Optimal Operation of Networked Microgrids for Enhancing Resilience Using Mobile Electric Vehicles
Abstract
:1. Introduction
2. System Model and Proposed Resilience Enhancement Method
2.1. System Model and Components of Multi-Microgrid System
2.2. Normal Mode
- Each microgrid is equipped with its own EMS, which is responsible for the local level optimization of the microgrid by utilizing the local resources. On the completion of the local optimization, surplus and shortage power in the microgrid is informed to the central EMS at each interval of time.
- CEMS is responsible for global optimization. After receiving information from MG-EMSs and market price from the utility grid, it performs global optimization for minimizing the overall operation cost of the multi-microgrid network. CEMS decides the feasibility of sharing power among microgrids and/or trading power with the utility grid [24].
2.3. Proposed Resilience Enhancement Mode
2.3.1. Multi-Microgrid System Resilience Enhancement Scheme (Round 1)
2.3.2. Optimization for Grid-Connected Microgrids (Round 2)
3. Problem Formulation
3.1. Normal Mode
3.1.1. Microgrid Energy Management System
3.1.2. Central Energy Management System
3.2. Proposed Resilience Enhancement Mode
3.2.1. Multi-Microgrid System Resilience Enhancement Scheme (Round 1)
3.2.2. Optimization for Grid-Connected Microgrids (Round 2)
3.2.3. Resilience Index Formulation
4. Numerical Simulation
4.1. Input Parameters
4.2. Normal Mode
4.2.1. Microgrid Energy Management System
4.2.2. Central Energy Management System
4.3. Resilience Enhancement Mode
4.3.1. Local Level Optimization (Round 1: Step 1)
4.3.2. Central Level Optimization (Round 1: Step 2)
4.3.3. Local Level Optimization (Round 1: Step 3)
4.3.4. Local Level Optimization (Round 2: Step 1)
4.3.5. Central Level Optimization (Round 2: Step 2)
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
Identifiers and Binary Variables | |
t | Index of time, running from 1 to T |
Time at which contingency/outage occurred | |
k, l | Index of microgrids, running from 1 to M and 1 to N, respectively |
Index of distance from microgrid k to l | |
Status indicator of vehicle v for supplying energy | |
Index of resilience | |
Variables and Constants | |
Production cost of dispatchable generator. | |
The price for buying and selling power to/from the utility grid at time t. | |
Minimum and maximum generation capacity of the dispatchable generator. | |
Shortage and surplus power in a microgrid at time t. | |
The forecasted output power of renewable distributed generation of at time t. | |
Forecasted load of a microgrid at time t. | |
Charging and discharging of BESS at time t. | |
Charging and discharging of vehicle v at time t. | |
SoC of BESS and vehicle v at time t, respectively. | |
Capacity of BESS and vehicle v, respectively. | |
Charging and discharging efficiency of BESS, respectively. | |
Charging and discharging efficiency of vehicle v, respectively. | |
Targeted SoC of vehicle v at departure time. | |
Energy stored for resilience in the battery of vehicle while parked at parking lot. | |
Energy sent from microgrid k to l at time t. | |
Energy received by microgrid l form k at time t. | |
Total surplus and shortage power in the system at time t, respectively. | |
Energy supplied by microgrid k to l at time t. | |
Energy available in microgrid k at time t. | |
Energy requested by microgrid l at time t. | |
Per km energy consumption efficiency of vehicle v. | |
Energy supplied and energy stored in vehicle v at time t, respectively. | |
Islanded microgrid survived load with and without EVs in the case of contingency, respectively. |
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Parameters | Capacity (kWh) | Charging Efficiency (%) | Discharging Efficiency (%) | Initial SOC (%) |
---|---|---|---|---|
MG1-BESS | 200 | 95 | 95 | 50 |
MG2-BESS | 100 | 95 | 95 | 50 |
MG3-BESS | 150 | 95 | 95 | 50 |
Parameters | Capacity (kW) | Cost (KRW/kWh) |
---|---|---|
MG1-DG | 700 | 75 |
MG2- DG | 600 | 102 |
MG3- DG | 550 | 110 |
EV | Capacity (kW) | Efficiency (W/km) | EV ID | ||
---|---|---|---|---|---|
MG1 | MG2 | MG2 | |||
Hyundai IONIQ Electric | 38.3 | 153 | 1 | 9,14 | - |
Tesla Model 3 Std. Range Plus | 47.5 | 153 | 2 | 10,15 | - |
Mini Cooper SE | 28.9 | 256 | 3 | 1 | - |
BMW i3 120 Ah | 37.9 | 161 | 4.11 | 2 | 4 |
Kia e-Soul 39 kWh | 39.2 | 170 | 5.12 | 3 | 5 |
Nissan Leaf e+ | 56 | 172 | 6.13 | 4 | 6 |
Lexus UX 300e | 52 | 193 | 7.14 | - | 7 |
Ford Mustang Mach-E GT | 88 | 215 | 8.15 | 12 | 8 |
Audi e-Tron 50 Quattro | 64.7 | 231 | 9 | 13 | 9 |
Jaguar I-Pace EV400 | 84.7 | 232 | 10 | 7 | 10 |
Porsche Taycan Turbo | 83.7 | 209 | - | 8 | 3 |
Audi Q4 e-Tron* | 77 | 193 | - | 11 | 1 |
BMW iX3 | 74 | 206 | - | - | 2 |
Honda e Advance | 28.5 | 168 | - | 5 | - |
Volkswagen e-Golf | 38 | 168 | - | 6 | - |
EV ID | MG1 | MG2 | MG3 | |||
---|---|---|---|---|---|---|
Departure Time | Arrival Time | Arrival Time | Departure Time | Arrival Time | Departure Time | |
1 | 8 AM | 6 PM | 7 AM | 4 PM | 10 AM | 6 PM |
2 | 10 AM | 8 PM | 8 AM | 4 PM | 9 AM | 8 PM |
3 | 9 AM | 9 PM | 9 AM | 4 PM | 8 AM | 8 PM |
4 | 8 AM | 7 PM | 8 AM | 5 PM | 8 AM | 4 PM |
5 | 6 AM | 9 PM | 9 AM | 5 PM | 8 AM | 4 PM |
6 | 8 AM | 5 PM | 11 AM | 9 PM | 9 AM | 4 PM |
7 | 8 AM | 7 PM | 9 AM | 6 PM | 8 AM | 5 PM |
8 | 9 AM | 4 PM | 10 AM | 8 PM | 9 AM | 5 PM |
9 | 12 PM | 7 PM | 9 AM | 6 PM | 11 AM | 9 PM |
10 | 9 AM | 8 PM | 10 AM | 6 PM | 9 AM | 6 PM |
11 | 10 AM | 6 PM | 7 AM | 7 PM | - | - |
12 | 8 AM | 8 PM | 8 AM | 7 PM | - | - |
13 | 12 PM | 7 PM | 7 AM | 7 PM | - | - |
14 | 7 AM | 6 PM | 9 AM | 8 PM | - | - |
15 | 9 AM | 8 PM | 11 AM | 8 PM | - | - |
Cases | Time/Day | MG3 Required (kWh) | Available Energy | |
---|---|---|---|---|
MG1 (kWh) | MG2 (kWh) | |||
1 | 6 AM/1 | 61 | 262.56 | 0 |
2 | 8 AM/1 | 168 | 206 | 67.2 |
3 | 2 AM/1 | 212 | 306 | 0 |
Cases | Load Survived without EVs (kWh) | Load Survived with EVs (kWh) | Resilience Increase (%) |
---|---|---|---|
1 | 664 | 725 | 8.41 |
2 | 704.5 | 872.5 | 9.25 |
3 | 550.5 | 762.5 | 27.8 |
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Ali, A.Y.; Hussain, A.; Baek, J.-W.; Kim, H.-M. Optimal Operation of Networked Microgrids for Enhancing Resilience Using Mobile Electric Vehicles. Energies 2021, 14, 142. https://doi.org/10.3390/en14010142
Ali AY, Hussain A, Baek J-W, Kim H-M. Optimal Operation of Networked Microgrids for Enhancing Resilience Using Mobile Electric Vehicles. Energies. 2021; 14(1):142. https://doi.org/10.3390/en14010142
Chicago/Turabian StyleAli, Asfand Yar, Akhtar Hussain, Ju-Won Baek, and Hak-Man Kim. 2021. "Optimal Operation of Networked Microgrids for Enhancing Resilience Using Mobile Electric Vehicles" Energies 14, no. 1: 142. https://doi.org/10.3390/en14010142
APA StyleAli, A. Y., Hussain, A., Baek, J. -W., & Kim, H. -M. (2021). Optimal Operation of Networked Microgrids for Enhancing Resilience Using Mobile Electric Vehicles. Energies, 14(1), 142. https://doi.org/10.3390/en14010142