
Solar parameters | |
DNI | Direct normal irradiance (W m−2)a |
DHI | Diffuse horizontal irradiance (W m−2)a |
θ S | Zenith angle of the sun (connected to solar altitude aSvia aS = 90° − θS |
ϕ S | Azimuth of the Sun |
A | Albedo of the ground |
Economical parameters | |
c P | Peak power related system costs ($ per kWp) |
c L | Land consumption related costs ($ per m2) |
The total irradiance (or intensity) on front is given by
If(s) = Iskydir,f(s) + Iskydiff,f(s) + Igr.dir,f(s) + Igr.diff,f(s), | (1) |
As noted above, the incident light is given as DNI and DHI. The nonuniform irradiance distribution on the module front and back surfaces has to be considered.21,22 For the further treatment, it is therefore convenient to define unit-less geometrical distribution functions as for the components arising from direct sunlight and diffuse skylight, respectively. The geometrical distribution functions are closely related to the concept of view factors, which is often used for such illumination models.4,20,23 Usually, view factors are defined such that they describe the radiation from one area onto another area, hence they give the average radiation onto the area, e.g. a module. However, we do not seek the mean irradiation on a module but the minimal irradiation. This is because of the electric properties of PV modules, as described in Section 3.1.
(2) |
In eqn (2) we omitted the superscripts “sky” and “gr.”. The calculation of the components ιgr.dir,f(s) and ιgr.diff,f(s) requires the integration over geometrical distribution functions on the ground γdir(xg) and γdiff(xg), where xg is the coordinate of the point Pg on the ground.
In particular, we have where we omitted the subscripts “diff” and “dir”. The coordinate xg(s,α), on which γdir and γdiff are evaluated, is defined such that the angle between the line and the module normal nm is equal to α – the integration parameter. In Fig. 1 the fractions of the ground, which are illuminated by direct sunlight, are marked in orange.
(3) |
Fig. 2 shows an example for illumination onto the ground: subfigure (a) illustrates the position of the solar modules #1 and #2. Subfigure (b) shows the geometrical distribution functions on the ground. γdiff is minimal below the module where the angle covered by the module is largest; and maximal at x′, because here the ground sees least shadow from module #1.
Depending on the geometrical module parameters and the position of the Sun, the directly illuminated area (1) may lay completely within the unit cell as in the examples in Fig. 1 and 2, (2) it may extend from one unit cell into the next or (3) no direct light can reach the ground. The latter can occur when the module spacing d decreases or when the solar altitude aS is low.
Fig. 3 shows the eight geometrical distribution functions ι corresponding to the irradiance components hitting the PV module on its front and back sides. While the functions originating from the sky (a) are stronger on the front side, the components originating from the ground (b) are stronger on the back side. This can be understood by the opening angles: the opening angle towards the sky is larger on the front side, but the opening angle of the ground is larger at the back.
All calculations presented in this work were performed with Python using numpy as numerical library for fast tensor operations.
(4) |
The ι-functions are evaluated on the position , where is the set of all considered positions along the module. In a conventional PV module, all cells are electrically connected in series and therefore the cell generating the lowest current limits the overall module current. To take this into account, we determine ŝi such that
(If + Ib)(ŝi,ti) ≤ (If + Ib)(s,ti) | (5) |
To model the diffuse irradiance we use the Perez model, that is widely used for solar cell simulations. The Perez model distinguishes three different components of diffuse irradiance to calculate the intensity on a tilted plane: isotropic dome, circumsolar brightening and horizontal brightening. For modelling the illumination the circumsolar brightening component is added to the direct normal irradiance because it is centred at the position of the sun. The horizontal brightening is shaded by rows in front and back and is therefore not considered to calculate the final irradiance. For the isotropic dome irradiation on the module, the corresponding geometrical distribution functions ιdiff(s) need to be calculated only once.
For the components arising from direct sunlight, also the geometrical distribution functions ιdir(s,ti) are time-dependent, because they depend on the position of the Sun (θS,i, ϕS,i),¶ which we calculate using the Python package Pysolar.28
In the ESI,† we also show results for Daggett, USA (Mojave desert, 585 m elevation, 34.87° N, 116.78° W) with a hot desert climate (Köppen–Geiger classification BWh29) and Havana, Cuba (Casa Blanca, 50 m elevation, 23.17° N, 82.35° W) with a tropical climate (Köppen–Geiger classification A29).
Fig. 4 shows the annual radiant exposure in (a) Dallas and (b) Seattle for bifacial PV modules (left) in a big PV field and the contributions from the front (middle) and back sides (right). The data shown in the figure are calculated like the energy yield according to eqn (4), where we set ηf = ηb = 1. We see that H generally increases with the module spacing. However, it is not economical to have a too large distance between the rows as we will see when considering the electricity cost in Section 4.
Fig. 4 Annual radiant exposure for bifacial modules and the contributions from front and back sides in a large PV field as a function of module spacing d and module tilt θm. Results are shown for Dallas, TX, (top row) and Seattle, WA, (bottom row). The annual radiation yield is calculated using eqn (4) with ηf = ηb = 1. Simulated with m module height h = 0.5 m and albedo A = 30%. |
For Dallas, the optimal angle for monofacial modules, which only can utilize front illumination, is about 28°; it is mainly determined by direct sunlight. For back illumination, H increases significantly with the module inclination angle θm: hardly any direct light reaches the module at the back, but contributions from diffuse sky and reflected from the ground increase with θm. Increasing the module tilt further reduces the shaded area on the ground and therefore increases ground illumination. The optimal module tilt for a bifacial module is a compromise between the optimal tilt for the front and beneficial higher tilt angles for back contribution. Overall, the optimal module tilt for bifacial modules is significantly higher than for monofacial modules. Here it is about 36°.
Overall, the trends for Seattle are comparable to those for Dallas. However, we can identify differences: the overall radiant exposure is much lower because Seattle sees around 2170 annual Sun hours, compared to about 2850 h in Dallas.30 Further, the optimal tilt for monofacial and bifacial modules is 32° and 44°, respectively, which is explained by the higher latitude of Seattle.
For the front side illumination we see the interesting effect that, while the latitude of Seattle and Dallas differ by 14.5°, the respective optimal tilt angles only differ by 4°. This is probably because of the higher contribution on the annual radiant exposure from the summer months in Seattle compared to Dallas. While in Seattle May to September contribute 77% of the annual radiant exposure this is only 65% in Dallas. Because the module irradiance during the summer months (with higher elevation angles of the Sun) benefits from lower tilt angle θm values this can explain the difference of latitude to optimal tilt angles. The higher fraction of diffuse light in Seattle that also benefits the radiant exposure on the front side for small θm might additionally increase this effect.
Fig. 5 shows how much the different irradiation components contribute to the annual radiant exposure for a bifacial module with d = 10 m module spacing, θm = 34° tilt and albedo A = 30% in Dallas: about 74% of the total exposure arises from direct sunlight impinging onto the module front, 14% are due to diffuse skylight impinging onto the front but the fraction of light that reaches the front from the ground is almost negligible. However, of the 10.5% exposure received by the back, around 88% is reflected from the ground. Hence, the albedo only has little influence onto the energy yield of monofacial modules but is very relevant for bifacial modules. Fig. S4† shows corresponding results for Seattle. Compared to Dallas, Seattle shows 1.4% per larger contribution by the back side. While the front side receives radiation with a ratio of 3.5:1 of direct to diffuse light, for the back side, this ration is close to 1:1. These results show that four factors drive the gain of bifacial modules instead of monofacial modules: the albedo of the ground, the module tilt angle, the module spacing and the overall fraction of diffuse light.
Also the mounting height h affects the bifacial gain. Increasing the mounting height monotonically raises the energy yield. Therefore it is difficult to optimise this parameter without knowing additional technical and commercial constraints. However, we find that the bifacial gain starts to saturate for a height above 0.5 m, which is in agreement with work from Kreinin et al.17 Since a mounting height of h = 0.5 m seems realistic all simulations in our work are performed with this mounting height.
(6) |
The total cost can be split into two components, associated with the peak power CP (including modules, inverters, mounting etc.) and the land consumption CL (lease, fences, cables etc.) of the facility.
CF = CP + CL | (7) |
By considering a facility with a PV-field of M rows with N modules each the costs can be calculated per unit cell,
CF = (CP,m + CL,m)MN. | (8) |
The peak-power related costs per module CP,m are calculated with
(9) |
The cost of land consumption per module depends on module width w and spacing d,
CL,m = cLdw | (10) |
The annual generated electric energy of the PV field is given by with the annual yield EY according to eqn (4).
(11) |
Combining eqn (6)–(11) and simplifying leads to the expression which is independent of the field dimensions M and N and the module width w.
(12) |
In this study, we assume for the overall costs of the PV system cm = 1000 $ per kWp, which includes all costs over the lifetime of the solar park, such as PV module investment, balance of system cost, planning, capital cost and others. The land cost is not included in this quantity. The lifetime is assumed to be T = 25 years, a typical time span for the power warranty of solar cell modules.27
In our optimisation, we aim to minimize the LCOE as parameter of the module spacing d and the solar module tilt θm. We perform the optimisation for five land-cost scenarios cL, in which we assume to include all costs that are related to an increase of area such as lease, cables, fences etc.Table 3 gives an overview of the cost scenarios and the resulting fraction of the land costs on the total costs, (CL/CF).
c P ($ per kWp) | c L ($ per m2) | C L/CF (%) |
---|---|---|
1000 | 1.00 | 2.5 |
1000 | 2.50 | 6.0 |
1000 | 5.00 | 11.3 |
1000 | 10.00 | 20.3 |
1000 | 20.00 | 33.8 |
In principle, Bayesian optimisation consists of two components: a surrogate model that approximates the black box function and its uncertainty (based on previously evaluated data points) and an acquisition function that determines the next query point from the surrogate model. After evaluating the function for the queried data point the surrogate model is updated and the next step can be computed with the acquisition function. This cycle is repeated until a specified number of steps or a convergences criteria is reached. We use the implementation from scikit-optimize with Gaussian process as surrogate model and expected improvement as acquisition function.37
Fig. 6 and 7 shows the optimisation results for a field of (a) bifacial and (b) monofacial PV modules in Dallas and Seattle, respectively. Black dots mark evaluated data points, the red dot marks the found optimum and the color map shows the interpolation of the LCOE by the Gaussian process. The blue line indicates the winter solstice rule (9 am).
We see that the optimum shifts to smaller module spacing with increasing land cost. Further, also the optimal module tilt decreases in order to compensate for increased shadowing because of less module spacing. Overall, bifacial installations show larger module spacing and higher tilt angles in optimal configurations compared to monofacial technology. With increasing land costs and therefore reduced optimal module spacing the cost landscape gets increasingly steep. The sensitivity of the optimised parameters increases and using non-optimal geometrical configurations results in increasing yield loss. Seattle shows the same trends for optimal configuration in different cost scenarios. Compared to Dallas optimal tilt and spacing are higher.
Our optimisation results differ significantly from the geometric parameters obtained from the winter solstice rule. For Dallas the winter solstice rule only provides comparable optimal parameters for cL = 5 $ per m2. In Seattle, the optimal distances are shorter and the optimal module tilts are larger than expected from the winter solstice rule for all cost scenarios. This can be understood when considering the large share of diffuse light during the Seattle winter, which mitigates shading losses significantly.
Table 4 compares the LCOE obtained from optimisation to results for rule-of-thumb geometries (tilt angle = latitude, distance according to 9 am winter solstice rule) for different land cost scenarios. Depending on the location and cost scenario we see a reduction of LCOE of up to 23%. The rule-of-thumb approach shows its weakness especially in Seattle. There is a general trend for higher reductions at high cost scenarios, where the cost landscape is increasingly steep (see Fig. 6 and 7). The optimisation for Havana in general exhibits the smallest reduction of LCOE but compared to the other locations there is no clear trend for higher reductions for higher land costs.
c L ($ per m2) | LCOE (cents) optimised | Rule-of-thumb | Reduction (%) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
DALL. | HAVA. | MOJA. | SEAT. | DALL. | HAVA. | MOJA. | SEAT. | DALL. | HAVA. | MOJA. | SEAT. | |
1.0 | 2.04 | 1.84 | 1.57 | 2.83 | 2.05 | 1.87 | 1.58 | 2.85 | 0.5 | 1.6 | 0.6 | 0.7 |
2.5 | 2.10 | 1.89 | 1.61 | 2.93 | 2.10 | 1.89 | 1.62 | 3.00 | 0.0 | 0.0 | 0.6 | 2.3 |
5.0 | 2.17 | 1.94 | 1.67 | 3.07 | 2.18 | 1.94 | 1.68 | 3.24 | 0.5 | 0.0 | 0.6 | 5.2 |
10.0 | 2.28 | 2.02 | 1.77 | 3.28 | 2.33 | 2.04 | 1.80 | 3.74 | 2.1 | 1.0 | 1.7 | 12.3 |
20.0 | 2.47 | 2.17 | 1.92 | 3.62 | 2.63 | 2.23 | 2.06 | 4.73 | 6.1 | 2.7 | 6.8 | 23.5 |
From these results it is clear that the winter solstice rule is not able to properly reflect different economic trade-offs or different illumination conditions over the course of the year. This is especially true when setting the tilt angle to the latitude of the location. For a minimal LCOE module tilt and spacing should be optimised independently from each other. Further, typical weather patterns and the local economic situation must be taken into account.
c L ($ per m2) | C L/CF (%) | d (m) | Bif. gain (%) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
DALL. | HAVA. | MOJA. | SEAT. | DALL. | HAVA. | MOJA. | SEAT. | DALL. | HAVA. | MOJA. | SEAT. | |
1.0 | 2.2 | 2.0 | 2.1 | 2.7 | 8.6 | 8.2 | 8.5 | 10.8 | 11.4 | 11.3 | 10.7 | 13.6 |
2.5 | 4.4 | 3.3 | 4.2 | 5.0 | 7.2 | 5.3 | 6.9 | 8.3 | 11.0 | 10.1 | 10.3 | 12.7 |
5.0 | 5.7 | 4.7 | 6.1 | 8.0 | 4.7 | 3.9 | 5.1 | 6.8 | 9.6 | 9.0 | 9.4 | 11.7 |
10.0 | 9.2 | 7.8 | 9.6 | 11.8 | 4.0 | 3.3 | 4.2 | 5.2 | 8.8 | 7.9 | 8.4 | 10.5 |
20.0 | 14.3 | 13.9 | 15.1 | 18.2 | 3.3 | 3.2 | 3.5 | 4.3 | 7.3 | 7.5 | 7.3 | 9.2 |
In general, we see that for a utility scale solar cell plant both, the module tilt and the distance between rows, affect the annual energy yield. Increasing the distance increases the energy yield and the costs per module while tilt can be optimised cost-neutral. The optimal distance between rows is a compromise between increasing costs with higher land use for higher distances and lower energy yield due to shading for lower distances. This is true also for monofacial modules but due to the increased relevance of light reflected from the ground it is more relevant for bifacial modules.
The optimal configuration for bifacial solar cells depends on the radiation conditions and the albedo of the facility location. With increasing latitude (and therefore lower solar elevation angles), albedo and diffuse light contribution the bifacial gain will be increased and therefore make this type of PV technology more attractive for utility scale developers.
Cost optimisations for PV installation are quickly outdated because PV module prices have been decreasing for many years and land cost is very volatile. However the optimal installation geometry only depends on the ratio of land cost related to total costs and not absolute values. Hence, at a scenario of cL = 10 $ per m2 and cP = 1500 $ per kWp yields the same optimisation result as cL = 5 $ per m2 and cP = 750 $ per kWp.
Our results basically show that the bifacial gain and optimal geometry depend on the specific location and cost scenario. The bifacial gain can be expected to increase for locations with higher latitude and higher diffuse light share.
The usually used rule of thumb, no shadowing at winter-solstice and module tilt angle equal to the geographical latitude, leads to suboptimal module spacing and tilt combinations, because it does not account for economic trade-offs and the influence of the local climate. In contrast, optimising the parameters in Seattle can lead to a 23% reduction of LCOE for high land cost scenarios. This shows the significance of site-specific and land-cost dependent optimisation and helps users to identify the configurations yielding minimal LCOE.
Footnotes |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c9se00750d |
‡ These authors contributed equally to this work. |
§ The irradiance or intensity is the radiant power a surface receives per area. |
¶ See for example ref. 27, appendix E. |
|| See for example ref. 27, chapter 21. |
This journal is © The Royal Society of Chemistry 2020 |