Optimized Dispatch of Integrated Energy Systems in Parks Considering P2G-CCS-CHP Synergy Under Renewable Energy Uncertainty
Abstract
:1. Introduction
2. Methods and Analysis
2.1. Integrated Energy System Framework of the Park with Reward-and-Penalty Tiered Carbon Trading Mechanism
2.1.1. Modeling and Characteristics of P2G-CCS-CHP
2.1.2. Reward and Penalty-Based Tiered Carbon Trading Mechanism
- (1)
- Allocation Mechanism for PIES Carbon Emission Quotas
- (2)
- Initial Allocation Model for PIES Carbon Emission Rights
- (3)
- Actual Carbon Emission Model for PIES
- (4)
- PIES Reward-Punishment Tiered Carbon Trading Cost Model
2.2. Generation of Scenarios Considering Uncertainty and Correlation of Wind and Solar Outputs
2.2.1. Kernel Density Estimation Method
2.2.2. Copula Functions
2.2.3. Generation of Wind and Solar Scenarios and Their Complementary Characteristics
- (1)
- Static Scenario Generation and Reduction of Wind and Solar Power Outputs Based on Monte Carlo Simulation
- (2)
- Indicators of Wind-Solar Complementarity
2.3. Incentive-Based Ladder Carbon Trading with Consideration of Wind and Solar Uncertainty and the Coupling of P2G-CCS-CHP in Integrated Energy System Optimization Model
2.3.1. Objective Function
- (1)
- Economic Objectives
- (2)
- Environmental Objectives
2.3.2. Constraints
- (1)
- Power Balance Constraint
- (2)
- Equipment Capacity and Ramping Constraints
- (3)
- Energy Coupling Constraints
2.4. Model Solution Methods
2.4.1. Non-Dominated Sorting-Based Cockroach Optimization Algorithm
- (1)
- Non-Dominated Sorting Genetic Strategy
- (2)
- Dung Beetle Optimization Algorithm
- (3)
- Non-Dominated Sorting Dung Beetle Optimizer Model
2.4.2. Model Performance Test
3. Results and Discussion
3.1. Basic Data
3.2. Generation and Reduction of Scenarios Considering Wind and Solar Uncertainty and Correlation
3.3. Analysis of Optimization Scheduling Results
3.3.1. Analysis of the Impact of Wind and Solar Output Uncertainty, Reward-Punishment Tiered Carbon Trading Mechanism, and Coupling Operation of P2G-CCS-CHP
3.3.2. Analysis of PIES Optimal Scheduling in Scenario 6 (This Study’s Model)
3.3.3. Analysis of the Impact of Reward and Penalty Coefficients on PIES Dispatching
- (1)
- In scenarios where carbon trading costs are negative, increasing the reward coefficient significantly amplifies the benefits that PIES gains from carbon trading. As carbon trading prices rise, these benefits progressively increase. This effect occurs because higher carbon trading revenues encourage PIES to minimize its dependence on external energy sources while boosting the efficiency of various energy supply and conversion devices within the system, ultimately leading to a significant reduction in overall carbon emissions.
- (2)
- In contrast, when carbon trading costs are positive, an increased penalty coefficient results in higher fines for PIES. To mitigate these penalties, PIES should strategically implement voluntary decarbonization scheduling. By integrating multi-energy coupling—encompassing electricity; heat; gas; and cooling—and employing energy conversion technologies such as Power-to-Gas (P2G); Carbon Capture and Storage (CCS); and Combined Heat and Power (CHP); these scheduling efforts can create situations where a higher penalty coefficient corresponds with lower carbon trading costs.
- (3)
- During PIES’s operational scheduling, it is critical to manage the interplay between reward and penalty coefficients and carbon trading costs to identify the optimal balance point. Achieving this balance is essential for reducing carbon emissions while ensuring the economic viability of scheduling practices. This could involve establishing distinct thresholds for reward and penalty adjustments based on real-time trading data and market trends.
- (4)
- Fluctuations in carbon trading prices will directly impact the associated revenues or costs for PIES. Therefore, it is vital to establish a dynamic strategy to adjust operational scheduling in response to these price changes, maximizing revenues or minimizing costs effectively in real-time.
- (5)
- PIES must enhance its monitoring and analysis of the carbon trading market to stay informed about market trends and price movements. Continuous monitoring will provide valuable data to inform scheduling decisions, enhancing responsiveness to market changes. Key focus areas include tracking emerging regulations, competitor behaviors, and shifts in overall market demand, allowing for better-informed adjustments to operational strategies.
4. Conclusions Implications and Future Research Orientations
- (1)
- The proposed reward-punishment tiered carbon trading mechanism achieves substantial decarbonization performance, reducing PIES carbon emissions by 31.30% (6191.99 kg) compared to conventional mechanisms. This regulatory innovation establishes critical financial incentives that align market dynamics with environmental objectives, providing a policy-relevant framework for low-carbon transition management.
- (2)
- Through probabilistic modeling of renewable energy uncertainties and inter-source correlations, our framework enhances system sustainability across three dimensions: economic efficiency (+3.67% cost reduction/$880.42 savings), environmental performance (15.83% emission reduction/2150.78 kg mitigation), and renewable utilization (4.4% wind and 4.91% solar consumption increases). This tripartite optimization addresses the energy trilemma challenges in integrated energy systems.
- (3)
- The novel P2G-CCS-CHP coupling model demonstrates paradigm-shifting improvements over conventional systems. Relative to traditional CHP configurations, it achieves 28.86% wind and 19.85% solar utilization enhancements alongside a remarkable 36.91% cost reduction and 77.65% emission abatement. When benchmarked against existing P2G-CCS integrations, the proposed architecture further improves renewable consumption (21.68% wind, 15.02% solar) while reducing costs and emissions by 20.51% and 62.68%, respectively. These comparative results validate the technical superiority of our multi-system coupling approach.
- (4)
- The biomimetic non-dominated sorting dung beetle optimizer introduces strategic multi-objective optimization capabilities, demonstrating 18–32% computational efficiency gains over PSO, MCA, POA, SABO, and HHO algorithms in Pareto front identification. This bio-inspired metaheuristic effectively resolves the convergence-precision trade-off in complex energy system optimizations.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
PIES | Park integrated energy system | MT | Micro-gas Turbine | ER | Electric refrigerator |
P2G | Power to gas | NSGS | Non-dominated Sorting Genetic Strategy | PV | Photovoltaic power generation |
CCS | Carbon capture and storage | DBO | Dung beetle optimizer | BR | Backward reduction |
CHP | Combined heat and power generation | NS | Natural gas sources | CV | Coefficient of variation |
NSDBO | Optimization algorithm of dung beetle under non-dominated sorting | WT | Wind turbine | MOP | Multi-object Optimization Problem |
PSO | Particle Swarm Optimization | MCA | Musical Chairs Algorithm | POA | Pelican Optimization Algorithm |
SABO | Subtraction-Average-Based Optimizer | HHO | Harris Hawk Optimization |
Appendix A
Benchmarking Functions | Search Space |
---|---|
[−10, 10] | |
[−5.12, 5.12] | |
[−50, 50] | |
[−65, 65] |
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Parameter | Numerical Value | Parameter | Numerical Value |
---|---|---|---|
0.75 | −0.4 | ||
0.85 | 0.88 | ||
(MW) | 100 | 6 | |
(MW) | 0 | 6 | |
(MW) | 30 | (MW) | 100(NS), 100(MT), 25(RR) |
(MW) | 0 | (MW) | 0(NS), 0(MT), 0(RR) |
(MW) | 50 | (MW) | 10(CHP), 10(MT), 2.5(RR) |
−0.3 | (MW) | 0(CHP), 0(MT), 0(RR) | |
1 | 0.285(G2P,MT), 0.38(G2H,MT), 0.285(G2C,MT), 0.97(E2C,RR) | ||
0.75 | −0.4 | ||
0.85 | 0.88 | ||
(MW) | 100 | 6 | |
(MW) | 0 | 6 |
Scene | Probit |
---|---|
1 | 0.226 |
2 | 0.228 |
3 | 0.234 |
4 | 0.13 |
5 | 0.182 |
Operating Result | Methods 1 | Methods 2 | Methods 3 | Methods 4 |
---|---|---|---|---|
Operating costs/USD | 11,633.65 | 33,338.64 | 19,207.90 | 22,797.95 |
Carbon emissions/kg | 56,177.74 | 1238.71 | 11,438.22 | 9106.63 |
Environmental protection costs/USD | 17,389.77 | 1486.79 | 3914.68 | 3426.38 |
Total cost/USD | 29,023.41 | 34,825.43 | 23,122.59 | 26,224.33 |
Scenario | Operating Costs/USD | Environmental Protection Costs/USD | Total Cost/USD | Carbon Emissions/kg | WT Utilization Rate/% | PV Utilization Rate/% |
---|---|---|---|---|---|---|
Scenario 1 | 26,637.65 | 10,010.43 | 36,648.07 | 51177.74 | 53.44 | 65.27 |
Scenario 2 | 24,158.65 | 9122.30 | 33,280.95 | 47018.92 | 58.82 | 69.36 |
Scenario 3 | 22,005.03 | 7085.39 | 29,090.43 | 30645.65 | 60.62 | 70.10 |
Scenario 4 | 20,636.10 | 5445.35 | 26,081.45 | 19780.99 | 71.74 | 72.01 |
Scenario 5 | 19,805.39 | 4197.62 | 24,003.01 | 13589.00 | 77.90 | 80.21 |
Scenario 6 | 19,207.90 | 3914.68 | 23,122.59 | 11438.22 | 82.30 | 85.12 |
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Zhang, Z.; Li, X.; Zhang, L.; Zhao, H.; Wang, Z.; Li, W.; Wang, B. Optimized Dispatch of Integrated Energy Systems in Parks Considering P2G-CCS-CHP Synergy Under Renewable Energy Uncertainty. Processes 2025, 13, 680. https://doi.org/10.3390/pr13030680
Zhang Z, Li X, Zhang L, Zhao H, Wang Z, Li W, Wang B. Optimized Dispatch of Integrated Energy Systems in Parks Considering P2G-CCS-CHP Synergy Under Renewable Energy Uncertainty. Processes. 2025; 13(3):680. https://doi.org/10.3390/pr13030680
Chicago/Turabian StyleZhang, Zhiyuan, Xiqin Li, Lu Zhang, Hu Zhao, Ziren Wang, Wei Li, and Baosong Wang. 2025. "Optimized Dispatch of Integrated Energy Systems in Parks Considering P2G-CCS-CHP Synergy Under Renewable Energy Uncertainty" Processes 13, no. 3: 680. https://doi.org/10.3390/pr13030680
APA StyleZhang, Z., Li, X., Zhang, L., Zhao, H., Wang, Z., Li, W., & Wang, B. (2025). Optimized Dispatch of Integrated Energy Systems in Parks Considering P2G-CCS-CHP Synergy Under Renewable Energy Uncertainty. Processes, 13(3), 680. https://doi.org/10.3390/pr13030680