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Article

Photosynthetic Active Radiation, Solar Irradiance and the CIE Standard Sky Classification

by
Ana García-Rodríguez
,
Sol García-Rodríguez
,
Montserrat Díez-Mediavilla
and
Cristina Alonso-Tristán
*
Research Group Solar and Wind Feasibility Technologies (SWIFT), Electromechanical Engineering Department, Universidad de Burgos, 09006 Burgos, Spain
*
Author to whom correspondence should be addressed.
Appl. Sci. 2020, 10(22), 8007; https://doi.org/10.3390/app10228007
Submission received: 1 October 2020 / Revised: 4 November 2020 / Accepted: 9 November 2020 / Published: 12 November 2020

Abstract

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The ratio between photosynthetic photon flux density and broadband solar irradiance and its dependency on sky cloudiness conditions, defined with the CIE Standard sky classification, are established. A single pattern, only dependent on sky conditions and that is independent on the temporal basis used for the study, are demonstrated.

Abstract

Plant growth is directly related to levels of photosynthetic photon flux density, Q p . The improvement of plant-growth models therefore requires accurate estimations of the Q p parameter that is often indirectly calculated on the basis of its relationship with solar irradiation, R S , due to the scarcity of ground measurements of photosynthetic photon flux density. In this experimental campaign in Burgos, Spain, between April 2019 and January 2020, an average value of the Q p / R s ratio is determined on the basis of measurements at ten-minute intervals. The most influential factor in the Q p / R s ratio, over and above any daily or seasonal pattern, is the existence of overcast sky conditions. The CIE standard sky classification can be used to establish an unequivocal characterization of the cloudiness conditions of homogeneous skies. In this study, the relation between the CIE standard sky type and Q p / R s is investigated. Its conclusions were that the Q p / R s values, the average of which was 1.93 ± 0.15 μmol·J−1, presented statistically significant differences for each CIE standard sky type. The overcast sky types presented the highest values of the ratio, while the clear sky categories presented the lowest and most dispersed values. During the experimental campaign, only two exceptions were noted for covered and partial covered sky-type categories, respectively, sky types 5 and 9. Their values were closer to those of categories classified as clear sky according to the CIE standard. Both categories presented high uniformity in terms of illumination.

1. Introduction

The portion of the solar spectrum that plant biochemical processes use in photosynthesis for converting light energy into biomass is a composite of wavelengths between 400 and 700 nm that are diffused within the visible light spectrum band (380–780 nm). These wavelength limits define the so-called photo-synthetically active radiation that covers both photon (Photosynthetic Photon Flux Density, Q p (μmol·s−1·m−2)) and energy (PAR, Photo-synthetically Active Radiation, W·m−2) terms [1]. Usually, Q p is recorded, and converted into energy units according to the McCree conversion factor of 4.57 μmol·J−1 ± 3% depending on climatic factors [2]. Accurate PAR estimations are needed for modelling plant productivity and biomass production [3], natural illumination in greenhouses [4], plant physiology studies and leaf photosynthesis [5], to measure the productivity of forests [6], and to calculate the euphotic depth of the oceans [7]. Moreover, accurate PAR measurements have become central to the determination of deforestation and climate-change impacts on agriculture [8].
A global routine network for measuring PAR has yet to be established. This parameter is often indirectly calculated, due to the scarcity of PAR data, based on its relationship with global horizontal solar irradiation, R s . The conventional PAR/ R s ratio falls between 0.45 and 0.50 [9]. Moon [10] estimated the PAR/ R s ratio at between 44% and 45% at sea level with a solar zenith angle of 30° over the horizon. Monteith [11] suggested that a constant ratio of 50% can be a good approximation for practical applications regardless of atmospheric aerosol and water vapor concentrations [12]. In terms of μmol·J−1, empirical relations [13] established Q p / R s ratios of between 2.1 and 2.9 μmol·J−1, depending on the location. The monthly Q p / R s average was calculated on a daily basis from experimental data [14] collected in an arid climate at between 2.02 and 2.19 μmol·J−1 and the mean daily value was 2.16 μmol·J−1. In Spain, Foyo-Moreno et al. [15] estimated a mean value of 1.95 μmol·J−1 a value close to other values from different locations [3,16]. Hu et al. [17] evaluated the Q p / R s ratio at many locations within China at between 1.75 μmol·J−1 and 2.30 μmol·J−1.
Several studies have been conducted to determine the relation between PAR/ R s and different parameters. In some cases, significant relationships were found, but any dependencies on site geography, climatic and weather factors, seasonal trends, and both day length and diurnal effects were very slight and negligible for practical purposes [18]. Solar elevation has no significant effect on PAR/ R s when greater than 10° [18,19].
The variations of this ratio with sky conditions have been studied to develop weather-dependent functions. Most studies have concluded that the PAR/ R s ratio presents its highest values for cloud-covered skies [20,21]. This fact is attributable to cloud-related absorption and diffusion of solar radiation across different regions of the spectrum. The observed seasonal dependence of broad-band solar radiation is essentially caused by changes to turbidity, precipitable water, ozone, and clouds within the air masses at the location throughout the year [22]. The presence of water vapor increases the absorption effects within the infrared region of the spectrum, decreasing broadband solar irradiance levels to a greater extent than PAR. A secondary effect of the atmospheric water content is the enhancement of aerosol-related diffusion, which affects PAR more than broadband solar irradiance, R s [4,23]. Some studies have proposed experimental models of PAR that include different parameters to take into account the atmospheric water vapor content, such as vapor pressure [16,24] and/or dewpoint temperature [4].
The definition of sky types (clear, overcast, and partly-cloudy) for this task take into account different combinations of meteorological variables, mainly the clearness index, k t (ratio of global solar radiation to extraterrestrial solar radiation) [14,25,26,27,28]; k t and relative sunshine, S , [29,30]; Perez’s clearness index, ε , and sky brightness, Δ , [4,31], and types and extent of cloud cover [32]. However, the conclusions of a previous work [33] suggested that the use of meteorological variables or meteorological indices, showed limited results for sky classification. The use of meteorological indices for sky classification depends more on their availability than on their accuracy and various authors have used such indices (or combinations thereof) in different ways.
Sky classification is a complex problem, due in part to such abstract conceptual definitions as clear, partial cloudy, and overcast, as well as other intermediate ranges. The study of the dependence of any magnitude with respect to the type of sky firstly requires a standardized classification of the skies, to specify the atmospheric characteristics and illumination levels of each of the established types. In 2003, the International Commission on Illumination (Commission Internationale de L’Éclairage or CIE) defined 15 standard sky types, five categorized as clear, five as partial cloudy, and five as overcast skies. In several works, it was concluded that the CIE standard sky classification adequately represented empirical sky conditions [34,35,36,37,38,39,40]. Sky types of the same category have the same well-defined sky luminance patterns that easily yield the solar irradiance and daylight illuminance on the surfaces of interest through simple mathematical expressions [41]. Therefore, the CIE standard classification characterizes each type of sky in terms of energy and daylight. Figure 1 shows the main characteristics of each CIE standard sky type. Taking into account that illuminance (400–780 nm) and PAR (400–700 nm) share part of the spectrum of visible radiation, the use of the CIE Standard Classification is proposed in this work as the main parameter for characterizing the dependency of the Q p / R s ratio on atmospheric conditions.
The study is focused on the determination of the Q p / R s ratio in Burgos, Spain and its dependency on sky conditions. Experimental data on horizontal solar global irradiation, R s ; photon photosynthetic flux density, Q p ; and, the CIE standard classification for homogeneous skies; collected through experimental sky scanner measurements, were available for this work. A complete statistical analysis of the results over different temporal (ten-minute, hourly, daily, and monthly) phases was completed. The results collected under different sky conditions were tested in a 10-month experimental test campaign.
The paper will be structured as follows. The experimental facility and the measurement campaign as well the quality filters applied to the experimental data will be described in Section 2. The CIE Standard sky classification in Burgos during the experimental campaign will be introduced in Section 3. Temporal variability of the Q p / R s ratio over the different temporal intervals will be explained in Section 4. A variability analysis of the Q p / R s ratio in accordance with the CIE Standard Sky types will be analyzed in detail in Section 5. Finally, the main results and the conclusions of the study will be summarized in Section 6.

2. Experimental Data

The meteorological and radiometric weather station that recorded the experimental data for this study is located on the roof of the Higher Polytechnic School building (EPS) of Burgos University (42°21′04″ N, 3°41′20″ W, 856 m above mean sea level). Figure 2 shows the location of the meteorological station on the flat roof of the EPS building, where the climatic parameters are measured: ambient temperature, relative humidity, atmospheric pressure, wind speed and direction, and rainfall. A complete description of the experimental facility and its location can be found in previous papers [33,42].
Global horizontal irradiation, R s data were measured by a pyranometer (model SR11, Hulseflux, Delft, The Netherlands,). An ML-020P photon meter was used to measure Q p . The sky luminance and irradiance distribution were determined by a commercial MS-321LR sky scanner. Both instruments were manufactured by EKO Instruments (EKO Instruments Europe B.V., Den Haag, The Netherlands). The technical specifications of the various measurement instruments are shown in Table 1, Table 2 and Table 3.
Broadband solar irradiance, R s , and photosynthetic photon flux density data, Q p , were recorded every 10 min (recorded scans of 30 s on average). Experimental data were analyzed and then filtered using conventional quality criteria [43]. The sky scanner was adjusted on a monthly basis for taking measurements from sunrise to the sunset. It completed a full scan in four minutes and started a new scan every 10 min. The first and last measurements of the day ( α s ≤ 7.5°) were discarded, as well as measurements higher than 50 kcd·m−2 and lower than 0.1 kcd·m−2, following the specifications of the equipment. If a data set ( R s , Q p , or sky scanner measurement) failed to pass the quality criteria, then all the simultaneous data sets were rejected.
The experimental campaign ran between 1 April 2019 to 31 January 2020, during which time 20,631 data sets were collected, 18% of which were rejected after failing the quality criteria test. Therefore, the total data set comprised 16,937 ten-minute samples of R s , Q p , and the CIE Standard sky classification data sets.

3. CIE Standard Sky Classification in Burgos between 1 April 2019 and 21 January 2020

The Normalization Ratio (NR) introduced by Littlefair [44,45] in the original Standard Sky Luminance Distribution (SSLD) method [46], detailed and described in a previous paper [42], was used to determine the CIE standard sky types over Burgos between April 2019 and January 2020. The Frequency of Occurrence (FOC, %) of each sky type during the period under study is shown in Figure 3. As can be seen, all types of CIE standard skies can be found in Burgos. Sky types 11, 12, and 13, corresponding to CIE standard clear sky categories, had FOCs of around 10% (sky type 11) and 14.5% (sky types 12 and 13), followed by sky type 14 (FOC 8.4%). FOCs of around 7% were accounted for by sky types 1, 7, 8, and 15. The appearances of sky types 5, 9, and 10 were anecdotal in Burgos in the period under study, with FOCs of less than 3%. When only three sky categories were considered, the sky conditions in Burgos were predominantly clear, with FOCs of almost 62%, while the FOCs of overcast and partial cloudy conditions were 23.96% and 22.92%, respectively, as shown in Figure 4.
Figure 5 shows that overcast sky conditions predominated in November and January and clear skies predominated from May to October in Burgos during the experimental campaign. Figure 6 reflects the predominance of clear skies in all hourly intervals of the day, from sunrise to sunset, at which point the standard CIE tends to classify the skies as partially overcast.

4. Temporal Variability of the Q p / R s Ratio

The seasonal characteristics of the Q p / R s ratio were studied at differing intervals: ten-minute, hourly, daily and monthly. Figure 7 shows the high positive correlation between Q p and R s at ten-minute intervals ( R 2 = 0.992 ) with a slope of 1.893 ± 0.001 μmol·J−1. This value is close to the mean value 1.93 ± 0.15 μmol·J−1, with a standard deviation of ± 0.15 μmol·J−1. The Q p / R s ratio had similar values to those reported by other researchers [15], ranging between 1.21 and 2.84 μmol·J−1.
Figure 8 shows the box-plot of the mean hourly values of the Q p / R s ratio, calculated from the average of the ten-minute data, from sunrise to sunset, using the whole data base. The graph represents the mean value, the median, the three quartiles and both the maximum and the minimum values of the data, as well as the outlier values. Rising in the early hours of the day, Q p / R s stabilized in the central hours and tended to decrease at sun set. Higher dispersion of the values in the first and last hours than in the central hours of the day may be observed, as the interquartile range shows. The standard deviation ranged from 0.11 μmol·J−1 within the hourly interval starting at 7:00 to 0.17 μmol·J−1, within the hourly interval starting at 14:00. The average values were higher than the median values in all hours of the day except for the hourly interval starting at 06:00. The hourly average of the ratio was 1.910 ± 0.016 μmol·J−1, with maximum and minimum values of 1.98 ± 0.11 μmol·J−1 and 1.75 ± 0.16 μmol·J−1, respectively, at 07:00 and at 19:00 h.
Figure 9 presents the monthly values of the Q p / R s ratio calculated with the average of the ten- minute data, using the whole data base. Figure 8 shows that the monthly data were almost constant throughout the central months of the year, from May to October, with a standard deviation between 0.11 and 0.16 μmol·J−1, and an interquartile range between 0.10 and 0.15 μmol·J−1. November was the measurement campaign month with the highest data dispersion: the interquartile range was 0.24 μmol·J−1, with a standard deviation of 0.20 μmol·J−1. The maximum value was recorded in April ( 1.98 ± 0.15 μmol·J−1), while the minimum was reached in December ( 1.91 ± 0.17 μmol·J−1). The monthly average of Q p / R s was 1.930 ± 0.025 μmol·J−1. Based on the results of the monthly average of Q p / R s , some authors have suggested the existence of a seasonal dependence of this term. Alados et al. [4] recorded higher values in the summer months and lower values from November to January, in Granada, Spain. However, in Greece, Proutsos et al. [47] recorded the highest values for autumn (September) while the lowest averages (March) were recorded in spring, with intermediate values for summer and winter. In Midwestern US [48], the lower values with smaller deviations were recorded in the summer months while the winter months showed higher values of the ratio with larger deviations. In Lhasa (Tibetan Plateau), the ratio of photosynthetically-active to broadband solar radiation increased almost linearly from January to June and decreased until the end of the year in the same way [49]. In this study, slightly higher values were recorded in spring and autumn. The monthly average of the Q p / R s ratio was always above the median and the number of outliers above the maximum value was greater and had a higher absolute value than those below the minimum value.
A deeper analysis was conducted with the hourly values for the two months and the extreme values of the monthly averages of Q p / R s . Figure 10 shows the daily pattern of the hourly averages of the Q p / R s ratio, for April and November, including information on mean, median and variability through the quartile range. April presented higher and constant values throughout the day, decreasing in the last hours of the day, while November showed lower values of the ratio and more variability throughout the day. Both months presented similar patterns, with constant values of the Q p / R s ratio around noon, in a trend that decreased over the last few hours of the day. Apart from the differences in daily means, shown previously, there is also evidence of greater variability during November, mainly in the first hours of the day.

5. Variability of the Q p / R s Ratio with the CIE Standard Sky Types

Figure 11 shows the average photosynthetic photon flux density to broadband solar irradiance, Q p / R s , ratio, calculated on a ten minutes basis, for each CIE standard sky type. Clear sky types 12, 13, 14, and 15 showed smaller standard deviations (from 0.06 to 0.11 μmol·J−1) and a smaller interquartile range (from 0.05 to 0.09 μmol·J−1). However, the numbers of outliers were important for all these categories. The dispersion of the data within the categories corresponding to overcast and partial overcast skies was similar, with standard deviations between 0.15 μmol·J−1 (sky type 4) and 0.21 μmol·J−1 (sky type 9) and an interquartile range between 0.16 μmol·J−1 (sky types 3 and 4) and 0.21 μmol·J−1 (sky types 8 and 9). The highest values of the Q p / R s ratio were under CIE standard sky types 1, 2, 3, and 4; all categories of overcast sky conditions.
The categories of clear skies (CIE standard sky types from 11 to 15) showed the smallest values of the ratio. Sky types 5 and 9 presented an anomalous behavior. They are categorized as overcast and partial overcast categories, but the average values of the Q p / R s ratios for both sky types were closer to the values of clear sky categories. Furthermore, sky type 9 showed the smallest average value: 1.89 ± 0.21 μmol·J−1. The FOCs of both sky types, 5 and 9, were very scarce in the measurement campaign: 1.65% and 0.64%, respectively. CIE standard sky type 5, described as “overcast, foggy or cloudy, with overall uniformity”, presented high uniformity in terms of illuminance and broadband solar irradiance, as well sky type 9, described as “partly cloudy with a shaded sun position”.
When the 15 CIE standard sky types were reduced to three, (overcast, from sky types 1 to 5, partial, from sky type 6 to 10, and clear sky, from sky types 11 to 15), the average photosynthetic photon flux density to broadband solar irradiance ratio, Q p / R s , increased when sky cloudiness increased, as shown in Figure 12.
The average Q p / R s ratio for clear skies and for overcast skies was 1.90 ± 0.11 μmol·J−1 and 1.98 ± 0.16 μmol·J−1, respectively. Partial cloudy skies showed the highest dispersion of the data, with standard deviation and interquartile range values of 0.17 and 0.19 μmol·J−1, respectively. However, the clear skies dataset had the largest number of outliers.
The Spearman correlation coefficient is a non-parametric measure of rank correlation, to determine the strength and direction of the relationship between two variables. If two datasets X and X’ are strongly correlated, then the Spearman coefficient will be 1 (direct correlation) or if otherwise –1 (inverse correlation). Although r ( Q P , C I E ) = 0.56 (p-value < 0.001) and r ( R s , C I E ) = 0.57 (p-value < 0.001) both imply a moderate correlation, ( Q P / R s , C I E ) = −0.23 (p-value < 0.001). The p-value determine the significance of the results in relation to the null hypothesis (the results are due to random chance). The lower the p-value, the greater the statistical significance of the test and greater the confirmation of the hypothesis [50]. As the p-value was lower than 0.05 in all the tests, there was a statistically significant difference between the average Q p / R s ratios for each type of CIE sky, at a significance level of 5%.
When only three CIE categories were considered (clear = 3, partial = 2, and overcast = 1), r ( Q P , C I E c l o u d i n e s s ) = 0.52 (p-value < 0.001) and r ( R s , C I E c l o u d i n e s s ) = 0.52 (p-value < 0.001), and ( Q P / R s , C I E c l o u d i n e s s ) = −0.22 (p-value < 0.001). From these results, a weak relationship can be established between the value of the Q P / R s ratio and the CIE standard sky classification. However, previous results were confirmed in this research, in so far as the ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s , presented its highest values over cloudy conditions and decreased with clear sky conditions, following the CIE Standard Sky classification as a reference for defining the sky conditions.

6. Conclusions

The analysis of photosynthetic photon flux density to broadband solar radiation ratios registered between April 2019 and January 2020 in Burgos, Spain, at ten-minute intervals, has shown a representative dependency on the sky type conditions classified by CIE taxonomy. The higher values of the Q p / R s ratio were for overcast sky types, while the values were lower and more dispersed under clear sky conditions.
Statistically significant differences have been found in the Q p / R s ratios for each CIE standard sky type. The overcast sky types presented the highest values of the ratio, with the clear sky categories presenting the lowest and most dispersed values. During the experimental campaign, there were only two exceptions to the expected behavior: sky types 5 and 9. They belonged to covered and partial covered sky type categories, respectively, presenting values closer to the clear sky categories according to the CIE standard. The main characteristic of both categories was a high uniformity in terms of illumination.
The higher dispersion of data corresponding to clear skies categories could be explained by the presence of aerosols or atmospheric turbidity, characteristics of clear sky types 13, 14 and 15, with FOC’s 15%, 8% and 7% (Figure 3).
No seasonal dependency of Q p / R s can be established, as highlighted in this and the other studies that were reviewed, due mainly to the different sky conditions recorded during the experimental campaigns. As shown in Figure 5, between April 2019 to January 2020 in Burgos, Spain, clear skies predominated in summer, while in winter the overcast conditions presented the highest frequency of occurrence.
The analysis of the hourly values also revealed a daily pattern with higher and more stable values of Q p / R s in the first hours of the day that tended to stabilize around noon and to decrease around sunset. The study of the daily pattern of the sky types (clear, overcast and partial) show that, although clear skies are predominant at all hours of the day, the differences of the frequency of occurrence with respect to overcast and partially overcast skies decreases towards noon, as Figure 6 showed.
As has been demonstrated in this study and in others, the most influential factor in the Q p / R s value was the presence of overcast sky conditions. Although other authors used different climatological parameters for sky classification, the CIE Standard sky classification has proven itself to offer a good overall framework that can represent the sky conditions, covering the complete spectrum of sky categories.

Author Contributions

Conceptualization, M.D.-M. and C.A.-T.; methodology, A.G.-R. and S.G.-R.; software, A.G.-R.; validation, A.G.-R., M.D.-M.; formal analysis, A.G.-R. and S.G.-R.; investigation, A.G.-R. and S.G.-R.; original draft preparation, M.D.-M.; writing—review and editing, C.A.-T.; visualization, A.G.R. and S.G.-R.; supervision, M.D.-M. and C.A.-T.; project administration, M.D.-M.; funding acquisition, C.A.-T. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Spanish Ministry of Science and Innovation, grant number RTI2018-098900-B-I00 and Consejería de Educación, Junta de Castilla y León, grant number BU021G19.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. CIE Standard sky conditions. Images of different sky types recorded with a SONA201D All-Sky Camera—Day in Burgos, Spain.
Figure 1. CIE Standard sky conditions. Images of different sky types recorded with a SONA201D All-Sky Camera—Day in Burgos, Spain.
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Figure 2. Location of the experimental equipment on the roof of the Higher Polytechnic School building at the University of Burgos, Spain.
Figure 2. Location of the experimental equipment on the roof of the Higher Polytechnic School building at the University of Burgos, Spain.
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Figure 3. Frequency of occurrence (FOC, %) of CIE standard sky types in Burgos, Spain, between April 2019 and January 2020.
Figure 3. Frequency of occurrence (FOC, %) of CIE standard sky types in Burgos, Spain, between April 2019 and January 2020.
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Figure 4. Frequency of occurrence (FOC, %) of CIE Cloudiness classification in Burgos, Spain, between April 2019 and January 2020.
Figure 4. Frequency of occurrence (FOC, %) of CIE Cloudiness classification in Burgos, Spain, between April 2019 and January 2020.
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Figure 5. Monthly frequency of occurrence of clear, partial, and overcast sky conditions in Burgos between April 2019 and January 2020.
Figure 5. Monthly frequency of occurrence of clear, partial, and overcast sky conditions in Burgos between April 2019 and January 2020.
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Figure 6. Daily frequency of occurrence of clear, partial, and overcast sky conditions in Burgos between April 2019 and January 2020.
Figure 6. Daily frequency of occurrence of clear, partial, and overcast sky conditions in Burgos between April 2019 and January 2020.
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Figure 7. Photosynthetic photon flux density, Q p (μmol·s−1·m−2), and broadband solar irradiance, R s (W·m−2), measured in Burgos, between April 2019 and January 2020.
Figure 7. Photosynthetic photon flux density, Q p (μmol·s−1·m−2), and broadband solar irradiance, R s (W·m−2), measured in Burgos, between April 2019 and January 2020.
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Figure 8. Box-plot of the hourly average of the ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s . Blue crosses indicate the mean and blue lines inside the box, the median. The limits of the boxes give the 1st, 2nd, and 3rd quartiles, while the extreme whiskers are the minimum and the maximum points. Blue circles represent outliers.
Figure 8. Box-plot of the hourly average of the ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s . Blue crosses indicate the mean and blue lines inside the box, the median. The limits of the boxes give the 1st, 2nd, and 3rd quartiles, while the extreme whiskers are the minimum and the maximum points. Blue circles represent outliers.
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Figure 9. Box-plot of the monthly average of the photosynthetic photon flux density to broadband solar irradiance, Q p / R s , ratio.
Figure 9. Box-plot of the monthly average of the photosynthetic photon flux density to broadband solar irradiance, Q p / R s , ratio.
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Figure 10. Daily pattern of the ratio photosynthetically-active photon flux density to broadband solar irradiance.
Figure 10. Daily pattern of the ratio photosynthetically-active photon flux density to broadband solar irradiance.
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Figure 11. Box-plot ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s , for each CIE standard sky type.
Figure 11. Box-plot ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s , for each CIE standard sky type.
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Figure 12. Box-plot of the ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s , by CIE cloudiness sky classifications.
Figure 12. Box-plot of the ratio of photosynthetic photon flux density to broadband solar irradiance, Q p / R s , by CIE cloudiness sky classifications.
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Table 1. Sky scanner technical specifications.
Table 1. Sky scanner technical specifications.
ModelMS-321LR Sky Scanner
Dimensions (W × D × H)430 mm × 380 mm × 440 mm
Mass12.5 kg
FOV11°
Luminance0 to 50 kcd/m2
Radiance0 to 300 W/m2
A/D Convertor16 bits
Calibration Error2%
Table 2. Pyranometer technical specifications.
Table 2. Pyranometer technical specifications.
ModelSR11
ISO classificationfirst class
Spectral range300 to 2800 nm
Irradiance range0 to 2000 W/m2
Sensitivity15 × 10−6 V/(Wm−2)
Calibration uncertainty<1.8%
Table 3. Photon-meter technical specifications.
Table 3. Photon-meter technical specifications.
ModelML-020P
Measurement Range0–3000 μmol·s−1·m−2
Spectral range400 to 700 nm
Operating temperature−10 °C to 50 °C
Temperature response±1%
Sensitivity0.15 × 10−6 V/μmol·s−1·m−2
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García-Rodríguez, A.; García-Rodríguez, S.; Díez-Mediavilla, M.; Alonso-Tristán, C. Photosynthetic Active Radiation, Solar Irradiance and the CIE Standard Sky Classification. Appl. Sci. 2020, 10, 8007. https://doi.org/10.3390/app10228007

AMA Style

García-Rodríguez A, García-Rodríguez S, Díez-Mediavilla M, Alonso-Tristán C. Photosynthetic Active Radiation, Solar Irradiance and the CIE Standard Sky Classification. Applied Sciences. 2020; 10(22):8007. https://doi.org/10.3390/app10228007

Chicago/Turabian Style

García-Rodríguez, Ana, Sol García-Rodríguez, Montserrat Díez-Mediavilla, and Cristina Alonso-Tristán. 2020. "Photosynthetic Active Radiation, Solar Irradiance and the CIE Standard Sky Classification" Applied Sciences 10, no. 22: 8007. https://doi.org/10.3390/app10228007

APA Style

García-Rodríguez, A., García-Rodríguez, S., Díez-Mediavilla, M., & Alonso-Tristán, C. (2020). Photosynthetic Active Radiation, Solar Irradiance and the CIE Standard Sky Classification. Applied Sciences, 10(22), 8007. https://doi.org/10.3390/app10228007

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