Optimal Integration of D-STATCOMs in Radial and Meshed Distribution Networks Using a MATLAB-GAMS Interface
Abstract
:1. Introduction
1.1. General Context
1.2. Motivation
1.3. Literature Review
1.4. Contributions and Scope
- A complete description of the mathematical formulation representing the problem under study while considering different load types in a daily operation scenario.
- The implementation of a new optimization methodology that uses MATLAB and GAMS software interfaces in order to find the optimal global solution to the problem of sizing and locating D-STATCOMs in electrical distribution networks with a meshed or radial topology.
- A new form of the master-slave method to solve the mathematical model representing the studied problem. In the master stage, MATLAB software is used as a tool to develop the discrete version of the sine-cosine algorithm, with the aim of determining the locations of the D-STATCOMs. In the slave stage, the GAMS software is used to solve the MINLP model that represents the problem, thus finding the nominal power of the D-STATCOMs and the total annual operating costs of the network.
1.5. Document Structure
2. Mathematical Formulation
2.1. Formulation of the Objective Function
2.2. Set of Constraints
2.3. Model Interpretation
3. Proposed Hybrid Optimization Approach
3.1. Master Stage: DSCA
3.2. Initial Population
3.3. Evolution Criteria
3.4. Updating the Individuals
Algorithm 1: Pseudo-code for the proposed DSCA approach in optimization problems. |
3.5. Slave Stage: GAMS
3.6. Interface Connection
4. Test Systems
5. Numerical Results, Analysis, and Discussions
5.1. Radial Configuration
- 🗸
- The solution with the best annual operating costs is number 3, with 106,528.98 USD per year. For this solution, the selected nodes are 14, 8, and 30, which connect D-STATCOMs of 0.1992, 0.1174, and 0.6721 Mvar. This scenario reduces the annual operating costs by 18.42% when compared to the base case.
- 🗸
- The worst cost function achieved by the DSCA-BONMIN corresponds to solution 1. In this scenario, nodes 13, 30, and 24 connect D-STATCOMs of 0.2503, 0.6923, and 0.0668 Mvar. The difference between the best and worst fitness functions is 182.69 USD per year of operation.
- 🗸
- Node 30 appears for all solutions to the problem. Node 13 appears in solutions 1 and 2. The former is located in the commercial zone, and the latter is in the industrial zone. Finally, nodes 8 and 14, which are within the optimal solution, are also located in the industrial zone, which means that the most suitable locations for a D-STATCOM are in the industrial and commercial zones (Figure 2).
- 🗸
- The difference between solution 3 (the best) and solution 1 (the worst) is approximately 183 USD per year of operation, which corresponds to 0.1712%. Therefore, when it comes to minimizing operating costs in this distribution network with a higher number of nodes at a higher number of iterations, the annual cost solutions can be considered efficient, which indicates the accuracy of the implemented algorithm.
- 🗸
- In the solutions, the costs associated with energy losses are 87.96% (solution 1), 88.77% (solution 2), and 88.19% (solution 3). In turn, the investment costs are 12.03% (solution 1), 11.34% (solution 2), and 11.80% (solution 3), which corresponds to the fact that the costs associated with energy losses represent a higher percentage of the total cost than those related to investment.
- 🗸
- The GAMS solvers used to solve the MINLP model are stuck when in local optima compared to the developed DSCA-BONMIN methodology. The SBB, DISCOPT, and LINDO solvers reduce the annual operating costs of the distribution network by 15.94%, while the XPRESS solver only reduces it by 12.94%. In addition, the solvers identify similar locations and sizes for the D-STATCOMs.
- 🗸
- The DCCBGA methodology reduces the annual operating costs of this radial distribution network by 17.14%, which is an improvement compared to the GAMS solvers and the genetic-convex methodology. However, the DSCA-BONMIN proposed in this article reduces annual costs by 1,667.48 USD compared to the DCCBGA. This result represents a reduction of 18.42% in the objective function value with respect to the base case, which represents savings of 24,051.84 USD for the network operator.
- 🗸
- A remarkable aspect of the DSCA-BONMIN methodology is the existence of D-STATCOMs in the commercial and industrial zones (Figure 2), similar to the GAMS solvers and the genetic-convex methodology and unlike the DCCBGA methodology, where there are D-STATCOMs in each zone. Furthermore, the sizes of the D-STATCOMs located by the DCCBGA and DSCA-BONMIN are similar. The only representative differences are the change from node 25 to node 8, and a reduction of 14.39% for the first location, 11.17% for the second, and 24.39% for the third with regard to the size in each of the locations. These differences represent the improvement in the annual operating costs.
5.2. Meshed Configuration
- 🗸
- The results confirmed that, for this scenario, node 30, being in all the solutions obtained by the proposed methodology, is the most sensitive to the minimization of operating costs. Additionally, the two other nodes found in most of the reported solutions are node 33, with a percentage of 57.14%, and node 14, with 28.57%, which are related to the total responses. This occurs when considering discriminated sectors and hourly load profiles. As for nodes 30 and 33, they are nodes located in the commercial zone, and node 14 belongs to the industrial zone (Figure 3).
- 🗸
- The difference between solution 7 (the best) and solution 1 (the worst) is 236.78 USD, which corresponds to a 0.3039% improvement between the first and the optimal solutions obtained. As a result, as the number of iterations increases, the solutions in Table 7 improve in quality. This result confirms the accuracy of the DSCA-BONMIN method when it comes to minimizing operating costs in this distribution network.
- 🗸
- In the solutions, with regard to the total costs, the costs associated with energy losses represent 87.82% (solution 1), 87.55% (solution 2), 87.68% (solution 3), 87.14% (solution 4), 86.98% (solution 5), 87.21% (solution 6), and 87.08% (solution 7); and the investment costs represent 12.17% (solution 1), 12.44% (solution 2), 12.31% (solution 3), 12.85% (solution 4), 13.01% (solution 5), 12.78% (solution 6), and 12.91% (solution 7). This means that the costs of energy losses represent a higher percentage of the total cost than the investment costs.
- 🗸
- In comparison with the developed DSCA-BONMIN methodology, the local optima used by the GAMS solvers stagnate. The SBB, DISCOPT, and LINDO solvers reduced the annual network operating costs by 8.67%, while XPRESS only reduced them by 8.46%. The solvers define the exact same nodes for reactive compensation. The dimensions of the D-STATCOM range from 0.104 Mvar at node 13, 0.0078 Mvar at node 16, and 0.0557 Mvar at node 32. The most noticeable size variation takes place at node 13, suggesting that this compensator overcomes the higher capital costs that are not included in the energy loss cost.
- 🗸
- The SSA methodology reduces the annual operating costs by 10.37%, and the DCCBGA methodology shows a 10.44% reduction in the operating costs of this meshed distribution network, where the locations of the nodes are the same, unlike the sizes, which vary by 0.0328 Mvar at node 14, 0.052 Mvar at node 32, and 0.0761 Mvar at node 30. Of all, the most notable size difference is at node 30, suggesting that this compensator offsets the higher capital cost, which is not included in the reduction of the energy losses cost.
- 🗸
- The DSCA-BONMIN methodology reduces the annual operating costs by 1667.48 USD compared to DCCBGA. This result represents a reduction of 10.59% in the objective function evaluated for the base case, as well as savings of 9197.73 USD for the network operator.
- 🗸
- A notable aspect of the DSCA-BONMIN methodology is the existence of D-STATCOMs in the commercial and industrial zones (Figure 3), similar to the SSA and DCCBGA. In addition, the sizes of the D-STATCOMs located by the DCCBGA and DSCA-BONMIN are similar. The only representative differences with respect to the methodology to be compared are the change from node 32 to node 33 and reductions of 2.65% for node 14 and 11.711% for node 30 with respect to the size of each of the locations mentioned. Therefore, these differences represent an improvement in annual operating costs.
6. Conclusions and Future Works
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Method/Algorithm | Objective Function | Year | Ref. |
---|---|---|---|
Genetic algorithm | Minimization of power losses | 2011 | [26] |
Artificial neural networks | Mitigation of voltage sags under faults | 2012 | [27] |
Immune algorithm | Minimization of power losses and reduction of investment and operating costs | 2014 | [28] |
Particle swarm optimization | Minimization of power losses and voltage profile improvement | 2014 | [29] |
Ant colony optimization | Minimization of power losses and voltage profile improvement | 2015 | [18] |
Sensitivity indices | Minimization of power losses and voltage profile improvement | 2015 | [30] |
Harmony search algorithm | Minimization of power losses | 2015 | [31] |
Heuristic search algorithm | Minimization of power losses | 2016 | [32] |
Imperialist competitive algorithm | Minimization of energy costs and voltage profile improvement | 2017 | [33] |
Discrete-continuous vortex search algorithm | Investment and operating costs reduction | 2017 | [34] |
Modified crow search algorithm | Reducing line losses, maximizing economic benefits, improving voltage profiles, and reducing pollution levels | 2018 | [35] |
Particle swarm optimization | Reduction of power losses and voltage profile improvement | 2019 | [20] |
Hybrid analytical-coyote | Minimization of active power losses and voltage profile improvement | 2019 | [36] |
Modified sine-cosine algorithm | Minimization of power losses and voltage profile improvement | 2020 | [37] |
Discrete-continuous vortex search algorithm | Reduction in investment and operating costs | 2021 | [2] |
GAMS software for the solution of the exact MINLP model | Reduction in investment and operating costs | 2021 | [38] |
Mixed-integer second-order conic programming | Minimization of power losses and reduction of investment and operating costs | 2022 | [25] |
Bus i | Bus j | (kW) | (kvar) | ||
---|---|---|---|---|---|
1 | 2 | 0.0922 | 0.0477 | 100 | 60 |
2 | 3 | 0.4930 | 0.2511 | 90 | 40 |
3 | 4 | 0.3660 | 0.1864 | 120 | 80 |
4 | 5 | 0.3811 | 0.1941 | 60 | 30 |
5 | 6 | 0.8190 | 0.7070 | 60 | 20 |
6 | 7 | 0.1872 | 0.6188 | 200 | 100 |
7 | 8 | 1.7114 | 1.2351 | 200 | 100 |
8 | 9 | 1.0300 | 0.7400 | 60 | 20 |
9 | 10 | 1.0400 | 0.7400 | 60 | 20 |
10 | 11 | 0.1966 | 0.0650 | 45 | 30 |
11 | 12 | 0.3744 | 0.1238 | 60 | 35 |
12 | 13 | 1.4680 | 1.1550 | 60 | 35 |
13 | 14 | 0.5416 | 0.7129 | 120 | 80 |
14 | 15 | 0.5910 | 0.5260 | 60 | 10 |
15 | 16 | 0.7463 | 0.5450 | 60 | 20 |
16 | 17 | 1.2890 | 1.7210 | 60 | 20 |
17 | 18 | 0.7320 | 0.5740 | 90 | 40 |
2 | 19 | 0.1640 | 0.1565 | 90 | 40 |
19 | 20 | 1.5042 | 1.3554 | 90 | 40 |
20 | 21 | 0.4095 | 0.4784 | 90 | 40 |
21 | 22 | 0.7089 | 0.9373 | 90 | 40 |
3 | 23 | 0.4512 | 0.3083 | 90 | 50 |
23 | 24 | 0.8980 | 0.7091 | 420 | 200 |
24 | 25 | 0.8960 | 0.7011 | 420 | 200 |
6 | 26 | 0.2030 | 0.1034 | 60 | 25 |
26 | 27 | 0.2842 | 0.1447 | 60 | 25 |
27 | 28 | 1.0590 | 0.9337 | 60 | 20 |
28 | 29 | 0.8042 | 0.7006 | 120 | 70 |
29 | 30 | 0.5075 | 0.2585 | 200 | 600 |
30 | 31 | 0.9744 | 0.9630 | 150 | 70 |
31 | 32 | 0.3105 | 0.3619 | 210 | 100 |
32 | 33 | 0.3410 | 0.5302 | 60 | 40 |
Bus i | B j | ||
---|---|---|---|
12 | 22 | 2 | 2 |
18 | 33 | 0.5 | 0.5 |
25 | 29 | 0.5 | 0.5 |
Parameter | Value | Unit | Parameter | Value | Unit |
---|---|---|---|---|---|
0.139 | USD-kW/h | T | 365 | days | |
1 | h | 0.3 | USD/Mvar | ||
−305.1 | USD/Mvar | 127.380 | USD/Mvar | ||
3 | - | % | |||
0 | kvar | 2000 | kvar | ||
12.66 | kV | 10.000 | kVA |
Solution No. | Node Location | Sizes (Mvar) | Energy Loss Costs (USD/Year) | Investment Costs (USD/Year) | Annual Cost (USD/Year) |
---|---|---|---|---|---|
1 | [13, 30, 24] | [0.2503, 0.6923, 0.0668] | 93,867.77 | 12,843.90 | 106,711.67 |
2 | [13, 15, 30] | [0.1476, 0.1054, 0.6983] | 94,574.27 | 12,103.25 | 106,677.52 |
3 | [14, 8, 30] | [0.1992, 0.1174, 0.6721] | 93,949.70 | 12,579.28 | 106,528.98 |
Methodology | Node Location | Sizes (Mvar) | Annual Cost (USD/Year) | Reduction (%) |
---|---|---|---|---|
Benchmark case | - | - | 130,580.82 | - |
XPRESS | [13, 16, 32] | [0.1822, 0.0727, 0.2328] | 112,376.45 | 13.94 |
SBB, DICOPT, and LINDO | [13, 16, 32] | [0.1850, 0.0825, 0.4478] | 109,768.70 | 15.94 |
Genetic-Convex [34] | [14, 30, 32] | [0.2896, 0.5593, 0.1177] | 109,455.96 | 16.18 |
DCCBGA [47] | [14, 25, 30] | [0.2327, 0.1056, 0.5403] | 108,196.46 | 17.14 |
DSCA-BONMIN | [14, 8, 30] | [0.1992, 0.1174, 0.6721] | 106,528.98 | 18.42 |
Solution No. | Node Location | Sizes (Mvar) | Energy Loss Costs (USD/Year) | Investment Costs (USD/Year) | Annual Cost (USD/Year) |
---|---|---|---|---|---|
1 | [30, 19, 32] | [0.5107, 0,0.2348] | 68,433.39 | 9488.47 | 77,921.86 |
2 | [30, 33, 27] | [0.5238, 0.2113, 0.0266] | 68,201.11 | 9694.85 | 77,895.96 |
3 | [30, 18, 22] | [0.5644, 0.1890, 0] | 68,299.6 | 9588.11 | 77,887.74 |
4 | [4, 14, 30] | [0, 0.1510, 0.6358] | 67,860.69 | 10,011.27 | 77,871.96 |
5 | [9, 30, 33] | [0.0846, 0.5163, 0.1941] | 67,656.69 | 10,120.19 | 77,776.88 |
6 | [15, 30, 33] | [0.1049, 0.5279, 0.1480] | 67,776.07 | 9,938.80 | 77,714.87 |
7 | [14, 33, 30] | [0.1104, 0.1524, 0.5256] | 67,649.24 | 10,035.84 | 77,685.08 |
Methodology | Node Location | Sizes (Mvar) | Annual Cost (USD/Year) | Reduction (%) |
---|---|---|---|---|
Benchmark case | - | - | 86,882.81 | - |
XPRESS | [13, 16, 32] | [0.2000, 0.0453, 0.3923] | 79,535.02 | 8.46 |
SBB, DICOPT, and LINDO | [13, 16, 32] | [0.0960, 0.0531, 0.4480] | 79,350.36 | 8.67 |
SSA [47] | [32, 30, 14] | [0.2023, 0.3944, 0.1462] | 77,870.17 | 10.37 |
DCCBGA [48] | [14, 30, 32] | [0.1134, 0.4705, 0.1503] | 77,809.98 | 10.44 |
DSCA-BONMIN | [14, 33, 30] | [0.1104, 0.1524, 0.5256] | 77,685.08 | 10.59 |
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Barreto-Parra, G.F.; Cortés-Caicedo, B.; Montoya, O.D. Optimal Integration of D-STATCOMs in Radial and Meshed Distribution Networks Using a MATLAB-GAMS Interface. Algorithms 2023, 16, 138. https://doi.org/10.3390/a16030138
Barreto-Parra GF, Cortés-Caicedo B, Montoya OD. Optimal Integration of D-STATCOMs in Radial and Meshed Distribution Networks Using a MATLAB-GAMS Interface. Algorithms. 2023; 16(3):138. https://doi.org/10.3390/a16030138
Chicago/Turabian StyleBarreto-Parra, German Francisco, Brandon Cortés-Caicedo, and Oscar Danilo Montoya. 2023. "Optimal Integration of D-STATCOMs in Radial and Meshed Distribution Networks Using a MATLAB-GAMS Interface" Algorithms 16, no. 3: 138. https://doi.org/10.3390/a16030138
APA StyleBarreto-Parra, G. F., Cortés-Caicedo, B., & Montoya, O. D. (2023). Optimal Integration of D-STATCOMs in Radial and Meshed Distribution Networks Using a MATLAB-GAMS Interface. Algorithms, 16(3), 138. https://doi.org/10.3390/a16030138