A Study on the Environmental and Economic Benefits of Flexible Resources in Green Power Trading Markets Based on Cooperative Game Theory: A Case Study of China
Abstract
1. Introduction
- How can a collaborative game model effectively integrate environmental equity value (carbon emission rights) and electrical energy value to resolve conflicts among multiple stakeholders (generators, grid, users, regulators) in green power trading markets?
- What is the optimal operational strategy for flexible resources (e.g., energy storage) under this framework to maximize synergistic environmental and economic benefits, considering dynamic weight adjustment?
- How do key parameters (carbon price ‘pc’, peak–valley price difference ‘Δλ’, environmental weight ‘α’) influence total revenue composition, carbon emission intensity, and flexible resource utilization efficiency?
- What are the practical policy implications and inherent limitations of the proposed model for designing and operating efficient green power markets?
2. Models and Methods
2.1. Game Theory
2.1.1. Cooperative Games
2.1.2. Non-Cooperative Games
2.2. A Collaborative Game Model for Environmental Rights Value and Electrical Energy Value
2.2.1. Construction of Cooperative Game Model
- 1.
- Utility function definition
- 2.
- Methods for quantifying value
- 3.
- Equilibrium solving
2.2.2. Shapley Value-Based Revenue Allocation Mechanism
2.3. Flexible Resource Operation Model Based on Benefit Maximization
2.3.1. Objective Function
2.3.2. Constraints
3. Results and Analysis
3.1. Parameter Setting
3.2. Impact of Environmental Weight Coefficient on Revenue
- (1)
- Failure of pure economic orientation (α = 0): When the model only pursues the value of electrical energy, the charging and discharging behavior of the energy storage system is constrained by the peak–valley electricity price difference and high operation and maintenance costs. Simulations show that although the charging power during valley periods reaches the maximum value, the discharge revenue during peak periods cannot cover the operation and maintenance costs, leading to negative total revenue.
- (2)
- Compensatory effect of environmental rights (α > 0): With the introduction of carbon emission trading, environmental revenue is directly injected into the total revenue through carbon allowance surpluses. For example, when α = 0.5, annual carbon emissions decrease by 2963.52 tonnes. Calculated at a carbon price of 50 CNY/tonne, environmental revenue contributes 6.8566 × 107 CNY, accounting for 99.9% of the total revenue. At this point, while the economic revenue remains negative, the compensation from environmental rights enables the total revenue to reach 6.8554 × 107 CNY, verifying the necessity of marketization of environmental rights under the dual-carbon policy.
3.3. Analysis of Rigid Constraints of Operation and Maintenance Cost and Cycle Times
- (1)
- Charging-Discharging Power Boundary Constraints: The energy storage power is strictly limited between Pmin = 500 kW and Pmax = 10,080 kW. Although the variation in α affects the objective function weights, the optimization algorithm cannot override the physical constraints, leading to a constant total charging-discharging amount. This results in only minor calculation errors in operation and maintenance costs.
- (2)
- SOC Dynamic Balance Constraints: The upper and lower limits of the state of charge (SOC) enforce that the charging-discharging strategy completes daily balancing. For example, when α = 0.5, the SOC increases from 50% to 90% during valley periods and decreases to 20% during peak periods, with an equivalent full cycle depth of 45.9% (0.459 cycles),which is below the lithium-ion energy storage life management threshold (<1 cycle/day). This result indicates that while the model ensures economic and environmental benefits, it effectively extends the service life of energy storage equipment.
3.4. Pie Chart of Environmental Revenue Composition
- (1)
- Direct Emission Reduction-Dominated Revenue: Direct emission reduction revenue accounts for approximately 85%, primarily stemming from the emission reduction target constraint set in the model (γ = 12%). Taking peak periods as an example, the baseline annual carbon emissions are 14,818 tonnes, and the actual emissions are reduced to 11,854.48 tonnes through energy storage integration of renewable energy, with an emission reduction of 2963.52 tonnes, contributing an environmental revenue of 1.482 × 106 CNY (≈215,000 USD).
- (2)
- Marginal Contribution of Clean Energy Consumption: The clean energy consumption revenue is calculated by the proportion of renewable energy in energy storage charging power, but its weight is only 0.1 times. For instance, the consumption revenue during valley periods is 6.8 × 105 CNY (≈99,000 USD), accounting for about 15% of the total environmental revenue. This indicates that the current model relies more on the direct emission reduction mechanism, and future improvements should further activate the consumption revenue by increasing the consumption weight or introducing green certificate trading.
3.5. Time-Series Optimization Characteristics of Energy Storage Operation Strategy
3.5.1. Time-of-Use Operational Patterns, Safety-Benefit Balance, and Strategic Charging-Discharging Behavior
- (1)
- Taking α = 0.5 as an example, Figure 2a shows that the energy storage system operation exhibits significant time-of-use characteristics. During valley periods (0:00–8:00), the electricity price drops to 0.3 CNY/kWh (≈0.04 USD/kWh), and the renewable energy proportion reaches 80%. The model prioritizes charging at maximum power, with SOC increasing from 50% to 90%. The daily green power consumption is 8.064 × 104 kWh, accounting for 32% of the total valley-period power generation. During peak periods (16:00–24:00), the electricity price rises to 1.2 CNY/kWh (≈0.17 USD/kWh), and the energy storage discharges at maximum power, with SOC decreasing from 90% to 20%, releasing 8.064 × 104 kWh of electricity. The arbitrage revenue reaches 9.6768 × 104 CNY (≈14,000 USD). Meanwhile, carbon emissions during peak periods are reduced by 2963.52 tonnes, with environmental revenue reaching 1.482 × 106 CNY (≈215,000 USD), achieving synergistic amplification of economic and environmental benefits.
- (2)
- As shown in Figure 2b, the SOC fluctuates strictly within the safety range (20–90%) without any threshold violations, avoiding equipment life damage. The SOC trajectory is fully synchronized with time-of-use electricity prices, with an average daily cycle count of 0.459, which is below the lithium-ion energy storage life management threshold (<1 cycle/day). This indicates that the model achieves a balance between revenue maximization and equipment durability.
- (3)
- Strategic Charging-Discharging Behavior involves maintaining the State of Charge (SOC) at 90% during off-peak hours (8:00–16:00), which reflects two operational considerations: economic rationality, as the flat electricity price (0.8 CNY/kWh) provides insufficient arbitrage margin compared to the battery degradation cost of Cbat = 0.002 CNY/kWh/cycle, with sensitivity analysis showing that discharging during this period would reduce net revenue by approximately 12.7%; and system reliability, as maintaining a high SOC enables rapid response capability for frequency regulation contingencies.
3.5.2. SOC Estimation and Tracking
4. Discussion
4.1. Addressing the Research Questions
4.1.1. Resolving Multi-Stakeholder Conflicts Through Collaborative Game Design
4.1.2. Optimal Flexible Resource Operation Strategy
- Economic Rationality: The flat electricity price (0.8 CNY/kWh ≈ 0.12 USD/kWh) offers insufficient arbitrage margin to justify the battery degradation cost (Cbat = 0.002 CNY/kWh/cycle ≈ 0.0003 USD/kWh/cycle). Sensitivity analysis confirms discharging during this period would decrease net revenue by ~12.7%.
- System Reliability: Maintaining high SOC provides crucial spinning reserve capacity for rapid response to potential grid contingencies, enhancing system stability. This strategy successfully balances the pursuit of arbitrage revenue (Vp), maximization of environmental benefit via carbon displacement (Ve), and provision of ancillary services. The resulting 1.74-fold increase in cycle utilization rate (0.459 cycles/day) compared to purely economic strategies (α = 0) underscores the effectiveness of the dual-objective optimization.
4.1.3. Sensitivity Analysis and Parameter Impact
- Carbon Price (pc): As pc increases (e.g., from 50 to 80 CNY/ton ≈ 7.25 to 11.6 USD/ton), the environmental revenue component (Ve) dominates even more significantly (rising to >99.95% of total revenue at pc = 80 CNY/ton). This underscores the carbon market’s critical role in incentivizing low-carbon dispatch. Higher pc makes emission reduction via flexible resources like storage more economically attractive, accelerating decarbonization.
- Peak–valley price difference (Δλ) expansion Δλ (e.g., to 1.2 CNY/kWh ≈ 0.17 USD/kWh) is the primary driver for turning negative economic revenue (Vp) under pure economic orientation (α = 0) into positive values. This highlights the importance of robust time-of-use pricing or capacity/ancillary services markets to fully assess the flexibility offered by resources such as storage and ensure their economic viability.
- Environmental Weight Coefficient (α): As shown in Table 2 and Figure 1, α exerts a powerful and near-linear control over the composition of total revenue. Increasing α systematically shifts revenue from purely economic Vp) towards environmental (Ve), allowing precise tuning of the market’s environmental–economic balance based on policy goals or seasonal variations (e.g., higher ‘α’ during high-emission periods). The model reveals that α = 0.5 achieves near-optimal total revenue under the baseline scenario while ensuring environmental benefits dominate (90% share).
4.2. Policy Implications
4.3. Limitations and Directions for Improvement
- (1)
- Negative economic revenue issue: When α = 0, relying solely on electricity price arbitrage cannot cover operation and maintenance (O&M) costs, highlighting the insufficiency of the current time-of-use pricing mechanism. Improvement directions include introducing capacity price compensation or demand response subsidies, such as additional incentives for energy storage providing frequency regulation services.
- (2)
- Deviations from static parameter assumptions: The carbon price (50 CNY/tonne ≈ 7.25 USD/ton) and peak–valley electricity price difference (0.9 CNY/kWh ≈ 0.13 USD/kWh) are fixed, without considering market fluctuations. Future work could incorporate a stochastic programming model to simulate multi-scenario distributions of carbon prices and electricity prices.
5. Conclusions
- We constructed an “environmental rights–electric energy value” collaborative game model that successfully resolves multi-stakeholder conflicts. By combining non-cooperative game elements to capture inherent competition and cooperative game theory (Shapley value) for fair surplus distribution, the model integrates carbon externality into energy value. Dynamic weight adjustment (α) provides a quantifiable policy lever for prioritizing environmental or economic goals.
- For key flexible resources like energy storage, the model identifies the optimal operation strategy: maximize charging during low-price, high-renewable valley periods, maximize discharging during high-price, high-carbon peak periods, and maintain high State-of-Charge (SOC) during off-peak periods for economic viability (insufficient arbitrage margin) and system reliability (spinning reserve). Under typical conditions (carbon price pc = 50 CNY/ton ≈ 7.25 USD/ton, peak–valley spread Δλ = 0.9 CNY/kWh ≈ 0.13 USD/kWh), an environmental weight α = 0.5 maximizes total revenue (6.857 × 107 CNY ≈ 9.94 × 106 USD) with environmental benefits constituting 90%, while maintaining safe operation (0.459 cycles/day) that extends equipment lifespan.
- Key parameters significantly influence outcomes:
- (1)
- Carbon price (pc) is the primary driver of environmental revenue dominance.
- (2)
- Peak–valley price difference (Δλ) is crucial for achieving positive economic revenue and storage viability.
- (3)
- Environmental weight (α) provides precise linear control over the environmental–economic revenue balance. Environmental benefits were found to consist predominantly (85%) of direct emission reduction, with clean energy consumption contributing 15%.
- Compared with existing studies, this research makes three key advancements:
- (1)
- Integration of carbon–electricity dual-value synergy: Unlike prior works that optimize economic benefits (e.g., electricity price arbitrage [11,19]) or environmental goals (e.g., emission reduction [26]) in isolation, our collaborative game model quantitatively unifies carbon emission rights and electrical energy values into a single utility function (Equation (3)). This enables dynamic trade-offs between environmental and economic objectives via the weight coefficient α, resolving stakeholder conflicts through Shapley value allocation (Equation (8)).
- (2)
- Time-coupled flexible resource operation: While existing strategies focus on short-term economic gains (e.g., daily price differences 13), we propose cross-period environmental rights reserves (Section 2.3.2) and strategic SOC maintenance (Section 3.5). For instance, holding high SOC (90%) during off-peak hours balances degradation costs with spinning reserve needs—a feature absent in the current literature.
- (3)
- Policy-adaptive parameter design: Our model explicitly quantifies how carbon price (pc), peak–valley spreads (Δλ), and environmental weight (α) jointly determine optimal outcomes (Table 3). This provides regulators with levers to calibrate market rules (e.g., raising pc to prioritize emission reduction).
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Parameter Name | Parameter Category | Value | Value (Approx. USD) 1 |
---|---|---|---|
Scheduling cycle | Time scale Carbon | 24 h | — |
Carbon price(pc) | Carbon emissions market | 50 CNY/ton | 7.25 USD/ton |
Emission Reduction Target Ratio(γ) | 12% | — | |
Peak Period Electricity Price | Time-of-use tariff | 1.2 CNY/kWh | 0.17 USD/kWh |
Off-peak Period Electricity Price | 0.8 CNY/kWh | 0.12 USD/kWh | |
Valley Period Electricity Price | 0.3 CNY/kWh | 0.04 USD/kWh | |
Peak Period Electricity Price | 1.2 CNY/kWh | 0.17 USD/kWh | |
Peak Period Output Coefficient | Renewable energy | 20% | — |
Off-peak Period Output Coefficient | 50% | — | |
Valley Period Output Coefficient | 80% | — | |
Maximum Charge–Discharge Power | Energy storage systems | 10,080 kW | — |
Charge–Discharge Efficiency | 0.9, 0.93 2 | — | |
Initial SOC | 0.5 | — |
Environmental Weight | Total Revenue | Economic Revenue | Environmental Revenue | Operation Maintenance Cost |
---|---|---|---|---|
0 | −2581.3 | −1791.2 | 0 | 790.1 |
0.05 | 6.839 × 106 | −10,988 | 6.8566 × 106 | 6666.1 |
0.1 | 1.3696 × 107 | −10,410 | 1.3713 × 107 | 6666.1 |
0.15 | 2.0553 × 107 | −9831.7 | 2.057 × 107 | 6666.1 |
0.2 | 2.7411 × 107 | −9253.3 | 2.7427 × 107 | 6666.1 |
0.25 | 3.4268 × 107 | −8675 | 3.4283 × 107 | 6666.1 |
0.3 | 4.1125 × 107 | −8096.7 | 4.114 × 107 | 6666.1 |
0.35 | 4.7982 × 107 | −7518.3 | 4.7997 × 107 | 6666.1 |
0.4 | 5.484 × 107 | −6940 | 5.4853 × 107 | 6666.1 |
0.45 | 6.1697 × 107 | −6361.7 | 6.171 × 107 | 6666.1 |
0.5 | 6.8554 × 107 | −5783.3 | 6.8566 × 107 | 6666.1 |
0.55 | 7.5411 × 107 | −5205 | 7.5423 × 107 | 6666.1 |
0.6 | 8.2268 × 107 | −4626.7 | 8.228 × 107 | 6666.1 |
0.65 | 8.9126 × 107 | −4048.3 | 8.9136 × 107 | 6666.1 |
0.7 | 9.5983 × 107 | −3470 | 9.5993 × 107 | 6666.1 |
0.75 | 1.0284 × 108 | −2891.7 | 1.0285 × 108 | 6666.1 |
0.8 | 1.097 × 108 | −2313.3 | 1.0971 × 108 | 6666.1 |
0.85 | 1.1655 × 108 | −1735 | 1.1656 × 108 | 6666.1 |
0.9 | 1.2341 × 108 | −1156.7 | 1.2342 × 108 | 6666.1 |
0.95 | 1.3027 × 108 | −578.34 | 1.3028 × 108 | 6666.1 |
1 | 1.3713 × 108 | 0 | 1.3713 × 108 | 6666.1 |
Environmental Weight | Total Revenue | Carbon Emission Intensity (g/kWh) | Energy Storage Utilization Rate |
---|---|---|---|
0 | −2581.3 CNY (≈ −374 USD) | 632 | 14.2% |
0.5 | 6.8554 × 107 CNY (≈9.94 × 106 USD) | 297 | 45.9% |
1 | 1.3713 × 108 CNY (≈1.99 × 107 USD) | 0 | 45.9% |
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Zhu, L.; Wu, X.; Wang, Z.; Li, Y.; Song, L.; Yang, Y. A Study on the Environmental and Economic Benefits of Flexible Resources in Green Power Trading Markets Based on Cooperative Game Theory: A Case Study of China. Energies 2025, 18, 4490. https://doi.org/10.3390/en18174490
Zhu L, Wu X, Wang Z, Li Y, Song L, Yang Y. A Study on the Environmental and Economic Benefits of Flexible Resources in Green Power Trading Markets Based on Cooperative Game Theory: A Case Study of China. Energies. 2025; 18(17):4490. https://doi.org/10.3390/en18174490
Chicago/Turabian StyleZhu, Liwei, Xinhong Wu, Zerong Wang, Yuexin Li, Lifei Song, and Yongwen Yang. 2025. "A Study on the Environmental and Economic Benefits of Flexible Resources in Green Power Trading Markets Based on Cooperative Game Theory: A Case Study of China" Energies 18, no. 17: 4490. https://doi.org/10.3390/en18174490
APA StyleZhu, L., Wu, X., Wang, Z., Li, Y., Song, L., & Yang, Y. (2025). A Study on the Environmental and Economic Benefits of Flexible Resources in Green Power Trading Markets Based on Cooperative Game Theory: A Case Study of China. Energies, 18(17), 4490. https://doi.org/10.3390/en18174490