Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic
Abstract
:1. Introduction
2. Frequency Regulation System Model of Wind Storage System
2.1. Generation-Load Model
2.2. The Wind Model
2.3. The Battery Model
3. Compound Fuzzy Logic Primary-Frequency-Regulation Cooperative Control Strategy
3.1. Frequency Control Model
3.2. Fuzzy Control Model
- (1)
- When the wind speed is low, the frequency regulation ability of wind power generation is relatively weak, and too much change in rotor speed easily triggers the wind turbine off-grid. Therefore, the virtual inertia coefficient Kd should be set to a small value regardless of the change in frequency difference and frequency deviation, and it decreases with the increase in the frequency change rate; meanwhile, the energy storage should undertake the main task of frequency regulation, and Kp increases with the increase in the frequency change rate. With the increasing frequency deviation, Kd and Kp should also be increased appropriately.
- (2)
- When the wind speed is moderate, wind power has the strongest frequency regulation ability. To maximize the wind power regulation, Kd is set with the increase in the rate of change in the frequency and decreases, Kp is set with the increase in the rate of change in frequency and increases, and Kd, Kp are set with the increase in frequency deviation and increase. When the frequency variation rate and frequency deviation are small, to avoid the battery being dispatched frequently, the value of Kd can be increased appropriately, and the value of Kp should be small; when the frequency variation rate is low, and the frequency deviation is large, the values of Kd and Kp should be large; when the frequency variation rate is large, and the frequency deviation is small, the values of Kd and Kp should be small; when the frequency variation rate and frequency deviation are large, the value of Kd should be small, and the value of Kp should be large. The Kp value should be taken as large as possible.
- (3)
- When the wind speed is large, the regulating ability of the wind turbine is weak, and the output frequency regulation active capacity is small. When the frequency change rate is small, the value of Kd can be increased appropriately, and Kd decreases with the increase in the frequency change rate. However, when the wind speed is too large, Kd should not take too large a value, while the value of Kp is positively correlated with the frequency deviation and frequency change rate; when the frequency change rate is large, to avoid excessive release of kinetic energy, Kd should be small, and Kp can be increased appropriately. The corresponding fuzzy rule table is shown below.
- (1)
- When the battery is in a discharged state, the battery needs to avoid excessive discharge at low soc. As the SOC of the battery decreases, the discharge control factor gradually decreases. To avoid insufficient power resources provided by frequency regulation, the discharge control coefficient increases with the increase in the discharge multiplier.
- (2)
- When the battery is charging, the battery needs to avoid over-electricity in the case of high soc, and the discharge control coefficient gradually decreases as the soc of the battery increases. To avoid insufficient power resources provided by frequency regulation, the charging control coefficient increases with the increase in the discharge multiplier.
4. Case Studies and Simulations
4.1. Step Dynamic Performance Simulation
4.2. Sudden Change in Wind Speed Simulation
4.3. Continuous Working Condition Simulation
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
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() | v | ||||
---|---|---|---|---|---|
VS | S | M | B | VB | |
(VS, VS) | (S, VS) | (M, VS) | (B, VS) | (VB, VS) | (B, S) |
(VS, S) | (S, S) | (M, S) | (B, S) | (VB, S) | (B, S) |
(VS, M) | (S, S) | (M, S) | (B, S) | (VB, S) | (B, M) |
(VS, B) | (S, S) | (M, M) | (B, M) | (VB, M) | (B, M) |
(VS, VB) | (M, M) | (B, M) | (B, M) | (VB, M) | (B, M) |
(S, VS) | (S, VS) | (S, VS) | (B, VS) | (B, VS) | (M, S) |
(S, S) | (S, S) | (S, S) | (B, S) | (B, S) | (M, M) |
(S, M) | (S, S) | (S, S) | (B, M) | (B, M) | (M, M) |
(S, B) | (S, S) | (S, M) | (B, M) | (B, B) | (M, B) |
(S, VB) | (S, M) | (M, M) | (B, B) | (VB, B) | (B, B) |
(M, VS) | (S, S) | (S, S) | (M, S) | (B, S) | (S, M) |
(M, S) | (S, S) | (S, S) | (M, M) | (B, M) | (S, M) |
(M, M) | (S, M) | (S, M) | (M, M) | (B, B) | (S, B) |
(M, B) | (S, M) | (S, M) | (M, B) | (B, B) | (M, B) |
(M, VB) | (S, M) | (S, B) | (B, B) | (B, B) | (M, B) |
(B, VS) | (VS, S) | (S, S) | (S, S) | (VB, M) | (S, M) |
(B, S) | (VS, S) | (S, S) | (S, M) | (B, B) | (S, M) |
(B, M) | (VS, S) | (S, M) | (S, M) | (B, B) | (S, B) |
(B, B) | (S, S) | (S, B) | (S, B) | (M, B) | (S, B) |
(B, VB) | (S, M) | (S, B) | (M, B) | (B, B) | (M, B) |
(VB, VS) | (VS, S) | (VS, S) | (S, B) | (S, B) | (S, B) |
(VB, S) | (VS, S) | (VS, M) | (S, B) | (S, B) | (S, B) |
(VB, M) | (VS, M) | (VS, M) | (S, B) | (S, B) | (S, B) |
(VB, B) | (S, M) | (VS, B) | (S, B) | (S, B) | (S, VB) |
(VB, VB) | (S, B) | (S, B) | (S, VB) | (S, VB) | (S, VB) |
Rate-C | SOC | ||||
---|---|---|---|---|---|
VS | S | M | B | VB | |
VS | VB | VB | VB | VB | VB |
S | B | VB | VB | VB | VB |
M | M | B | VB | VB | VB |
B | S | M | B | VB | VB |
VB | VS | S | M | B | VB |
Rate-C | SOC | ||||
---|---|---|---|---|---|
VS | S | M | B | VB | |
VS | VB | VB | VB | VB | VB |
S | VB | VB | VB | VB | B |
M | VB | VB | VB | B | M |
B | VB | VB | B | M | S |
VB | VB | B | M | S | VS |
Parameters | Value |
---|---|
Rated power of thermal power | 100 MW |
Inertia time constant of thermal power | 5.8 s |
Regulation response time factor of prime mover | 0.25 s |
Regulation response time factor of generator | 0.35 s |
Adjustment factor of thermal power | 0.1 |
Rated power of wind power | 50 MW |
Inertia time constant of wind turbine | 3 s |
Regulation response time factor of wind turbine | 0.3 s |
Rated power of energy storage | 10 MW |
Rated capacity of energy storage | 5 MWh |
Regulation response time factor of energy storage | 0.01 s |
Load damping | 1.2 s |
Parameters | Frequency Change (Hz) | SOC Change (%) | ||||
---|---|---|---|---|---|---|
Low SOC | Medium SOC | High SOC | Low SOC | Medium SOC | High SOC | |
Case1: Thermal generators only | 0.3212 | / | / | / | ||
Case2: Wind power fixed coefficient | 0.2768 | / | / | / | ||
Case3: Wind power fuzzy control | 0.2625 | / | / | / | ||
Case4: Wind power and storage fuzzy control | 0.1528 | 0.1528 | 0.1528 | −0.269 | −0.1942 | −0.1675 |
Case5: Wind power and storage fuzzy coefficient control | 0.2555 | 0.1528 | 0.1528 | 0.2725 | −0.1941 | −0.3781 |
Case6: Wind power–storage combination fuzzy coefficient control | 0.1616 | 0.1552 | 0.1552 | −0.2243 | −0.1876 | −0.1615 |
Parameters | Frequency Change (Hz) | SOC Change (%) | ||||
---|---|---|---|---|---|---|
Low SOC | Medium SOC | High SOC | Low SOC | Medium SOC | High SOC | |
Case1: Thermal generators only | 0.3212 | / | / | / | ||
Case2: Wind power fixed coefficient | 0.2768 | / | / | / | ||
Case3: Wind power fuzzy control | 0.2593 | / | / | / | ||
Case4: Wind power and storage fuzzy control | 0.1501 | 0.1501 | 0.1501 | −0.2624 | −0.1953 | −0.1686 |
Case5: Wind power and storage fuzzy coefficient control | 0.2522 | 0.1501 | 0.1501 | 0.2751 | −0.1953 | −0.3810 |
Case6: Wind power–storage combination fuzzy coefficient control | 0.1587 | 0.1525 | 0.1525 | −0.2253 | −0.1888 | −0.1625 |
Parameters | Frequency Change Pack (Hz) | Final SOC (%) | ||||
---|---|---|---|---|---|---|
Low Charge Condition | Medium Charge Condition | High Charge Condition | Low Charge Condition | Medium Charge Condition | High Charge Condition | |
Wind power and storage fixed coefficient | 0.3563 | 0.3563 | 0.3563 | 20.0055 | 50.0059 | 80.0084 |
Wind power fuzzy + energy storage control curve | 0.3552 | 0.3126 | 0.4506 | 20.0167 | 50.0061 | 79.9963 |
Wind power–storage combination fuzzy coefficient control | 0.3137 | 0.3137 | 0.3126 | 20.0068 | 50.0062 | 80.0084 |
Parameters | Average Frequency (Hz) | Final SOC (%) | ||
---|---|---|---|---|
Medium-Charge Condition | High-Charge Condition | Medium-Charge Condition | High-Charge Condition | |
Wind power and storage fixed coefficient | 49.9794 | 49.9794 | 26.2883 | 58.3845 |
Wind power fuzzy + energy storage control curve | 49.9792 | 49.9794 | 28.9737 | 57.1203 |
Wind power–storage combination fuzzy coefficient control | 49.9793 | 49.9793 | 27.5356 | 59.2084 |
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Ma, S.; Xin, D.; Jiang, Y.; Li, J.; Wu, Y.; Sha, G. Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic. Batteries 2023, 9, 564. https://doi.org/10.3390/batteries9120564
Ma S, Xin D, Jiang Y, Li J, Wu Y, Sha G. Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic. Batteries. 2023; 9(12):564. https://doi.org/10.3390/batteries9120564
Chicago/Turabian StyleMa, Suliang, Dixi Xin, Yuan Jiang, Jianlin Li, Yiwen Wu, and Guanglin Sha. 2023. "Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic" Batteries 9, no. 12: 564. https://doi.org/10.3390/batteries9120564
APA StyleMa, S., Xin, D., Jiang, Y., Li, J., Wu, Y., & Sha, G. (2023). Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic. Batteries, 9(12), 564. https://doi.org/10.3390/batteries9120564