Coordinated Operation Strategy for Equitable Aggregation in Virtual Power Plant Clusters with Electric Heat Demand Response Considered
Abstract
:1. Introduction
1.1. Background and Motivation
1.2. Literature Review
1.3. Contributions
- (1)
- It puts forward differentiated modeling of disparate types of VPPs and introduces an LA as the control center of the cluster. This greatly optimizes the efficiency of schedulable resource utilization within and sets up an internal sharing framework in the VPP cluster.
- (2)
- Acknowledging the influence of electricity prices on demand response, it integrates a flexible shared electricity pricing mechanism within the cluster and encourages all VPPs to publish their prices equitably. This stimulates VPP participation in collaborative scheduling, hence improving the economic operations of VPP clusters.
- (3)
- By recognizing that both the supply and demand sides possess Demand Response (DR) capabilities, the paper brings in a flexible dual response mechanism to further limit the operational costs of the VPP clusters.
2. Framework for VPP Clusters with Flexible Supply and Demand Response Mechanisms and Elastic Shared Electricity Pricing
2.1. Aggregation Unit
2.2. Load Type
- (1)
- Fixed Load: Both electric and thermal loads of fixed nature do not participate in DR.
- (2)
- Movable Load: The users can choose different methods of energy supply to meet their needs in the same time period, with examples from day-to-day life instances being as follows: 1. For domestic hot water needs, users can opt for thermal power supplied by the heat pipeline, or they might choose electric or gas water heaters; 2. for heating needs, users can choose thermal power from the heat pipeline or opt for electric air conditioning; 3. for cooking needs, users have the choice of using induction stoves or gas stoves, etc. The DR of movable loads does not alter the user’s energy needs and thus does not impact them.
- (3)
- Reducible Load: Loads able to withstand certain disruptions, power reduction, and reduced operation time, and they can be partially or wholly reduced depending on the supply-demand circumstances. The power supply time for these loads can be pragmatically adjusted, the loads need to be entirely shifted, and the electricity usage time spans multiple scheduling periods.
2.3. Flexible Shared Electricity Pricing Mechanism
3. VPP Cluster Model Driven by Flexible Shared Electricity Pricing
3.1. Flexible Shared Electricity Pricing Model
3.2. Flexible Dual Response Model for Supply and Demand
- (1)
- Constraint relation between the electric power output of the gas turbine and the gas consumption:
- (2)
- Constraints between the electricity consumption of the gas boiler and ground-source heat pump and their respective heat power outputs:
- (3)
- Constraints on Energy Storage Charging and Discharging
- (4)
- Response to Electric and Thermal Load Requirements
- (5)
- Electric and Thermal Power Balance Constraints
3.3. Objective Function
4. Case Simulation
- Scenario 1 (S1) operates under grid electricity purchase and sales pricing without the intervention of heat and electricity supply-demand responses;
- Scenario 2 (S2) involves a sharing of electricity pricing within the cluster, disregarding supply and demand-side heat and electricity responses;
- Scenario 3 (S3) discards in-cluster shared electricity pricing but includes heat and electricity supply-demand response mechanisms;
- Scenario 4 (S4) is inclusive of both internal cluster shared electricity pricing and heat and electricity supply-demand responses.
4.1. Fundamental Data
- (1)
- Electricity Load Forecast for Each VPP
- (2)
- Prediction of DRE Output Within Each VPP
- (3)
- Prediction of Heat Loads Within Each VPP
4.2. Analysis of Shared Electricity Pricing and Optimization of Operating Cost Results
4.3. Optimization Outcomes for Electrical Load of Each VPP
- (1)
- Optimization Results of Electricity Load Supply for Each VPP
- (2)
- Optimization Results of Electricity Load Response Strategy for Each VPP
4.4. Optimization Outcomes for Heat Load of Each VPP
- (1)
- Optimization Results of Heat Load Supply for Each VPP
- (2)
- Optimized Results of the Heat Load Response Strategy for Each VPP
5. Conclusions
- (1)
- The study introduces a flexible shared electricity price mechanism, superseding the conventional timeslot fixed electricity prices. By adjusting intermediate electricity prices through carbon emission indicators, an internal flexible shared electricity price that takes into account carbon emissions is devised. This incentivizes and guides each VPP to participate in regulation, effectively slashing the operation costs and carbon emissions of the cluster, thus facilitating a more carbon-conscious operation.
- (2)
- Under the flexible shared electricity pricing mechanism, a response strategy for supply side appliances is established. By flexibly managing the output of various electrical and heat generation units, the utilization efficiency improves within the VPP cluster, and the dependence on external power grids decreases. As such, the VPP cluster lessens its impact on the power grid, mitigates grid fluctuations, minimizes the dependency on the grid, and enhances system independence.
- (3)
- In regard to conducting demand-side responses for the electrical and thermal loads within the cluster, aiming to reduce and shift loads for the purpose of minimal operating costs, through effective energy optimization scheduling, it is noticeable that operation costs of the VPP can be significantly reduced, thereby making way for increased consumption of renewable energy.
- (1)
- Extensive applications and verification: Expand the research to various geographical and climatic conditions, analyzing how these elements influence the operational efficiency and economic aspect of VPPs. Carry out pilot projects in multiple regions, gather data from actual operations, and validate the universality of the model as well as the effectiveness of the adjustment tactics.
- (2)
- Technological and algorithmic innovation: Investigate the utilization of AI and ma-chine learning technologies in VPP management, particularly in terms of load forecasting and energy dispatch optimization. By the introduction of sophisticated algorithms, boost the system’s response speed and the precision of decision-making.
- (3)
- Policy mechanism research: Examine the effects of various market policies and incentive measures on VPP operation. Thoroughly analyze the long-term influences of policy changes on the energy market, propose adaptable operational strategies, and deal with the uncertainties of the market and policies.
- (4)
- Environmental impact assessment: From a sustainability and environmental conservation perspective, evaluate the environmental impacts of VPP operations. Study ways to reduce carbon emissions by optimizing dispatch strategies, supporting the achievement of global carbon reduction goals.
- (5)
- System Integration: Investigate the integration potential of VPPs with other energy systems like smart buildings and electric vehicle charging networks. By implementing cross-system collaboration, energy can be used and managed more efficiently, leading to an enhanced flexibility and resilience of the overall energy system.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Equipment | Electrical Output Constraints/kW | Thermal Output Constraints/kW |
---|---|---|
Gas turbine | 0–1000 | 0–1877 |
Gas boiler | / | 0–1000 |
Heat pump | / | 0–600 |
Equipment | /kWh | /kW | /kWh | /kWh | /kWh | |
---|---|---|---|---|---|---|
Battery | 500 | 200 | 250 | 50 | 450 | 0.90 |
Parameters | Numerical Values |
---|---|
0.88 | |
0.58 | |
1.2 | |
0.34 | |
0.4 | |
0.92 | |
4.5 | |
0.15 | |
0.15 |
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VPP Optimization Model | Energy Cooperation Methods | |||||
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Carbon Emission | Cluster Control | Demand Response | Flexible Dual Response to Supply and Demand | Internal Electricity Price | LA Comprehensive Control | |
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This paper | √ | √ | √ | √ | √ | √ |
Operating Cost | Electricity Purchased/kW | Electricity Sold/kW | Carbon Emissions/kg | ||||
---|---|---|---|---|---|---|---|
VPP1/RMB | VPP2/RMB | VPP3/RMB | Total Cost/RMB | ||||
S1 | 3490.2 | 13,256.5 | 1198.4 | 17,945.1 | 16,538.8 | 11,186.1 | 60,918.1 |
S2 | 4556.8 | 11,199.7 | 503.0 | 16,260.0 | 8801.5 | 4788.6 | 60,694.7 |
S3 | 3034.6 | 12,584.8 | 678.7 | 16,298.1 | 15,967.5 | 13,222.8 | 58,958.9 |
S4 | 4095.6 | 11,452.9 | 304.4 | 15,853.0 | 5862.0 | 9107.2 | 57,694.2 |
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Liu, Z.; Zhu, R.; Kong, D.; Guo, H. Coordinated Operation Strategy for Equitable Aggregation in Virtual Power Plant Clusters with Electric Heat Demand Response Considered. Energies 2024, 17, 2640. https://doi.org/10.3390/en17112640
Liu Z, Zhu R, Kong D, Guo H. Coordinated Operation Strategy for Equitable Aggregation in Virtual Power Plant Clusters with Electric Heat Demand Response Considered. Energies. 2024; 17(11):2640. https://doi.org/10.3390/en17112640
Chicago/Turabian StyleLiu, Zixuan, Ruijin Zhu, Dewen Kong, and Hao Guo. 2024. "Coordinated Operation Strategy for Equitable Aggregation in Virtual Power Plant Clusters with Electric Heat Demand Response Considered" Energies 17, no. 11: 2640. https://doi.org/10.3390/en17112640
APA StyleLiu, Z., Zhu, R., Kong, D., & Guo, H. (2024). Coordinated Operation Strategy for Equitable Aggregation in Virtual Power Plant Clusters with Electric Heat Demand Response Considered. Energies, 17(11), 2640. https://doi.org/10.3390/en17112640