Adjustable Capability Evaluation of Integrated Energy Systems Considering Demand Response and Economic Constraints
Abstract
:1. Introduction
- (1)
- Considering the coupling of multiple types of energy forms in the IES and IES’s interaction with upper-level energy supply systems, an aggregating model for demonstrating the adjustable capacity of the IES is proposed in this paper.
- (2)
- Both demand response and economic constraints are involved in the proposed model, and a multi-objective optimization method is proposed to identify the relevant parameters in the proposed aggregating model.
2. IES Modeling
2.1. Structure of the IES
2.2. Mathematical Model
2.2.1. Renewable Energy
2.2.2. Electric Boiler and Gas Boiler
2.2.3. CHP System
2.2.4. P2G Device
2.2.5. Energy Storage Device
2.3. Demand Respond
2.3.1. IDR Modeling
- (1)
- Shiftable loads
- (2)
- Transferable loads
- (3)
- Reducible loads
2.3.2. PDR Modeling
3. Economic Costs of an IES
3.1. Energy Purchase Cost and Constraints
3.2. Wind and Photovoltaic Abandonment Costs
3.3. Degradation Cost of Energy Storage
3.4. Carbon Emission Cost
3.5. Demand Response Cost
4. Adjustable Capacity Evaluation Model for an IES
4.1. Objective Function
4.2. Constraints
- (1)
- Power balance constraints
- (2)
- Total cost constraint
4.3. NBI-Based Multi-Objective Solving
- (1)
- Solving for the optimal values of the two objective functions:
- (2)
- Normalization: The solved objective function values are normalized and the normalized objective function is shown in Formula (43).
- (3)
- Solving single-objective optimization problems
5. Case Study
5.1. Basic Data
5.2. Results Analysis
5.2.1. Adjustable Capacity in Scenario I
5.2.2. Influence of Demand Response on the Adjustable Capability of the IES
5.2.3. Influence of Economic Constraints on the Adjustable Capability of the IES
6. Conclusions
- (1)
- The adjustable capacity of an IES can be modeled as virtual energy storage, which can be further applied into existing dispatching architecture. Many factors including renewable energy generation, multiple types of energy storage, and demand response can impact the adjustable capacity of an IES. Specifically, both energy storage and demand response can be adjusted to extend the adjustable capacity.
- (2)
- Economic constraints limit the adjustable capacity of an IES by affecting the operation of a variety of equipment. The adjustable capacity is significantly reduced with economic constraints, which indicates that the regulation power provided by the IES to the UESS causes extra operational costs. The IES can adjust its adjustable capacity by changing the budget, which makes the IES more competitive in the market.
- (3)
- Due to the energy conversion of multi-energy sectors, the electricity and natural gas demands of the IES for the UESS are deeply coupled. The electricity demand decreases while the natural gas demand increases, and the coupling relationship functions can be pictured using proposed multi-objective methods.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Coupling Device | Maximum/Minimum Power | Conversion Efficiency | Rate of Climb |
---|---|---|---|
P2G | 1000/0 | 0.85 | |
EB | 500/0 | 0.85 | |
GB | 1000/0 | 0.9 | |
CHP | Generating power: 1000/0 | 0.4 | Uphill rate: 100 |
Heating power: 1333.33/0 | 0.3 | Downhill rate: −50 |
Energy Storage Device | Maximum Reserves | Initial Reserves | Maximum Charge/Discharge Power | Charge/Discharge Efficiency |
---|---|---|---|---|
Storage battery | 3000 | 500 | 250/250 | 0.98/0.98 |
Gas storage | 3000 | 500 | 250/250 | 0.98/0.98 |
Heat storage | 4000 | 0 | 1000/1000 | 0.95/0.9 |
Load Type | Time Period of Operation | Compensation Price/CNY·kWh−1 | ||
---|---|---|---|---|
Shiftable electrical loads A | 2 | 5:00–20:00 | 250 | 0.2 |
Shiftable electrical loads B | 3 | 7:00–21:00 | 250 | 0.2 |
Shiftable heat loads | 3 | 5:00–19:00 | 450 | 0.1 |
Transferable electrical loads | 4 | 0:00–24:00 | 250 | 0.3 |
Load Type | Maximum number of reductions | Compensation price/CNY·kWh−1 | ||
Reducible electrical loads | 8 | 0.4 | ||
Reducible heat loads | 8 | 0.2 |
Scenario | IDR | PDR | Economic Constraints |
---|---|---|---|
Ⅰ | × | × | × |
Ⅱ | √ | × | × |
Ⅲ | × | √ | × |
Ⅳ | √ | × | √ |
Ⅴ | × | √ | √ |
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Li, Y.; Li, R.; Shi, L.; Wu, F.; Zhou, J.; Liu, J.; Lin, K. Adjustable Capability Evaluation of Integrated Energy Systems Considering Demand Response and Economic Constraints. Energies 2023, 16, 8048. https://doi.org/10.3390/en16248048
Li Y, Li R, Shi L, Wu F, Zhou J, Liu J, Lin K. Adjustable Capability Evaluation of Integrated Energy Systems Considering Demand Response and Economic Constraints. Energies. 2023; 16(24):8048. https://doi.org/10.3390/en16248048
Chicago/Turabian StyleLi, Yang, Rongqiang Li, Linjun Shi, Feng Wu, Jianhua Zhou, Jian Liu, and Keman Lin. 2023. "Adjustable Capability Evaluation of Integrated Energy Systems Considering Demand Response and Economic Constraints" Energies 16, no. 24: 8048. https://doi.org/10.3390/en16248048
APA StyleLi, Y., Li, R., Shi, L., Wu, F., Zhou, J., Liu, J., & Lin, K. (2023). Adjustable Capability Evaluation of Integrated Energy Systems Considering Demand Response and Economic Constraints. Energies, 16(24), 8048. https://doi.org/10.3390/en16248048