Virtual Power Plant Optimization Process Under the Electricity–Carbon–Certificate Multi-Market: A Case Study in Southern China
Abstract
1. Introduction
2. VPP Optimization Framework Under the Multi-Market
2.1. Electricity–Carbon–Certificate Multi-Market
2.2. Optimization Assumptions and Framework
- Regarding the RPS, firstly, as the responsible entity, the VPP shall be subject to certain economic penalties if it fails to meet the RPS target, with the unit penalty equivalent to one GEC. Secondly, the annual RPS target can be disaggregated into daily target based on the RPS weights approved by the government and the daily load, and assessments can be carried out accordingly.
- In terms of CA, although the primary emission sources during VPP operation are CHP and electricity purchased from the grid, the root cause of VPP’s carbon emissions, when viewed from the essence of economic activity, lies in its responsibility to supply electricity and heat to the aggregated loads it serves. Drawing on Section 2.1, carbon trading is recognized as a significant means to address the externalities associated with the activities of entities. In this paper, it is stipulated that the CA for VPPs is calculated based on their load levels. Additionally, given the differences in settlement cycles across the multi–market, carbon trading settlement and assessment are conducted on a daily basis, with the carbon market adopting a stepped pricing mechanism. The difference between actual emissions and carbon allowances can be sold or purchased in carbon market. Finally, although some scholars have conducted relevant research on the mutual recognition, quota offsetting, or deduction in transactions involving products such as GECs, CA, and green electricity [36,37], under China’s current policy mechanisms, the trading of green electricity and GECs are managed separately by the NDRC, while CA and carbon trading are managed by the MEE. The outcomes of GEC trading do not impact the issuance, trading, or compliance of carbon quotas. Therefore, this paper assumes that CA will not be influenced by transactions involving GECs.
- Concerning GECs, according to the multi-market mechanism, GECs can be traded through two modes: “certificate–electricity integration” and “certificate–electricity separation.” This implies that when the consumption of renewable energy by the VPP exceeds the RPS target, it can adopt the “certificate–electricity separation” mode to separate GECs from the renewable energy and generate profits by selling them; conversely, if the consumption falls short of RPS target, GECs need to be purchased to meet the target; otherwise, it will face penalties.
3. Modeling and Solution
3.1. VPP Modeling
3.1.1. Objective Function
- Energy supply income
- CHP operational cost
- Balancing market cost
- PV cost
- GEC trading cost
- Carbon trading cost
3.1.2. Constrains
- Energy supply and demand balance
- Interconnection bus/pipeline capacity
- PV output
- CHP output
- Typical elastic load
3.2. Solution
- I represents the agent in the MDP, which is the VPP.
- represents the state set, which reflects the decision-making environment faced by the VPP at each time step. , where , and m describes the characteristic dimensions of the environment in which the VPP operates, namely the constraints mentioned in Section 3, such as the PV output, balancing market prices, the interconnection bus/pipeline capacity, etc.
- is the action set, representing the possible decisions that the VPP can take at each time step. , where , and n represents the dimensions of the VPP decision variables. Based on the assumptions, the decision variables include the CHP output , PV output , electricity that the VPP declares to purchase/sell in the balancing market , and elastic load scheduling . In the MDP, the decision variables mentioned above can be denoted as , , , and . Each decision must satisfy the constraints outlined in Section 3.
- represents the transition process to the next decision-making environment state after the VPP takes certain decisions (actions).
- is the immediate reward function, representing the reward that the VPP can obtain after taking certain decisions/actions. According to Section 3, the reward that the VPP can receive in the environmental state at time t is as follows:
- is the discount factor, representing the VPP’s preference for immediate rewards versus long-term rewards. For , the closer is to 0, the more the VPP values immediate rewards. Conversely, the more it values long-term rewards.
4. Results and Discussions
4.1. Basic Data
4.2. Scenarios and Results
4.3. Discussions
- (a)
- VPP Strategy
- (b)
- Environmental performance
- (c)
- Economic performance
5. Conclusions
- Whether participating solely in the certificate market, the carbon trading market, or engaging in the electricity–carbon–certificate multi-market, VPPs can significantly enhance their environmental performance. This includes improving their renewable energy consumption capacity and reducing total carbon emissions. Additionally, participating in the multi-market can broaden VPPs’ income streams and notably increase their total revenues. However, compared to energy supply income, the proportion of income derived from carbon trading, electricity sales in the balancing market, and certificate trading within the total income remains relatively limited. In the four scenarios analyzed in the case study, energy supply revenue accounted for over 80% of the total income in each case. Notably, the income from certificate trading accounts for an extremely minor portion of VPPs’ total income. Specifically, in the case analysis, green certificate trading income accounted for less than 1%, significantly lower than both carbon trading income and electricity sales income in the balancing market. This is attributed to factors such as the currently low price of GECs in China.
- Participating in the electricity–carbon–certificate multi-market can enhance VPPs’ willingness and ability to undertake the uncertainty risks associated with renewable energy, engage in DR programs, and participate in electricity sales in balancing market. Specifically, in the case study, the VPP under the multi-market adopted more aggressive dispatch strategies during peak PV output periods, resulting in a 31.11% increase in renewable energy consumption compared to the scenario without multi-market participation. This is of great importance for tapping into demand-side resources, facilitating the source–grid–load interaction, enhancing the level of renewable energy integration, and improving the overall energy structure.
- From a dispatch strategy perspective, under the multi-market, VPP entities can moderately increase the output plans for CHP and renewable energy generators within a certain range. This is because the potential revenues from certificates trading, carbon trading, and reduced electricity procurement costs can effectively offset—or even surpass—the risks and costs associated with renewable energy uncertainty. However, the timing and extent of output plan adjustments must be analyzed based on the differential margins among retail electricity price, balancing market price, and generation costs.
- Compared to participating solely in the certificate market, engaging in the carbon trading market or the multi-market yields more significant improvements in both the economic and environmental performances of VPPs. Taking the case study as an example, when the VPP participated in the carbon trading market, the profits increased by 33.65%, renewable energy consumption rose by 11.71%, and carbon emissions decreased by 27.97%. When participating in the multi-market, profits increased by 38.49%, renewable energy consumption rose by 18.79%, and carbon emissions decreased by 38.47%. On one hand, this can be attributed to the relatively high prices in carbon trading market and the stepped pricing mechanism. On the other hand, it is linked to the multiple benefits derived from consuming renewable energy electricity under the carbon market or the multi-market. These benefits include the increase in expected income from GECs and carbon trading at the end of the dispatch period, as well as a reduction in the expected penalties for non-compliance with RPS.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Items | Value | Units |
---|---|---|
CHP capacity | 10 | MW |
CHP ramp rate , | ±2 | MW/h |
CHP carbon emission coefficients |
= 0.01 = 0.2 = 0.012 | / |
CHP thermoelectric coupling coefficients |
= 0.44 = 45.4 = 0.23 = 0.5 | / |
CHP efficiency coefficients | 0.9 | / |
PV capacity | 10 | MW |
PV LCOE cost | 250 | Yuan/MWh |
Bus capacity | 5 | MW |
Pipeline capacity | 1500 | Nm3 |
Grid carbon emission factor | 0.85 | tCO2e/MWh |
Scenarios | GEC Market (RPS) | Carbon Market (CA) |
---|---|---|
S1 | Unimplemented | Unimplemented |
S2 | RPS weighting = 15%, = = 50 CNY/MWh. | Unimplemented |
S3 | Unimplemented | 100% free CA; benchmark price = 100 CNY/tCO2e; carbon emission intervals in the stepped carbon trading = 10%; pricing adjustment factor = = 10%; CA weight = 0.7. |
S4 | RPS weighting = 15%, = = 50 CNY/MWh. | 100% free CA; benchmark price = 100 CNY/tCO2e; carbon emission intervals in the stepped carbon trading = 10%; pricing adjustment factor = = 10%; CA weight = 0.7. |
Items | S1 | S2 | S3 | S4 |
---|---|---|---|---|
Energy supply income | 156,633.56 | 157,974.54 | 158,005.38 | 157,905.99 |
CHP cost | 44,285.50 | 52,524.36 | 58,362.51 | 63,983.05 |
Balancing market cost | 20,669.13 | 10,708.5 | 2305.43 | −4,325.41 |
PV cost | 14,259.25 | 15,739.25 | 17,581.75 | 18,696.00 |
GEC item | / | 1449.74 | / | 2044.58 |
Carbon trading item | / | / | 28,657.37 | 30,553.59 |
VPP revenue | 77,419.68 | 80,452.19 | 108,413.06 | 112,150.51 |
Items | Convergence Characteristics | MDP | GA |
---|---|---|---|
S1 | Value (CNY) | 77,419.68 | 75,901.65 |
Time (s) | 21.64 | 15.52 | |
S2 | Value (CNY) | 80,452.19 | 76,621.13 |
Time (s) | 26.92 | 16.12 | |
S3 | Value (CNY) | 108,413.06 | 96,797.37 |
Time (s) | 27.51 | 15.91 | |
S4 | Value (CNY) | 112,150.51 | 97,522.18 |
Time (s) | 29.19 | 16.22 |
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Xu, Y.; Liao, Y.; Kuang, S.; Ma, J.; Wen, T. Virtual Power Plant Optimization Process Under the Electricity–Carbon–Certificate Multi-Market: A Case Study in Southern China. Processes 2025, 13, 2148. https://doi.org/10.3390/pr13072148
Xu Y, Liao Y, Kuang S, Ma J, Wen T. Virtual Power Plant Optimization Process Under the Electricity–Carbon–Certificate Multi-Market: A Case Study in Southern China. Processes. 2025; 13(7):2148. https://doi.org/10.3390/pr13072148
Chicago/Turabian StyleXu, Yanbin, Yi Liao, Shifang Kuang, Jiaxin Ma, and Ting Wen. 2025. "Virtual Power Plant Optimization Process Under the Electricity–Carbon–Certificate Multi-Market: A Case Study in Southern China" Processes 13, no. 7: 2148. https://doi.org/10.3390/pr13072148
APA StyleXu, Y., Liao, Y., Kuang, S., Ma, J., & Wen, T. (2025). Virtual Power Plant Optimization Process Under the Electricity–Carbon–Certificate Multi-Market: A Case Study in Southern China. Processes, 13(7), 2148. https://doi.org/10.3390/pr13072148