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Article

Primary-Frequency-Regulation Coordination Control of Wind Power Inertia and Energy Storage Based on Compound Fuzzy Logic

1
Electrical and Control Engineering College, North China University of Technology, Beijing 100144, China
2
Automation and Electrical Engineering College, University of Science and Technology Beijing, Beijing 100083, China
3
Distribution Technology Center, China Electric Power Research Institute, Beijing 100192, China
*
Author to whom correspondence should be addressed.
Batteries 2023, 9(12), 564; https://doi.org/10.3390/batteries9120564
Submission received: 22 September 2023 / Revised: 1 November 2023 / Accepted: 14 November 2023 / Published: 23 November 2023
(This article belongs to the Special Issue Advanced Control and Optimization of Battery Energy Storage Systems)

Abstract

:
The increasing proportion of wind power systems in the power system poses a challenge to frequency stability. This paper presents a novel fuzzy frequency controller. First, this paper models and analyzes the components of the wind storage system and the power grid and clarifies the role of each component in the frequency regulation process. Secondly, a combined fuzzy controller is designed in this paper, which realizes the cooperative control of frequency regulation considering wind power running state, battery energy management, and power grid stability. Finally, this paper establishes typical operation scenarios of various time scales to verify the effectiveness and feasibility of the proposed control strategy.

Graphical Abstract

1. Introduction

New energy, such as wind power, is gradually replacing the dominance of traditional fossil energy sources. The volatility and uncertainty of wind power itself make the frequency stability of the power grid operation significantly affected [1,2,3,4]. The wind turbine does not have an active inertia response and primary frequency regulation capability. It requires additional power backup through rotor overspeed control and pitch angle control, which restricts wind power grid-connected efficiency improvement.
The wind storage system is favorable to improving the frequency stability of the system. If wind power is individually frequency-regulated, there may be transient fluctuations in frequency due to insufficient reserve power. If the storage alone is involved in frequency regulation, the required capacity configuration is too large and does not take full advantage of the wind turbine. Therefore, energy storage and wind power must be synergistically controlled during frequency regulation to utilize the performance fully.
The feasibility of wind storage systems participating in frequency regulation has been extensively studied. In reference [4], a combined wind and flywheel system is proposed, where the wind turbine always operates in MPPT mode, and the flywheel energy storage provides the inertial response and primary frequency regulation power for the system to simulate the generator. Reference [5] investigated system frequency regulation by releasing the kinetic energy of the wind turbine rotor. For large-scale wind power grid-connected power systems, wind power is required to provide primary frequency regulation, and wind turbines operating at the maximum output cannot provide power backup to meet the frequency regulation demand. References [6,7] designed a wind turbine with a variable coefficient by maintaining frequency regulation power reserve through overspeed load shedding and paddle pitch angle control. References [8,9,10] studied the market mechanism and economic effect of the participation of a wind power and energy storage system in frequency regulation. It showed the feasibility of wind power and energy storage system participation in frequency regulation. References [11,12] established a battery selection system for participating in frequency regulation. References [13,14] proposed using distributed energy storage aggregation for frequency regulation to fully utilize frequency regulation resources.
The mechanism of the frequency response action of power systems is too complex and difficult to be accurate for transient states, and wind storage systems bring more uncertainty to the power system. Reference [15] proposed a frequency regulation control approach for energy storage participation using a disturbance observer, which relies on accurate modeling of the system, and then the identification of disturbance parameters after the introduction of wind power becomes a major factor limiting the application of this scheme. The study of reference [16,17] shows that the wind storage system using virtual inertia is beneficial for frequency stabilization. Reference [18] proposed an adaptive control method using a sliding film to cope with the variation in the system parameters. References [19,20,21] used a fuzzy control method to control the frequency regulation power of the energy storage in the wind storage system to improve its immunity to disturbances.
This paper investigates a new primary frequency regulation control method for wind energy storage systems. The method comprehensively considers wind speed, grid frequency, and SOC factors and optimizes the controller mechanism using composite fuzzy logic. The method achieves the cooperative control of wind power and energy storage during frequency regulation, improves the response speed of the wind power system to frequency perturbation, and improves the efficiency of energy storage frequency regulation utilization. In this paper, the effectiveness of the proposed strategy is verified by establishing multiple time-scale scenario models.

2. Frequency Regulation System Model of Wind Storage System

To study the effect of a wind storage system on frequency regulation characteristics, modeling the power system containing the wind storage system is the first step. The frequency regulation model uses mathematical equations to describe the frequency disturbance’s influence range and propagation process. The frequency regulation model of a power system with a wind storage system includes generation, load, wind power, and battery.

2.1. Generation-Load Model

The generation-load model is used to characterize the effects of frequency disturbances in conventional power systems and the frequency regulation characteristics based on the generator swing equation. The structure of the generation load model is shown in the figure and consists of three parts: the prime mover, the generator, and the grid load.
The prime mover and generator are the core components of an electric power system to convert thermal or kinetic energy into electrical energy. In the frequency regulation process, they exhibit inertial characteristics due to their mechanical structure, which is represented in the frequency regulation model by Equation (1).
{ Δ P m = 1 ( 1 + s T R ) G c ( Δ f ) Δ P G = 1 ( 1 + s T G ) Δ P m
where Δf is the change in frequency, Gc is the frequency regulation control rule, TR is the inertia coefficient of the prime mover, ΔPm is the increment of the prime mover power, and TG is the inertia constant of the generator. ΔPG is the increment of generator power.
In the frequency regulation of power systems, generators mainly provide inertial action to maintain the system’s stability. The inertia time constant represents the ability of the generator to provide inertia. For power systems containing new energy sources, the overall inertia time constant decreases as the penetration of new energy sources increases [22,23,24]. The inertia and system inertia constant formula was calculated, as shown in Equation (2).
{ H = P A P G = ( e 2 1 ) J ω g , max 2 2 e 2 P G η = P W P W + P G H η = P A P W + P G = ( 1 η ) H
where H is the inertia time constant; PA is the inertia regulated power of thermal unit; PG is the rated power of the generators; PW is the rated power of the wind turbine; η is the new energy penetration rate; Hη is the inertia time constant under high penetration; and e is the regulation depth.
The load presents a damping effect on frequency regulation. For frequency fluctuations in a limited range, the damping effect of the load on frequency can be linearized locally. Similarly, the inertial characteristics of the generator can be treated. The generator–load model can be obtained by combining the generator’s inertial action and the load’s damping characteristics, as in Equation (3):
{ Δ P m Δ P e = 2 ( 1 η ) H d f d t Δ P e = Δ P L + Δ P fL = Δ P L + D Δ f Δ P m + Δ P L = ( 2 ( 1 η ) H + D ) Δ f
where ΔPm is the variation in mechanical power; ΔPe is the variation in electromagnetic power; ΔP is the variation in load power; ΔPfL is the response power of a load for frequency; and D is the load damping.

2.2. The Wind Model

Wind turbines are mechanical, electrical, and control devices that convert wind speed into electrical energy. Wind speed at long time scales is represented using a Weibull distribution model:
f W ( s , k ) = k s ( v s ) k 1 exp [ ( v s ) k ]
where fW(s,k) is the corresponding wind speed occurrence probability, s is the scale parameters, k is the shape parameters.
Wind power is affected by the randomness of wind speed, and the wind speed variation process can be represented using a combined wind speed model consisting of basic wind speed, gust wind speed, asymptotic wind speed, and random wind speed:
{ V w = V b + V g + V r + V n V b = s Γ ( 1 + 1 K ) V g = V g , max 2 [ 1 cos ( 2 π * ( t t g 1 T g ) ) ] V r = V r , max t t r 1 t r 2 t r 1 V n = V n , max R am ( 1 , 1 ) cos ( ω n t + φ n )
where Vw is the combined wind speed; Vb is the basic wind speed; Vg is the gust wind speed; Vr is the asymptotic wind speed; Vn is the random wind speed; Γ is the gamma function; Vg,max is the max speed of gust wind; tg1 is the start time of gust wind; Tg is the duration of gust wind; Vr,max is the max speed of asymptotic wind; tr1 is the start time of asymptotic wind; tr2 is the ending time of asymptotic wind; Vn,max is the max speed of random wind; Ram is a uniform random number with values between −1 and 1; ωn is the rate of change in fluctuation; and φn is a uniform random number with values between 0 and 2π.
The wind power model is used to represent the output of a wind turbine based on wind power and changes in the state of the power system. The wind turbine output power is shown in Equation (6).
{ P w = 1 2 π ρ R 2 v w 3 C p ( λ , β ) λ = ω r R v w
where ρ is the air density, R is the wind turbine blade radius, λ is the blade tip speed ratio, β is the pitch angle, ωr is the wind turbine rotor speed, and Cp is the wind power utilization factor of wind turbines.
{ C p = 0.5176 ( 116 λ i 0.4 β 5 ) e 21 λ i + 0.0068 λ 1 λ i = 1 λ + 0.08 β 0.035 β 3 + 1
When the wind speed is between the cut-in wind speed and the rated wind speed, and the pitch angle is set to zero, there exists the optimal blade tip speed ratio λopt. At this time, the wind turbine is at the optimal operating point and has the maximum wind power utilization coefficient Cp,max.
{ C p λ | β = 0 , λ = λ o p t = 0 C p , max = C p ( λ o p t , 0 )
In a wind power generation system with a high percentage, when the wind turbines are required to provide frequency support capability, the wind turbines need to operate at a reduced load under the maximum power point to provide standby power, and the power provided by the wind turbines under reduced load operation is expressed as follows:
{ P w , d = ( 1 d ) P w = 0.5 π ρ R 2 v w 3 ( 1 d ) C p , max C p , d = ( 1 d ) C p , max P w , del = P w P w , d = d P w
where Pw,d is the output power of the wind turbine under load shedding control, Pw,del is the power lost under load shedding control, and d is the load shedding factor.
Due to the mechanical structure’s influence, the wind turbine’s dynamic process involved in frequency regulation shows inertial characteristics [25,26,27]. The control strategy for wind power using load-shedding power as backup power and using virtual inertia control for frequency regulation is shown in Figure 1.
In this figure, Tm and Te are the mechanical torque and electromagnetic torque, respectively. Hw is the inertia time constant of the wind turbine. kt is the power tracking factor. Tw is the response time factor of wind power regulation. kp is the inertial control coefficient.

2.3. The Battery Model

Batteries are suitable as a complement to frequency regulation resources due to their faster response and energy storage characteristics. A battery-based energy storage system consists of a battery body, an energy storage converter, and an energy management system. The battery can be considered a flow-controlled voltage source with a capacity limit. The equivalent circuit simulates the external characteristics of the battery using devices such as resistors, capacitors, and constant voltage sources. The equivalent model has multiple topological structures, and the basic form of the model is as follows:
{ S O C ( t + Δ t ) = S O C ( t ) + I b × Δ t Q max I b = P B V ocv U d ( R , C , I b ) P B , min P B P B , max S O C min S O C S O C max
where Qmax is the maximum discharge capacity of the battery; Δt is the sampling time interval; Ib is the charging/discharging current of the battery and Vocv is the open circuit voltage; Ud is the voltage droop during battery operation, which is a function of the internal resistance and capacitance parameters of the battery; and PB,min, PB,max, SOCmin, and SOCmax are the minimum output power, maximum output power, and minimum and maximum SOC values of the supercapacitor, respectively.
In frequency regulation, the power response rate of the battery is mainly influenced by the controller and the energy storage converter. This process can be simplified without loss of generality to an inertial process, as shown below:
Δ P B = 1 ( 1 + s T B ) Δ P B , ref
where TB is the regulation response time factor of energy storage.
From the above analysis, it is clear that the battery has good frequency regulation performance. The battery’s service life is the main influencing factor that restricts energy storage participation in frequency regulation. Relevant studies have shown that the charging/discharging rate and the charging and discharging depth affect the battery’s service life [28,29]. Using excessive current charging/discharging in the frequency regulation process will directly cause the loss of battery life. In addition, excessive energy storage participation in frequency regulation will cause a deepening of the discharge depth, further affecting the battery’s service life. The conventional approach is to design an energy allocation strategy based on a logistic function, as shown in Equation (12):
{ k ch = P 0 × e 0.5 n × ( S O C max S O C ) K max + P 0 × ( e 0.5 n × ( S O C max S O C ) 1 ) k dis = P 0 × e 0.5 n × ( S O C S O C min ) K max + P 0 × ( e 0.5 n × ( S O C S O C min ) 1 )
where kch and kdis is the charging and discharging factor, n is the adaptive factor to measure the degree of fast or slow curve change; P0 is the initial power; Kmax is the factor maximum; and SOC is the SOC value at the current moment.

3. Compound Fuzzy Logic Primary-Frequency-Regulation Cooperative Control Strategy

3.1. Frequency Control Model

After a disturbance occurs in the power system, its active frequency dynamic process is divided into three stages: automatic distribution of disturbance power according to the synchronous power coefficient, inertial response, and frequency regulation. In the disturbance-power allocation stage, each generator shares the disturbance power instantaneously according to its synchronous power coefficient with the disturbance point. In the inertia response stage, after the power deficit occurs, the electromagnetic power changes abruptly, the mechanical power remains unchanged, the rotor changes under the action of unbalanced torque according to the rotor equation of motion, and the speed droops to release kinetic energy and resist the system frequency droop. When the system frequency exceeds the governor threshold, the governor system is a frequency regulation action to restore the system frequency to the allowable range, followed by secondary and tertiary frequency regulation successive actions to restore the system frequency and achieve the economic power distribution between the units. The model of the frequency regulation system studied in this paper is shown in Figure 2.
The generator system, wind power system, and energy storage system in the grid assume different roles in the frequency regulation process due to their respective characteristics: the generator system is used to provide rotational inertia; the wind power system is used as a supplement to the generator supply to provide current-source virtual inertia; and the energy storage system is used as a regulator to provide voltage-source virtual inertia. The frequency regulation process needs to satisfy the following energy balance relationship:
Δ P L + Δ P w = Δ P p + Δ P d + Δ P B
where ΔPL is the power disturbance from the load; ΔPw is the disturbance from the wind power; ΔPp is the primary frequency regulation power of the thermal power unit; ΔPd is the virtual inertia power based on wind power; and ΔPB is the frequency regulation power provided by the battery.
The generator system mainly provides rotational inertia during primary frequency regulation. A droop factor controls the generator set during primary frequency regulation:
Δ P p = 1 R Δ f
where R is the adjustment coefficient.
Wind turbines provide current-source-type virtual inertia in the frequency regulation process. Current-source virtual inertia control is to introduce the system frequency change rate into the converter active control link, change the active reference value, and provide active power to the grid proportional to the frequency change rate; the equation for this is as follows:
Δ P d = Kd d Δ f d t
where Kd is the virtual inertia control coefficient.
The energy storage system complements the frequency regulation and presents a voltage-source-type virtual inertia characteristic. The voltage-sourced virtual inertia technique introduces additional control variables in the converter control to invoke energy storage or standby power to give it the external characteristics of a synchronous unit operating in grid-connected mode. Due to the inertia limitation of the energy storage converter and the body response, the external characteristics of the energy storage involved in frequency regulation show sagging characteristics. In addition, the battery needs to consider the effect of its characteristics, such as SOC. The control of the battery follows Equation (16):
Δ P B = m Kp Δ f
where Kp is the droop control coefficient; m is the charge/discharge control factor.

3.2. Fuzzy Control Model

The control coefficients of different power resources need to be set during frequency regulation. Fixed parameters are usually used for frequency regulation control for generating units in conventional power systems and a high percentage of new energy systems.
For the frequency regulation of a high percentage of new energy power systems, the control coefficients of wind power and energy storage need to be adjusted according to the energy balance state of the grid, the wind speed condition, and the battery state. When the set control parameters are less than the system demand, the power output of the frequency regulation resources in the system cannot meet the system demand, which will cause the fluctuation of the frequency index to cross the limit; when the control setting parameters are greater than the system demand, the frequency regulation resources in the system are frequently called to cause the system to lose stability.
However, it is difficult to establish an accurate mathematical model between the value of control coefficients and wind conditions, the rate of change in frequency difference, and frequency deviation. Fuzzy logic-based control has the advantages of ease, high robustness, and high fault tolerance. Among them, the inertia control coefficient of wind power and the droop control coefficient of the battery are influenced by wind speed, frequency, and frequency variation rate; the charging and discharging coefficients of the battery are influenced by the operating state and state of charge (SOC).
In Figure 3, Ich and Idis are the charging and discharging current.
The theoretical domain of the wind speed is taken as [6, 13.5] m/s, the theoretical domain of the frequency difference rate of change is taken as [−0.6, 0] Hz/s, the theoretical domain of the frequency deviation amount is taken as [−1, −0.033] Hz, and the theoretical domain of both the virtual inertia coefficient and the sag coefficient is taken as [5, 20]. These are fuzzy language variables with {VS, S, M, B, VB} values. The affiliation function is shown in Figure 4 and Figure 5.
The Kd and Kp correspond to the degree of involvement of wind power and energy storage in frequency regulation, respectively. Kd represents the degree of frequency regulation participation of wind power. When the wind power resources are more sufficient, the value of Kd should be adjusted to achieve the purpose of fully utilizing the resources; Kp represents the degree of participation in the frequency regulation of energy storage when there is a large frequency disturbance in the power system; and Kp should be adjusted up to achieve the purpose of making full use of the fast response of energy storage. The design of fuzzy logic rules follows the following principles, which is depicted in Table 1.
(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.
The fuzzy variable relationships at different wind speeds are plotted as shown in Figure 6.
The output domain of the battery’s charge/discharge factor controller is set to [0, 1]. The charge state domain is set to [0.1, 0.9]. The operating state of the battery is represented by the charge/discharge multiplier, which is set to [0, 1], and the following formula calculates the charge/discharge multiplier:
rate - C = I ch / dis I e
where Ie is the rated current, and rate-Ca is the charge/discharge multiplier. The affiliation function is shown in Figure 7.
m is used to regulate the magnitude of the energy storage output. When the charging and discharging multiplicity of the battery is too large or the SOC is too low, m should moderately reduce the limiting current to avoid over-discharge. The design of fuzzy logic rules follows the following principles, which is depicted in Table 2 and Table 3.
(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.
The design of fuzzy logic rules follows the following principles:
The fuzzy variable relationships at the charge state and discharge state are shown as shown in Figure 8.

4. Case Studies and Simulations

To verify the feasibility and effectiveness of the proposed combined wind storage system to participate in the primary frequency regulation strategy, a simulation model was built on the MATLAB/Simulink platform (Matlab 2020a), as shown in the Appendix A. The proposed model had a benchmark of 160 MW, including 100 MW of thermal power units, 50 MW of wind power, and 10 MW of energy storage units. The benchmark frequency was 50 Hz, and the upper and lower dead limits of frequency regulation were set to 0.033 Hz. An energy storage configuration of 10 Mw/5 Mwh is specified in the Table 4.

4.1. Step Dynamic Performance Simulation

Power systems are typically time-varying nonlinear systems, and frequency regulators must have strong tracking performance. This study used a step response to verify the tracking rejection capability of the proposed control method for frequency disturbance rejection. The disturbance used was a 10% increase in rated power at 1 s and a 15% decrease in rated power at 15 s. We used 6 m/s as a typical low wind speed and 9 m/s as a typical high wind speed; we set the low SOC to 20%, medium SOC to 50%, and high SOC to 80%. The results at low wind speeds are shown in Figure 9, Figure 10 and Figure 11. The results include the frequency variation, thermal-power frequency regulation power, wind-power frequency regulation power, energy-storage frequency regulation power, and parameter variation. The results were compared, including fixed parameter control and conventional fuzzy control results.
The working conditions used for the simulation are described below.
Case 1: Thermal generators only. Thermal power units are involved in frequency regulation, while wind power units and energy storage are not involved in frequency regulation.
Case 2: Wind-power fixed coefficient. Thermal turbines are involved in frequency regulation, energy storage is not involved in frequency regulation, and wind turbines are involved in frequency regulation using inertia control with fixed parameters; Kd is set to a constant value of −1.
Case 3: Wind power fuzzy control. Thermal units are involved in frequency regulation, energy storage is not involved in frequency regulation, and wind turbines are involved in frequency regulation using fuzzy control.
Case 4: Wind power and storage fuzzy control. Thermal units are involved in frequency regulation storage, wind turbines are involved in frequency regulation using their own independent fuzzy control, and storage is not controlled for the charging/discharging current.
Case 5: Wind power and storage fuzzy coefficient control. Thermal units are involved in frequency regulation energy storage, wind turbines are involved in frequency regulation using independent fuzzy controls, and energy storage is controlled using conventional methods for charging/discharging currents.
Case 6: Wind power–storage combination fuzzy coefficient control. Thermal units are involved in frequency regulation, while energy storage and wind turbines use the control method proposed in this paper.
The simulation results at high wind speeds are shown in Figure 12, Figure 13 and Figure 14. The simulation results also show the ability of the proposed control strategy to suppress the frequency disturbance and adapt to the energy storage and charging state. In addition, the proposed control strategy can further improve the frequency regulation performance through dynamic regulation because the wind turbine can provide more backup power at a high wind speed.
Table 5 and Table 6 show the comparison of the resultant data at low and high wind speeds, respectively. According to the data analysis, the proposed control strategy has a significant effect on reducing the frequency variation. At a medium SOC and low wind speed, the frequency changes in Case 1 and the proposed control strategy Case 6 were 0.3212 Hz and 0.1552 Hz, respectively, and the frequency change was reduced by 0.166 Hz. At a medium SOC and high wind speed, the frequency changes in Case 1 and the proposed control strategy Case 6 were 0.3212 Hz and 0.1525 Hz, respectively, and the frequency change was reduced by 0.1687 Hz. Compared with only wind power involved in frequency regulation Case 2 and Case 3, the proposed control strategy had a significant frequency change suppression effect. At low wind speeds, the frequency variations were reduced by 0.1216 Hz and 0.1073 Hz, respectively; at high wind speeds, the frequency variations were reduced by 0.1243 Hz and 0.11 Hz, respectively; The frequency change in the proposed control was basically the same as compared to Case 4 and 5 but there is an advantage of the proposed control strategy in terms of energy management. The proposed control strategy reduces the SOC change at any operating condition, compared to Case 4. However, Case 5 achieves charging at a low SOC change but increases the frequency change. Overall, the proposed control strategy achieves synergistic control of the frequency variation and SOC change.

4.2. Sudden Change in Wind Speed Simulation

Wind speed variations affect the frequency stability characteristics of a high percentage of new energy power systems. In this paper, a combined wind speed model was used to simulate the response of the proposed control strategy to sudden wind speed changes. The basic wind speed was set to 6.2 m/s, the max speed of gust wind was set to 10 m/s, the max speed of asymptotic wind was set to 3 m/s, and the max speed of random wind was set to 1 m/s. The start time of gust wind was set to 1 s, the duration of gust wind was set to 5 s, the start time of asymptotic wind was set to 2 s, and the ending time of asymptotic wind was set to 5 s. A schematic of the wind speeds used for the simulation is shown in the Appendix A. The simulation results are shown in Figure 15, Figure 16, Figure 17, Figure 18 and Figure 19 and Table 7.
The analysis of the simulation results shows that the proposed control strategy has a good ability to suppress the frequency disturbances caused by sudden wind speed. Compared with the wind-power-and-storage fixed coefficient, the peak value of the proposed control strategy was reduced by up to 12.2%; compared with the wind power fuzzy + energy storage control curve, the peak value of the proposed control strategy was reduced by up to 30.6%. The proposed control strategy’s performance was comparable to the energy storage using the control curve under the medium storage charge state. However, in the high- or low-charge state, the energy storage regulation coefficient needs to be adjusted stepwise according to the charge/discharge state, which makes the system need more regulation time and generates additional overshoot. The proposed control strategy can achieve continuous dynamic adjustment of the energy storage control coefficient, avoiding the control of the additional introduction of disturbances and significantly improving control performance.

4.3. Continuous Working Condition Simulation

To verify the operational capability of the proposed scheme under long-time operating conditions and the robustness of the proposed controller, this paper used a Weber model of wind power generation for simulation with a time duration of 1 h, where the scale parameter was set to 10.53 and the shape parameter was set to 2.315. The simulation results are shown in Figure 20, Figure 21 and Table 8.
The analysis of the simulation results shows that the proposed control strategy effectively controls the energy storage SOC without affecting the frequency regulation results. The soc is effectively controlled by 2.1 percentage points during one hour of operation. In addition, the results also verify that the proposed control strategy improves the sudden change regulation performance for the continuous regulation of parameters and avoids additional frequency disturbances due to sudden parameter changes.

5. Conclusions

This paper analyzed the frequency regulation performance of the wind storage system and clarified the role of wind power and energy storage in collaborative operation. A novel combination fuzzy controller was established. The controller considered the frequency change in the power system, the wind turbine’s operation, and the battery’s SOC. The proposed controller achieved an improvement in battery energy utilization efficiency based on the improvement in the frequency regulation performance of the wind storage system. The proposed control achieved good results in the simulation of multiple time scales. In the simulation of step dynamic performance, the proposed controller max improved the tracking effect by no less than 15%. In the simulation of abrupt wind speed, the frequency deviation was reduced by 30.6%. The proposed control strategy can reduce energy consumption by 2.1 percentage points per hour in continuous simulation.

Author Contributions

Conceptualization and methodology, S.M.; formal analysis and writing—original draft preparation, D.X.; validation and writing—review and editing, Y.J.; software and writing—review and editing, J.L.; methodology, Y.W.; funding acquisition, G.S. All authors have read and agreed to the published version of the manuscript.

Funding

This study was financially supported by Research start-up fund of North China University of Technology and Sponsored by Beijing Nova Program (Z211100002121081).

Data Availability Statement

Data are contained within the article.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Figure A1. Simulation modeling of cases.
Figure A1. Simulation modeling of cases.
Batteries 09 00564 g0a1
Figure A2. Schematic of wind speed.
Figure A2. Schematic of wind speed.
Batteries 09 00564 g0a2

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Figure 1. Control block diagram of wind turbine.
Figure 1. Control block diagram of wind turbine.
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Figure 2. Control block diagram of the studied frequency regulation.
Figure 2. Control block diagram of the studied frequency regulation.
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Figure 3. Control block diagram of the proposed fuzzy control strategy.
Figure 3. Control block diagram of the proposed fuzzy control strategy.
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Figure 4. The membership function of input variable in the proposed fuzzy control strategy.
Figure 4. The membership function of input variable in the proposed fuzzy control strategy.
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Figure 5. The membership function of the output variable in the proposed fuzzy control strategy.
Figure 5. The membership function of the output variable in the proposed fuzzy control strategy.
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Figure 6. The fuzzy variable relationships at different wind speeds.
Figure 6. The fuzzy variable relationships at different wind speeds.
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Figure 7. The membership function of the battery state.
Figure 7. The membership function of the battery state.
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Figure 8. The fuzzy variable at charge and discharge state.
Figure 8. The fuzzy variable at charge and discharge state.
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Figure 9. Simulation results at a low wind speed and low state of charge.
Figure 9. Simulation results at a low wind speed and low state of charge.
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Figure 10. Simulation results at a low wind speed and medium state of charge.
Figure 10. Simulation results at a low wind speed and medium state of charge.
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Figure 11. Simulation results at a low wind speed and high state of charge.
Figure 11. Simulation results at a low wind speed and high state of charge.
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Figure 12. Simulation results at a high wind speed and low state of charge.
Figure 12. Simulation results at a high wind speed and low state of charge.
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Figure 13. Simulation results at a high wind speed and medium state of charge.
Figure 13. Simulation results at a high wind speed and medium state of charge.
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Figure 14. Simulation results at a high wind speed and high state of charge.
Figure 14. Simulation results at a high wind speed and high state of charge.
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Figure 15. The simulation results of frequency variation.
Figure 15. The simulation results of frequency variation.
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Figure 16. The simulation results of virtual inertia control coefficient.
Figure 16. The simulation results of virtual inertia control coefficient.
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Figure 17. The simulation results of droop control coefficient.
Figure 17. The simulation results of droop control coefficient.
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Figure 18. The simulation results of the charge/discharge control factor.
Figure 18. The simulation results of the charge/discharge control factor.
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Figure 19. The simulation results of SOC.
Figure 19. The simulation results of SOC.
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Figure 20. Simulation results of medium-charge state.
Figure 20. Simulation results of medium-charge state.
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Figure 21. Simulation results of high-charge state.
Figure 21. Simulation results of high-charge state.
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Table 1. The fuzzy control rules of control factor (Kd, Kp).
Table 1. The fuzzy control rules of control factor (Kd, Kp).
( d Δ f d t ,   Δ f )v
VSSMBVB
(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)
Table 2. The fuzzy logic rules at charge state.
Table 2. The fuzzy logic rules at charge state.
Rate-CSOC
VSSMBVB
VSVBVBVBVBVB
SBVBVBVBVB
MMBVBVBVB
BSMBVBVB
VBVSSMBVB
Table 3. The fuzzy logic rules at discharge state.
Table 3. The fuzzy logic rules at discharge state.
Rate-CSOC
VSSMBVB
VSVBVBVBVBVB
SVBVBVBVBB
MVBVBVBBM
BVBVBBMS
VBVBBMSVS
Table 4. The parameters of the case.
Table 4. The parameters of the case.
ParametersValue
Rated power of thermal power100 MW
Inertia time constant of thermal power5.8 s
Regulation response time factor of prime mover0.25 s
Regulation response time factor of generator0.35 s
Adjustment factor of thermal power0.1
Rated power of wind power50 MW
Inertia time constant of wind turbine3 s
Regulation response time factor of wind turbine0.3 s
Rated power of energy storage10 MW
Rated capacity of energy storage5 MWh
Regulation response time factor of energy storage0.01 s
Load damping1.2 s
Table 5. Comparison of results at low wind speeds.
Table 5. Comparison of results at low wind speeds.
ParametersFrequency Change (Hz)SOC Change (%)
Low
SOC
Medium SOCHigh
SOC
Low
SOC
Medium SOCHigh
SOC
Case1: Thermal generators only0.3212///
Case2: Wind power fixed coefficient0.2768///
Case3: Wind power fuzzy control0.2625///
Case4: Wind power and storage fuzzy control0.15280.15280.1528−0.269−0.1942−0.1675
Case5: Wind power and storage fuzzy coefficient control0.25550.15280.15280.2725−0.1941−0.3781
Case6: Wind power–storage combination fuzzy coefficient control0.16160.15520.1552−0.2243−0.1876−0.1615
Table 6. Comparison of results at high wind speed.
Table 6. Comparison of results at high wind speed.
ParametersFrequency Change (Hz)SOC Change (%)
Low
SOC
Medium SOCHigh
SOC
Low
SOC
Medium SOCHigh
SOC
Case1: Thermal generators only0.3212///
Case2: Wind power fixed coefficient0.2768///
Case3: Wind power fuzzy control0.2593///
Case4: Wind power and storage fuzzy control0.15010.15010.1501−0.2624−0.1953−0.1686
Case5: Wind power and storage fuzzy coefficient control0.25220.15010.15010.2751−0.1953−0.3810
Case6: Wind power–storage combination fuzzy coefficient control0.15870.15250.1525−0.2253−0.1888−0.1625
Table 7. Comparison of results at a sudden change in wind speed.
Table 7. Comparison of results at a sudden change in wind speed.
ParametersFrequency Change Pack (Hz)Final SOC (%)
Low Charge ConditionMedium Charge ConditionHigh
Charge Condition
Low
Charge Condition
Medium Charge ConditionHigh
Charge Condition
Wind power and storage fixed coefficient0.35630.35630.356320.005550.005980.0084
Wind power fuzzy + energy storage control curve0.35520.31260.450620.016750.006179.9963
Wind power–storage combination fuzzy coefficient control0.31370.31370.312620.006850.006280.0084
Table 8. Comparison of results at continuous working condition.
Table 8. Comparison of results at continuous working condition.
ParametersAverage Frequency (Hz)Final SOC (%)
Medium-Charge ConditionHigh-Charge ConditionMedium-Charge ConditionHigh-Charge Condition
Wind power and storage fixed coefficient49.979449.979426.288358.3845
Wind power fuzzy + energy storage control curve49.979249.979428.973757.1203
Wind power–storage combination fuzzy coefficient control49.979349.979327.535659.2084
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MDPI and ACS Style

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

AMA Style

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 Style

Ma, 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 Style

Ma, 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

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