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Article

The Optimization of the Location and Capacity of Reactive Power Generation Units, Using a Hybrid Genetic Algorithm Incorporated by the Bus Impedance Power-Flow Calculation Method

Electrical Engineering, Inha University, Incheon 22212, Korea
Appl. Sci. 2020, 10(3), 1034; https://doi.org/10.3390/app10031034
Submission received: 10 November 2019 / Revised: 19 December 2019 / Accepted: 2 January 2020 / Published: 4 February 2020

Abstract

:
Dynamic and static reactive power resources have become an important means of maintaining the stability and reliability of power system networks. For example, if reactive power is not appropriately compensated for in transmission and distribution systems, the receiving end voltage may fall dramatically, or the load voltage may increase to a level that trips protection devices. However, none of the previous optimal power-flow studies for reactive power generation (RPG) units have optimized the location and capacity of RPG units by the bus impedance matrix power-flow calculation method. Thus, this study proposes a genetic algorithm that optimizes the location and capacity of RPG units, which is implemented by MATLAB. In addition, this study enhances the algorithm by incorporating bus impedance power-flow calculation method into the algorithm. The proposed hybrid algorithm is shown to be valid when applied to well-known IEEE test systems.

1. Introduction

Reactive power plays an important role in maintaining the stability and reliability of transmission and distribution power systems. As a consequence, various dynamic (synchronous generators, synchronous condensers, and solid-state devices) and static reactive power sources (capacitive and inductive compensators, as well as inverter-based distributed generators) have been deployed over the past few decades [1]. In particular, reactive power generation (RPG) units have been deployed at the optimal location for voltage control in transmission and distribution systems. If reactive power is not appropriately compensated, receiving ends may experience voltage variations outside ±5% of the rated voltage, possibly leading to automatic tripping of protection devices and low power factors.
Optimally allocating RPG units is one of the optimal power flow (OPF) problems, and the solution has been sought by using meta-heuristic, search, and optimization algorithms. The former includes annealing and fuzzy clustering [2], the evolution approach [3], genetic algorithms (GAs) [4], krill herd algorithms [5], particle swarm optimization (PSO) [6], seeker algorithms [7], and whale optimization [8]. The search algorithms contain backtracking [9], cuckoo [10], differential [11], direct [12], and harmony search methods [13]. The optimization algorithms (as conventional methods) involve decomposition methods [1], dynamic programming [14], gradient-based optimization [15], interior-point methods [16], linear approximation [17], mixed integer programming [18,19], quadratic programming [20], teaching-based learning [21], and decision-making algorithms [22].
As renewable energy deployments increase, the optimal allocation of RPG units should take photovoltaic (PV) systems [23], wind turbine generators (WTGs) [24,25], and microgrids [26] into account. For example, the effect of optimally allocated distributed generation (DG) units on energy savings [27], generation resource allocation [28], distribution networks [29], peak load reduction [30], reliability [31], voltage and losses [32], and Volt/Var control and management [33] have been examined. In these studies, the optimally allocated DG units could improve the voltage profile, reduce peak load and energy losses of distribution networks, and improve reliability.
The GA approach of solving an optimization problem can find more desirable solutions to the objective function, as a result of the operations of mutation and crossover [34]. The GA can be also programmed relatively more easily than other algorithms. Thus, an OPF problem for DG (with the ability to control Volt/Var) has been solved by the GA [35]. That study optimized DG units in the IEEE 13- and 34-bus test feeders, using the GA that minimizes variations of each bus voltage and the installation costs of DG units. Static Var compensators (SVCs) are optimally allocated to reduce power losses and voltage deviation using the GA [36]. Recently, an RPG optimization problem in the IEEE 14- and 57-bus test systems as input with interval uncertainties (i.e., real power losses) was solved by a GA [4]. An RPG optimization problem with DC transmission links and converters for high-voltage direct current (HVDC) systems added to the constraints was also solved by a GA [37]. In addition, an RPG optimization problem for a system that included PV, WTGs, converter models, and energy storage systems was solved by a GA [38]. However, neither of the previous studies optimized the location and capacity of RPG units by the bus impedance matrix power-flow calculation method with the constraint of varying demand. The bus impedance matrix method, which is useful for short-circuit studies, is usually not used, because it is difficult to apply to tap-changing transformers. Thus, an objective of this study is to enhance the bus impedance matrix power-flow method to model tap-changing transformers. The second objective is to present a hybrid GA that optimizes the location and capacity of RPG units using the proposed power-flow calculation method. The proposed GA implements scaled roulette wheel selection, single-point crossover, and single-position uniform mutation operation. The proposed hybrid GA is validated by optimizing the RPG units in the IEEE 14-, 30-, and 57-bus test systems. Since the test feeders include common power-flow analysis components (slack, P–Q, and P–V buses, as well as generators, tap-changing transformers, constant power loads, capacitor banks, and lines), the proposed GA could improve the performance of GAs when applied to other test feeders.

1.1. Contributions and Impacts of This Study

The important results of this study are as follows:
(1)
A GA that optimizes the location and capacity of RPG units with an objective function (which minimizes variation in voltage, the installation cost of RPG units, and losses), equal and unequal constraints, and varying demands is proposed.
(2)
The proposed GA has an integrated bus impedance matrix power flow calculation method that models tap-changing transformers.
(3)
Case studies performed with IEEE 14-, 30-, and 57-bus test systems demonstrate the validity of the proposed GA.
Since the case studies included buses, lines, loads, generators, shunt capacitors, tap-changing transformers, P–Q, P–V, and slack buses, the results show that the proposed power-flow calculation method can be used to analyze many different power system configurations. This study integrates the bus impedance power-flow calculation into a GA. As a result, the proposed hybrid GA can be also used for operating, planning, or upgrading transmission systems by optimally allocating RPG units. In particular, PV and WTGs able to control reactive power or with the capability of Volt/Var control management can be optimally allocated by the proposed hybrid GA.

1.2. Structure of This Paper

This paper is organized as follows: Section 2 discusses the bus impedance power flow method, Section 3 contains the proposed GA, Section 4 presents case studies, and Section 5 summarizes the paper’s major conclusions.

2. Bus Impedance Power Flow Method

The Newton–Raphson and fast-decoupled power-flow calculation methods that use the admittance matrix require the inverse of the Jacobian matrix. Such an inverse of the matrix can take a long time for a system with thousands or more nodes. Thus, this study proposes a power-flow calculation method that does not require the inverse of the Jacobian matrix, which is the main benefit of the proposed method. The proposed power-flow method evaluates the fitness of population members of the GA when optimally allocating RPG units. The detailed implementation of the GA is presented in the next section.

2.1. Bus Impedance Matrix

Figure 1 shows a power system network with n nodes. The n × n impedance matrix (Zbus) can represent the system as driving-point impedances (diagonal elements) and transfer impedances (off-diagonal elements). This study uses the well-known four rules that build the Zbus matrix [39].

2.2. Iterative Current Injection Method

The iterative bus impedance power-flow calculation method was originally presented in [40]. The Zbus matrix power-flow calculation method uses the following matrix form of Ohm’s law for current that flows in each node and voltage induced to each node:
V ( k ) = Z b u s I ( k ) .
In Figure 2, the currents that flow to the constant power load are calculated by
I load ( k ) = ( S load V ( k ) ) * .
The current that flow to the constant current load are calculated by
I load , I ( k ) = | ( S load V nom ) * | ( δ V ( k ) δ s ) .
The currents that flow to the constant impedance load are calculated by
I load , z ( k ) = V ( k ) ( V nom 2 S load * ) .
The currents that flow to the ground through parallel elements are also calculated by
I parallel ( k ) = Y parallel V ( k ) .
The currents flowing to loads and the ground are added by
I ( k ) = I load ( k ) + I parallel ( k ) + I line ( k ) .
The currents are also iteratively used in Equation (1). However, the currents in Equation (6) are estimated from the initial nominal voltage. That is, they do not take the voltage variation caused by loads, generators, shunt capacitors, and transformers into account. Therefore, Equations (1) and (6) are repeated until the following convergence:
Δ V ( k ) = V ( k ) V ( k 1 ) .

2.3. Tap-Changing Transformer Model

The bus impedance power-flow calculation method, originally presented in [40], is usually not used in power-flow studies, or the method is used in analyzing a system without transformers because the method cannot analyze tap-changing transformers. However, most transmission and distribution systems include tap-changing transformers to change the secondary-side voltage. Therefore, such a transformer should not be ignored in a power-flow calculation algorithm.
If a tap-changer with a turns ratio of a is on the low-voltage (or secondary) side in Figure 3, the admittance matrix, Ybus, is
[ I m I n ] = [ Y e q + Y m 0 a Y e q a Y e q a 2 ( Y e q + Y e x ) + Y n 0 ] [ V m V n ] = Y bus V .
where Ym0 and Yn0 are the line capacitances beside the transformer.
To model the tap-changing transformer depicted in Figure 3 in the proposed method, this study proposes decomposing the transformer model into two parts: the series and parallel elements in Figure 4.
I m = a Y e q ( V m V n ) + ( ( 1 a ) Y e q + Y m 0 ) V m ,
I n = a Y e q ( V m V n ) ( ( a 2 a ) Y e q + a 2 Y e x + Y n 0 ) V n .
The proposed method builds the Zbus matrix of the series elements in Figure 4. The matrix also includes lines without transformers. The final Zbus matrix is used in (1) during iterations. Additionally, the proposed method builds the Ybus matrix of the parallel elements in Figure 4, calculates I m 0 and I n 0 by (5), and adds them to Equation (6). As a result of this compensation ( I m 0 and I n 0 ), the proposed method can solve the problem of applying the conventional bus impedance, matrix power-flow calculation method to tap-changing transformers.

3. Genetic Algorithm

Optimal allocation of the capacity and location of RPG units can be treated as an optimization problem. Thus, this study presents a GA that includes the proposed power-flow calculation method. The GA finds one or more RPG units and their capacities to minimize the following objective function.

3.1. Objective Function

The proposed GA defines, as its objective function, the minimizing of the weighted sum of three parameters: variation in voltage to a set value (e.g., 1.0 p.u.), the installation cost of RPG units, and total losses.
C V = h = 1 H i = 1 N | V s e t V i , h ( k ) | ,
C R P G = i = 1 R N R P G , i C g e n , i ,
C L o s s = h = 1 H i = 1 B | S L o s s , i , h | ,
O b j e c t i v e   =   Minimize   ( W V C V C V , m a x + W R P G C R P G C R P G , m a x + W L o s s C L o s s C L o s s , m a x ) ,
subject to
V m i n ( k ) V i ( k ) V m a x ( k )   for   i =   1 ,   ,   N
T a p m i n T a p i T a p m a x   for   i =   1 ,   ,   T
Q R P G , m i n , i ( k ) Q R P G , i ( k ) Q R P G , m a x , i ( k )   for   i =   1 ,   ,   R

3.2. Optimization Variables

To optimally allocate the capacity and location of RPG units, the following optimization variables are defined.
(1)
Capacity: the capacity of an RPG unit is optimally determined with the following constraint.
S min , i S i S max , i   for   i =   1 ,   ,   R
(2)
Location: RPG units can be connected to any bus, except the slack bus.
(3)
Demand: the optimization of RPG units should take continuously varying demands into account during the optimization period. Thus, this study collected the typical load profile data in Figure 5 from [41]. The data show a peak demand of 1.0 p.u. at 15:00, and a load factor of 0.68. These data are used as input for GA.

3.3. Genetic Algorithm

(1)
Initialization: the GA initializes offspring members of the first generation with uniform random numbers. The offspring, O, is defined by
O = { [ x i , y i ] | x i A , 0 y i S max }   for   i   =   1 ,   ,   M
where A = { ai | ai is a bus, excluding a slack bus } and Smax represents maximum capacity.
(2)
Fitness and reproduction: the objective function (14) calculates a fitness score for each offspring member. A normalized geometric ranking selection scheme is used [42]. A lower geometric rank (Ri) means a lower objective function value. Each slot size of a scaled roulette wheel is calculated by
P i = p ( 1 p ) R i 1 1 ( 1 p ) M   for   i   =   1 ,   ,   M ,
where p is the probability that produces the fittest offspring, and Pi is the probability of the slot size of the scaled roulette wheel.
Subsequently, the GA distributes random numbers to the scaled roulette wheel’s slots, according to slot size (probability), and reproduces offspring members according to the number of random numbers that belong to each slot. This means that offspring with higher fitness in their objective function have a higher selection probability.
(3)
Crossover and mutation: an arithmetic crossover operation that combines two offsprings (Oi and Oj) is performed in Figure 6, so it produces new offsprings: Oi and Oj. To avoid convergence to a local minimum, a new offspring member, Ok, is also generated by single-position uniform mutation in Figure 7.
Figure 8 shows the detailed workflow of the proposed algorithms. The proposed GA calculates the probability of each slot of the scaled roulette wheel, generates random numbers on the wheel, counts the number of random numbers that belong to each slot, and reproduces offspring members. The detailed parameters for the proposed GA are presented in the following case studies.

4. Case Studies

4.1. Validation of Power-Flow Calculation Method

To verify the proposed power-flow calculation algorithm, this case study calculates the power flow of the IEEE 14-bus system in Figure 9 [43,44]. The system includes 14 buses, 1 slack bus (1.0∠0°), 4 P–V buses (a magnitude of voltage of 1.0 p.u.), 11 loads (in total: P + jQ = 259 + j73.5 MVA), 1 shunt capacitor (j0.19 p.u.), 1 generator (with 40 MW), and three tap-changing transformers (buses 4–7, 4–9, and 5–6). The other detailed system data are available in [43,44].
The results produced by the proposed bus impedance, Newton–Raphson, Gauss–Seidel, and decoupled power-flow calculation methods implemented in MATLAB show consistency with one another. The detailed voltage profile data are presented in the Appendix A. For example, a tap-changing transformer between buses 4 and 7 (with a transformer turns ratio of 0.978) modeled by the proposed power-flow method increases the primary side voltage of 0.95433∠−11.645° p.u. to the secondary side voltage of 0.98343∠−15.117° p.u. Figure 10 presents a convergence curve of the voltage of bus 7, or the secondary side voltage of the tap-changing transformer, which reaches 0.98343∠−15.117° p.u.
Figure 11 shows the IEEE 30-bus test system [44,45]. The system includes a slack bus, five P–V buses, two shunt capacitors, twenty-one loads, and four tap-changing transformers. The detailed system data are available in [44,45]. Table A1 and Table A2, presented in the Appendix A compare the power-flow calculation results determined by the proposed method to those produced by the Newton–Raphson, Gauss–Seidel, and decoupled power-flow calculation methods implemented in MATLAB. The results show good consistency with each other. As the third validation, Figure 12 shows the power-flow calculation results of the IEEE 57-bus test system, determined by the proposed method, to those produced by the Newton–Raphson and Gauss–Seidel methods. The detailed system data are available in [44,46]. The results show consistency with each other.
Since the test systems contains typical transmission system elements (i.e., loads, slack, P–V, P–Q buses, shunt capacitors, generators, and tap-changing transformers), the proposed power-flow method can be integrated into the proposed GA.

4.2. Validation of the Genetic Algorithm

To find the optimal location and capacity of RPG units, this case study was run with the following assumptions:
(1)
The maximum capacity of an RPG unit is 100% of the base MVA of the system (i.e., 100 MVA);
(2)
RPG units can be connected to all buses except the slack bus;
(3)
The weighting factors in the objective function are equal;
(4)
The nominal voltage of the slack and P–V buses is set to 1∠0° p.u.
Table 1 presents the parameters of the GA. The parameters are determined by trial and error optimization [34,47,48,49]. To validate the proposed GA implemented in MATLAB, this case study was configured to optimally allocate RPG units in the IEEE 14- and 30-bus systems [43,44,45,46].

4.2.1. IEEE 30-Bus System

As the first case study, this study optimally allocates RPG units in the IEEE 30-bus system in Figure 11. The proposed hybrid GA optimally allocates nine RPG units, with their total capacity of 183 MVA (47 MVA on bus 5, 32 MVA on bus 7, 56 MVA on bus 8, 7 MVA on bus 13, 11 MVA on bus 15, 5 MVA on bus 19, 15 MVA on bus 21, 5 MVA on bus 26, and 5 MVA on bus 30), at an objective function of 0.05939. To verify the ability of the proposed method to find an optimal solution, Figure 13 depicts the standard deviation of the objective function for offspring members over multiple generations. Since the variation converges to zero, the proposed GA determines the fittest single offspring member (i.e., a solution to the optimization problem). Figure 14 and Figure 15 examine the effect of optimally allocated RPG units in the IEEE 30-bus system on voltage magnitude (Figure 14) and losses (Figure 15). The PRG units optimally allocated by the proposed hybrid GA provide less variation in voltage than the case that is not optimized, and reduce losses.

4.2.2. IEEE 14-Bus System

This study optimizes the capacity and location of RPG units in the IEEE 14-bus system in Figure 9. For the IEEE 14-bus system, the proposed GA optimally allocates six RPG units, with a total capacity of 90 MVA (53 MVA in bus 3, 11 MVA in bus 7, 8 MVA in bus 10, 2 MVA bus 12, 7 MVA in bus 13, and 9 MVA in bus 14), in order to minimize variation in voltage, the installation cost of RPG units, and losses. Figure 16 depicts the objective function’s standard deviation for offspring members over multiple generations when the proposed GA finds a solution with an objective function of 0.07735. Since the variation converges to zero, the proposed GA determines the fitter single offspring member (i.e., a solution to the optimization problem). Figure 17 and Figure 18 present the effect of optimally allocated RPG units in the test system on voltage magnitude and losses. The PRG units optimally allocated by the proposed hybrid GA provide less variation in voltage than the case that is not optimized, and reduce losses.

5. Conclusions

The objective of this study was to propose a hybrid algorithm that can model tap-changing transformers and optimize the location and capacity of RPG units for systems having these transformers. To achieve this objective, the study proposed a hybrid GA that incorporates bus impedance power-flow calculation. The proposed hybrid algorithm successfully calculated power flow in the well-known IEEE test systems (i.e., IEEE 14-, 30-, and 57-bus systems), and optimized the location and capacity of RPG units in the IEEE 14- and 30-bus systems.
Since the IEEE test systems include various power system elements (e.g., loads, slack, P–V, P–Q buses, shunt capacitors, generators, and tap-changing transformers), the proposed power-flow method can calculate the power flow of a variety of system configurations. The proposed hybrid algorithm can be also used for operating, planning, or upgrading transmission systems by optimally adding RPG units. PV and WTGs able to control reactive power can be optimally allocated by the proposed hybrid GA. However, the proposed algorithm is based on per-phase analysis, because transmission systems are usually assumed to be balanced. The algorithm could be extended to three-phase systems in future work.

Funding

This work was funded by Inha University research grant number 60140-01. The APC was funded by Inha University.

Conflicts of Interest

None conflicts of interest.

Nomenclature

Abbreviations
DG: distributed generation
GA: genetic algorithm
HVDC: high-voltage direct current
OPF: optimal power flow
p.u.: per unit
PV: photovoltaic
RPG: reactive power generation
SVC: static Var compensator
WTG: wind turbine generator
Variables
A: { ai | ai is a bus, excluding a slack bus }
B: the number of branches
CLoss: cost function for branch losses
CRPG: cost function for reactive power generation installation
CV: cost function for voltage variation
CLoss,max, CRPG,max, and CV,max: worst case costs for losses, reactive power generator installation, and voltage variation
C g e n , i : generation cost of unit i in $/kW
δ V ( k ) : angle of the voltage at iteration k ( V ( k ) : | V ( k ) | δ V ( k ) )
δs: angle of the scheduled complex power (Sload: P+jQ:|S|∠δs)
H: total simulation period
I ( k ) : currents that flow in each node at iteration k
I line ( k ) : currents that flow in a line at iteration k
I load ( k ) : currents that flow to constant power loads in each node at iteration k
I load , I ( k ) : currents that flow to constant current loads in each node at iteration k
I load , Z ( k ) : currents that flow to constant impedance loads in each node at iteration k
Im and In: currents that flow in buses m and n
Iex: excitation current of a tap-changing transformer
I parallel ( k ) : currents that flow through parallel elements
N: the number of buses
M: the number of offspring members
NRPG,i: nameplate capacity of reactive power generator i
O: offspring member in a generation
Q R P G , i ( k ) : output of reactive power generator i at iteration k
Q R P G , m i n , i ( k ) and Q R P G , m a x , i ( k ) : minimum and maximum outputs of reactive power generator i at iteration k
p: probability that produces the fittest offspring
Pi: probability of the slot size of the scaled roulette wheel
R: the number of reactive power generators
Ri: geometric rank of offspring member i from 1 to M
Si: nameplate capacity of a reactive power generation unit i
Smin,i: minimum nameplate capacity of a reactive power generation unit i
Smax,i: maximum nameplate capacity of a reactive power generation unit i
SLoss,i,h: losses of transmission line (or branch) i at period h
Sload: complex power of loads connected to each node: P + jQ:|S|∠δs
T: the number of tap-changing transformers
Tapi: tap position of transformer i
Tapmin and Tapmax: minimum and maximum tap positions
Tapmin and Tapmax: minimum and maximum tap positions
V ( k ) : voltages induced in each node at iteration k
V i , h ( k ) : voltage (magnitude) of bus i at period h and iteration k
Vm and Vn: voltages of buses m and n
Vnom: magnitude of the nominal (or rated) voltage
Vset: set voltage magnitude of a reactive power generation unit
xi: location to which a reactive power generation unit can be connected
WLoss, WRPG, and WV: weighting factors for losses, reactive power generator installation cost, and voltage variation, respectively
Ybus: bus admittance matrix
Yeq: series admittance of a tap-changing transformer
Yex: excitation admittance of a tap-changing transformer
yi: capacity of a reactive power generation unit
Ym0 and Yn0: admittances of buses m and n connected the ground
Yparallel: admittance matrix of parallel elements connected to the ground
Zbus or Zbus: bus impedance matrix

Appendix A

Table A1 compares power-flow calculation results determined by the proposed Zbus method to those produced by the Newton–Raphson, Gauss–Seidel, and decoupled power-flow calculation methods implemented in MATLAB.
Table A1. Voltage profile of the IEEE 14-bus system (in p.u.).
Table A1. Voltage profile of the IEEE 14-bus system (in p.u.).
BusZbus MethodNewton–RaphsonGauss–SeidelDecoupled
11.00000∠0.000°1.00000∠0.000°1.00000∠0.000°1.00000∠0.000°
20.98681∠−5.706°0.98681∠−5.706°0.98681∠−5.706°0.98681∠−5.706°
30.96106∠−14.609°0.96106∠−14.609°0.96106∠−14.609°0.96106∠−14.609°
40.95433∠−11.645°0.95433∠−11.645°0.95433∠−11.645°0.95433∠−11.645°
50.95627∠−9.917°0.95627∠−9.917°0.95627∠−9.917°0.95627∠−9.917°
61.00000∠−16.203°1.00000∠−16.203°1.00000∠−16.203°1.00000∠−16.203°
70.98343∠−15.117°0.98343∠−15.117°0.98343∠−15.117°0.98343∠−15.117°
81.00000∠−15.117°1.00000∠−15.117°1.00000∠−15.117°1.00000∠−15.117°
90.97853∠−16.937°0.97853∠−16.937°0.97853∠−16.937°0.97853∠−16.937°
100.97431∠−17.135°0.97431∠−17.135°0.97431∠−17.135°0.97431∠−17.135°
110.98324∠−16.815°0.98324∠−16.815°0.98324∠−16.815°0.98324∠−16.815°
120.98359∠−17.183°0.98359∠−17.183°0.98359∠−17.183°0.98359∠−17.183°
130.97796∠−17.264°0.97796∠−17.264°0.97796∠−17.264°0.97796∠−17.264°
140.95883∠−18.242°0.95883∠−18.242°0.95883∠−18.242°0.95883∠−18.242°
Table A2. Voltage profile of the IEEE 30-bus system (in p.u.).
Table A2. Voltage profile of the IEEE 30-bus system (in p.u.).
Bus.Bus Type/TransformerZbus MethodNewton–RaphsonGauss–SeidelDecoupled
1Slack1.00000∠0.000°1.00000∠0.000°1.00000∠0.000°1.00000∠0.000°
2P–V0.97782∠−6.035°0.97782∠−6.035°0.97782∠−6.035°0.97782∠−6.035°
4TR3(Pri)0.94197∠−10.520°0.94197∠−10.520°0.94197∠−10.520°0.94197∠−10.520°
5P–V0.94230∠−16.185°0.94230∠−16.185°0.94230∠−16.185°0.94230∠−16.185°
6TR1(Pri), TR2(Pri)0.93936∠−12.555°0.93936∠−12.555°0.93936∠−12.555°0.93936∠−12.555°
8P–V0.93991∠−13.436°0.93991∠−13.436°0.93991∠−13.436°0.93991∠−13.436°
9TR1(Sec)0.97206∠−16.077°0.97206∠−16.077°0.97206∠−16.077°0.97206∠−16.077°
10TR2(Sec)0.96487∠−17.931°0.96487∠−17.931°0.96487∠−17.931°0.96487∠−17.931°
11P–V1.00000∠−16.077°1.00000∠−16.077°1.00000∠−16.077°1.00000∠−16.077°
12TR3(Sec)0.98140∠−17.112°0.98140∠−17.112°0.98140∠−17.112°0.98140∠−17.112°
13P–V1.00000∠−17.112°1.00000∠−17.112°1.00000∠−17.112°1.00000∠−17.112°
27TR4(Sec)0.94484∠−17.806°0.94484∠−17.806°0.94484∠−17.806°0.94484∠−17.806°
28TR4(Pri)0.93519∠−13.274°0.93519∠−13.274°0.93519∠−13.274°0.93519∠−13.274°

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Figure 1. Power system network.
Figure 1. Power system network.
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Figure 2. Currents that flow in a bus.
Figure 2. Currents that flow in a bus.
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Figure 3. Transformer with a secondary-side tap.
Figure 3. Transformer with a secondary-side tap.
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Figure 4. Equivalent model of a transformer with a secondary-side tap.
Figure 4. Equivalent model of a transformer with a secondary-side tap.
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Figure 5. Typical demand data.
Figure 5. Typical demand data.
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Figure 6. Single-point crossover operation.
Figure 6. Single-point crossover operation.
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Figure 7. Single-position uniform mutation.
Figure 7. Single-position uniform mutation.
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Figure 8. Workflow of the proposed method.
Figure 8. Workflow of the proposed method.
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Figure 9. IEEE 14-bus system [43,44].
Figure 9. IEEE 14-bus system [43,44].
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Figure 10. Convergence of the voltage of bus 7.
Figure 10. Convergence of the voltage of bus 7.
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Figure 11. IEEE 30-bus system [44,45].
Figure 11. IEEE 30-bus system [44,45].
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Figure 12. Voltage profile of the IEEE 57-bus system, in p.u.
Figure 12. Voltage profile of the IEEE 57-bus system, in p.u.
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Figure 13. Standard deviation of the objective function of population members for each generation.
Figure 13. Standard deviation of the objective function of population members for each generation.
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Figure 14. Voltage profile improvement in the IEEE 30-bus system.
Figure 14. Voltage profile improvement in the IEEE 30-bus system.
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Figure 15. Loss reduction in the IEEE 30-bus system.
Figure 15. Loss reduction in the IEEE 30-bus system.
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Figure 16. Standard deviation of the objective function of population members for each generation.
Figure 16. Standard deviation of the objective function of population members for each generation.
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Figure 17. Voltage profile improvement in the IEEE 14-bus system.
Figure 17. Voltage profile improvement in the IEEE 14-bus system.
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Figure 18. Loss reduction in the IEEE 14-bus system.
Figure 18. Loss reduction in the IEEE 14-bus system.
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Table 1. Parameters of the genetic algorithm (GA).
Table 1. Parameters of the genetic algorithm (GA).
OperationMethodParameter
Reproduction [34,47,49]Probability that produces the fittest offspring (scaled roulette wheel)p = 0.001
Crossover [34,47,49]Arithmetic crossover per offspringPc = 1.0
Mutation [34,47,49]Uniform mutationPm = 0.1
Experimental data [47]The number of populations5000
The number of generations100

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Kim, I. The Optimization of the Location and Capacity of Reactive Power Generation Units, Using a Hybrid Genetic Algorithm Incorporated by the Bus Impedance Power-Flow Calculation Method. Appl. Sci. 2020, 10, 1034. https://doi.org/10.3390/app10031034

AMA Style

Kim I. The Optimization of the Location and Capacity of Reactive Power Generation Units, Using a Hybrid Genetic Algorithm Incorporated by the Bus Impedance Power-Flow Calculation Method. Applied Sciences. 2020; 10(3):1034. https://doi.org/10.3390/app10031034

Chicago/Turabian Style

Kim, Insu. 2020. "The Optimization of the Location and Capacity of Reactive Power Generation Units, Using a Hybrid Genetic Algorithm Incorporated by the Bus Impedance Power-Flow Calculation Method" Applied Sciences 10, no. 3: 1034. https://doi.org/10.3390/app10031034

APA Style

Kim, I. (2020). The Optimization of the Location and Capacity of Reactive Power Generation Units, Using a Hybrid Genetic Algorithm Incorporated by the Bus Impedance Power-Flow Calculation Method. Applied Sciences, 10(3), 1034. https://doi.org/10.3390/app10031034

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