| Literature DB >> 35626515 |
Shuai Chen1,2, Jinglin Li1,2, Chengpeng Jiang1,2, Wendong Xiao1,2.
Abstract
Energy storage is an important adjustment method to improve the economy and reliability of a power system. Due to the complexity of the coupling relationship of elements such as the power source, load, and energy storage in the microgrid, there are problems of insufficient performance in terms of economic operation and efficient dispatching. In view of this, this paper proposes an energy storage configuration optimization model based on reinforcement learning and battery state of health assessment. Firstly, a quantitative assessment of battery health life loss based on deep learning was performed. Secondly, on the basis of considering comprehensive energy complementarity, a two-layer optimal configuration model was designed to optimize the capacity configuration and dispatch operation. Finally, the feasibility of the proposed method in microgrid energy storage planning and operation was verified by experimentation. By integrating reinforcement learning and traditional optimization methods, the proposed method did not rely on the accurate prediction of the power supply and load and can make decisions based only on the real-time information of the microgrid. In this paper, the advantages and disadvantages of the proposed method and existing methods were analyzed, and the results show that the proposed method can effectively improve the performance of dynamic planning for energy storage in microgrids.Entities:
Keywords: deep Q-network; electric/thermal hybrid energy storage; microgrid; optimal configuration; state of health
Year: 2022 PMID: 35626515 PMCID: PMC9142080 DOI: 10.3390/e24050630
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.738
Figure 1The structure of microgrid.
Figure 2The relationship between the residual capacity and the charging/discharging times.
Structure of MobileNetV3-Small-M.
| Input | Operator | Output Channels | SE |
|---|---|---|---|
| 3 × 300 × 1 | conv2d, 3 × 3 | 16 | - |
| 2 × 150 × 16 | bneck, 3 × 3 | 16 | √ |
| 1 × 75 × 16 | bneck, 3 × 3 | 24 | - |
| 1 × 38 × 24 | bneck, 3 × 3 | 24 | - |
| 1 × 38 × 24 | bneck, 5 × 5 | 40 | √ |
| 1 × 19 × 40 | bneck, 5 × 5 | 40 | √ |
| 1 × 19 × 40 | bneck, 5 × 5 | 40 | √ |
| 1 × 19 × 40 | bneck, 5 × 5 | 48 | √ |
| 1 × 19 × 48 | bneck, 5 × 5 | 48 | √ |
| 1 × 19 × 48 | bneck, 5 × 5 | 96 | √ |
| 1 × 10 × 96 | bneck, 5 × 5 | 96 | √ |
| 1 × 10 × 96 | bneck, 5 × 5 | 96 | √ |
| 1 × 10 × 96 | conv2d, 1 × 1 | 576 | √ |
| 1 × 5 × 576 | pool, 1 × 1 | - | - |
| 1 × 5 × 576 | conv2d, 1 × 1, NBN | 1024 | - |
| 1 × 2 × 1024 | conv2d, 1 × 1, NBN | 1 | - |
Figure 3Two-layer optimized structure.
Figure 4The RL framework.
The parameters of the lithium battery.
| Parameter | Value |
|---|---|
| Self-discharge Rate | 0.001 |
| Charging/discharging Efficiency | 0.95 |
| Capitalized Cost (CNY, kW/h) | 1500 |
| Maintenance Cost (CNY, kW/h) | 0.026 |
The parameters of other equipment.
| Type | Parameter | Value |
|---|---|---|
| CHP | Gas-to-electric Ratio | 0.3 |
| Heat-to-electric Ratio | 1.36 | |
| Maintenance Cost (CNY, kW/h) | 0.05 | |
| Heat Pump | Energy Efficiency Ratio | 3.8 |
| Maintenance Cost (CNY, kW/h) | 0.026 | |
| Photovoltaic | Maintenance Cost (CNY, kW/h) | 0.025 |
Figure 5Time-of-use electricity price.
Figure 6Electrical load.
Figure 7Heat load.
Configuration results and economic parameters (kW/h, CNY).
| No. | Battery Capacity | Equivalent Annual Cost | Replacement Cost | Maintenance Cost | Charging/Discharging Times |
|---|---|---|---|---|---|
| Case-1 | 1107.45 | 216.67 | 62.09 | 154.58 | 739 |
| Case-2 | 773.84 | 194.24 | 30.93 | 163.31 | 975 |
| Case-3 | 756.29 | 192.08 | 26.4 | 165.68 | 982 |
| Case-4 | 741.27 | 189.11 | 22.21 | 166.87 | 1021 |
Figure 8SOC curves of battery on some typical days. (a) Peak day in January; (b) Peak day in July.
Figure 9Curves of battery degradation.