Optimal Deployment of Mobile MSSSC in Transmission System
Abstract
:1. Introduction
1.1. Objectives
1.2. Literature Review
1.3. Contributions
- Introduces a novel open-source tool to support system planners to explore the DCOPF-based optimal placement of mobile MSSSC in transmission systems.
- Considers the operation deadband in linear MSSSC model.
- The proposed linear and multi-period model considers the historical Irish transmission system data, including wind and demand patterns, and system non-synchronous penetration (SNSP).
1.4. Paper Structure
2. Materials and Methods
2.1. Formulations
2.1.1. The DCOPF Model
- : Set of buses;
- g: Set of generators;
- l: Set of loads;
- : Set of shunt devices;
- t: Set of time;
- : The elements between Bus i and Bus j;
- : Ramping speed of generators;
- : Load pattern;
- f: Power flows;
- B: Susceptance of the line;
- : Transformer turns ratio;
- : Transformer phase-shift angle;
- G: Conductance of shunt devices.
- w: Set of wind generating units;
- : Minimum and maximum wind power output;
- : Wind power output;
- : Wind pattern.
2.1.2. The N-1 Security Constraint
2.1.3. The Mobile MSSSC Model
- : Sets of transmission lines
- : Power flow changes in Line ;
- : Susceptance changes of Line ;
- : Minimum and maximum voltage injection of the MSSSC;
- : Reactance injection of the MSSSC;
- : Current flow in Line ;
- : MSSSC deployment controller for Line ;
- : Susceptance of Line .
- : The positive and negative power flow changes in Line ;
- : Operation controller of MSSSC.
- : Weight of the combination of wind and load pattern in a year;
- : Weight of the season in a year.
2.2. Architecture of the Tool
2.3. Assumptions
- The mobile MSSSC characteristics are based on SmartValve 10-1800 device [1].
- The emission factor of electricity is 295.8 gr/kWh [47].
- Three mobile MSSSC devices (one device per phase) are deployed at each location, and eighteen mobile MSSSC devices in total are available for six locations.
- The SNSP is considered as 75% in accordance with Irish system requirements [40].
- The heavily loaded line is the line whose loading is greater than 50% of its thermal limit during operation.
- The congested line is the line whose loading is greater than 90% of its thermal limit after N-1 contingency.
- The underutilised line is the line whose loading is less than 10% of its thermal limit without contingencies.
2.4. Data Preprocessing
- Season 1: Winter. It includes 107 days (2568 h) during 1 January 2021–15 February 2021 and 1 November 2021–31 December 2021.
- Season 2: Summer. It includes 153 days (3672 h) during 1 April 2021–31 August 2021.
- Season 3: Spring and autumn. It includes 105 days (2520 h) during 16 February 2021–31 March 2021 and 1 September 2021–31 October 2021.
3. Results
- 118-bus system normal operation study;
- 1 × 150 MW demand connection study;
- 2 × 75 MW demands connection study;
- 1 × 150 MW RES connection study.
- Base case: The results without N-1 contingency constraints and mobile MSSSC deployment.
- N-1 security: The results with N-1 contingency constraints, but without mobile MSSSC deployment.
- Automatic method: The final results were obtained by using the proposed tool.
3.1. 118-bus System Normal Operation Study
3.2. 1 × 150 MW Demand Connection Study
3.3. 2 × 75 MW Demand Connection Study
3.4. New RES Connection Study
4. Sensitivity Analysis
5. Conclusions and Future Works
5.1. Conclusions
- The deployment of mobile MSSSC can effectively reduce the RES curtailment, emissions, system generation cost, and system total cost. It also has positive impacts on the existing asset utilisation improvement.
- The presence of new demand should be primarily placed close to RES generating units or low-cost generators. The separation of the large demand deployment may have different impacts on the network congestion, compared to a single large demand connection.
- With optimally allocated mobile MSSSC, the high system operation cost, as well as the growth of wind curtailment caused by new demands connections, can be effectively mitigated.
- The additional RES connection can result in severe network congestion and significant wind curtailment due to the limited network transfer capacity. The mobile MSSSC can effectively facilitate the RES connections by optimally allocating the RES connection location as well as rebalancing the power flows.
- The tool can be used to investigate the optimal deployment locations of new demand, such as data centres or power-to-gas facilities, and RES connections, following the coordination with mobile MSSSC deployment.
- The variations in generating unit cost affect the optimal deployment locations of mobile MSSSC. The more expensive the thermal units are, the more the RES curtailment reduction is economically justifiable.
5.2. Future Work
- The detailed multiple numbers of mobile MSSSC allocation tool should be investigated. This is important for system planners to avoid extensive civil engineering works by reducing the installation locations.
- The mobile MSSSC deployment strategy under unit commitment conditions should be investigated since these devices can provide flexibility for the UC problem.
- An ACOPF model for mobile MSSSC deployment location optimisation tool should be investigated.
- The investigation of other FACTS allocation strategies adapted with linear operation model methods can be performed [36].
- The impact of mobile MSSSC transportable constraints, including re-deployment speed and moving range, on the deployment strategy should be investigated. It should be considered as a fast-react force to mitigate sudden risks, enhancing the stability and reliability of the grid.
- The impacts of mobile MSSSC placement on the extreme weather event management and post-contingency should be investigated. The impact of mobile MSSSC demolishing on the originally installed lines should be considered to prevent additional risks to the system.
- The detailed and customised cost–benefits analysis can justify the results of optimal allocation of mobile MSSSC, as well as the best investment decision for system planners.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
RES | Renewable energy source |
TSO | Transmission system operator |
FACTS | Flexible AC transmission systems |
MSSSC | Modular static synchronous series compensator |
IGBT | Isolated-gate bipolar transistor |
SNSP | System non-synchronous penetration |
PFC | Power flow controller |
NR | Newton–Raphson |
GSO | Group searcher optimization |
OPF | Optimal power flow |
LP | Load pattern |
WP | Wind pattern |
GSHF | Generation shift factor |
LODF | Line outage distribution factor |
NPV | Net present value |
CBA | Cost–benefit analysis |
OM | Operation and maintenance |
Unit | |
% | Percentage |
EUR | Euro |
g | gram |
kWh | Kilowatt hour |
MW | Megawatts |
MWh | Megawatt hour |
GWh | Gigawatt hour |
M | Million |
k | Thousand |
t | Tonne |
Appendix A
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AC Tool | DC Tool | Objectives |
---|---|---|
Line-flow-based model with NR Algorithm [27] | GAMS-based tool [34] | Power system loadability maximisation [28] |
Genetic algorithms [28] | Reactive power planning [31] | |
Generic graphical-user-interface-based tool [28] | Power flow entropy minimisation [30] | |
Bacterial swarming algorithm [31] | Real power loss minimisation [32] | |
GSO Algorithm [30] | Voltage deviation minimisation [32] | |
Non-dominated sorting genetic algorithm [32] | Network security maximisation [33] | |
Economic function [34] |
Season | Case | Wind Curtailment (MWh) | Gen Cost (EUR M) | Devices Cost (EUR k) | Total Cost (EUR M) | Network Utilisation (%) |
---|---|---|---|---|---|---|
Season 1 (Winter) | Base Case | 19,267 | 58.68 | 0 | 58.68 | 56.8 |
N-1 Security | 70,182 | 59.72 | 0 | 59.72 | 54.2 | |
Automatic Method | 51,891 | 59.36 | 103 | 59.46 | 55.6 | |
Season 2 (Summer) | Base Case | 1043 | 84.77 | 0 | 84.77 | 52.2 |
N-1 Security | 18,153 | 85.36 | 0 | 85.36 | 55.5 | |
Automatic Method | 10,448 | 85.10 | 118 | 85.21 | 52.0 | |
Season 3 (Spring and Autumn) | Base Case | 3538 | 54.98 | 0 | 54.98 | 54.3 |
N-1 Security | 54,681 | 55.89 | 0 | 55.89 | 52.7 | |
Automatic Method | 38,694 | 55.57 | 81 | 55.65 | 53.6 |
Season | Case | Wind Curtailment (MWh) | Gen Cost (EUR M) | Devices Cost (EUR k) | Total Cost (EUR M) | Network Utilisation (%) |
---|---|---|---|---|---|---|
Season 1 (Winter) | Base Case | 0 | 63.17 | 0 | 63.17 | 58.2 |
N-1 Security | 0 | 63.36 | 0 | 63.36 | 55.3 | |
Automatic Method | 0 | 63.28 | 21 | 63.30 | 55.2 | |
Season 2 (Summer) | Base Case | 0 | 91.73 | 0 | 91.73 | 54.8 |
N-1 Security | 0 | 91.77 | 0 | 91.77 | 50.5 | |
Automatic Method | 0 | 91.77 | 0 | 91.77 | 50.5 | |
Season 3 (Spring and Autumn) | Base Case | 0 | 59.58 | 0 | 59.58 | 57.8 |
N-1 Security | 0 | 59.69 | 0 | 59.69 | 52.8 | |
Automatic Method | 0 | 59.63 | 20 | 59.65 | 52.3 |
Season | Case | Wind Curtailment (MWh) | Gen Cost (EUR M) | Devices Cost (EUR k) | Total Cost (EUR M) | Network Utilisation (%) |
---|---|---|---|---|---|---|
Season 1 (Winter) | Base Case | 885 | 63.19 | 0 | 63.19 | 58.2 |
N-1 Security | 6235 | 63.57 | 0 | 63.57 | 56.0 | |
Automatic Method | 1077 | 63.35 | 41 | 63.39 | 55.5 | |
Season 2 (Summer) | Base Case | 0 | 91.73 | 0 | 91.73 | 54.7 |
N-1 Security | 0 | 91.83 | 0 | 91.83 | 51.9 | |
Automatic Method | 0 | 91.79 | 29 | 91.82 | 50.9 | |
Season 3 (Spring and Autumn) | Base Case | 0 | 59.58 | 0 | 59.58 | 58.1 |
N-1 Security | 231 | 59.80 | 0 | 59.80 | 53.6 | |
Automatic Method | 0 | 59.68 | 40 | 59.72 | 53.4 |
Season | Case | Wind Curtailment (MWh) | Gen Cost (EUR M) | Devices Cost (EUR k) | Total Cost (EUR M) | Network Utilisation (%) |
---|---|---|---|---|---|---|
Season 1 (Winter) | Base Case | 24,981 | 53.86 | 0 | 53.86 | 56.1 |
N-1 Security | 75,001 | 54.75 | 0 | 54.75 | 52.7 | |
Automatic Method | 50618 | 54.37 | 185 | 54.56 | 54.3 | |
Season 2 (Summer) | Base Case | 764 | 77.74 | 0 | 77.74 | 53.6 |
N-1 Security | 17,502 | 78.26 | 0 | 78.26 | 51.7 | |
Automatic Method | 9190 | 78.04 | 118 | 78.16 | 50.6 | |
Season 3 (Spring and Autumn) | Base Case | 1892 | 50.21 | 0 | 50.21 | 55.7 |
N-1 Security | 54,694 | 51.03 | 0 | 51.03 | 53.4 | |
Automatic Method | 31,515 | 50.68 | 141 | 50.82 | 52.4 |
The % Change of Targeted Gen Cost | Wind Curtailment Reduction (MWh) | Avoidance (t) | Gen Cost Reduction (EUR k) | Devices Cost (EUR k) | Total Cost Reduction (EUR k) | MSSSC Allocations |
---|---|---|---|---|---|---|
−10% | 8023 | 2373 | 218 | 88 | 130 | , , and |
−5% | 8049 | 2381 | 232 | 88 | 144 | , , and |
0% | 7705 | 2279 | 258 | 118 | 141 | , , , and |
5% | 9373 | 2772 | 365 | 147 | 218 | , , , , and |
10% | 11,134 | 3293 | 417 | 176 | 240 | , , , , , and |
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Zhao, Z.; Soroudi, A. Optimal Deployment of Mobile MSSSC in Transmission System. Energies 2022, 15, 3878. https://doi.org/10.3390/en15113878
Zhao Z, Soroudi A. Optimal Deployment of Mobile MSSSC in Transmission System. Energies. 2022; 15(11):3878. https://doi.org/10.3390/en15113878
Chicago/Turabian StyleZhao, Zhehan, and Alireza Soroudi. 2022. "Optimal Deployment of Mobile MSSSC in Transmission System" Energies 15, no. 11: 3878. https://doi.org/10.3390/en15113878
APA StyleZhao, Z., & Soroudi, A. (2022). Optimal Deployment of Mobile MSSSC in Transmission System. Energies, 15(11), 3878. https://doi.org/10.3390/en15113878