Research on Multi-Scenario Variable Parameter Energy Management Strategy of Rural Community Microgrid
Abstract
:1. Introduction
2. System Structure
3. Real-Time Control Strategy Considering Cost per kWh of Storage Batteries
3.1. Mathematical Model of Control Strategy
- When the SOC status of the ESS is lower than the set value SOCpro, the grid electricity price is lower than the cost per kWh of the ESS, charge the ESS first if possible.
- When the photovoltaic power is greater than the load power, charge the ESS. When the grid price is low, purchase electricity from the distribution grid to ensure the charging power of the ESS.
- When the utility price is low, use as little energy from the batteries as possible, and try to supplement the ESS when SOC is lower than the preset SOCpro.
3.2. Simulation Results and Analysis
3.2.1. Data and Parameters
3.2.2. Simulation Results and Analysis
3.2.3. Analysis of Economic Benefits
4. Optimization of Multi-Scenario Parameters Based on PSO
4.1. Parameter Optimization Method Based on PSO
4.2. Multi-Scenario Variable Parameter Optimization
4.3. One-Year Running Effect Comparison
5. Introduction and Analysis of Experimental Results of the Demonstration System
5.1. Introduction of the Demonstration System
5.2. Analysis of Running Effect and Experimental Waveform
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Symbol | Description |
Ppv(t) | Photovoltaic power at time t |
PL(t) | Load power at time t |
The power margin | |
Pes(t) | Power of energy storage system |
Ppcc(t) | Power of PCC point |
Ces_unit | Cost per kWh of the ESS |
Crep | Total cost of replacing the batteries |
Elifecycle | Total energy of the ESS |
Cg_unit | Utility electricity price |
V(t) | The utility electricity price at time t |
Charge and discharge efficiency of the ESS | |
The maximum chargeable power of the ESS | |
Maximum dischargeable power of the ESS | |
Maximum absorbable power of the PCC | |
Maximum power the PCC point can provide | |
The abandoned power of PV | |
SOC(t) | The SOC of ESS at time t |
SOCmax | Maximum SOC limit |
SOCmin | Minimum SOC limit |
Pcut(t) | The cut power of unimportant load |
COSTt | Total electricity cost |
Mg | Electricity fee for the utility |
Mps | Policy subsidy income for distributed generation |
CBS | The loss cost of the ESS |
ICBS | Total cost of the ESS |
DAM | Loss coefficient of the ESS |
Ac | Equivalent throughput in the time period to be calculated |
Atotal | Equivalent throughput of the entire life cycle |
Equivalent throughput conversion factor | |
Comprehensive cost |
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Parameter | Value |
---|---|
Installed capacity of PV generation | 100 kW |
Battery energy storage capacity | 210 kWh |
Cost per kWh of the battery | 0.58 yuan |
Efficiency of ESS | 0.8 |
Battery maximum charge power | 60 kW |
Battery maximum discharge power | 100 kW |
Maximum utility supply power | 120 kW |
Maximum grid-connected power | 50 kW |
Peak | Valley | Flat | |
---|---|---|---|
Period | (9–12) (18–23) | (0–8) (23–0) | (12–18) (8–9) |
Price (yuan/kWh) | 0.9402 | 0.6351 | 0.3300 |
Scenario Number | SOCpro | SOCmin | Comprehensive Cost (yuan/Day) |
---|---|---|---|
Scenario 1 | 36.5 | 36.4 | −77.6 |
Scenario 2 | 100 | 30 | 284 |
Scenario 3 | 75.15 | 58.47 | 291.9 |
Scenario 4 | 100 | 30 | 578.8 |
Strategies | Electricity Cost | Loss Cost of the ESS | Comprehensive Cost (yuan) |
---|---|---|---|
Basic real-time control strategy | 22,108 | 18,024 | 40,132 |
Overall optimization parameters | 21,540 | 16,214 | 37,754 |
Optimizing parameters by scenarios | 20,538 | 15,649 | 36,187 |
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Guo, L.; Yang, Z.; Wang, Y.; Xu, H. Research on Multi-Scenario Variable Parameter Energy Management Strategy of Rural Community Microgrid. Appl. Sci. 2020, 10, 2730. https://doi.org/10.3390/app10082730
Guo L, Yang Z, Wang Y, Xu H. Research on Multi-Scenario Variable Parameter Energy Management Strategy of Rural Community Microgrid. Applied Sciences. 2020; 10(8):2730. https://doi.org/10.3390/app10082730
Chicago/Turabian StyleGuo, Lidong, Zilong Yang, Yibo Wang, and Honghua Xu. 2020. "Research on Multi-Scenario Variable Parameter Energy Management Strategy of Rural Community Microgrid" Applied Sciences 10, no. 8: 2730. https://doi.org/10.3390/app10082730
APA StyleGuo, L., Yang, Z., Wang, Y., & Xu, H. (2020). Research on Multi-Scenario Variable Parameter Energy Management Strategy of Rural Community Microgrid. Applied Sciences, 10(8), 2730. https://doi.org/10.3390/app10082730