Next Article in Journal
A Novel Risk-Based Prioritization Approach for Wireless Sensor Network Deployment in Pipeline Networks
Previous Article in Journal
Vehicle-to-Grid in Standard and Fast Electric Vehicle Charging: Comparison of Renewable Energy Source Utilization and Charging Costs
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The Impact of Reconfiguration on the Energy Performance of the Distributed Maximum Power Point Tracking Approach in PV Plants

Department of Electrical and Information Technologies, University of Naples “Federico II”, Via Claudio 21, 80125 Napoli, Italy
*
Author to whom correspondence should be addressed.
These authors contributed equally to this work.
Energies 2020, 13(6), 1511; https://doi.org/10.3390/en13061511
Submission received: 12 February 2020 / Revised: 4 March 2020 / Accepted: 19 March 2020 / Published: 22 March 2020
(This article belongs to the Section A2: Solar Energy and Photovoltaic Systems)

Abstract

:
The following two approaches can address the drawbacks associated with mismatching phenomena in photovoltaic (PV) plants: distributed maximum power point tracking (DMPPT) architecture and reconfigurable PV array architecture. Until now, these two approaches have represented alternative solutions. In this paper, for the first time, it is suggested that the two approaches can be used together. In particular, it will be shown how the joint adoption of the DMPPT and reconfiguration approaches can improve the performances of mismatched PV plants; here, performance is understood as the best compromise between the efficiency and reliability of the entire PV system. Numerical results confirm the above assumptions, providing the hints for the development of innovative reconfiguration techniques suitable for distributed applications.

1. Introduction

Decarbonization, as the main objective of the new green deal, accentuates the need to use renewable sources for the production of electricity. In particular, photovoltaic (PV) sources are among the most interesting renewable sources at large for the scientific community. In the last twenty years, the main goal of researchers worldwide has been to optimize the energy performance of these sources [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36], that is, to ensure that the power extractable from PV systems to the best operating point (BOP) or to the maximum power point (MPP) is the total available power (Pav), i.e., sum of the maximal power over individual PV modules. Under uniform working conditions, or in the absence of mismatching (due to clouds, shadows, dirt, aging, etc.), the above is guaranteed, regardless of the configuration (electrical connections of PV modules) and of the weather conditions to which the PV modules are subjected, both in terms of sun exposure (S) and temperature (T). Therefore, it is evident, from in these details, that even under unlikely conditions, especially in reference to real applications (domestic or industrial applications), the efficiency of the entire system is a single variable function, represented by the tracking efficiency (ηMPPT) of the maximum power point tracking (MPPT) used. Efficiency is closely related to the ability of the technique to converge the working point into a restricted round of the BOP (steady-state capability), and also to its tracking speed. The tracking speed especially affects the system’s performance under varying weather conditions (dynamic conditions). Under mismatching conditions, which represent much more realistic scenarios, the situation changes dramatically [8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30]. In particular, as compared with the uniform case, in addition to the efficiency of the tracking technique, other factors affect the energy performance of the entire system, including both static and dynamic atmospheric conditions (SPV(t), TPV(t)) [8,9,10,11,12,13,14,15,16,17,18,19,20], the network topology (electrical connections between modules) [21,22,23,24,25,26,27,28,29,30], and the operating point (OP). Regarding the performances of different tracking techniques, with particular reference to those based on the approach of “hill climbing” (e.g., perturb and observe) which, in fact, represents the best compromise between good energy performance and simplicity of implementation, their performances are strongly compromised by the multimodal nature of the power-versus-voltage (P-V) curve of the entire PV field; multimodality resulting from the presence of by-pass diodes which, for safety reasons, work in direct polarization [8,9,10,11,12,13]. The presence of multiple peaks, for convenience divided into relative MPPS (RMPPs) and absolute MPP (AMPP), is the main cause of failure of MPPT techniques, that are not skilled to differentiate the AMPP with respect to RMPPs [14,15,16,17,18].
Additionally, although the power that is extracted at AMPPs is less than the total power available [19], an AMPP is not a feasible point or does not belong to the operating range of the inverter; thus, it is evident, under mismatching conditions, that the centralized approach, which adopts a unique DC/AC converter that carries out the MPPT function of the entire field (Figure 1), cannot guarantee good energy performance. The above approach is known as “Central Maximum Power Point Tracking (CMPPT)”.
A specific tool that can mitigate the above drawbacks associated with mismatched operating conditions is represented by the dynamic reconfiguration of PV modules by means of proper active switches [21,22,23,24,25,26,27,28,29,30,31]. This reconfiguration approach can yield the best compromise between efficiency (power maximization) and reliability (minimization of localized heating phenomena) [29,30,31].
An alternative solution is to use the distributed approach, the classical layout of which is shown schematically in Figure 2 [32,33,34,35,36]. In this case, each PV module is equipped with a DC/DC converter that performs the MPPT function. A system composed of a PV module equipped with a DC/DC converter is called a self-controlled PV module (SCPVM). In particular, SCPVMs, based on the boost topology, are analyzed in this study. Another possibility is to consider SCPVMs based on the buck or buck-boost topology [32,36]. With respect to buck-boost topology, it is characterized by lower efficiencies and higher costs due to enhanced component stresses. In [32,36], such a result has been verified by using the tool represented by the so-called “feasibility region”. In particular, in [32,36], it was shown that a real energy productivity of a buck-boost converter was guaranteed in cases where the mismatch conditions were quite heavy. In all other mismatching scenarios, the buck-boost “feasibility regions” do not include the AMPP, causing a marked reduction of the overall system efficiency. Regarding the buck converter, it optimally works especially in PV systems characterized by a light mismatching scenario, in other words, when, for example, shade or mismatch occurs only on a few PV modules. In this case, the buck DC/DC converter is installed only on those PV modules experiencing shade [32,36]. The adoption of buck converters on all the PV modules of the string is unpractical because of the associated step-down voltage conversion ratio, since it leads to an increase of the number of modules for each string to obtain a string voltage compatible with the input voltage range of the inverter. On the basis of the above assumptions, it is evident that the choice of boost topology provides a less expensive and more reliable solution for distributed maximum power point tracking (DMPPT) applications.
Theoretically, the distributed approach can guarantee maximal efficiency, regardless of the atmospheric conditions and configuration, in terms of electrical connections of SCPVMs. In other words, the efficiency of the entire PV system, as in the case of the centralized approach that works under uniform atmospheric conditions, is related only to the tracking efficiency of the utilized MPPT technique. This aspect is substantially tied to the requirement of ideal conditions, that is, the unit efficiency of the power stage and the total absence of limitations both on the current and on the voltage of the involved silicon devices. In particular, the occurrence of the abovementioned condition (ideal condition) means that the optimal working range is unrestricted, and also that it exhibits a power that coincides with the total available power. These last conditions should hold regardless of the weather conditions and the network topology.
Moving away from these ideal assumptions toward more realistic situations, the energy performance of the distributed approach depends on the power stage efficiency and on the network topology. While the dependence of the distribute approach’s efficiency on the environmental conditions and on the power stage efficiency have been discussed extensively in literature, as highlighted in [31,32,33,34,35], the same discourse cannot be extended to the role assumed by the dynamic reconfiguration of SCPVM-like tools for improving the energy performance of the distributed approach. Until now, reconfiguration techniques and distributed MPPT (DMPPT) have been considered as two alternative techniques. In this work, for the first time, these two methods are combined. In particular, the present work aims to analyze the impact of the joint action of the distributed approach and dynamic reconfiguration in a broader perspective as compared with those closely related to the extracted power.

2. The Current Versus Voltage (I-V) and P-V Characteristics of a Single SCPVM

A few simple guidelines are provided to obtain the current versus voltage (I-V) and the P-V output static characteristics of lossless SCPVM, based on the boost topology. The knowledge of such features represents the starting point for developing the I-V and P-V characteristics of a string, consisting of an arbitrary number of SCPVMs connected in series. The term “lossless” means that, in the ensuing reasoning, the losses occurring in the power stage of the adopted DC/DC converters (switching losses, conduction losses, and iron losses) are neglected. In addition, the MPPT efficiency of the DMPPT controllers is considered to be equal to one. In a follow-up study, the above assumptions will be relaxed. In this study, V SCPVM ( I SCPVM ) denotes the output voltage (current) of the considered SCPVM, and V DSMAX indicates the maximal allowed voltage provided by the utilized silicon devices. As shown in Figure 3, the I-V characteristic of a single lossless SCPVM is defined by the following three different regions: best operating region (BOR), and two worst operating regions (WOR1 and WOR2). The BOR, defined for V MPP     V SCPVM <   V DSMAX , is delimited by the hyperbole of equation V SCPVM   I SCPVM = P MPP , where V MPP   ( P MPP ) is the maximum voltage (power) that can be provided by the adopted PV module under the considered atmospheric conditions (irradiance and ambient temperature) [19,20]. The voltage ( R V   BOR ) and current ( R C   BOR ) ranges associated with the BOR are as follows:
R C   BOR   = ] I 0 ,   I MPP ]
R V   BOR = ] V MPP ,   V DSMAX ]
where I 0 represents the value of the output current when the output voltage is equal to V DSMAX . Its value is:
I 0 = P MPP V DSMAX
Regarding WOR1, defined for 0     V SCPVM <   V MPP , it is delimited by a portion that coincides with the I-V characteristic of the adopted PV module (dashed line of Figure 3) under the considered atmospheric conditions [19,20]. As shown in Figure 3, WOR 1 can be identified through the following ranges:
R C   WOR 1 = ] I MPP , I SC ]
R V   WOR 1 = [ 0 , V MPP [
where I S C represents the short circuit current of the PV module. At the right-ended limit, WOR2 is characterized by a vertical drop located at V = V DSMAX and by the action of the output overvoltage protection circuitry. The range of currents associated with WOR 2 is the following one:
R C   WOR   2 = [ 0 , I 0 ]
Equations (1) and (2) highlight the propensity of the BOR to assume, under non-stationary operating conditions (S(t), T(t)), time-varying characteristics. This last aspect is crucial in the following reasoning. As an example, Figure 4 shows the power versus current (P-I) characteristics of a single SCPVM obtained by considering four different irradiance values ( S i   with   i = 1 , , 4 ). In particular, the following condition is assumed to be met:
S 1 > S 2 > S 3 > S 4

3. The Role of the Reconfiguration in DMPPT PV Applications

In the previous section, it was shown that under non-stationary operating conditions, the optimal working interval of a single SCPVM, whether assessed in terms of the current or the voltage, has time-varying characteristics; the latter were attributed not only to their position in the I-V plane, but also to their amplitude (Figure 4). The same considerations, as expected, can be extended to more complex systems, as those shown in Figure 2, which consist of many strings of SCPVMs connected in parallel. Evidently, once this property is confirmed, there is a need to continuously converge the work-point to be within that range. The need for the joint action between centralized and distributed control, given the characteristic time variation of the optimal work range, is well assessed, as can be seen in [19,20]. This approach is known as hybrid maximum power point tracking (HMPPT). The hybrid approach is the most effective solution for overcoming the highlighted limits of the distributed approach. However, there are working conditions under which, even for the hybrid approach, the efficiency of the entire system is strongly weakened. When the critical aspects of the distributed approach against the reliability of DC/DC converters and PV panels are considered, in addition to the aspect of energy performance, in terms of the power extracted, it becomes clear that the impaired quantity is the energy that is produced during the entire useful life of the PV plant itself.
To better understand the above concepts, in the following it is considered appropriate, first of all, to refer to a PV system with a simple topology, and then to extend the results to more complex systems. In particular, at first a PV system consisting of a single string of NS = 4 SCPVMs (SCPVM1, SCPVM2, …, SCPVM4) is considered. The decision to analyze a system of only four SCPVMs connected in series arises from the need to identify a configuration that is easy to be resolved but, at the same time, considers all the previously highlighted arguments. The most scrutinized aspect is the role assumed by a particular network topology on the energy performance of the entire system. In other words, we show how the critical issues affecting the distributed approach are overcome, both partially and totally, by acting on the configuration [36]. In particular, the authors want to highlight the idea that the distributed approach and reconfiguration techniques, which up to now have been considered as alternative techniques, are actually complementary.
To better understand the exposed aspects, the tested system (shown in Figure 5), is analyzed for three specific cases which correspond to three different working conditions (Cases A, B, and C). Each of the above cases refers to a set of possible mismatching conditions to which a PV system can be subjected. The objective is to obtain results that are representative of the various combinations of possible mismatching scenarios (Figure 6). Cases A and B represent, respectively, the best and the worst cases whereas, as depicted in Figure 6, Case C is the relative complement of the various combinations of possible mismatching scenarios with respect to the union of Case A and Case B. As a consequence, for exhaustive analysis, it is necessary to analyze only the first two of the three envisaged cases. It is important to clarify for the reasoning that follows, that no reference to atmospheric quantities (e.g., irradiance and temperature) is considered, and only the electrical quantities directly or indirectly connected to them (such as I S C ,   I M P P ,   I 0 ,   a n d   V M P P ) are considered. This approach, which seems like a limitation, is in fact quite realistic as it defines the electrical properties (in terms of voltage and current) that must be satisfied by a string in order to improve the energy performance. Moreover, with the aim of obtaining results with general validity, no reference to numerical values is made.

3.1. Case A: Best Case

Case A refers to the I-V curves shown in Figure 7. This figure, in addition to showing the I-V characteristics of each individual SCPVM, also highlights the respective optimal working current ranges ( R C   B O R , i with I = 1, 2, 3, and 4). Moreover, the following condition is assumed:
I M P P , i >   I M P P , j   ( i f   i > j )
The opposite occurs regarding the temperatures and the respective voltages at the MPP points. Another condition to be verified, always with respect to what is shown in Figure 7, is the following:
I 0 , 1 <   I M P P , 4 <   I M P P , 1
The above condition, as expected, represents the necessary and sufficient condition for not only having an intersection between the optimal current ranges of all SCPVMs, but also that such an intersection yields the optimal current range of the entire string ( R C B O R   s t r i n g ). Thus:
R C   BOR   string = R C   BOR   1 R C   BOR   2 R C   BOR   4 = ] I 0 ,   1 , I MPP ,   4 ]
The particular link highlighted by Equation (10), which relates the optimal range of the working current of the entire string to those of individual SCPVMs, clearly denotes its predisposition to assume, under mismatching and not-stationary conditions, time-varying characteristics. Apart from this aspect which, as explained above, does not provide any innovative contribution, Equation (10) highlights the property according to which all SCPVMs contribute to the definition of the optimal current range of the entire string. This result, from the energy point of view, implies that the optimal working point at which the PV system can deliver the maximum available power, is a feasible point. This statement implies, in all mismatching scenarios, given that Condition (9) is met, that the distributed approach can show its true potential (best case). This becomes even more evident by analyzing the P-I characteristic of the entire string (white curves) reported in Figure 8; this characteristic is obtained by adding, for every value of the string current I s t r i n g , belonging to the range [ 0 ,   I S C , 1 ] , the maximum power values of individual SCPVMs, at the said value of current.
In particular, Figure 8 shows that the optimal working range defines a region where the P-I characteristics of all SCPVMs show a flat shape. Figure 9, for completeness of reasoning, replots the P-V characteristic of the entire system under test, in which the optimal operating voltage range (RV BOR string) of the entire string is evidenced. As expected, the optimal voltage range of the entire system can be expressed not only as a function of the overall available power, but also as a function of the optimal current range. In particular:
R V   BOR   string = i = 1 4 P MPP ,   i R C   BOR   string = [ i = 1 4 P MPP ,   i I MPP ,   4 , i = 1 4 P MPP ,   i I 0 ,   1 [
Finally, both the conditions expressed by Condition (9) and the optimal working time of the current, Equation (10), at least in its extremes, depend indirectly on the atmospheric conditions affecting the SCPVMs, with maximum (SCPVM1) and minimum (SCPVM4) sunshine, respectively. The above result is easily extended to more complex systems, such as that represented by a string composed of any number of SCPVMs. For this particular system, the optimal working ranges for both the current and voltage can be expressed as follows:
R C   BOR   string = i = 1 Ns I C   OPT   i = ] I 0 ,   max , I MPP ,   min ]
R V   BOR   string = i = 1 Ns P MPP ,   i I C   OPT   string = [ i = 1 Ns P MPP ,   i I MPP ,   min , i = 1 Ns P MPP ,   i I 0 ,   max [
where the footboard min (max) identifies the SCPVM characterized by the minimum (maximum) level of sunlight. As previously stated, Equations (12) and (13) are valid for a specific subset belonging to the entire constellation of all possible mismatching scenarios that affect the tested PV system; a subset that is defined by the occurrence of the following condition:
I 0   m a x < I M P P   m i n < I M P P   m a x
From the reconfiguration point of view, Equations (12) and (13) define the properties that a string must possess for exhibiting good energy performance, regardless of the atmospheric conditions and characteristics of the inverter in terms of the optimal working range (RV inverter). Specifically, Equation (12) establishes that the maximum energy performance of the string can be obtained only when there is an intersection between the optimal intervals in the currents of all the SCPVMs that constitute it. The above condition is not sufficient: the optimal working voltage range of the entire string must also exhibit an intersection with the optimal working range of the inverter. In particular, the following condition applies:
R V   BOR   string R V   inverter ϕ   [ i = 1 Ns P MPP ,   i I MPP ,   min , i = 1 Ns P MPP ,   i I 0 ,   max [ [ V inverter   min , V inverter   max ] ϕ
where the symbol Vinverter min (Vinverter max) indicates the minimum (maximum) value of the input inverter voltage and the symbol ϕ refers to the empty range. This last property, as will be evident later, defines the minimal and maximal number of groups of SCPVMs that can compose a string and ensures that the MPP belongs to the optimal range of the inverter, and therefore is a feasible point.

3.2. Case B: Worst Case

Case B refers to the I-V curves shown in Figure 10, in which, for the sake of clarity, the optimal current ranges of the individual SCPVMs ( R C B O R _ i with i = 1, 2, 3, and 4) are highlighted. As in Case A, Condition (8) is met ( I M P P , i > I M P P , j with i > j ). The main differences between Case A and Case B relate to the mismatching scenarios; in the present case the following general condition is fulfilled:
I 0 , i >   I M P P , j ( i = 1 ,   2 ,   ,   N S   a n d   j = i + 1 ,   i + 2 ,   ,   N S )
The occurrence of this condition effectively excludes the possibility that there is an intersection between the optimal current intervals of all SCPVMs. As shown in Figure 11, this condition causes the coincidence between R C B O R   s t r i n g and R C B O R   1 . The same considerations can be extended with reference to the P-V characteristic plotted in Figure 12, in which it is evident that only SCPVM1 contributes usefully in terms of efficiency to the entire system. Generalizing the above, for all mismatching scenarios that satisfy Condition (16), the optimal range, both in terms of the current and voltage of the entire string, coincides with that of the SCPVM characterized by the maximal level of sunlight (SCPVMmax). That is:
R C   BOR   string = R C   BOR   max = ] I 0 ,   max , I MPP ,   max ]
R V   BOR   string = R V   BOR   max = [ V MPP   max , V DS   max [
From Equation (17), the limitations of the distributed approach are explicitly evident, with reference to the scenarios described in Case B. At best, the power extractable from the entire PV system coincides with the maximum power delivered by the SCPVM with the highest level of sunlight. In addition to this, if we consider that the pursuit of MPP has occurred at the expense of the reliability of the entire system, it becomes evident that the energy that is produced during the entire useful life of the PV plant is strongly impaired. Moreover, from the analysis of Figure 11, it is useful to point out that the string current belonging to the optimal range ( I s t r i n g   O P T R C   BOR   string ) fulfills the following condition:
I s t r i n g   O P T >   I S C , i ( i = 2 ,   3 ,   , N S )
As a consequence, given the inability of the boost converter to act as active bypass diode [35], it is inevitable that for all those SCPVMs for which Condition (19) is verified, the respective PV modules are reverse biased, and reliability is deeply compromised [37]. Finally, taking into account that the optimal voltage range of the entire string almost certainly falls outside the optimal working range of the inverter, it is evident that the scenarios highlighted by Equations (17) and (18) are not feasible, resulting in a further reduction of efficiency. A solution for limiting these critical issues is to identify a topology that represents the best compromise between efficiency and reliability. For example, a subset of Case B can be considered, such that the following condition is satisfied:
I 0   max < i = j Ns I MPP , i I MPP   max ( j = 2 , 3 ,   ,   N S )
In this particular condition, the suitable topology is obtained by the series connection of SCPVMmax with a group of (NS-j+1) SCPVMs connected in parallel. Moreover, if the possibility, offered by the reconfiguration, of excluding from the entire system the j-2 SCPVMs that do not satisfy Condition (20) is considered, it becomes evident that it is possible to improve the reliability of the entire PV plant by avoiding the presence of PV modules that work in a reverse bias condition. In conclusion, from the above example it is understood that the necessary condition for a string to exhibit good energy performance, regardless the weather conditions, is that there is an intersection between the current optimal ranges of all NC (Nc Ns) groups of SCPVMs that compose it.
Moreover, it is also necessary to guarantee that Condition (15) is satisfied, because the optimal working voltage range of the entire string must also exhibit an intersection with the optimal working range of the inverter. It is necessary that NC meets the following property:
V inverter   min V MPP   N c V inverter   max V DS   max
The latter property is valid if the following distinction is assumed to be valid:
V MPP V DS   max   V inverter   min V inverter   max
The minimum number of SCPVMs that belongs to a generic group is equal to one; this implies, in the reasoning that follows, that each individual SCPVM represents a group. Meeting the condition of Property (21) ensures that the optimal working point of the entire string is a feasible point, as it belongs to the operating range of the inverter. Downstream of this brief discussion is a tangible impact of the reconfiguration on the energy performance of PV systems that adopt the distributed approach. The block scheme that jointly involves the distributed approach and the dynamic reconfiguration is shown in Figure 13, in which the presence of the dynamic matrix of switches, located between the PV field and the inverter, is evident. For this system, consisting of Ns SCPVMs distributed on a maximum of Nstring strings, the number of switches required is equal to:
N switch = 4 i = 1 N s 1 ( N s i ) + 2 ( N s 1 ) N string

4. Identification of the Best String

In this section, starting from Ns SCPVMs, an algorithm, which determines the string that exhibits the best energy performance is presented and discussed; energy performance here is understood as a compromise between efficiency and reliability. This algorithm is not intended as a reconfiguration algorithm, but rather as a tool for overcoming the belief that the distributed approach and reconfiguration techniques represent alternative solutions to mitigate the effects of the occurrence of mismatching operating conditions. In other words, the purpose of the following discussion is to develop innovative reconfiguration techniques suitable for distributed applications. From the previous paragraph, the necessary condition for a string to exhibit good energy performance, regardless the atmospheric conditions, is that there will be an intersection between the current optimal ranges of all NC groups of SCPVMs that compose it. That is to say:
R C   BOR   i R C   BOR   j ϕ   ( i = 1 , 2 , , N c   and   j = i + 1 , i + 2 , , N c ) .
According to Property (21), the minimum (Nc min) and maximum (Nc max) values of NC are defined as follow:
N c   min = V inverter   min V MPP
N c   max = V inverter   max V SD   max
With the aim of identifying, starting from a number of SCPVMs, the string that fulfills the properties expressed in Equations (24), (25), and (26), the algorithm, object of this paragraph, bases its principle of functioning on an iterative process. The starting point is the definition of the intersection matrix ( I matrix ), defined as follows:
I matrix   ( i , j ) = { 1 if   ( R C   BOR ,   i R C   BOR ,   j ϕ ) 0 if   ( R C   BOR ,   i R C   BOR ,   j = ϕ )
where i = 1 , 2 ,   ,   N s ;   and   j = i + 1 , i + 2 ,   ,   N s .
Under the hypothesis that the level of sunlight decreases with increasing the footboard ( I MPP , i >   I MPP , j   ( if   i > j ) ), at each row of I matrix it is possible to associate a cluster, which is called an optimal cluster (OC), composed of all SCPVMs accomplishing ownership in Condition (24). Since Imatrix is an [NS ×NS] matrix, the number of OCs that can be associated with I matrix is NS (the number of rows of Imatrix). For the sake of clarity, in the following, we indicate by OCi the optimal cluster associated with the i-th row of I matrix . In addition, we denote by NCi and RC OPT OCi, respectively, the number of groups of SCPVMs belonging to the i-th cluster (OCi) and the optimal current interval, obtained by connecting in series all the NCi SCPVMs belonging to OCi. According to the value assumed by NCi, compared with the overall number of SCPVMs (NS) that make up the entire PV field, it is possible to discriminate, for each single OC, three potential working conditions: (1) the best condition (NCi = NS), (2) the worst condition (NCi = 1), and (3) the compromise condition (1 < NCi < NS). The best case can be neglected because no reconfiguration is necessary; for the other two cases, it is possible to associate with Imatrix additional NS clusters, each of which is composed of NS-NCi SCPVMs. In other words, the i-th row of Imatrix, in addition to OCi, can be associated with an additional cluster composed of all SCPVMs which, owing to their characteristics, cannot belong to the corresponding heading. This additional cluster is denoted as the relative complement of i-th optimal cluster (RCOCi). The number of items belonging to the i-th RCOC is:
N RCOC   i = N S N Ci 0
On the basis of the above, it is clear that for reasons strictly related to reliability, RCOCi represents the entire set of the SCPVMs to be excluded, potentially, from the entire PV plant, to avoid the presence of one or more PV modules working in reverse bias conditions. ”Potentially” means that the NRCOCi SCPVMs have to be excluded only if the following condition is not verified:
k = 1 N SCPVM   j R C   BOR   subset   k   R C   BOR   OC   i ϕ ( j = 1 , 2 , , N subset   i   )  
where NSCPVM j indicates the number of SCPVMs belonging to the j-th subset of RCOCi and Nsubset i, with the total number of possible subsets belonging to RCOCi equal to:
N subset   i = k = 2 N RCOC   i N RCOCi ! k ! ( N RCOCi k ) !
In particular, the occurrence of Condition (29) implies the existence of groups of SCPVMs, whose connection in parallel is such as to exhibit an equivalent optimal current interval (RC BOR subset k) that satisfies Condition (24). Excluding the above groups from RCOCi and inserting them in OCi creates the following two new clusters: BCi (best cluster) and CEi (cluster of excluded). BCi represents the extension of OCi obtained by including groups of SCPVMs, placed in parallel, that satisfy Condition (24). As far as CEi is concerned, it is clear that, being composed of SCPVMs that do not individually or in groups meet Conditions (24) and (29), it represents the entire set of SCPVMs to be excluded for safeguarding the reliability of the entire plant. Thus, it is concluded that the information contained in BCi and CEi identifies the string that satisfies Condition (24). Once the aforementioned clusters are defined, the iterative process on which the algorithm is based ends identifying, between the possible NS strings, the one which not only meets the Conditions (25) and (26) but is also characterized by the maximum extracted power. This string represents, as can be expected, the best compromise between efficiency and reliability.
In the following, as an example, the results obtained using the above algorithm are considered with reference to two different mismatching scenarios, i.e., Case I and Case II. In both cases, the tested PV system is characterized by the presence of NS = 4 SCPVMs, whose electrical characteristics are listed in Table 1, which indicates the clear reference to commercial PV panels (SW 225 of Solar World) [38]. As far as the inverter is concerned, it is assumed that it is characterized by an operating range whose input values are shown in Table 2.
Replacing the values in Table 1 and Table 2 by Equations (25) and (26), the minimal and maximal number of groups of SCPVMs for ensuring that the optimal voltage range of the entire range is contained in the optimal operating range of the inverter is equal to:
N cmin = V inverter   min V MPP _ STC 2
N cmax = V inverter   max V DS   max 4

4.1. CASE I

Case I refers to the following set of values: IMPP vector IMPP_V = [3.78 1.13 0.75 0.37] A, I0 vector I0_V = [1.87 0.56 0.37 0.18] A. Figure 14 shows the optimal current ranges of all SCPVMs.
With reference to Case 1, the matrix of intersections, obtained by applying the conditions expressed in Equation (27), is as follows:
I matrix = ( 1   0   0   0 0   1   1   0 0   0   1   1 0   0   0   1 )
Row 1: From the intersection matrix it is evident that the first line has only one non-zero element in the Imatrix position (1,1). This implies that the intersection of the optimal current range of the SCPVM1 with all the remaining SCPVMs is empty. Therefore, the set OC1 consists of a single group made up of SCPVM1 (NC1 = 1) while SCPVMs 2, 3, and 4 belong to RCOC1 (NRCOC1 = 3) by exclusion. The presence of NRCOC1 = 3 SCPVMs inside RCOC1 implies the existence of four possible subsets, each consisting of the parallel of a minimum of two up to a maximum of three SCPVMs. Table 3 shows the compositions of each single group together with their optimal current range. For simplicity “i//j” denotes the group constituted by the parallel connection of i-th SCPVM with j-th SCPVM. A comparison of the intervals represented in Table 2 with the optimal range associated with OC1 which coincides with that of SCPVM1, shows that only Subsets 1 and 4 satisfy Equation (29). Of the above subsets, Subset 4 is more suitable as it is associated with a greater extractable power being constituted by the parallel connection of three SCPVMs. On the basis of the above, it is clear that cluster CE1, associated with the first row of Imatrix, is empty, while cluster BC1 consists of two groups composed, respectively, of SCPVM1 and the parallel connection of SCPVM 2, 3, and 4 (SCPVM 2//3//4).
Rows 2, 3, 4: Repeating the process also for Rows 2, 3 and 4 it is possible to obtain the results shown in Table 4.
From the analysis of Table 4, it is easy to identify the string that most of all represents the best compromise between efficiency and reliability, which in the case under consideration is obtained by connecting in series the groups belonging to BC1. This statement is reflected in the fact that groups belonging to BC1 not only meet Condition (21) but are capable, once connected in series, to display a greater (Pav = 176.5 W) available power than the strings obtained by connecting in series the groups belonging to other BCi (with i = 2, 3, and 4). To further highlight the results obtained using this algorithm, Figure 15 shows the comparison of the P-V characteristics of the string just identified (continuous line) with that obtained by connecting in series all the four SCPVMs (dotted line). From Figure 15, we perceive an evident increase of the extractable power inside the operating range of the inverter, estimated as ~85%. The increased extractable power is not the only advantage of using an appropriate reconfiguration of SCPVMs, which in the present case is obtained through the series connection of groups belonging to BC1. In particular, unlike the string obtained from the series connection of the four SCPVMs, the presence of SCPVMs working under reverse bias conditions has been avoided, at least in the optimal working range, with clear advantages in terms of the reliability of the entire system.

4.2. CASE II

Case II refers to the following set of values: IMPP vector IMPP_V = [3.03 2.65 1.13 0.75] A, I0 vector I0_V = [1.5 1.31 0.56 0.37] A.
I m a t r i x = ( 1   1   0   0 0   1   0   0 0   0   1   1 0   0   0   1 )
Repeating the reasoning made previously with reference to the case under examination, the obtained results are shown in Table 5. The presence of two strings that are equivalent from the point of view of the energy performance can be deduced. Again, as shown in Figure 16, the increase in the energy performance with respect to the string, obtained from the series connection of all SCPVMs, is clearly visible and it is estimated as ~32%.

5. Conclusions

This work highlighted the main advantages of a joint action of DMPPT and reconfiguration approaches. Combining the two approaches not only positively affects the energy efficiency, but also increases the reliability of the mismatched PV system. These results suggest that the DMPPT and reconfiguration approaches, which until now have been considered as alternative approaches, are completely complementary.

Author Contributions

Conceptualization, M.B. and C.P.; methodology, M.B. and C.P.; software, M.B. and C.P.; validation, M.B. and C.P.; formal analysis, M.B. and C.P.; investigation, M.B. and C.P.; resources, M.B. and C.P.; data curation, M.B. and C.P.; writing—original draft preparation, M.B. and C.P.; writing—review and editing, M.B. and C.P.; visualization, M.B. and C.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Sera, D.; Mathe, L.; Kerekes, T.; Spataru, S.V.; Teodorescu, R. On the perturb-and-observe and incremental conductance MPPT methods for PV systems. IEEE J. Photovolt. 2013, 3, 1070–1078. [Google Scholar] [CrossRef]
  2. Chiu, C.-S. T-S fuzzy maximum power point tracking control of solar power generation systems. IEEE Trans. Energy Conver. 2010, 25, 1123–1132. [Google Scholar] [CrossRef]
  3. Macaulay, J.; Zhou, Z. A Fuzzy Logical-Based Variable Step Size P&O MPPT Algorithm for Photovoltaic System. Energies 2018, 11, 1340. [Google Scholar]
  4. Kolesnik, S.; Kuperman, A. On the equivalence of major variable-step-size MPPT algorithms. IEEE J. Photovolt. 2016, 6, 590–594. [Google Scholar] [CrossRef]
  5. Sokolov, M.; Shmilovitz, D. A modified MPPT scheme for accelerated convergence. IEEE Trans. Energy Conver. 2008, 23, 1105–1107. [Google Scholar] [CrossRef]
  6. Gosumbonggot, J.; Fujita, G. Global maximum power point tracking under shading condition and hotspot detection algorithms for photovoltaic systems. Energies 2019, 12, 882. [Google Scholar] [CrossRef] [Green Version]
  7. Balato, M.; Costanzo, L.; Vitelli, M. Maximum power point tracking techniques. In Wiley Online Encyclopedia of Electrical and Electronics Engineering; John Wiley & Sons: Hoboken, NJ, USA, 2016; pp. 1–26. [Google Scholar] [CrossRef]
  8. Li, C.; Chen, Y.; Zhou, D.; Liu, J.; Zeng, J. A High-Performance Adaptive Incremental Conductance MPPT Algorithm for Photovoltaic Systems. Energies 2016, 9, 288. [Google Scholar] [CrossRef] [Green Version]
  9. Lin, C.H.; Huang, C.H.; Du, Y.C.; Chen, J.L. Maximum photovoltaic power tracking for the PV array using the fractional-order incremental conductance method. Appl. Energy 2011, 88, 4840–4847. [Google Scholar] [CrossRef]
  10. Pathy, S.; Subramani, C.; Sridhar, R.; Thentral, T.; Padmanaban, S. Nature-inspired MPPT algorithms for partially shaded PV systems: A comparative study. Energies 2019, 12, 1451. [Google Scholar] [CrossRef] [Green Version]
  11. Kumar, G.; Trivedi, M.B.; Panchal, A.K. Innovative and precise MPP estimation using P-V curve geometry for photovoltaics. Appl. Energy 2015, 138, 640–647. [Google Scholar] [CrossRef]
  12. Kumar, G.; Panchal, A.K. Geometrical prediction of maximum power point for photovoltaics. Appl. Energy 2014, 119, 237–245. [Google Scholar] [CrossRef]
  13. Salam, Z.; Ahmed, J.; Merugu, B.S. The application of soft computing methods for MPPT of PV system: A technological and status review. Appl. Energy 2013, 107, 135–148. [Google Scholar] [CrossRef]
  14. Femia, N.; Petrone, G.; Spagnuolo, G.; Vitelli, M. Optimization of perturb and observe maximum power point tracking method. IEEE Trans. Power Electron. 2005, 20, 963–973. [Google Scholar] [CrossRef]
  15. Hohm, D.P.; Ropp, M.E. Comparative study of maximum power point tracking algorithms. Prog. Photovolt. Res. Appl. 2003, 11, 47–62. [Google Scholar] [CrossRef]
  16. Esram, T.; Chapman, P.L. Comparison of photovoltaic array maximum power point tracking techniques. IEEE Trans. Energy Conver. 2007, 2, 439–449. [Google Scholar] [CrossRef] [Green Version]
  17. Femia, N.; Petrone, G.; Spagnuolo, G.; Vitelli, M. A new analog MPPT technique: TEODI. Prog. Photovolt. Res. Appl. 2010, 18, 28–41. [Google Scholar] [CrossRef]
  18. Ishaque, K.; Salam, Z.; Lauss, G. The performance of perturb and observe and incremental conductance maximum power point tracking method under dynamic weather conditions. Appl. Energy 2014, 119, 228–236. [Google Scholar] [CrossRef]
  19. Vitelli, M. On the necessity of joint adoption of both distributed maximum power point tracking and central maximum power point tracking in PV systems. Prog. Photovolt. Res. Appl. 2014, 22, 283–299. [Google Scholar] [CrossRef]
  20. Balato, M.; Costanzo, L.; Vitelli, M. DMPPT PV system: Modeling and control techniques. Adv. Renew. Energ. Power Technol. 2018, 1, 163–205. [Google Scholar]
  21. De Brito, M.A.G.; Galotto, L.; Sampaio, L.P.; De Azevedo e Melo, G.; Canesin, C.A. Evaluation of the main MPPT techniques for photovoltaic applications. IEEE Trans. Ind. Electron. 2013, 60, 1156–1167. [Google Scholar] [CrossRef]
  22. Nguyen, D.; Lehman, B. An adaptive solar photovoltaic array using model-based reconfiguration algorithm. IEEE Trans. Ind. Electron. 2008, 55, 2644–2654. [Google Scholar] [CrossRef]
  23. Villa, L.F.L.; Picault, D.; Raison, B.; Bacha, S.; Labonne, A. Maximizing the power output of partially shaded photovoltaic plants through optimization of the interconnections among its modules. IEEE J. Photovolt. 2012, 2, 154–163. [Google Scholar] [CrossRef]
  24. Guillermo, V.-Q.; Francisco, G.-G.; Robert, P.-L.; Manuel, R.-L.; Alfonso, C.-R. Electrical PV Array Reconfiguration Strategy for Energy Extraction Improvement in Grid-Connected PV Systems. IEEE Trans. Ind. Electron. 2009, 56, 4319–4331. [Google Scholar]
  25. Hideaki, O.; Keiichi, O.; Takashi, O.; Takafumi, I. PV System with reconnection to improve output under nonuniform illumination. IEEE J. Photovolt. 2012, 2, 341–347. [Google Scholar]
  26. Storey, J.; Wilson, P.; Bagnall, D. Improved optimization strategy for irradiance equalization in dynamic photovoltaic arrays. IEEE Trans. Power Electron. 2013, 28, 2946–2956. [Google Scholar] [CrossRef]
  27. Sanseverino, E.R.; Ngoc, T.N.; Cardinale, M.; Li Vigni, V.; Musso, D.; Romano, P.; Viola, F. Dynamic programming and Munkres algorithm for optimal photovoltaic arrays reconfiguration. Sol. Energy 2015, 122, 347–358. [Google Scholar] [CrossRef]
  28. La Manna, D.; Li Vigni, V.; Sanseverino, E.R.; Di Dio, V.; Romano, P. Reconfigurable electrical interconnection strategies for photovoltaic arrays: A review. Renew. Sustain. Energy Rev. 2014, 33, 412–426. [Google Scholar] [CrossRef]
  29. Balato, M.; Costanzo, L.; Vitelli, M. Reconfiguration of PV modules: A tool to get the best compromise between maximization of the extracted power and minimization of localized heating phenomena. Sol. Energy 2016, 138, 105–118. [Google Scholar] [CrossRef]
  30. Balato, M.; Costanzo, L.; Vitelli, M. Series–Parallel PV array re-configuration: Maximization of the extraction of energy and much more. Appl. Energy 2015, 159, 145–160. [Google Scholar] [CrossRef]
  31. Balato, M.; Costanzo, L.; Vitelli, M. Multi-objective optimization of PV arrays performances by means of the dynamical reconfiguration of PV modules connections. In Proceedings of the 2015 International Conference on Renewable Energy Research and Applications (ICRERA), Palermo, Italy, 22–25 November 2015; Volume 7418685, pp. 1646–1650. [Google Scholar]
  32. Femia, N.; Lis, G.; Petrone, G.; Spagnuolo, G.; Vitelli, M. Distributed maximum power point tracking of photovoltaic arrays: Novel approach and system analysis. IEEE Trans. Ind. Electron. 2008, 55, 2610–2621. [Google Scholar] [CrossRef] [Green Version]
  33. Roman, E.; Alonso, R.; Ibanez, P.; Elorduizapatarietxe, S.; Goitia, D. Intelligent PV module for grid-connected PV systems. IEEE Trans. Ind. Electron. 2006, 53, 1066–1073. [Google Scholar] [CrossRef]
  34. Balato, M.; Costanzo, L.; Marino, P.; Rubino, G.; Rubino, L.; Vitelli, M. Modified TEODI MPPT technique: Theoretical analysis and experimental validation in uniform and mismatching conditions. IEEE J. Photovolt. 2017, 7, 604–613. [Google Scholar] [CrossRef]
  35. Ramos-Paja, C.A.; Gira, R.; Arango-Zuluaga, E.I. Distributed maximum power point tracking in photovoltaic applications: Active bypass DC/DC converter. Rev. Fac. Ing. Univ. Antioq. 2012, 64, 32–44. [Google Scholar]
  36. Balato, M.; Vitelli, M.; Femia, N.; Petrone, G.; Spagnuolo, G. Factors limiting the efficiency of DMPPT in PV applications. In Proceedings of the 2011 International Conference on Clean Electrical Power (ICCEP), Ischia, Italy, 14–16 June 2011; pp. 604–608. [Google Scholar] [CrossRef]
  37. Manganiello, P.; Balato, M.; Vitelli, M. A survey on mismatching and aging of PV modules: The closed loop. IEEE Trans. Ind. Electron. 2015, 62, 7276–7286. [Google Scholar] [CrossRef]
  38. SolarWorld. Sunmodule Plus SW 220/225/230/235. 2010. Available online: http://fotovoltaico.etaflorence.it/SunmodulePlus220_235polyit.PDF (accessed on 4 March 2020).
Figure 1. Central Maximum Power Point Tracking (CMPPT) architecture in grid-connected photovoltaic (PV) applications.
Figure 1. Central Maximum Power Point Tracking (CMPPT) architecture in grid-connected photovoltaic (PV) applications.
Energies 13 01511 g001
Figure 2. Distributed maximum power point tracking (DMPPT) architecture in grid-connected PV applications.
Figure 2. Distributed maximum power point tracking (DMPPT) architecture in grid-connected PV applications.
Energies 13 01511 g002
Figure 3. PV module current versus voltage (I-V) characteristic and boost-based self-controlled PV module (SCPVM) I-V characteristic.
Figure 3. PV module current versus voltage (I-V) characteristic and boost-based self-controlled PV module (SCPVM) I-V characteristic.
Energies 13 01511 g003
Figure 4. Power versus current (P-I) characteristic of boost-based SCPVM.
Figure 4. Power versus current (P-I) characteristic of boost-based SCPVM.
Energies 13 01511 g004
Figure 5. System under test.
Figure 5. System under test.
Energies 13 01511 g005
Figure 6. Constellation of all possible mismatching scenarios.
Figure 6. Constellation of all possible mismatching scenarios.
Energies 13 01511 g006
Figure 7. I-V characteristics of individual SCPVMs (Case A).
Figure 7. I-V characteristics of individual SCPVMs (Case A).
Energies 13 01511 g007
Figure 8. P-I characteristic of the series connection of four SCPVMs.
Figure 8. P-I characteristic of the series connection of four SCPVMs.
Energies 13 01511 g008
Figure 9. Power-versus-voltage (P-V) characteristic of the series connection of four SCPVMs.
Figure 9. Power-versus-voltage (P-V) characteristic of the series connection of four SCPVMs.
Energies 13 01511 g009
Figure 10. I-V characteristics of individual SCPVMs (Case B).
Figure 10. I-V characteristics of individual SCPVMs (Case B).
Energies 13 01511 g010
Figure 11. P-I characteristic of the series connection of four SCPVMs.
Figure 11. P-I characteristic of the series connection of four SCPVMs.
Energies 13 01511 g011
Figure 12. P-V characteristic of the series connection of four SCPVMs.
Figure 12. P-V characteristic of the series connection of four SCPVMs.
Energies 13 01511 g012
Figure 13. Block scheme of grid-connected PV system with the joint adoption of DMPPT and reconfiguration approaches.
Figure 13. Block scheme of grid-connected PV system with the joint adoption of DMPPT and reconfiguration approaches.
Energies 13 01511 g013
Figure 14. Optimal current intervals (Case I).
Figure 14. Optimal current intervals (Case I).
Energies 13 01511 g014
Figure 15. P-V characteristics (CASE I).
Figure 15. P-V characteristics (CASE I).
Energies 13 01511 g015
Figure 16. P-V characteristics (CASE II).
Figure 16. P-V characteristics (CASE II).
Energies 13 01511 g016
Table 1. Electrical characteristics of the SCPVMs.
Table 1. Electrical characteristics of the SCPVMs.
Open Circuit Voltage (Standard Test Conditions)VOC_STC = 37.3 V
Short Circuit Current (Standard Test Conditions)ISC_STC = 8.13 A
Maximum Power Point Voltage (Standard Test Conditions)VMPP_STC = 29.7 V
Maximum Power Point Current (Standard Test Conditions)IMPP_STC = 7.59 A
Maximum Allowed Voltage (Standard Test Conditions)VDS MAX = 60 V
Table 2. Input inverter range.
Table 2. Input inverter range.
Minimum Inverter Voltage60 V
Maximum Inverter Voltage240 V
Table 3. Subsets associated with relative complement of i-th optimal cluster (RCOC1).
Table 3. Subsets associated with relative complement of i-th optimal cluster (RCOC1).
DescriptionGroupOptimal Current Range
Subset 1SCPVM2//3[0.93, 1.88] A
Subset 2SCPVM2//4[0.74, 1.5] A
Subset 3SCPVM3//4[0.55, 1.12] A
Subset 4SCPVM2//3//4[1.11, 2.25] A
Table 4. Best clusters (BCs) and clusters of excluded (CEs) (Case I).
Table 4. Best clusters (BCs) and clusters of excluded (CEs) (Case I).
RowBCCEPav
1SCPVM1;
SCPVM2//3//4
ϕ176.5 W
2SCPVM2;
SCPVM3
SCPVM1;
SCPVM4
56.25 W
3SCPVM3;
SCPVM4
SCPVM1;
SCPVM2
33.75 W
4SCPVM4SCPVM1;
SCPVM2;
SCPVM3
11.25 W
Table 5. BCs and CEs (Case II).
Table 5. BCs and CEs (Case II).
RowBCCEPav
1SCPVM1;
SCPVM2;
SCPVM3//4
ϕ218 W
2SCPVM2;
SCPVM1//3//4
ϕ218 W
3SCPVM3;
SCPVM4
SCPVM1;
SCPVM2
56.25 W
4SCPVM4SCPVM1;
SCPVM2;
SCPVM3
22.5 W

Share and Cite

MDPI and ACS Style

Balato, M.; Petrarca, C. The Impact of Reconfiguration on the Energy Performance of the Distributed Maximum Power Point Tracking Approach in PV Plants. Energies 2020, 13, 1511. https://doi.org/10.3390/en13061511

AMA Style

Balato M, Petrarca C. The Impact of Reconfiguration on the Energy Performance of the Distributed Maximum Power Point Tracking Approach in PV Plants. Energies. 2020; 13(6):1511. https://doi.org/10.3390/en13061511

Chicago/Turabian Style

Balato, Marco, and Carlo Petrarca. 2020. "The Impact of Reconfiguration on the Energy Performance of the Distributed Maximum Power Point Tracking Approach in PV Plants" Energies 13, no. 6: 1511. https://doi.org/10.3390/en13061511

APA Style

Balato, M., & Petrarca, C. (2020). The Impact of Reconfiguration on the Energy Performance of the Distributed Maximum Power Point Tracking Approach in PV Plants. Energies, 13(6), 1511. https://doi.org/10.3390/en13061511

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop