1.1. Problem and State of Art
The knowledge of the solar energy received by a thermal or photovoltaic (PV) solar system is an essential stage to estimate the performance of the plant and to forecast its future production. Solar radiation data must be available today at a relatively short time step in view to optimize the energy management and to size, in the best possible way, the various subsystems included in the solar plant. However, it appears that these measures of solar radiation are not always available and that some areas in the world do not have solar radiation measurements stations [
1] or such measurements are available only with a large acquisition time-step (daily data, monthly average values,…), with limited interest for research. The reasons of this scarcity of solar data are the high investments and maintenance costs of the solar radiation measurement devices, especially for nonprofit institutions, such as schools or universities [
2,
3]. In some applications, such as automotive ones, several solar measuring devices must be used simultaneously [
4], increasing the cost problem. In the case of small-scale PV arrays, such as rooftop PV systems, the much higher costs of pyranometers leads to use of other devices for monitoring solar irradiance [
5,
6]. The solar irradiance that a crop receives is measured because it affects its biological processes and several measurement devices are necessary, thus, using cheap but reliable irradiance sensors decreases the cost of the experiment [
7]. Similarly, for large-scale MW-size PV systems with a large area of PV modules, solar irradiance can be different from one part of the array to other, and several sensors are required for a precise estimation of the solar energy received, increasing the overall cost of the system [
8].
Having less expensive solar measuring devices allows the extension of the number of meteorological stations measuring solar irradiance through the world, which are too few in number (not more than one thousand) and not very precise [
9,
10]. Solar data measured in an area of 30 km around the solar plant can be considered as being usable for a sizing or production estimation but even for these applications, 98% of the stations are too far apart to give accurate information [
11].
Today, an important topic in solar energy research is the forecasting of the intermittent solar irradiance, which complicates the management of such electrical production. The knowledge of future production of PV plants allows the energy supplier to optimize the energy management, in order to maximize the renewable energy penetration into a power system through e.g., economic dispatch, reserve allocation, and electricity network. An efficient, reliable, and precise measure of solar irradiance is absolutely necessary for good forecasting, as shown in [
12], and the possibility to have efficient and cheap solar irradiance sensors is crucial [
13].
Various measuring devices can be used for solar irradiance: pyranometers (thermopile-based instruments) or calibrated PV cells, which present different responses according to spectral, angular, and temperature effects [
5,
14,
15,
16]. A pyranometer based on a thermal effect has a high time constant and then a relatively long response time, while a PV cell has a quasi-instantaneous response and is significantly cheaper [
17]. Some original and interesting new solar radiation measuring methods have been developed, such as the approach used by Oulcaid et al. [
18], which employs a low-cost fixed standard camera observing the PV array images and deduces solar irradiance from the variation of colors intensity; the accuracy of this method was calculated using the root mean square error, which was found in the range of 18 to 32 W·m
−².
One solution in view to reduce the instrumentation cost and to increase the availability of the global solar data, consists of using PV plants in production state of all sizes to estimate the incident solar radiation with a short time granularity, also determining the ambient temperature, which is the second more influencing parameter on PV plant performances.
It is well known that there is a relation more or less complex between the short-circuit current
Isc and the solar irradiance
G [
19]; more information will be provided in the second part of this introduction. Recently, the short-circuit current
ISC of different-type PV modules was described based on the environmental factors under various solar irradiance levels [
20,
21]. This property can obviously be used to develop irradiance sensors, but it is important to keep in mind the influence of the solar spectrum and the average photon energy (APE) on the relation between
Isc and the solar irradiance
G (more IR at low irradiance levels, more UV-visible at high irradiance levels) [
22], with some differences according to the technology. Five small-scale PV arrays were modeled using solar irradiance, which was measured respectively by a pyranometer and by two PV modules in short-circuit conditions (one CdTe module and one CIS module) [
5]; the results have shown a slight overestimation with a normalized root mean square error, nRMSE, equal to 6%–8% of the irradiance measured by the PV modules (a better accuracy for the CdTe module is noted); however, the costs are around 20 times lower. Orsetti et al. [
23] developed an inexpensive solar irradiance measurement consisting of 45 × 45 mm PV cells coupled in series and directly connected with a shunt resistor and to a digital sensor interface. Several studies evaluated and compared the performances of different solar irradiance sensors [
7,
24,
25,
26] to low cost ones [
19,
27,
28].
A state-of-the-art review [
18] on the estimation of solar irradiance from the measurement performed by PV array showed that:
An iterative method allows the estimation of the global horizontal irradiance using Perez transposition models and power measurements; an nRMSE of 15.1% was obtained in the best case [
29]; another iterative method coupling two combined algorithms has been also used [
6]; it was underlined that such iterative approaches can have some convergence problems [
30].
An approach based on an artificial neural network (ANN) to calculate the solar irradiance from the cell temperature and electrical measurements was developed by Mancilla-David et al. [
27]; and ANN methods are efficient but are generally not repeatable because the training phase is based on historic data, which strongly depends on the analyzed system.
A closed-form analytical estimator (CFAE) allows the determination of the solar irradiance with an nRMSE between 1.5% and 3.2% [
28].
A reparameterization of the I-V curve results in a convergent solar irradiance estimator with an nRMSE around 0.87%—for stable irradiance—and 6.65% for a perturbed one [
31].
An extended Kalman filter has been adopted [
8] and presented less accurate results than an analytical model [
28] and an immersion and invariance (I&I) model [
31] used for the same objective.
An overview of methods using temperature and DC electrical measurements (short-circuit, under-load, and open-circuit states) was realized by Vigni et al. [
26]; this synthesis presented an nRMSE equal to 6.4%, 6.8%, and 11.3%, respectively, obtained for short-circuit, under-load, and open-circuit states.
Da Costa et al. [
32] proposed an irradiance and temperature estimator only using the short-circuit current, the open-circuit voltage
Voc, and operating current and voltage for PV module using a mathematical model and numerical simulations. This method presents a maximum normalized mean bias error, nMBE, of 2.47% in the irradiance and of 2.64% in the temperature.
Moshksar and Ghanbari [
33] developed a reliable, yet somewhat complex method to estimate the solar irradiance and PV temperature in the maximum power point (MPP) conditions; the accuracy in terms of normalized absolute relative error, nMAE, is 1.08% (maximum 4.22%) and 0.53% (maximum 0.69%) for respectively the solar irradiance G and the PV cell module temperature
Tc.
Some remarks can be made:
All the methods regarding the use of Voc to compute Tc and the use of Isc to compute G require the PV modules to be disconnected from the inverter to allow such measurements at the extreme points of the I-V curve to be carried out; thus, if a PV power plant is used to realize such a measure, it must be disconnected from the electrical grid and stop its electrical production.
For the papers in which a method for computing both
G and
Tc based on the current
Impp and the voltage
Vmpp in maximum power point conditions is used and that can be applied to systems that are under operation [
33], it appears that the methods are often more elaborate and involve the determination of several parameters that have to be estimated, but when a computer is employed to collect measurements, no matter how complex the algorithm is, the calculations are easily and rapidly realized.
Our objective is to apply two methods [
34,
35], which are briefly described in the following section, that are able to measure the solar irradiance and the PV cell temperature of a PV system. They are easy to implement; [
34] depends on
Impp and
Vmpp, thus does not require interruption of the electrical production, whereas [
35] can be used for modules which are not operating, since it is based on
Voc measurements.
1.2. Measure of the Solar Irradiance and Temperature
In [
19,
27,
28], the operating point of the sensor PV modules is positioned close to the short-circuit
Isc, whose value is proportional to
G. The sensor PV module could be eliminated if the PV array itself was used as an irradiance sensor. This is possible as long as the PV modules are clean and free of any malfunctioning. However, shifting the operating point would impact the energy production, since at the short-circuit, the power supplied by the module is zero. The inverter is capable of establishing the operating point of the PV module at the maximum power point, in which the current is
Impp and the voltage is
Vmpp. The calculation of
G using the
Impp value is described in [
34], in which I-V curves under different levels of
G and
Tc were compared, and the effect of
Tc on
Impp, which is very slight, was neglected. Therefore, the changes on
Impp are considered a function of
G only. Considering that the relation
Isc /
Impp is constant, the short-circuit current can be estimated by
therefore, dividing (1) by
provides a reference for the irradiance [
34], STC being the standard test conditions (
W·m
−² and an air mass 1.5 (AM1.5) spectrum. Simplifying (1) thus provides
In [
34], such a method to estimate the irradiance presented the relative absolute error smaller than 5% during tests using I-V curves data from 500 to 1000 W·m
−² and error smaller than 3% using data from a research platform, with the module connected to a microinverter, at around 800 W·m
−².
The cell temperature of photovoltaic (PV) modules is also of great significance, since critical parameters depend on it as open-circuit
Voc or maximum power point
Vmpp voltages, influencing the PV module production. Regarding both performance testing and operation monitoring, the quantification of cell temperature (
Tc) is crucial for assessing the PV device behavior. Temperature measurements performed by means of temperature sensors attached to the back of PV modules present drawbacks, such as the fact that the temperature gradient along the module surface is not considered, since the measurements are punctual [
36,
37]. In addition to that, the actual cell temperature does not equal the temperature of the rear surface of a module, due to the drop along the different materials that compose the module. Temperature quantification methods that compute
Tc as a function of the voltage take into account the temperature of each cell, since the latter are connected in series, thus providing a measure of the average temperature of the module, avoiding the aforementioned drawbacks [
36]. Recent literature present methods to compute the cell temperature based on measurements at the output of PV modules. For instance, [
35] proposes an application of the translation method presented in [
38] to compute the average temperature of PV modules, straightforwardly, from the open-circuit voltage (
Voc) and solar irradiance (
G), using Equation (3). Such a method can be applied outdoors, when the module is not operating.
where
is the open-circuit voltage under the standard test condition (STC), where
= 1000 W·m
−2 and
= 25 °C. In addition to that,
is the temperature coefficient of
Voc in 1/°C and
is given by Equation (4).
where
with
and
The abbreviation NOCT refers to nominal operating cell temperature, which presents typical values from 43 to 47 °C for crystalline modules. The test condition for the determination of NOCT is usually called NOCT condition, in which
= 800 W·m
−2 and an ambient temperature equal to 20 °C, with a wind speed of 1 m·s
−1. In turn, LIC stands for low irradiance condition, where
= 200 W·m
−2 and
= 25 °C. It is worth noting that
and
refer to the open-circuit voltage under NOCT and LIC conditions, respectively. Considering that the datasheets of PV modules hardly present information under LIC condition, usually
M = 0 and
N =
in Equations (4) and (5); therefore, Equation (3) can be explicitly solved for
Tc, as shown in (8).
In turn, a method introduced in [
36] can be applied to PV systems in operation, since the maximum power point (
Pmpp) coordinates of voltage (
Vmpp) and current (
Impp), which are established by the inverter, are used to compute
G and
Tc. This way, the operating point of the PV array does not need to be shifted, whereas the use of dedicated temperature and irradiance sensors is avoided, since the PV module acts as the sensor for
G and
Tc. The cell temperature can be computed using
where
is the temperature correction factor for the
Pmpp. The voltage at the maximum power point is written as a function of
G given by (10)
with
The adjustment factor in Equation (9) can be defined for a value so that Equation (9) returns Tc = Tc,NOCT, whereas using Pmpp = Pmpp,NOCT and G = GNOCT, as long as has been adequately computed.
The studies [
34,
35] considered simulation and experiments limited to few points. The present study focuses on the application of such methods on experimental cases considering a much larger data amount, aiming to determine the relative mean absolute error (nMAE) and root mean square error (nRMSE) associated with each method. The nMAE is computed using Equation (12), whereas the nRMSE is computed by means of Equation (13). In such equations,
is the ith computed value,
is the ith measured value and
is the average of the measured values, and
n is the number of data.
This paper presents the equations regarding methods [
34,
35], as well as data referring to the PV modules and the measurement system of the DURASOL platform [
39], from which a large dataset has been obtained. Such data contain electrical measurements of the modules, as well as the corresponding measurements of
G and
Tc. The methods have been used in conjunction with the electrical measurements to compute
G and
Tc, and their performance has been assessed for each module and method and the results are discussed.