Research on Configuration Methods of Battery Energy Storage System for Pure Electric Bus Fast Charging Station
Abstract
:1. Introduction
- Charging topology: the possible configuration allocations and the size of a single BESS must be determined.
- Integration points of the BESS: the charge-discharge power and energy loss are dependent on this factor.
- Related influence factors: the model will be more accurate if more aspects are considered.
2. Scenarios of BESS Configuration
2.1. Charging Topologies
2.2. Charging Load Charateristics
2.3. BESS Configuration Strategies
3. BESS Configuration Model
3.1. Models of Influence Factors
- (1)
- Basic electricity cost:
- (2)
- Charging electricity cost:
- (3)
- Investment of transformer and converters:
- (4)
- Energy conversion loss:
- (5)
- Full lifetime cost of BESS. For the BESS, the energy capacity and charge-discharge power are the two key parameters affecting the cost [25]. The cycle lifetime of battery was introduce to the BESS cost model in [22], the new formulation of BESS full lifetime cost is as follows:
3.2. Objective Functions
3.3. Model Constraints
- (1)
- Total power balance:
- (2)
- BESS energy balance: In order to achieve a sustainable operation of the BESS, the charging energy should match the discharging energy at the end of each operation cycle:
- (3)
- Safety SOC range of BESS: During the BESS operational procedure, the SOC of the BESS should be constrained to a suitable range, called the depth of discharge (DOD), to keep the BESS working well. This also decides the total discharging and charging energy of the BESS [27]. For example, the SOC range of the BESS is 20–90%, which means that the DOD is 70%. The formulation of SOC is as follows:
- (4)
- Charge-discharge rate of BESS: The charge-discharge rate of the BESS is the ratio of the charge-discharge current and the capacity of the BESS, and it determines the BESS’s maximum charging and discharging power. In this paper, the charge-discharge rate is the ratio of power and BESS energy, which is limited to a set value to maintain the lifetime and safety of the batteries:
- (5)
- Node power direction: As the BESS is integrated according to a charging topology, the node power with BESS discharging power will change. In order to prevent reverse power flow, the total power demand of the nodes should not be less than the discharging power of the BESS of the nodes:
3.4. Optimization Algorithum and Steps
- Step 1:
- Set the simulation cycle time to 24 h; set the sampling period, , on the basis of optimized time interval, which can decide the number of samples, ; take the energy of the BESS at each sample time as the variable, .
- Step 2:
- Calculate the power of the BESS of each sample spot on the basis of the sample cycle as ; the positive value means charge, and a negative value means discharge.
- Step 3:
- According to the maximum DOD, calculate the energy and power of the BESS, as shown in Equations (23) and (24):
4. Cases and Analysis
4.1. Case Settings
4.2. Optimization Configuration
4.3. Case Analysis
4.3.1. Basic Electricity Analysis
4.3.2. Charging Electricity Analysis
4.3.3. Transformer and Converter Cost Analysis
4.3.4. Electricity Loss Cost Analysis
4.4. Conclusion of Case Analysis
5. Discussion
- (1)
- The BESS is an available component to suppress the distribution capacity demand of the high-power PEB fast charging station from an economic perspective. The investment of the BESS can be recouped, and it leads to considerable benefits, such as a decrease in the basic electricity fee and the income gained from the TOU tariffs.
- (2)
- The economic model considers the basic electricity, charging electricity, charging equipment, electricity loss, and BESS investment to cover the main factors of a BESS configuration in a PEB fast charging station. However, the results are related to the charging topology and the amount of charging electricity. The economic effects may significantly differ depending on the applied scenario. The model can be used to choose the charging topology and BESS integration point.
- (3)
- The costs of basic electricity and charging electricity are the two main factors that can lead to cost savings. The electricity loss in different topologies is a main part of the total cost, but it has a few differences among the various topologies. Also, the investment of the BESS and charging equipment is obviously different among the scenarios. According to the case in this paper, the charging topology and BESS integration point are the two key aspects that influence the overall economics.
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Symbol | Explanation |
---|---|
Ratio of operation and maintenance cost of the transformer | |
Ratio of operation and maintenance cost of the converters | |
Ratio of operation and maintenance cost of the batteries | |
Cost of the BESS’s unit battery energy | |
Cost of the BESS’s unit converter power | |
Rated capacity of BESS | |
Rated power of BESS | |
Discount rate | |
Total charging power of BESS at time | |
Total number of charge-discharge cycles of BESS | |
Minimum state of charge (SOC) of BESS | |
Maximum SOC of BESS | |
Charging power of BESS at time | |
Discharging power of BESS at time | |
Maximum discharging power of BESS | |
Maximum charging power of BESS | |
Number of samples for BESS configuration simulation | |
Sampling period for BESS configuration simulation | |
Number of daily optimization intervals | |
Energy of BESS at each time of the sample |
Parameter | Value |
---|---|
Transformer cost (USD/kVA) | 11.89 |
Basic electricity price (USD/(kVA·month)) | 4.75 |
Lithium-ion battery cost (USD/kWh) | 222.88 |
Converter cost (USD/kW) | 74.29 |
Transformer lifetime (Year) | 20 |
BESS calendar lifetime (Year) | 8 |
Cycle number of the battery | 4500 |
Max charge-discharge rate (C) | 2 |
Discount rate (%) | 3 |
SOC range of the BESS (%) | 10–90 |
Efficiency of transformer (%) | 98 |
Efficiency of converter (%) | 95 |
Efficiency of charge–discharge of the BESS (%) | 95 |
Period | Time | Price (USD/kWh) |
---|---|---|
Village | 23:00–7:00 | 0.0586 |
Flat | 7:00–10:00; 15:00–18:00 21:00–23:00 | 0.1033 |
Peak | 10:00–15:00; 18:00–21:00 | 0.1492 |
Parameter | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|
Unit electricity cost (USD/kWh·day) | 0.1748 | 0.1668 | 0.1667 |
Total cost of one day (USD/day) | 899.48 | 858.05 | 857.73 |
Peak charging power (kW) | 492.91 | 520.01 | 525.89 |
Capacity of BESS (kWh) | 612.17 | 765.13 | 797.96 |
Basic electricity cost (USD/day) | 78.13 | 82.42 | 83.35 |
Electricity cost (USD/day) | 573.99 | 558.53 | 554.52 |
Transformer and converter cost (USD/day) | 67.00 | 36.68 | 37.06 |
Electricity loss cost (USD/day) | 95.15 | 81.88 | 82.14 |
BESS cost (USD/day) | 85.22 | 98.85 | 100.66 |
Parameter | Original | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|---|
Peak charging power (kW) | 1595.00 | 464.98 | 370.56 | 464.98 |
Basic electricity cost (USD/day) | 252.64 | 73.70 | 58.73 | 73.70 |
Basic electricity and BESS cost (USD/day) | 252.64 | 155.62 | 166.53 | 155.62 |
Capacity of BESS (kWh) | 0 | 565.01 | 743.47 | 565.01 |
Parameter | Original | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|---|
Electricity and BESS cost (CNY/day) | 638.68 | 628.00 | 638.68 | 628.00 |
Electricity cost (CNY/day) | 638.68 | 515.90 | 638.68 | 515.90 |
BESS capacity (kWh) | 0.00 | 1123.69 | 0.00 | 1123.69 |
Peak charging power (kW) | 1595.00 | 1464.18 | 1595.00 | 1464.18 |
Parameter | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|
Basic electricity cost | Good | Bad | Good |
Electricity cost | Good | Bad | Good |
Transformer and converter cost | Bad | Moderate | Good |
Electricity loss cost | Bad | Good | Good |
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Share and Cite
Yan, Y.; Wang, H.; Jiang, J.; Zhang, W.; Bao, Y.; Huang, M. Research on Configuration Methods of Battery Energy Storage System for Pure Electric Bus Fast Charging Station. Energies 2019, 12, 558. https://doi.org/10.3390/en12030558
Yan Y, Wang H, Jiang J, Zhang W, Bao Y, Huang M. Research on Configuration Methods of Battery Energy Storage System for Pure Electric Bus Fast Charging Station. Energies. 2019; 12(3):558. https://doi.org/10.3390/en12030558
Chicago/Turabian StyleYan, Yian, Huang Wang, Jiuchun Jiang, Weige Zhang, Yan Bao, and Mei Huang. 2019. "Research on Configuration Methods of Battery Energy Storage System for Pure Electric Bus Fast Charging Station" Energies 12, no. 3: 558. https://doi.org/10.3390/en12030558
APA StyleYan, Y., Wang, H., Jiang, J., Zhang, W., Bao, Y., & Huang, M. (2019). Research on Configuration Methods of Battery Energy Storage System for Pure Electric Bus Fast Charging Station. Energies, 12(3), 558. https://doi.org/10.3390/en12030558