Digital Commons @ Michigan Tech Digital Commons @ Michigan Tech Water Conservation Potential of Self-Funded Foam-Based Flexible Water Conservation Potential of Self-Funded Foam-Based Flexible Surface-Mounted Floatovoltaics Surface-Mounted Floatovoltaics

: A potential solution to the coupled water–energy–food challenges in land use is the concept of ﬂoating photovoltaics or ﬂoatovoltaics (FPV). In this study, a new approach to FPV is investigated using a ﬂexible crystalline silicon-based photovoltaic (PV) module backed with foam, which is less expensive than conventional pontoon-based FPV. This novel form of FPV is tested experimentally for operating temperature and performance and is analyzed for water-savings using an evaporation calculation adapted from the Penman–Monteith model. The results show that the foam-backed FPV had a lower operating temperature than conventional pontoon-based FPV, and thus a 3.5% higher energy output per unit power. Therefore, foam-based FPV provides a potentially proﬁtable means of reducing water evaporation in the world’s at-risk bodies of fresh water. The case study of Lake Mead found that if 10% of the lake was covered with foam-backed FPV, there would be enough water conserved and electricity generated to service Las Vegas and Reno combined. At 50% coverage, the foam-backed FPV would provide over 127 TWh of clean solar electricity and 633.22 million m 3 of water savings, which would provide enough electricity to retire 11% of the polluting coal-ﬁred plants in the U.S. and provide water for over ﬁve million Americans, annually.


Introduction
Water scarcity [1,2], the energy crisis [3], and food scarcity [4,5] are the largest currently coupled challenges [6] facing the global community, where they most severely affect the arid and semiarid regions of the world [7]. There is a wide scientific consensus that combustion of fossil fuels for energy is increasing atmospheric carbon dioxide (CO 2 ) concentrations and driving climate change [8]. This anthropogenic climate change is increasing globally averaged mean annual air temperatures and driving changes in precipitation, which are expected to continue and increase [9,10]. The IPCC (Intergovernmental Panel on Climate Change) warns that the climate change over the next century will affect rainfall, river flows and sea levels all over the world [11], which will negatively impact agricultural yield [12]; particularly in already-malnourished sub-Saharan Africa. de Wit and Stankiewicz [13] predict rainfall in sub-Saharan Africa could drop by 10% causing surface drainage to drop 30-50% by midcentury, which would cause major water shortages. It is widely agreed that to prevent the worst of climate change, humanity needs to rapidly convert fossil fuel-based energy systems to renewable energy systems [14]. Solar photovoltaic (PV) technology is the most widely accessible, sustainable, (1) Tilted arrays of solid modules (normally on top of pontoon structures) [36,[47][48][49]; (2) Submerged PV modules (with and without a pontoon) [24,30,33,34,50]; (3) Micro-encapsulated phase change material (MEPCM)-based pontoon modules [51][52][53]; (4) Thin-film PV (no ridged pontoon supporting structure) [24,26,54].
The thin-film FPV design has the advantage of reducing racking costs even more so than pontoon style FPV, as it clearly stops more evaporation and gains an advantage by the operational temperature being lower. However, the temperature coefficients are better for amorphous silicon (a-Si:H) thin film materials than those of crystalline silicon (c-Si) so the benefits of the water cooling are muted for a-Si:H-based FPV.
In this study, a new approach is used with a flexible crystalline silicon module on a similar foam system to that described by Pierce et al. [54] for a-Si:H FPV. This approach enables a larger solar electric output gain (or FPV boost) and as solar is largely already profitable, there is an opportunity for the electricity production value of c-Si flexible foam-backed FPV to subsidize a means of water conservation by cutting water evaporation losses. To build on past FPV work and investigate the potential of FPV coupled to hydro power in the U.S., the water saving potential at Lake Mead using FPV is investigated in this study. Lake Mead is an artificial reservoir created by the United States government to run the Hoover Dam, which was built in 1935 [55,56]. This novel form of FPV is analyzed for water-saving using an evaporation calculation adapted from the Penman-Monteith daily evaporation model [57] that is approved by the Food and Agriculture Organization of the United Nations (FAO) [58]. An energy production analysis is performed and an open source spreadsheet was developed to simulate the evaporation and the energy yield of the flexible FPV [59], as well as to investigate the impact of using passive water-cooled FPV, where the cooling potential was measured experimentally for a foam-based FPV. The potential is determined for a case study based on the coverage of FPV ranging from 10% to 50% [60] of Lake Mead. The results are compared to "conventional" tilted pontoon-style FPV and are discussed in the context of the energy-water-food nexus.

Lake Evaporation Data
Most of the weather data used in this study were collected on Lake Mead through buoys installed by the United States National Oceanic and Atmospheric Administration's National Data Buoy Center (NOAA-NDBC) [61]. The rest of the data were obtained from open-access weather data made available by the McCarran International Airport's weather station in Las Vegas [62], and from SOLCAST, a solar data provider [63].
The main characteristics of the lake differ slightly from one study to another and depend on the year the study was conducted. In this study, the lake characteristics' values used for the evaporation calculation are taken from the National Park Service (NPS) website [64]. According to the NPS, as of 2010, the lake has a maximum surface area of 159,866 acres (647 million m 2 ), and a maximum capacity of 29,686,054 acre-feet (36,617 million m 3 ). The mean depth of the lake is estimated to be 55.5 m by the National Park Service [56]. The elevation of the lake is 328.574 m above sea water level. The weather buoy used to collect the data is located in the North Boulder Basin of the lake at a geographical position of latitude 36.087 N and longitude 114.728 W. The temperature sensor for air temperature collection is located at a height of 2 m above the lake surface while the anemometer is at 3 m above. Additionally, the atmospheric pressure sensor is located at 330.574 m above sea water level or 2 m above the lake surface, and the water temperature is measured at 0.5 m below the lake surface [65].
The buoy installed in Lake Mead's North Boulder basin by the NOAA-NDBC has been capturing different types of variables since 2016, which are stored in a historical database on the agency's website. Among the data required to conduct an evaporation calculation using the Penman-Monteith model, the wind speed (w s ), the atmospheric pressure (P), the maximum (T w,max ), minimum (T w,min ), and daily mean (T w ) water temperature; and the air temperature were obtained from the NOAA-NDBC historical database. The rest of the data were not captured by the buoy; therefore, alternative methods have been used to gather the required data. According to Moreo and Swancar, when data are not available for the study location, nearby airport weather data can be used instead [55]. In this study, the nearest airport close to Lake Mead is the Las Vegas Airport. The relative humidity (Rh) data have thus been obtained from the Weather Underground website that has made data from the Las Vegas Airport available. The remaining variable is the daily incoming solar irradiation or global horizontal irradiation (R S ) that has been obtained from SOLCAST's historical database [63]. This variable is also used for the solar energy production modeling.
The raw data from the NOAA-NDBC database were collected with an interval of 10 min starting at 00 h 00 min each day while the data from the Las Vegas Airport were measured with an 1 h interval starting at 00 h 56 min each day. Since daily data were required for the calculation, a mean daily value has been calculated for each variable. First, the data obtained from the NOAA-NDBC were cleaned by keeping only hourly data at the beginning of the hour (00 min) in order to match the data from Las Vegas Airport. A MATLAB code [66] was developed to perform this operation. Then, the same code was used to strip the missing data from the data table. A line of data was considered missing from the data table if one or more of the variables were not recorded by either the NOAA-NDBC station sensors or the Las Vegas Airport station sensors. After that, the data were reported in a spreadsheet that was used to calculate the mean daily value of the wind speed (w s ), the atmospheric pressure (P), the water temperature (T w ) and the air temperature (T a ) by averaging the hourly data for each day. Another method used in the literature to calculate daily mean weather data is to calculate the average of the maximum and minimum value of the day [67]. However, studies have shown that if data are available, it is best to calculate the mean daily temperature by averaging the hourly values [68,69]. The spreadsheet was also used to retrieve the maximum (T w,max ), and minimum (T w,min ) daily temperatures as well as the maximum (Rh max ), and minimum (Rh min ) daily relative humidity. The number of missing data points was 246 hourly data. Instead of having total hourly data of 8760 points, 8514 data points were used for this study after the data cleaning process. There was no more than 3 missing data points for a single day except for 5 specific days that are the 4th, 60th, 97th, 318th, and 347th day of the year 2018. These 5 days were, respectively, missing 4, 4, 10, 5, and 16 data points. The days with the highest number of missing data were the 97th and 347th day of the year. Since there are only two such days among the 365 that populated the year 2018, it has been considered that it will not have a significant impact on the results. Therefore, the available data were representative in estimating the mean daily values of the variables for each day.

FPV Panel Data Collection
In a previous study, it was found that polyethylene (PE) foam was the most cost-effective way to add buoyancy to flexible solar modules [54]. This study uses this after-market conversion method to convert SunPower SPR-E-Flex PVs into FPVs [70]. The density of the green polyethylene 1.2 lb 1 2 " (12.7 mm) was used to determine the area of foam needed to make the panel rise by approximately 10 mm above the water's surface [71] using the calculations detailed in [54]. The foam was cut into about 50 mm by 240 mm sections that were placed evenly on the backside of module. The sections were then adhered using 3 M 5200 fast-set waterproof adhesive. Each foam piece had a line of adhesive caulked onto its perimeter and through the center. Then, the foam piece was pressed on the surface of the panel to adhere it, see Figure 1. The FPV with PV control was deployed in Chassell Bay, MI during the summer of 2020 to determine operational temperature and performance. This resulted in the FPV floating directly above the water surface, but still enabling wave action to clear the modules as shown in Figure 2.
Energies 2020, 13, x FOR PEER REVIEW  4 of 25 hourly values [68,69]. The spreadsheet was also used to retrieve the maximum (Tw,max), and minimum (Tw,min) daily temperatures as well as the maximum (Rhmax), and minimum (Rhmin) daily relative humidity. The number of missing data points was 246 hourly data. Instead of having total hourly data of 8760 points, 8514 data points were used for this study after the data cleaning process. There was no more than 3 missing data points for a single day except for 5 specific days that are the 4th, 60th, 97th, 318th, and 347th day of the year 2018. These 5 days were, respectively, missing 4, 4, 10, 5, and 16 data points. The days with the highest number of missing data were the 97th and 347th day of the year. Since there are only two such days among the 365 that populated the year 2018, it has been considered that it will not have a significant impact on the results. Therefore, the available data were representative in estimating the mean daily values of the variables for each day.

FPV Panel Data Collection
In a previous study, it was found that polyethylene (PE) foam was the most cost-effective way to add buoyancy to flexible solar modules [54]. This study uses this after-market conversion method to convert SunPower SPR-E-Flex PVs into FPVs [70]. The density of the green polyethylene 1.2 lb ½" (12.7 mm) was used to determine the area of foam needed to make the panel rise by approximately 10 mm above the water's surface [71] using the calculations detailed in [54]. The foam was cut into about 50 mm by 240 mm sections that were placed evenly on the backside of module. The sections were then adhered using 3 M 5200 fast-set waterproof adhesive. Each foam piece had a line of adhesive caulked onto its perimeter and through the center. Then, the foam piece was pressed on the surface of the panel to adhere it, see Figure 1. The FPV with PV control was deployed in Chassell Bay, MI during the summer of 2020 to determine operational temperature and performance. This resulted in the FPV floating directly above the water surface, but still enabling wave action to clear the modules as shown in Figure 2.  The NanoDAQ monitoring board used in [54] was used in this study to measure module power and temperature of both the control (flat land-based mounted dry PV set at zero degree tilt angle) and wet FPV (floating on lake surface). The thermistors used for measuring temperature were held in place on the panels using 3M VHB tape. The air and water temperature were also measured with thermistors. The SunPower panels came with MC4 connectors installed on 12 AWG (2 mm 2 ) wires. MC4 connectors were added to the 14 AWG (1.6 mm 2 ) wires coming from the NanoDAQ, including the load wires. An additional hole was made in the NanoDAQ waterproof case and sealed using 3M 5200 to use the battery's USB port to power it. An AC load with a timer was used to drain the battery during mid-day to ensure there was a load to produce the power measurement. The schematic of the wiring diagram for the experimental set up is shown in Figure 3. The NanoDAQ monitoring board used in [54] was used in this study to measure module power and temperature of both the control (flat land-based mounted dry PV set at zero degree tilt angle) and wet FPV (floating on lake surface). The thermistors used for measuring temperature were held in place on the panels using 3M VHB tape. The air and water temperature were also measured with thermistors. The SunPower panels came with MC4 connectors installed on 12 AWG (2 mm 2 ) wires. MC4 connectors were added to the 14 AWG (1.6 mm 2 ) wires coming from the NanoDAQ, including the load wires. An additional hole was made in the NanoDAQ waterproof case and sealed using 3M 5200 to use the battery's USB port to power it. An AC load with a timer was used to drain the battery during mid-day to ensure there was a load to produce the power measurement. The schematic of the wiring diagram for the experimental set up is shown in Figure 3. The FPV utilized mooring similar to that used in [54] except for the inclusion of a buoy. The wet FPV was moored by using an anchor and a towing ring on land. A rope was looped through the grommets in the solar PV and overhand loop knots were tied to secure the FPV in place. Energy generation of dry PV and wet FPV, temperature of air, water, PV, and FPV were recorded in 15 min increments.

Water Evaporation Modeling
The Penman-Monteith model used in this study is a datum intensive water evaporation model because it requires the measurement of several weather data. Some of the data can be calculated, but  The NanoDAQ monitoring board used in [54] was used in this study to measure module power and temperature of both the control (flat land-based mounted dry PV set at zero degree tilt angle) and wet FPV (floating on lake surface). The thermistors used for measuring temperature were held in place on the panels using 3M VHB tape. The air and water temperature were also measured with thermistors. The SunPower panels came with MC4 connectors installed on 12 AWG (2 mm 2 ) wires. MC4 connectors were added to the 14 AWG (1.6 mm 2 ) wires coming from the NanoDAQ, including the load wires. An additional hole was made in the NanoDAQ waterproof case and sealed using 3M 5200 to use the battery's USB port to power it. An AC load with a timer was used to drain the battery during mid-day to ensure there was a load to produce the power measurement. The schematic of the wiring diagram for the experimental set up is shown in Figure 3. The FPV utilized mooring similar to that used in [54] except for the inclusion of a buoy. The wet FPV was moored by using an anchor and a towing ring on land. A rope was looped through the grommets in the solar PV and overhand loop knots were tied to secure the FPV in place. Energy generation of dry PV and wet FPV, temperature of air, water, PV, and FPV were recorded in 15 min increments.

Water Evaporation Modeling
The Penman-Monteith model used in this study is a datum intensive water evaporation model because it requires the measurement of several weather data. Some of the data can be calculated, but The FPV utilized mooring similar to that used in [54] except for the inclusion of a buoy. The wet FPV was moored by using an anchor and a towing ring on land. A rope was looped through the grommets in the solar PV and overhand loop knots were tied to secure the FPV in place. Energy generation of dry PV and wet FPV, temperature of air, water, PV, and FPV were recorded in 15 min increments.

Water Evaporation Modeling
The Penman-Monteith model used in this study is a datum intensive water evaporation model because it requires the measurement of several weather data. Some of the data can be calculated, but the accuracy of the model is increased if they are measured. The Penman-Monteith model was originally designed to calculate the evapotranspiration losses from leaves' and canopies' surfaces [57]. However, the method has been adapted in several studies to estimate the evaporation of surface water [72][73][74][75]. One important thing to note regarding the use of the Penman-Monteith evapotranspiration model for lake evaporation is the use of water temperature instead of air temperature in some of the parameters' calculations: the outgoing longwave radiation, the partial vapor pressure at the water surface and slope of the temperature saturation water vapor curve. The original Penman-Monteith model estimates the evapotranspiration of crops; therefore, the model only uses the air temperature in its implementation. The use of water temperature instead of air temperature has been validated in several lake evaporation studies [72,74,75].
The Penman-Monteith [57] equation adapted to open water surfaces is [74,75]: where E L (mm/day) is the daily evaporation rate and Cp a (kJ/kg/ • C) and ρ a (kg/m 3 ) are, respectively, the heat capacity, and the density of air. The other parameters in the Penman-Monteith equation need to be calculated and depend on several weather data. The weather data needed to calculate these parameters are comprised of: the daily maximum (T a,max ) ( • C) and daily minimum (T a,min ) ( • C) air temperature; the daily maximum (T w,max ) ( • C), daily minimum (T w,min ) ( • C), and daily mean water temperature (T w ) ( • C); the daily maximum (Rh max ) (%), and daily minimum relative humidity (Rh min ) (%); the daily mean dew temperature (T d ) ( • C), the daily mean atmospheric pressure (P) (kPa); the daily mean wind speed (w s ) (m/s) at a height of 2 m above the water surface; and the daily incoming solar radiation (R S ) (MJ/m 2 /day). The other parameters that are needed to calculate the components in the evaporation model of Penman-Monteith include: the altitude of the lake's location (h) (m); the surface area (A) (m 2 ), and the effective depth (d w ) (m) of the lake reservoir; and the latitude of the location of the water surface (φ) (rad). When all the listed parameters are available, the computation of the lake water evaporation using the Penman-Monteith model starts with the calculation of the mean saturation vapor pressure (P w ) (kPa), and the actual vapor pressure of the air (P a ) (kPa) [58,67,73]: After the calculation of the two vapor pressures, the slope of the saturation vapor pressure curve (∆) (kPa/ • C) is calculated [58,67,73]: Then, the latent heat of vaporization (λ) (MJ/kg), which depends on the water temperature, is calculated [58,73]: From the latent heat of vaporization, the psychrometric constant (γ) (kPa/ • C) can be deduced [58,67], In Equation (6), R MW = 0.622 and is equal to the molecular weight of water vapor over the molecular weight of dry air.
After that, the wind function f w (MJ/m 2 /kPa/day) is needed to estimate the aerodynamic resistance of the water surface. The formula used to calculate the wind function is proposed by McJannet et al. [76]. The formula was found to work well with the Penman-Monteith evaporation model. The wind function calculation by McJannet's formula depends on the wind speed as well as on the surface area of the lake.
Once the wind function is known, a combination of the Penman-Monteith model equations presented in the works of Zotarelli et al. and Finch et al. gives the value of the aerodynamic resistance (s/m) [67,75]: The two remaining terms are the net solar radiation (R N ) (MJ/m 2 /day) and the change in water heat storage flux (H S ) (MJ/m 2 /day). The net solar radiation's calculation depends on the net longwave radiation (R NL ) (MJ/m 2 /day) and the net shortwave radiation (R NS ) (MJ/m 2 /day) [58,67,73].
The net shortwave radiation is calculated using the albedo (a) and the measured incoming solar radiation (R S ) (MJ/m 2 /day) [58,67,[73][74][75]: The net longwave radiation is calculated by taking the difference between the outgoing longwave radiation (R OL ) (MJ/m 2 /day) and the incoming longwave radiation (R IL ) (MJ/m 2 /day). The incoming longwave radiation is given by the Equation (11) [77,78] In Equation (11), σ [MJ/m 2 /T 4 /day] is the Stefan-Boltzmann's constant, T a is the daily mean air temperature and C f is the cloud coverage fraction that has been estimated as follows [79]: The parameter R Ratio is the ratio of the incoming solar radiation (R S ) to the clear sky radiation R CS (MJ/m 2 /day). The clear sky radiation is calculated using Equation (13) [75,78,79]: The extraterrestrial radiation R EX (MJ/m 2 /day) depends on the latitude of the lake, the sunset hour angle, the solar declination angle, the solar constant, and the inverse relative distance from the sun to earth. This calculation is a well-known procedure that has been detailed in the guide for crop evapotranspiration calculations by the FAO [58]. The outgoing longwave radiation depends on the water surface temperature and is calculated as: T w ( • C) is the mean daily water temperature and ε is the emissivity of the water surface. The emissivity of water surface varies between 0.95 and 0.99 for water temperatures below 55 • C [80]. An average value of ε = 0.97 has been used in this study. The net longwave radiation is therefore: The water heat storage flux (H S ) (MJ/m 2 /day) expresses the change in the heat stored in the water from one day to another. The heat storage flux calculation methods used in two different studies by Abtew et al., and Finch et al. are suitable for shallow water bodies evaporation [73,75]. Since Lake Mead is a deep lake, the equilibrium temperature approach proposed by de Bruin has been used instead. In this approach, an equilibrium temperature is used to estimate a mean daily uniform temperature of the water body for each day [81]. The heat storage flux's formula using de Bruin's method is [78,[81][82][83]: The constants' values ρ w (kg/m 3 ), Cp w (MJ/kg/ • C), d w (m) are, respectively, the density of water, the heat capacity of water, and the depth of the lake. T uw,j and T uw,j−1 are, respectively, the mean uniform water temperature for day (j), and day (j − 1). ∆t is the time step for the temperature estimation. The mean uniform water temperature (T uw,j ) depends on the equilibrium temperature (T e ) ( • C) and the time constant (τ) (day): R N,wb (MJ/m 2 /day), T wb ( • C), and ∆ wb (kPa/K) are, respectively, the net radiation at the wet-bulb temperature, the wet-bulb temperature, and the slope of the saturation vapor pressure curve at the wet-bulb temperature. The wet-bulb temperature (T wb ) is calculated using the following equation [78,83]: The saturation vapor pressure curve at the wet-bulb temperature ∆ wb (kPa/K) is calculated by: The net radiation (R N,wb ) at the wet-bulb temperature is: In Equation (22), R OL,wb (MJ/m 2 /day) is the outgoing longwave radiation at the wet-bulb temperature and is calculated by: After the calculation of all parameters, the lake evaporation's value (E L ) can be calculated using Equation (1).

Energy Production Modeling
The power output of a PV module (P out ) (W) is calculated by applying different losses to the incoming solar irradiance and is given by: where I S (W/m 2 ) is the incoming solar irradiance, A P (m 2 ) is the effective area of the solar panel, and η P (%) is the efficiency of the PV system. In this study, the efficiency of the system includes the electrical efficiency of the module, which is dependent on the operating temperature, the shading losses, the soiling and hotspot losses, and the mismatch losses. Additionally, the solar irradiation component used is the global horizontal irradiation because the inclination of the panels is 0 • . The power output is calculated hourly and summed up to determine the energy production of the system over a year.

FPV Operating Temperature
The energy produced by a photovoltaic system depends on the electrical efficiency of the modules. The electrical efficiency of the modules (η e ) changes with the operating temperature of the cell and is calculated using Equation (25) [45,84]: where η re f (%), β re f (%/ • C), T eo ( • C), and T ref ( • C) are, respectively, the reference efficiency of the panel, the temperature coefficient of the panel, the effective operating temperature of the panel, and the reference temperature. The data collected from the FPV test bed are used to determine the effective operating temperature (T eo ) of the FPV. The model describing the temperature dependence on the ambient temperature and the solar power in nominal operating cell temperature (NOCT) conditions is a linear model [84][85][86]: T Cell ( • C) is the operating temperature of the solar cells, k ( • C. m 2 /W) is the coefficient of the relationship, I S (W/m 2 ) is the solar irradiance, and T me ( • C) is the ambient temperature of the location of the solar module. This model is well-adapted for offshore, roof or ground mounted, PV systems but needs to be modified to accurately describe FPV systems. A study conducted by Kamuyu et al. [45] has proposed a solar cell temperature calculation in FPV using the air temperature, the water temperature, the solar irradiance, and the wind speed. Kamuyu et al.'s study focused on FPV mounted at a tilt angle relative to the water's surface where the air temperature and wind speed played a larger role in determining the module temperature than the water temperature. In this study, because the modules are on/under the water surface, wind speed is neglected, and the water temperature plays the dominant role in module temperature. Thus, the Kamuyu approach for pontoon-based FPV was adapted and used here with experimental data for solar flux, air temperature, water temperature, and module temperature. The approach used was a multilinear variable regression. The regression has three independent variables that are the solar irradiance (I S ), the water temperature (T w ), and the air temperature (T a ). The last variable of the regression, the FPV module's effective operating temperature (T eo ), depends on the previous three. The goal of the regression is to find a linear relationship between the module's effective operating temperature (T eo ), and the three independent variables in the form of: where α 0 is a constant term; α 1 , α 2 , and α 3 are the regression coefficients relative to the water temperature, air temperature, and solar irradiance, respectively. The solar module temperature dataset from the test bed has been stored in a MATLAB column vector, and the independent variables have been stored within a MATLAB numeric matrix to which an additional unit column has been added at the beginning to account for the coefficient α 0 . Then, the regression is performed using a dedicated MATLAB function called "regress" [87]. The "regress" function performs a multivariable regression on experimental data and outputs the coefficients of the regression as well as other values such as the R-squared value of the regression and the residuals. The experimentally obtained coefficients are used in the case study of Lake Mead to estimate the effective operating module temperatures that are, in turn, used in the energy yield simulation.

Other Loss Factors
This study focuses on the FPV system; therefore, the other factors considered are only related to the panels. In the case of a complete system design, losses from other equipment such as the inverter or transformer need to be considered. Other factors that could impact the efficiency of the floating solar PV modules are the same as conventional land-based PV systems. These factors are solar irradiance losses, shading losses, soiling, mismatch losses, and DC cabling losses [60,88,89].
The foam-based support as well as the PV are mounted flat on the water surface (e.g., tilt angle = 0 degrees); therefore, they are not exposed to the optimum amount of solar irradiation for any location other than those on the equator. A study conducted by Jacobson et al. has provided an estimate of the optimal tilt for fixed tilt solar PV systems for different locations throughout the world [90]. The loss due to the tilt angle has been taken into account in this study and only the global horizontal irradiation for the energy yield calculation is used.
The impact of shading losses on FPV is low because water surfaces are flat and there are no nearby obstacles that could cause a direct shade to the modules. In the case of foam-based FPV, there is no mutual shade between the modules either because the mounting systems are flat on the water surface. Lake Mead is located in a mountainous region; therefore, far horizon shading may occur during certain times of the day or the year but is expected to be minimal. A detailed shading losses analysis has not been conducted during this study and an estimated value of zero percent has been used.
Soiling can be significant on FPV panels. Soiling in the case of FPV systems is mostly due to bird dropping or algae growth [54]. According to a report on FPV systems by the World Bank Group, nesting birds have been found to prefer the use of FPV modules as a nesting place [60]. In the report of the World Bank Group, however, the floating systems used were inclined; thus, allowing the presence of sheltered places where the birds were nesting. In the case of foam-based FPV, it has been assumed that the effect of birds will be lower because the modules are mounted directly on the water surface and the mounting system offers no sheltered space for nesting. A detailed study of the impact of birds nesting on foam-based FPV panels would be interesting for future studies. In addition, by ensuring the FPV are above the water surface, the growth of algae on the front surface of the FPV can be minimized.
Mismatch losses and DC cable losses can be higher in FPV systems due to the relative movement of the modules on the water surface, but an optimum design can minimize these losses [60].

Parameters Used for Energy Yield Simulation
The energy production model simulates a floating solar PV system on the surface of Lake Mead. The area covered by the solar PV installation is described in Section 2.4. The values used for the energy production simulation as well as the sources of the values are given in Table 1.

Water Savings Capability and Efficiency of the System
The water savings capability of the FPV system investigated in this study has been estimated to be 90% of the volume of water corresponding to the surface covered by the FPV. This assumption is supported by previous studies that found that covering water surfaces with pontoon-based FPV could reduce the evaporation losses by more than 90% [38,91]. Thus, the resulting values are extremely conservative as here the FPV covers the entire water surface and is not a tilted FPV mount as in [38,91]. When planning an FPV installation on a water surface, the percentage coverage of the water by the solar systems depends on the type of activities that are being performed on the body of water. According to the World Bank Group, the FPV system should not cover more than 50% of the water surface if used for fishing and not more than 60% if the water body is not used for fishing [60]. Therefore, a sensitivity analysis will be run on the coverage percentage to investigate the energy production and water saving capability of the foam-based FPV system in this study from 10% to 50% in 10% increments because Lake Mead is used for fishing. Then, the water saving capability is estimated by multiplying the water evaporation rate and the surface coverage. The result is adjusted by 90%. The cost of water saved annually is estimated using the average water cost in Nevada where Lake Mead serves as a clean water source. The cost of water according to Las Vegas Valley Water District ranges from USD 0.35/m 3 to 1.37/m 3 for a family size residential home, according to the size of the installed water meter [92]. On the other hand, the wholesale electricity rate of the power produced at the Hoover Dam, located in Nevada, is USD 0.02/kWh [93,94]. These values are used to estimate the lowest and highest potential energy revenues of the foam-based FPV system.

Water Evaporation
The results from the water evaporation model simulation at Lake Mead show an evaporation rate estimate of 1957 mm in 2018. This result is in agreement with the results of the study conducted by Moreo and Swancar [55] on Lake Mead during the period of March 2010 through February 2012 using the eddy covariance evaporation method. The study estimated the lake evaporation from March 2010 to February 2011, and from March 2011 to February 2012. According to the two authors, the evaporation rate for the first study period had a minimum value of 1958 mm and a maximum value of 2190 mm; while the minimum value was 1787 mm and the maximum value was 1975 mm for the second study period. The result obtained in this present study is located within the result interval of Moreo and Swancar's study. Another early study by Westenburg et al. provided the evaporation data for Lake Mead from 1997 to 1999 [95]. The average evaporation rate for that period was 2281 mm. Figure 4a shows the monthly results of the evaporation rates' simulation using 2018 data. The evaporation rate is low in the winter and increases in summer. The evaporation rate at the peak of the summer, in June, is approximately five times more important than the lowest evaporation rate of the winter, in December. Figure 4b shows the daily evaporation estimates throughout the year. Therefore, a sensitivity analysis will be run on the coverage percentage to investigate the energy production and water saving capability of the foam-based FPV system in this study from 10% to 50% in 10% increments because Lake Mead is used for fishing. Then, the water saving capability is estimated by multiplying the water evaporation rate and the surface coverage. The result is adjusted by 90%. The cost of water saved annually is estimated using the average water cost in Nevada where Lake Mead serves as a clean water source. The cost of water according to Las Vegas Valley Water District ranges from USD 0.35/m 3 to 1.37/m 3 for a family size residential home, according to the size of the installed water meter [92]. On the other hand, the wholesale electricity rate of the power produced at the Hoover Dam, located in Nevada, is USD 0.02/kWh [93,94]. These values are used to estimate the lowest and highest potential energy revenues of the foam-based FPV system.

Water Evaporation
The results from the water evaporation model simulation at Lake Mead show an evaporation rate estimate of 1957 mm in 2018. This result is in agreement with the results of the study conducted by Moreo and Swancar [55] on Lake Mead during the period of March 2010 through February 2012 using the eddy covariance evaporation method. The study estimated the lake evaporation from March 2010 to February 2011, and from March 2011 to February 2012. According to the two authors, the evaporation rate for the first study period had a minimum value of 1958 mm and a maximum value of 2190 mm; while the minimum value was 1787 mm and the maximum value was 1975 mm for the second study period. The result obtained in this present study is located within the result interval of Moreo and Swancar's study. Another early study by Westenburg et al. provided the evaporation data for Lake Mead from 1997 to 1999 [95]. The average evaporation rate for that period was 2281 mm. Figure 4a shows the monthly results of the evaporation rates' simulation using 2018 data. The evaporation rate is low in the winter and increases in summer. The evaporation rate at the peak of the summer, in June, is approximately five times more important than the lowest evaporation rate of the winter, in December. Figure 4b shows the daily evaporation estimates throughout the year.

FPV Operating Temperature Model
The multilinear regression on the collected data yielded the coefficients , , , and , which describe the relationship between the FPV effective operating temperature (Teo) and the independent variables: the water temperature (Tw), the air temperature (Ta), and the solar irradiance

FPV Operating Temperature Model
The multilinear regression on the collected data yielded the coefficients α 0 , α 1 , α 2 , and α 3 , which describe the relationship between the FPV effective operating temperature (T eo ) and the independent variables: the water temperature (T w ), the air temperature (T a ), and the solar irradiance (I S ). The regression coefficients have been obtained with an R-squared value of 0.8276. Figure 5 shows the statistical results of the regression. The R-squared value combined with the random distribution of the residuals' plot on Figure 5b show that there is a linear relationship between T eo and the independent variables.
Energies 2020, 13, x FOR PEER REVIEW 12 of 25 (IS). The regression coefficients have been obtained with an R-squared value of 0.8276. Figure 5 shows the statistical results of the regression. The R-squared value combined with the random distribution of the residuals' plot on Figure 5b show that there is a linear relationship between Teo and the independent variables.
(a) (b) Equation (28) is proposed as a model that represents the effective operation temperature of FPV mounted on a foam-based support.   (IS). The regression coefficients have been obtained with an R-squared value of 0.8276. Figure 5 shows the statistical results of the regression. The R-squared value combined with the random distribution of the residuals' plot on Figure 5b show that there is a linear relationship between Teo and the independent variables.
(a) (b) Equation (28) is proposed as a model that represents the effective operation temperature of FPV mounted on a foam-based support.   The temperature profile of a foam-based FPV panel installed on Lake Mead has been simulated using the proposed FPV operating temperature model and compared to a pontoon-based FPV as described by Kamuyu's model in Figure 7.
Energies 2020, 13, x FOR PEER REVIEW 13 of 25 The temperature profile of a foam-based FPV panel installed on Lake Mead has been simulated using the proposed FPV operating temperature model and compared to a pontoon-based FPV as described by Kamuyu's model in Figure 7. The maximum temperature obtained with the model proposed in this study is 48.7 °C and the minimum temperature is −8.5 °C. On the other hand, the maximum temperature and the minimum temperature obtained if the FPV system was tilted are, respectively, 58.2 °C and −3.4 °C. Overall, the temperature model used here based on experimental data during the summer months predicts a lower temperature when the panels are in direct contact with the water surface.

Energy Yield and Water Savings of an FPV System Installed on Lake Mead
The temperature profile is used to estimate the electrical efficiency of the solar panel, which is in turn used to simulate the energy yield of an FPV system installed on Lake Mead with historical weather data. The energy yield has been simulated by assuming a coverage of the lake surface between 10 and 50% in 10% increments. The results are shown in detail for the 10% coverage case and the total energy production is shown for the other cases. Figure 8 shows the comparison between the monthly energy production obtained using the proposed model and the energy production of a tilted FPV for 10% coverage of the lake's surface. As can be seen in Figure 8 and expected from Figure 7, the proposed model predicts a slightly higher energy production, about 3.5%, which is correlated with the lower operating temperature of the modules. The maximum energy per month production is 3.2 TWh and occurs in the month of June, while the minimum energy per month production is 1.1 TWh and occurs in December. The maximum temperature obtained with the model proposed in this study is 48.7 • C and the minimum temperature is −8.5 • C. On the other hand, the maximum temperature and the minimum temperature obtained if the FPV system was tilted are, respectively, 58.2 • C and −3.4 • C. Overall, the temperature model used here based on experimental data during the summer months predicts a lower temperature when the panels are in direct contact with the water surface.

Energy Yield and Water Savings of an FPV System Installed on Lake Mead
The temperature profile is used to estimate the electrical efficiency of the solar panel, which is in turn used to simulate the energy yield of an FPV system installed on Lake Mead with historical weather data. The energy yield has been simulated by assuming a coverage of the lake surface between 10 and 50% in 10% increments. The results are shown in detail for the 10% coverage case and the total energy production is shown for the other cases. Figure 8 shows the comparison between the monthly energy production obtained using the proposed model and the energy production of a tilted FPV for 10% coverage of the lake's surface. As can be seen in Figure 8 and expected from Figure 7, the proposed model predicts a slightly higher energy production, about 3.5%, which is correlated with the lower operating temperature of the modules. The maximum energy per month production is 3.2 TWh and occurs in the month of June, while the minimum energy per month production is 1.1 TWh and occurs in December. Figure 9 shows the result for the daily energy simulation when 10% of Lake Mead's surface is covered with a foam-based solar FPV system. The maximum daily energy production is 570 MWh on 6 January while the minimum daily production is 21 MWh on 18 June.  Figure 9 shows the result for the daily energy simulation when 10% of Lake Mead's surface is covered with a foam-based solar FPV system. The maximum daily energy production is 570 MWh on 6 January while the minimum daily production is 21 MWh on 18 June.  Figure 10 shows the simulated annual energy production, and the water saving capabilities of a foam-based solar FPV system installed on the surface of Lake Mead as a function of coverage area from 10-50%. For a coverage of 10%, the annual production using collected temperature data is 25.59 TWh, corresponding to a saved water volume of 126.64 million m 3 . When the percentage coverage is increased, the energy production is increased linearly. For a coverage of 50% of the lake's surface, it is possible to harvest 127.93 TWh of electrical energy and save 633.22 million of m 3 of water using foam-based FPV panels.   Figure 9 shows the result for the daily energy simulation when 10% of Lake Mead's surface is covered with a foam-based solar FPV system. The maximum daily energy production is 570 MWh on 6 January while the minimum daily production is 21 MWh on 18 June.  Figure 10 shows the simulated annual energy production, and the water saving capabilities of a foam-based solar FPV system installed on the surface of Lake Mead as a function of coverage area from 10-50%. For a coverage of 10%, the annual production using collected temperature data is 25.59 TWh, corresponding to a saved water volume of 126.64 million m 3 . When the percentage coverage is increased, the energy production is increased linearly. For a coverage of 50% of the lake's surface, it is possible to harvest 127.93 TWh of electrical energy and save 633.22 million of m 3 of water using foam-based FPV panels.   1  15  29  43  57  71  85  99  113  127  141  155  169  183  197  211  225  239  253  267  281  295  309  323  337  351  365 Energy (MWh) Day of the year Figure 9. Daily energy production results using the temperature model proposed in this study for 10% coverage of Lake Mead's surface. Figure 10 shows the simulated annual energy production, and the water saving capabilities of a foam-based solar FPV system installed on the surface of Lake Mead as a function of coverage area from 10-50%. For a coverage of 10%, the annual production using collected temperature data is 25.59 TWh, corresponding to a saved water volume of 126.64 million m 3 . When the percentage coverage is increased, the energy production is increased linearly. For a coverage of 50% of the lake's surface, it is possible to harvest 127.93 TWh of electrical energy and save 633.22 million of m 3 of water using foam-based FPV panels.  Table 2 shows the annual water and energy savings estimates related to the water savings and energy production from the FPV. With houses with the least water consumption, the cost of the water saved is estimated to be USD 44 million when 10% of the lake surface is covered, and USD 220 million when 50% of the lake surface is covered. On the other hand, when the consumers' water consumption is on the high side, these costs increase, amounting to USD 172 million when 10% of the lake is covered and USD 861 million when 50% is covered. Furthermore, the results for the energy production show that USD 0.5 billion of energy can be generated when 10% of the lake surface is covered. The value of the energy generated when 50% of the lake surface is covered is estimated as USD 2.6 billion. Table 2. Estimation of the yearly cost of water saved and energy produced using water and energy cost range from Nevada for an FPV system covering 10-50% of Lake Mead's surface. The relative values of the water and energy provided by the foam-based FPV indicate that the electricity production from the FPV could be used to subsidize water conservation in arid and semiarid areas. Thus, FPV could be a self-funded water conservation approach.

Discussion
The water evaporation calculation performed in this study predicts a significant water saving potential for foam-based FPV systems on Lake Mead. The evaporation calculation using historical data has shown an annual evaporation estimate of 1957.6 mm for the lake. The result of the calculation 25 Figure 10. Simulated annual energy production (TWh) and water saving capability (millions of m 3 ) of a foam-based solar FPV system installed on Lake Mead's surface using historical temperature data and the proposed model depending on the percentage coverage of the lake's surface. Table 2 shows the annual water and energy savings estimates related to the water savings and energy production from the FPV. With houses with the least water consumption, the cost of the water saved is estimated to be USD 44 million when 10% of the lake surface is covered, and USD 220 million when 50% of the lake surface is covered. On the other hand, when the consumers' water consumption is on the high side, these costs increase, amounting to USD 172 million when 10% of the lake is covered and USD 861 million when 50% is covered. Furthermore, the results for the energy production show that USD 0.5 billion of energy can be generated when 10% of the lake surface is covered. The value of the energy generated when 50% of the lake surface is covered is estimated as USD 2.6 billion. Table 2. Estimation of the yearly cost of water saved and energy produced using water and energy cost range from Nevada for an FPV system covering 10-50% of Lake Mead's surface. The relative values of the water and energy provided by the foam-based FPV indicate that the electricity production from the FPV could be used to subsidize water conservation in arid and semi-arid areas. Thus, FPV could be a self-funded water conservation approach.

Discussion
The water evaporation calculation performed in this study predicts a significant water saving potential for foam-based FPV systems on Lake Mead. The evaporation calculation using historical data has shown an annual evaporation estimate of 1957.6 mm for the lake. The result of the calculation performed in this study is in agreement with previous evaporation studies on Lake Mead [55,95].
The simulation results show annual water savings ranging from 126.64 to 633.22 million m 3 depending on the percentage of the lake surface covered by the FPV system. According to the United States Environmental Protection Agency (US EPA), each American uses, on average, 88 gallons of water per day, resulting in an annual water consumption of 32,120 gallons or 121.59 m 3 per capita [96]. The amount of water saved using foam-based FPV on Lake Mead will therefore be enough to supply water to more than five million Americans in the case that 50% of the lake surface is covered. This would make a significant impact on the cities near Lake Mead. The value is more than the four million population of the second largest city in the country, Los Angeles [97] or the entire population of Nevada of 3.1 million [98]. When 10% of the lake is covered by FPV panels, the amount of water saved is enough to supply water to the populations of both Henderson (320,189) and Las Vegas (651,319) or Las Vegas and Reno (255,601) in Nevada [99]. According to an analysis performed by Barsugli et al., Lake Mead has a 50% percent chance of going dry between 2035 and 2047 if nothing is done to stop the current draw down and evaporation rate of the lake [100]. Other studies on the management of the lake have resulted in the same conclusion [101,102]. These studies have shown the need for new ways to mitigate lake evaporation not only on Lake Mead, but on other lakes in the world, especially those located in arid environments. Floating solar photovoltaic technology provides a solution to limit evaporation of water surfaces and provide electrical energy for the surrounding populations.
The energy production analysis has yielded an annual energy production ranging from 25.9 TWh to 127.93 TWh for a coverage of the lake of 10%, and 50%, respectively. The energy production profile is in accordance with a previous FPV study conducted by Kamuyu et al. [45], showing an improvement of 10% from a ground-mount system. This is confirmed by the study of Pierce et al., who determined that the energy production improvement of an FPV systems is 5-10% compared to a ground-mount system for mono and polycrystalline silicon [54]. This is due to the cooling effect of the water on the FPV modules. According to the United States Energy Information Agency (US EIA), the average American household electricity consumption is 10,649 kWh per year. This means that the energy production of an FPV system covering 10% of Lake Mead has the capacity to power more than two million American homes [103]. This is more than the electricity needed to power the homes in Las Vegas, Henderson and Reno combined. On the other hand, the total electricity consumption in the U.S. according to 2018 statistics is 4178 TWh. This implies that the electricity production from a solar FPV system covering 50% of Lake Mead can supply 3% of the total electricity consumed in the U.S. and can replace more than 11% of the coal-fired power plants operating in the country; thus, contributing in a significant way to the reduction in the national carbon dioxide emissions [104] and the concomitant air pollution-related mortality [105][106][107][108]. This study is in agreement with past work showing enormous potential for FPV on water bodies in the U.S. [109].
The results of this study show that there are several benefits to implementing a foam-based FPV solar plant. Foam-based FPV avoids the issues related to land use in ground-mounted solar PV [110] and since the floating device is made of low-cost material, the racking cost is lower than other raft racking FPV technologies [54]. In addition, FPV systems in general have the potential to form agrivoltaic type systems [111] by merging with aquaculture to form aquavoltaics [112,113]. The flexible foam-backed FPV approach used here even makes mobile FPV possible. The FPV approach demonstrated here is less expensive than conventional pontoon-based FPV and has a slightly higher energy output per W because of the modules' close proximity to the water. FPV racking in general is less costly than conventional ground mounted PV. Thus, as PV is already often the least costly method for new electricity production, it provides a potentially profitable means of reducing water evaporation in the world's dwindling bodies of fresh water. Overall, the results of this study appear extremely promising. Solar FPV is a fairly new technology that is growing at a tremendous rate, but for it to reach its full potential, future work is needed to explore policies that sustain the development of this technology while also minimizing negative externalities. To accomplish this, a full life cycle analysis (LCA) study is needed on this technology. Future work is also needed to experimentally verify the results of this study in different locations throughout the world. In addition, future work is needed to investigate fouling (and means to prevent it) in different bodies of water. More data should also be collected to further refine the temperature model and improve the energy production accuracy of the results shown here. Foam-based technology used as a floating device needs to be investigated more in order to have a commercially viable mass-produced FPV foam racking. The work shown here and completed previously was accomplished using after-market alterations of flexible PV modules. It should be pointed out that economic calculations used here assumed a 25 year lifetime for the PV modules. Although they are rated for extreme environments, guaranteed to resist corrosion and waterproof, the flexible SunPower modules only carry a 5 year warranty rather than the industry standard 25-30 year warranty. Future work to test the long-term performance of such systems is needed to ensure the reliability and safety of a foam-backed FPV as described in this article. In addition, future technical work is needed to investigate the potential for making flexible modules rated for high voltages that would be more appropriate for utility scale systems such as described in this study. The cost of the FPV racking would be further reduced by integrating bulk purchased foam into the PV manufacturing process. In addition, closed loop, circular economy [114][115][116] and industrial symbiosis [117] could be applied to the FPV manufacturing process. This would be expected to further reduce the cost of the FPV as well but may also necessitate policy intervention to ensure end of life recycling [118]. The polyethylene foam used here could be fabricated from recycled plastic waste [119][120][121], thereby further improving the environmental balance sheet for foam-backed FPV. Future studies can potentially look into the long-term stability of foam in water by analyzing the effect of different qualities of water on this material. Another aspect of foam-based rack where future work is needed is the mooring technology used to secure the FPV. Finally, the environmental impacts of the floating solar systems on marine life have not been fully established [60] and will be an interesting subject for future studies.

Conclusions
This study introduced a new approach to FPV using a flexible crystalline silicon module backed with foam, which is less expensive than conventional pontoon-based FPV racking and land-based PV racking. The results show that the foam-backed FPV had a lower operating temperature than conventional pontoon-based fixed tilt out-of-water FPV and thus a higher energy output per unit power because of the modules' close proximity to the water. Thus, because PV costs are now normally the least costly method of new electricity production, the hypothetical large-scale foam-based FPV provides a potentially profitable means of reducing water evaporation in the world's at-risk bodies of fresh water.
The case study of Lake Mead found that if 10% of the lake was covered with foam-backed FPV, there would be more than enough solar electricity generated to power the homes in Las Vegas, Henderson and Reno combined and enough water savings for Las Vegas and Reno. At 50% lake coverage, the foam-backed FPV would provide over 127 TWh of clean solar electricity and 633.2 million m 3 of water savings, which would provide enough electricity to retire 11% of the polluting coal-fired plants in the U.S. and water for over five million Americans, annually.