An Optimal Method of Energy Management for Regional Energy System with a Shared Energy Storage
Abstract
:1. Introduction
- A regional energy system with a shared energy storage system is proposed for the coordinated operation of multiple MESs and multi-energy complementarities.
- To minimize the system’s daily operation costs, the strategy of energy management of the RES is proposed through the interaction of information. The method includes load integration and unified energy distribution to achieve efficient utilization of clean energy.
- The objective function for economic optimization is introduced, and the constraints of the system are analyzed. The problem is transformed into the capacity and economic optimum of the SESS, which is a mixed integer nonlinear programming (MINLP) problem. The Big-M method is used to solve the MINLP problem and good results are obtained.
- A case of the RES with an SESS is analyzed, and results indicate that the RES with an SESS can effectively improve the economy and environmental protection. Moreover, by comparing scenarios of no energy storage system, IESS, and SESS, the results also demonstrate that an SESS is the key way to reduce the daily operation costs.
- The indexes such as clean energy utilization, carbon emission, and grid peak shaving are proposed to evaluate the RES with an SESS. The simulation results demonstrate that the proposed method can effectively achieve environmental friendliness and reduce the system peak-to-valley difference.
2. Regional Energy System with a Shared Energy Storage System
3. Optimal Operation Strategy and Solution
3.1. Objective Function
3.2. System Model and Constraints
3.2.1. Power Balance
Electrical Power Balance
Thermal Power Balance
Cold Power Balance
3.2.2. Constraints of System Physical Characteristics
Constraint of Gas Turbine and Gas Boiler
Constraints of Energy Conversion
3.3. Solving Method
4. Case Study
4.1. Optimization Results
4.1.1. Load Integration
4.1.2. Optimization Results
4.2. Comparison of Different Scenarios
4.2.1. Different Scenarios
4.2.2. Index Improvement
- Clean energy consumption rate. The clean energy consumption rate is the proportion of wind power and solar energy that is converted into electricity. The higher the rate of clean energy consumption, the higher the level of utilization of renewable energy.
- External power purchase. External power purchases reflect the level of energy self-sufficiency within the system. The fewer external power purchases, the higher the level of self-sufficiency.
- Grid power peak-to-valley difference. The smaller the peak-to-valley difference is, the smaller the power fluctuation of the grid is, and the easier the system control and regulation.
- Pollutant emissions. The higher the pollutant emissions, the lower the environmental protection level of the system. Pollutant emissions are calculated by the formula below.
4.3. Sensitivity Analysis
4.3.1. Impact of the Service Fee of SESS on Daily Operating Costs
4.3.2. Impact of Electricity Tariff of SESS on Daily Operating Costs
5. Conclusions
- (1)
- The RES of electricity, heat, and cooling can significantly improve the capacity of clean energy consumption and meet the supply–demand of many different forms of energy, which can minimize the total cost while ensuring an environment-friendly premise.
- (2)
- The mentioned energy management method can realize the load integration of different MESs, which in turn can realize the unified dispatch of multi-energy and finally make the clean energy to be efficiently consumed.
- (3)
- It is concluded that users can effectively reduce operation costs and improve the utilization of clean energy by paying for shared energy storage services. Numerical results show that with an SESS built by the investor in the RES, the utilization of clean energy can be 100%, the operation costs can be reduced by up to 9.78%, the pollutant emission can be reduced by 3.92% and the peak-to-valley difference can be decreased by 20.03%. This can reduce the replacement of equipment.
- (4)
- This paper only considered the physical constraints of each electrical device within each system and did not consider the impact of voltage and frequency fluctuations within the system on the power supply. Current research has been conducted mainly on AC power flow constraints in distributed energy systems (e.g., [34]). The next study can focus on analyzing the impact of power fluctuations within the RES.
Author Contributions
Funding
Conflicts of Interest
Appendix A
Appendix B
Equipment | Maximum Power/kW | Climbing Power/(kW/h) |
---|---|---|
Gas Turbine | 1000 | 200 |
Absorption Chillers | 200 | / |
Gas Boiler | 1000 | 200 |
Heat Exchanger | / | / |
Electric Refrigeration Equipment | 1000 | / |
Attrition Rate | Energy Storage Efficiency | Energy Discharge Efficiency | Maximum Energy Storage State | Minimum Energy Storage State |
---|---|---|---|---|
0.001 | 0.95 | 0.95 | 90% | 20% |
Category | Time | Unit Price of Electricity (RMB/(kW·h)) |
---|---|---|
Peak | 8:00–12:00, 17:00–21:00 | 1.62 |
Flat | 12:00–17:00, 21:00–24:00 | 0.98 |
Valley | 0:00–8:00 | 0.45 |
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Scenarios | Equipment in a RES | |||||||
---|---|---|---|---|---|---|---|---|
IESS | SESS (Self) | SESS (Investor) | Gas Turbine | Gas Boiler | Electrical Chiller | Absorption Chiller | Heat Exchanger | |
1 | × | × | × | √ | √ | √ | √ | √ |
2 | √ | × | × | √ | √ | √ | √ | √ |
3 | × | √ | × | √ | √ | √ | √ | √ |
4 | × | × | √ | √ | √ | √ | √ | √ |
Service Fee | Capacity Cost | Power Cost | Annual O&M Cost |
---|---|---|---|
0.23 RMB/kW·h | 1200 RMB/kW·h | 1600 RMB/kW·h | 90 RMB/(a·kW) |
Scenario | Total Cost (RMB per Day) | Electrical Energy Storage Capacity(kW·h) |
---|---|---|
Scenario 1 | 22788 | / |
Scenario 2 | 21824 | 3796 |
Scenario 3 | 20822 | 2216 |
Scenario 4 | 20558 | 3338.1 |
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Jiao, X.; Wu, J.; Mao, Y.; Luo, W.; Yan, M. An Optimal Method of Energy Management for Regional Energy System with a Shared Energy Storage. Energies 2023, 16, 886. https://doi.org/10.3390/en16020886
Jiao X, Wu J, Mao Y, Luo W, Yan M. An Optimal Method of Energy Management for Regional Energy System with a Shared Energy Storage. Energies. 2023; 16(2):886. https://doi.org/10.3390/en16020886
Chicago/Turabian StyleJiao, Xianan, Jiekang Wu, Yunshou Mao, Weiming Luo, and Mengxuan Yan. 2023. "An Optimal Method of Energy Management for Regional Energy System with a Shared Energy Storage" Energies 16, no. 2: 886. https://doi.org/10.3390/en16020886
APA StyleJiao, X., Wu, J., Mao, Y., Luo, W., & Yan, M. (2023). An Optimal Method of Energy Management for Regional Energy System with a Shared Energy Storage. Energies, 16(2), 886. https://doi.org/10.3390/en16020886