Optimization of Multi-Energy Microgrid Operation in the Presence of PV, Heterogeneous Energy Storage and Integrated Demand Response
Abstract
:1. Introduction
- To properly handle the uncertainty of variable PV generation, the p-efficient point method is applied to determine the expected PV generation amounts based on historical data at given confidence levels and then incorporate them into the MEMG optimization problem.
- A generalized model for IDR is developed, and the role of IDR in accommodating PV generation within MEMGs is investigated.
- A mixed-integer linear programming (MILP) model for properly integrating and coordinating the deployment of IDR, HES and also the energy conversion facilities for economic system operation is proposed. Coordinated operation of electrical, heating and cooling energy storage is optimized.
- The proposed model is implemented on two typical summer and winter days for various cases to validate its effectiveness and feasibility. According to the obtained results, the proposed strategy can help the system operator to reduce the total energy costs by 5.44% on a typical summer day and 3.5% on a typical winter day.
2. System Modeling
2.1. System Description
- Electricity and natural gas are the two principal energy carriers for the energy inputs, which are converted and delivered to end users. Coupling electrical and gas infrastructures is an efficient approach to the optimal operation of the two different energy systems.
- Solar PV panels are integrated into the MEMG system. Unlike other renewable resources, solar power can be more easily applied to the demand side in distributed patterns, e.g., solar PV-integrated buildings [37].
- The MEMG consists of a combined heat and power (CHP) system, gas boiler (GB), electrical heat pump (EHP), electric chiller (EC), absorption chiller (AC) and heterogeneous energy storage (HES), which are integrated into the MEMG system for transferring, converting or storing heterogeneous energy to meet the multi-energy demands and to improve the efficiency.
- The HES consists of electrical energy storage (ES), a cooling storage (CS) tank and a heat storage (HS) tank, which are deployed for the purposes of tackling the intermittent outputs from solar power, shaving peak energy demands and achieving higher energy utilization flexibility.
- The use of variable solar power and HES adds to the flexibility and complexity of MEMG operation at the same time.
2.2. Model of Components
2.2.1. CHP
2.2.2. GB
2.2.3. EHP
2.2.4. EC
2.2.5. AC
2.2.6. HES
2.2.7. Solar PV
2.3. PV Uncertainty Handling
2.4. IDR
3. Problem Formulation
3.1. Objective Function
3.2. Constraints
4. Case Studies
4.1. Optimization Results
4.1.1. Typical Summer Day
4.1.2. Typical Winter Day
4.2. Impact of Confidence Level
5. Conclusions and Future Works
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Parameters | Value | Parameters | Value |
---|---|---|---|
0.35/0.45 | 55 kW | ||
0.85 | 20 kW | ||
2.3 | 35 kW | ||
2.9 | 60 kW | ||
0.8 | 20 kW | ||
0.9 | 20 kW | ||
10 kWh | 90 kWh | ||
0.9 | 10 kW | ||
0 | 48 kWh | ||
0.001 | 0.001 |
Confidence Level | IDR Configuration/% | Amounts of Load Shift/kWh | IDR Cost/¥ | Energy Cost/¥ | Total Cost/¥ |
---|---|---|---|---|---|
0.95 | 8.9 | 82.35 | 21.86 | 898.54 | 920.4 |
0.90 | 10 | 90.76 | 24.47 | 881.3 | 905.8 |
0.85 | 10.6 | 95.47 | 25.90 | 865.11 | 891.01 |
0.80 | 13.5 | 118.06 | 30.51 | 838.84 | 869.34 |
0.75 | 15.1 | 132.64 | 33.81 | 817.86 | 851.67 |
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Wang, J.; Li, K.-J.; Liang, Y.; Javid, Z. Optimization of Multi-Energy Microgrid Operation in the Presence of PV, Heterogeneous Energy Storage and Integrated Demand Response. Appl. Sci. 2021, 11, 1005. https://doi.org/10.3390/app11031005
Wang J, Li K-J, Liang Y, Javid Z. Optimization of Multi-Energy Microgrid Operation in the Presence of PV, Heterogeneous Energy Storage and Integrated Demand Response. Applied Sciences. 2021; 11(3):1005. https://doi.org/10.3390/app11031005
Chicago/Turabian StyleWang, Jingshan, Ke-Jun Li, Yongliang Liang, and Zahid Javid. 2021. "Optimization of Multi-Energy Microgrid Operation in the Presence of PV, Heterogeneous Energy Storage and Integrated Demand Response" Applied Sciences 11, no. 3: 1005. https://doi.org/10.3390/app11031005
APA StyleWang, J., Li, K. -J., Liang, Y., & Javid, Z. (2021). Optimization of Multi-Energy Microgrid Operation in the Presence of PV, Heterogeneous Energy Storage and Integrated Demand Response. Applied Sciences, 11(3), 1005. https://doi.org/10.3390/app11031005