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
Abstract
:1. Introduction
1.1. Contributions and Impacts of This Study
- (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.
1.2. Structure of This Paper
2. Bus Impedance Power Flow Method
2.1. Bus Impedance Matrix
2.2. Iterative Current Injection Method
2.3. Tap-Changing Transformer Model
3. Genetic Algorithm
3.1. Objective Function
3.2. Optimization Variables
- (1)
- Capacity: the capacity of an RPG unit is optimally determined with the following constraint.
- (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
- (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 bySubsequently, 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.
4. Case Studies
4.1. Validation of Power-Flow Calculation Method
4.2. Validation of the Genetic Algorithm
- (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.
4.2.1. IEEE 30-Bus System
4.2.2. IEEE 14-Bus System
5. Conclusions
Funding
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 |
: generation cost of unit i in $/kW |
: angle of the voltage at iteration k (: ∠ ) |
δs: angle of the scheduled complex power (Sload: P+jQ:|S|∠δs) |
H: total simulation period |
: currents that flow in each node at iteration k |
: currents that flow in a line at iteration k |
: currents that flow to constant power loads in each node at iteration k |
: currents that flow to constant current loads in each node at iteration 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 |
: 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 |
: output of reactive power generator i at iteration k |
and : 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 |
: voltages induced in each node at iteration 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
Bus | Zbus Method | Newton–Raphson | Gauss–Seidel | Decoupled |
---|---|---|---|---|
1 | 1.00000∠0.000° | 1.00000∠0.000° | 1.00000∠0.000° | 1.00000∠0.000° |
2 | 0.98681∠−5.706° | 0.98681∠−5.706° | 0.98681∠−5.706° | 0.98681∠−5.706° |
3 | 0.96106∠−14.609° | 0.96106∠−14.609° | 0.96106∠−14.609° | 0.96106∠−14.609° |
4 | 0.95433∠−11.645° | 0.95433∠−11.645° | 0.95433∠−11.645° | 0.95433∠−11.645° |
5 | 0.95627∠−9.917° | 0.95627∠−9.917° | 0.95627∠−9.917° | 0.95627∠−9.917° |
6 | 1.00000∠−16.203° | 1.00000∠−16.203° | 1.00000∠−16.203° | 1.00000∠−16.203° |
7 | 0.98343∠−15.117° | 0.98343∠−15.117° | 0.98343∠−15.117° | 0.98343∠−15.117° |
8 | 1.00000∠−15.117° | 1.00000∠−15.117° | 1.00000∠−15.117° | 1.00000∠−15.117° |
9 | 0.97853∠−16.937° | 0.97853∠−16.937° | 0.97853∠−16.937° | 0.97853∠−16.937° |
10 | 0.97431∠−17.135° | 0.97431∠−17.135° | 0.97431∠−17.135° | 0.97431∠−17.135° |
11 | 0.98324∠−16.815° | 0.98324∠−16.815° | 0.98324∠−16.815° | 0.98324∠−16.815° |
12 | 0.98359∠−17.183° | 0.98359∠−17.183° | 0.98359∠−17.183° | 0.98359∠−17.183° |
13 | 0.97796∠−17.264° | 0.97796∠−17.264° | 0.97796∠−17.264° | 0.97796∠−17.264° |
14 | 0.95883∠−18.242° | 0.95883∠−18.242° | 0.95883∠−18.242° | 0.95883∠−18.242° |
Bus. | Bus Type/Transformer | Zbus Method | Newton–Raphson | Gauss–Seidel | Decoupled |
---|---|---|---|---|---|
1 | Slack | 1.00000∠0.000° | 1.00000∠0.000° | 1.00000∠0.000° | 1.00000∠0.000° |
2 | P–V | 0.97782∠−6.035° | 0.97782∠−6.035° | 0.97782∠−6.035° | 0.97782∠−6.035° |
4 | TR3(Pri) | 0.94197∠−10.520° | 0.94197∠−10.520° | 0.94197∠−10.520° | 0.94197∠−10.520° |
5 | P–V | 0.94230∠−16.185° | 0.94230∠−16.185° | 0.94230∠−16.185° | 0.94230∠−16.185° |
6 | TR1(Pri), TR2(Pri) | 0.93936∠−12.555° | 0.93936∠−12.555° | 0.93936∠−12.555° | 0.93936∠−12.555° |
8 | P–V | 0.93991∠−13.436° | 0.93991∠−13.436° | 0.93991∠−13.436° | 0.93991∠−13.436° |
9 | TR1(Sec) | 0.97206∠−16.077° | 0.97206∠−16.077° | 0.97206∠−16.077° | 0.97206∠−16.077° |
10 | TR2(Sec) | 0.96487∠−17.931° | 0.96487∠−17.931° | 0.96487∠−17.931° | 0.96487∠−17.931° |
11 | P–V | 1.00000∠−16.077° | 1.00000∠−16.077° | 1.00000∠−16.077° | 1.00000∠−16.077° |
12 | TR3(Sec) | 0.98140∠−17.112° | 0.98140∠−17.112° | 0.98140∠−17.112° | 0.98140∠−17.112° |
13 | P–V | 1.00000∠−17.112° | 1.00000∠−17.112° | 1.00000∠−17.112° | 1.00000∠−17.112° |
27 | TR4(Sec) | 0.94484∠−17.806° | 0.94484∠−17.806° | 0.94484∠−17.806° | 0.94484∠−17.806° |
28 | TR4(Pri) | 0.93519∠−13.274° | 0.93519∠−13.274° | 0.93519∠−13.274° | 0.93519∠−13.274° |
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Operation | Method | Parameter |
---|---|---|
Reproduction [34,47,49] | Probability that produces the fittest offspring (scaled roulette wheel) | p = 0.001 |
Crossover [34,47,49] | Arithmetic crossover per offspring | Pc = 1.0 |
Mutation [34,47,49] | Uniform mutation | Pm = 0.1 |
Experimental data [47] | The number of populations | 5000 |
The number of generations | 100 |
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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
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 StyleKim, 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 StyleKim, 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