Inter-Zone Optimal Scheduling of Rural Wind–Biomass-Hydrogen Integrated Energy System
Abstract
:1. Introduction
- (1)
- The heat storage and discharge characteristics of the biogas digester (BD) are studied, and the uncertainty of WP output is expressed in the form of interval numbers, and the optimization objective takes into account the economy and carbon reduction.
- (2)
- The interval model is transformed into a mixed integer linear programming model with optimal and worst solutions and is resolved using an interval linear programming algorithm.
- (3)
- The economic and environmental benefits of using conventional energy storage and the strategy proposed in this paper are compared, and a sensitivity analysis of biomass price, electricity price, and gas production is conducted.
2. Integrated Rural Energy System Model
2.1. BD
2.2. Hydrogen Doping Model for Biogas
2.3. WP Uncertainty
3. Optimization Model for Day-Ahead Dispatching of Electric and Thermal Rural Integrated Energy Systems
3.1. Objective Function
3.2. Constraints
3.2.1. Power Balance Constraint
- (1)
- Electrical power balance
- (2)
- Thermal power balance
- (3)
- Gas flow rate equilibrium
3.2.2. Equipment Constraints
- (1)
- Energy conversion equipment constraints
- (2)
- The energy storage charging and discharging constraints are:
4. Interval Optimization Model and Solution Algorithm
4.1. Interval Optimization Model
4.2. Solution Algorithm
5. Analysis of Calculation Cases
5.1. Basic Settings
5.2. Analysis of Optimization Results
5.3. Scheduling Results for Different Scenarios
5.4. Sensitivity Analysis
6. Conclusions
- (1)
- The uncertainty of WP can be better handled by using interval mathematics to represent the uncertainty of WP, and the obtained results can show the influence of uncertainty on the system more realistically.
- (2)
- The paper proposes a strategy that can significantly maintain the fermentation temperature of the BD in winter and improve the utilization of biomass, and the inclusion of EL can significantly reduce the abandoned wind rate, promote the consumption of WP and improve the utilization of renewable energy.
- (3)
- Within 10% WP uncertainty, the strategy proposed in this paper has better economy and stability compared to peaking with storage batteries and thermal storage pools both with capacities of 1500 kw or less, but the radius of the interval is the largest. In terms of uncertainty, the fluctuation of electricity prices has a greater impact on the system.
- (4)
- The model proposed in this paper can provide some considerations for the optimization of integrated rural electric and thermal energy systems. This paper mainly concerns the complementary characteristics of renewable energy sources, and subsequent studies will incorporate the equipment capacity into the planning.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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BD | |
MT | |
EL | |
HP | |
BST | |
HST |
Scenarios | Total Cost (¥) | Cost of Electricity Purchase (¥) | Wind Abandonment Cost (¥) |
---|---|---|---|
Case1 | [5923.8, 5944.1] | [4370.6, 5197.1] | [453.6, 1223.7] |
Case2 | [4595.6, 5055.2] | [3580.3, 4534.8] | [223.7, 682.1] |
Case3 | [4079.7, 4552.4] | [3080.4, 4039.2] | [216.1, 665.5] |
Case4 | [3713.1, 4234.2] | [2741.3, 3686.6] | [250.4, 637.9] |
Case5 | [3571.3, 4599.5] | [2818.8, 3917.1] | 0 |
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Zhang, M.; Yu, S.; Li, H. Inter-Zone Optimal Scheduling of Rural Wind–Biomass-Hydrogen Integrated Energy System. Energies 2023, 16, 6202. https://doi.org/10.3390/en16176202
Zhang M, Yu S, Li H. Inter-Zone Optimal Scheduling of Rural Wind–Biomass-Hydrogen Integrated Energy System. Energies. 2023; 16(17):6202. https://doi.org/10.3390/en16176202
Chicago/Turabian StyleZhang, Mingguang, Shuai Yu, and Hongyi Li. 2023. "Inter-Zone Optimal Scheduling of Rural Wind–Biomass-Hydrogen Integrated Energy System" Energies 16, no. 17: 6202. https://doi.org/10.3390/en16176202
APA StyleZhang, M., Yu, S., & Li, H. (2023). Inter-Zone Optimal Scheduling of Rural Wind–Biomass-Hydrogen Integrated Energy System. Energies, 16(17), 6202. https://doi.org/10.3390/en16176202