1. Introduction
Sustainable development is a global concern due to the harmful effects of global warming, which is mainly caused by fossil energy sources in the transportation and electricity sectors [
1,
2]. In the case of transportation, in recent years, the transition from fossil fuel-based methods to electrical mobility has become a reality as more and more electric vehicles (EVs) are seen on all roads worldwide [
3,
4]. However, this change must be coordinated with electricity production, given that the growing demand for power to charge EV batteries must be met by renewable and clean energy systems in order to effectively reduce the CO
footprint in the atmosphere [
5,
6]. Otherwise, if electrical systems continue using fossil fuels, atmospheric pollution by greenhouse gas emissions will only move its focus from transportation systems to energy production without any real mitigation [
7]. One of the most promising alternatives to effectively reduce the CO
footprint is the massive integration of renewable energy resources in electrical networks at any voltage level, typically in the form of wind and solar power technologies, as they are mature and require reduced investment and operating costs while offering a wide array of possibilities regarding scalability from low- to high-voltage levels [
8,
9].
Electrical networks, especially distribution systems, have undergone a massive integration of distributed energy resources [
10,
11], which, even though they contribute to the sustainable development goals, pose significant challenges for utility companies and regulatory entities, since their operation requires new methodologies and remunerations [
12,
13]. The latter is needed to ensure the economic feasibility of renewable energy projects and guarantee quality, security, reliability, and efficiency in the electricity service for all end users [
14].
Electrical distribution networks are one of the main links in the electricity service chain, as they directly connect large-scale power systems located at substations with medium- and low-voltage consumers in rural or urban areas [
15]. These grids were initially designed while considering the end users’ passive behavior. Here, the energy flow typically goes from the primary substations to the consumers in an unidirectional way [
16]. However, the massive integration of renewable energy resources has transformed these passive grids into active networks [
17], which poses new challenges for their planning, operation, coordination, and control [
18].
Considering the new paradigm of active distribution networks, this research seeks to study a class of distributed energy resources that can be connected to these grids, which is known as a photovoltaic distribution static compensator (PV-STATCOM) [
19,
20,
21] and can compensate active and reactive power in electrical networks in order to improve technical, economic, and environmental indices [
14,
22,
23]. The main characteristic of PV-STATCOMs is that they combine the use of clean energy sources to reduce CO
emissions and fossil fuel energy production costs while improving grid efficiency (i.e., power loss reductions and voltage profile improvements).
To design efficient operation methodologies for PV-STATCOMs, it is necessary to deal with the solution of the exact nonlinear programming model that represents their operation for a given period, which typically corresponds to a day-ahead scheduling scenario [
24]. However, the solution of this exact model is not an easy task due to its non-convexities [
25,
26]. Therefore, this research aims to propose a new convex optimization model in order to determine the day-ahead dispatch of multiple PV-STATCOMs interconnected with medium-voltage distribution networks while considering technical and economic objective functions.
The effective integration, operation, and control of PV-STATCOMs in electrical grids (transmission and distribution networks) have been widely explored in recent years. Some of the latest advances in this research area are discussed below.
The authors of [
19] presented the application of the hunter-prey-based algorithm to determine the optimal location and sizing of PV-STATCOMs in electrical distribution networks, aiming to minimize the total grid power losses and improve the grid voltage profiles. Classical IEEE 33- and 69-bus grids were used for numerical validations, which included a comparative analysis with the particle swarm optimizer, the golden search optimizer, the differential evolution approach, and the artificial rabbits algorithm, among others. Numerical results showed that the energy losses were reduced by more than 57%, and voltage profiles were improved by more than 42% in both test feeders.
In [
27], the authors proposed using PV-STATCOMs in medium-voltage distribution networks while considering a day-ahead operation scenario to improve grid voltage regulation and correct the power factor of a particular load application. The Bluewater Power Corporation in Sarnia, Canada, was used to validate the PV-STATCOM concept, considering dynamic active and reactive power compensation in a 10 kW PV system installed in its network.
The work by [
28] enhanced the operation of an electrical distribution network under steady-state and fault conditions. In the steady-state scenario, the voltage profile was optimally regulated using dynamic active and reactive power compensation. In contrast, for the faulted operation, possible over-voltages caused by asymmetrical faults were mitigated. A 10 MW PV generation system connected to a utility company in Ontario, Canada, was simulated in the PSCAD software in order to confirm the new possible ancillary services provided by PV-STATCOMs with satisfactory numerical validations.
In [
29], the authors proposed the optimal installation and sizing of PV-STATCOMs in medium-voltage distribution networks to provide ancillary services. The artificial rabbits optimization algorithm was employed as an optimization technique. Here, the objective was to reduce the total grid power losses and improve the voltage profile performance. The IEEE 33-bus grid was used for numerical validation, and a comparison of the results with those of the differential evolution and the golden search algorithms demonstrated the effectiveness of the proposed optimization approach. The authors of this research reported a reduction of about 54.36% in daily energy losses and improvements of about 43.29% in the voltage profiles’ behavior.
The study by [
30] presented a multi-objective analysis considering PV-STATCOMs in transmission networks. The main goals were to simultaneously minimize the active and reactive power losses, improve grid voltage profiles, and reduce the total energy production costs. The IEEE 30-bus network was used as a test feeder. As a solution methodology, a combination of the optimal power flow formulation and the particle swarm optimization technique was implemented.
Additionally, optimization methodologies for the efficient integration of PV-STATCOMs in electrical networks include the gorilla troop optimizer [
31], the gray wolf optimizer [
32], the modified bat algorithm [
33], the modified ant lion optimizer [
34], and the fuzzy-lightning search algorithm [
35], among others.
Table 1 summarizes the main contributions made regarding PV-STATCOMs in electrical distribution networks in recent years.
The main characteristic highlighted by the above-presented literature review (see
Table 1) is that most optimization algorithms belong to the family of combinatorial optimization (i.e., metaheuristics). In addition, most objective functions focus on minimizing the total grid energy losses and improving voltage profiles. This work found that more research is required concerning the efficient day-ahead scheduling of PV-STATCOM applications for distribution grids, especially in the case of convex optimization, since no works were found on this topic, which constitutes a research opportunity to which this document aims to contribute.
In light of the above, the main contributions of this research are summarized below:
- i.
The convex reformulation of the problem regarding the efficient operation of PV-STATCOMs in medium-voltage distribution networks via second-order cone programming in the complex variable domain. The product between two complex voltages was transformed using its hyperbolic equivalent, which allowed relaxing it as a convex cone equivalent formulation.
- ii.
The evaluation of four different simulation scenarios, including a benchmark case without PV-STATCOM penetration and cases with unity, zero, and variable power factors. These simulations were conducted in the IEEE 33- and 69-bus grids while considering three possible objective functions: the minimization of grid energy losses, grid energy purchasing costs, and average voltage deviation. The results showed the positive effects of dynamically scheduling active and reactive power injections in PV-STATCOMs in order to improve technical or economic grid indices.
In the scope of this research, it is essential to mention that: (i) the active and reactive power demand curves, as well as the solar generation availability, correspond to inputs of our research, which were provided by the distribution company in the area of influence of the electrical distribution grid under analysis; and (ii) a previous planning stage defined the sizes and locations of the PV-STATCOMs (this research only focuses on their efficient daily operation while considering different simulation scenarios).
This work is structured as follows.
Section 2 presents the general nonlinear programming formulation for the problem regarding the efficient operation of PV-STATCOMs in electrical distribution networks using a complex-domain representation.
Section 3 defines the general convexification approach in the complex domain using the hyperbolic equivalent of the product between two variables, which allows obtaining a second-order cone equivalent formulation for the studied problem.
Section 4 shows the main characteristics of the IEEE 33- and 69-bus grids and the characterization of the PV-STATCOMs (i.e., their sizes and locations).
Section 5 presents the main numerical results obtained while considering four different simulation cases (i.e., operation with unity, zero, and variable power factors in the PV-STATCOMs, in addition to a benchmark case where the PV-STATCOMs were off). Finally,
Section 6 describes the main concluding remarks derived from this work, as well as some possible future works.
3. Convexification Proposal
This research proposes a conic approximation aimed at obtaining a convex approximation of the nonlinear programming model Equations (
1)–(
8). The main idea of conic programming is to approximate some hyperbolic constraints into equivalent cones [
40], which allows reaching a second-order cone programming equivalent that represents the studied problem [
41].
To obtain the convex equivalent, the following auxiliary variables are defined:
Note that Equation (
10) is multiplied on both sides by
. Thus, the following set of results is reached:
where the right-hand side of Equation (
13) can be transformed using the hyperbolic equivalent of the product between two real variables, as defined in Equation (
15).
It is worth mentioning that constraint Equation (
14) is still non-convex, as the only set of solutions is contained in the circle that fulfills the equality condition. However, as recommended by the authors of [
39], this constraint can be convexified by relaxing the equality condition to a lower, equal one, as presented below.
Now, considering definitions in Equations (
10)–(
12), the nonlinear optimization model Equations (
1)–(
11) can be represented as a second-order cone approximated model:
Subject to:
where
is a constant parameter that defines the voltage magnitude at the substation as a real constant.
Note that, as previously mentioned, the approximation of the objective function Equation (
2) regarding the average voltage deviation of the system is non-convex due to the presence of two embedded norms. Therefore, in Equation (
17), a convex approximation of this function is proposed. To illustrate the convexification effect, consider a system with two voltage variables and one period (
and
), which implies that Equation (
2) takes the form
and Equation (
17) can be defined as
.
Figure 1 shows the 3D plot of both functions. The scale was exaggerated to show that
is non-convex and
is convex.
It is worth mentioning that the range of application of the convex approximation for the voltage deviation function Equation (
2) using the approximation in Equation (17) lies between the minimum and maximum voltage regulation bounds, which, in medium-voltage networks, implies that variables
x and
y will be contained within the interval between
and
of the nominal voltage, i.e.,
and
using the per-unit representation.
A flowchart of the day-ahead scheduling of PV-STATCOMs using the proposed convex model is illustrated in Algorithm 1.
Algorithm 1: SOC relaxation for day-ahead scheduling of PV-STATCOMs. |
|
6. Conclusions
An efficient day-ahead scheduling strategy for operating PV-STATCOMs in medium-voltage distribution networks via convex optimization was proposed in this study. The exact nonlinear programming model representing this problem was transformed using a second-order cone approximation in the complex domain. This approximation was performed by transforming the product of two complex variables into its equivalent hyperbolic representation, which was then relaxed to obtain a convex cone. Four simulation scenarios, including a benchmark case, were considered to test the impact of optimal PV-STATCOM scheduling on electrical networks. These scenarios assumed operations with unity, zero, and variable power factors. Numerical simulations in the IEEE 33- and 69-bus grids confirmed that:
- i.
The use of PV-STATCOMs with zero or variable power factors had a significant impact on the average voltage profile behavior. For both test feeders, the expected improvements were greater than (IEEE 33-bus grid) and (IEEE 69-bus grid) when considering a zero power factor (as shown in S2). Furthermore, when a variable power factor was employed (S4), the improvements reached 80% and 67% for the each grid.
- ii.
The most significant benefit of using variable active power injection with PV-STATCOMs was observed in the form of a substantial decrease in grid energy purchasing costs at the substation terminals. This reduction was achieved by injecting active power from renewable energy sources, which directly resulted in a decrease in the total power injection at the substation terminals. For both test grids in S3 and S4, the reductions in energy purchasing costs exceeded when PV-STATCOMs were optimally scheduled while considering both unity and variable power factors.
- iii.
In the case of daily energy losses minimization, all operating scenarios exhibited significant reductions. For the IEEE 33-bus grid, the minimum and maximum reductions in the total grid power losses were between and (as could be seen in S2 and S4), whereas, for the IEEE 69-bus grid, these were and .
As a general conclusion based on the numerical results, using PV-STATCOMs with a zero power factor (i.e., purely dynamic reactive power compensation) is a suitable method for minimizing grid power losses or improving grid voltage profiles. However, in the case of energy purchasing costs minimization, the only contribution of this type of operation is associated with a reduction in the costs of energy losses, which is a small contribution when compared to the aggregated energy consumption costs in all of the demand nodes.
As for future work, the following studies can be conducted: (i) combining the efficient operation of PV-STATCOMs with battery energy storage systems in order to obtain an efficient scheduling methodology that allows providing active power in periods where renewable generation resources are not available; (ii) transforming the proposed second-order cone optimization model into a mixed-integer convex equivalent for simultaneously determining the daily scheduling and optimal placement and sizing of PV-STATCOMs; and (iii) comparing the proposed convex methodology against combinatorial approaches or semi-definite programming models in meshed distribution networks.