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Article

Minimum Risk Quantification Method for Error Threshold of Wind Farm Equivalent Model Based on Bayes Discriminant Criterion

1
Economic & Technical Research Institute, State Grid Anhui Electric Power Co., Ltd., Hefei 230022, China
2
State Grid Anhui Electric Power Co., Ltd., Hefei 230009, China
3
School of Electrical Engineering and Automation, Anhui University, Hefei 230601, China
*
Author to whom correspondence should be addressed.
Energies 2024, 17(19), 4793; https://doi.org/10.3390/en17194793
Submission received: 29 August 2024 / Revised: 19 September 2024 / Accepted: 20 September 2024 / Published: 25 September 2024

Abstract

:
The error threshold is the cornerstone to balance the mathematical complexity and simulation speed of wind farm (WF) equivalent models, and can promote the standardization process of equivalent methodology. Due to differences in power system conditions and model evaluation standards in different countries, the form and indexes of error thresholds of WF equivalent models have not been unified yet. This paper proposes a theoretical method for quantifying the minimum risk of error threshold of WF equivalent models based on the Bayes discriminant criterion. Firstly, the Euclidean errors of WF equivalent models in different periods are quantified, and the probability density distributions of the errors are fitted by kernel density estimation. Secondly, the real-time weighted prior probability algorithm is used to obtain the prior probability of a valid WF equivalent model, and the different losses caused by the missed judgment and misjudgment of the model validity to power systems are taken into account. Thirdly, the minimum risk quantification model of error threshold is established based on the Bayes discriminant criterion, and the feasibility of the proposed method is verified by an actual WF with numerical examples. Compared with the existing error thresholds, the proposed error threshold can more quickly and accurately determine the validity of WF equivalent models.

1. Introduction

Renewable energy brings freshness, vitality, and opportunities to the power family, but also brings new challenges. To avoid the shortcomings, power system operators have carried out a large number of simulations [1]. At the same time, the accuracy of the simulation model and the credibility of the result analysis have also received common attention from the power science and engineering communities, especially for wind farm (WF) equivalent models, which have been widely used in the stability analysis, but the modeling methodology has originated from the consistency of the rotor swing curve of synchronous generators [2,3,4].
Unlike coal-fired power plants, the WF contains numerous small generators, and they have different operating conditions. For modeling WFs, the contradiction between model complexity and time-domain simulation speed is prominent [5,6]. As the final stage of simulation modeling work, model validation can increase the confidence of model developers and users. At present, the major wind power installation countries have stipulated different validation processes and requirements of wind power models in the form of guidelines, standards, or reports based on the operation and control characteristics of their own power systems. The German FGW TR 4 specifies the error thresholds for different periods in the dynamic response process, in which the error thresholds for the steady state period, the transient period, and the total period are 0.07 p.u., 0.2 p.u., and 0.15 p.u., respectively [7,8]. However, the adaptive time window division method and the validity discrimination process are too cumbersome for engineering applications. Spain’s PO 12.3 defines the time starting from 0.1 s before the fault and totaling 1 s as the time window for model validity, and stipulates that the wind power model will be considered valid if the percentage of sampling points with an equivalent error less than 10% exceeds 85% [9,10]. Due to the long-distance transmission in Australian power systems, the AEMO standard raises the percentage to 90% [11]. It should be noted that the model validation methods of Spain and Australia reflect their convention of focusing more on the fault period rather than the fault recovery period [12]. The Western Electricity Coordinating Council relies mainly on the subjective judgment of experienced engineers and does not give a mandatory quantitative index for the error threshold [13]. To expand the scope of application of international standards, the quantification-of-error thresholds in IEC 61400-27-2 are handed over to domestic power system operators or authoritative organizations [14]. China’s GB/T 36237-2023 does not involve the quantification-of-error thresholds [15], while NB/T 31053-2021 draws on the relevant indexes of FGW TR4 [16].
The core of the research on the error threshold of WF equivalent models lies in the quantification criteria. In other research fields, the most used threshold quantification method is based on the 3 δ criterion [17], but it is required that the data need to conform to the normal distribution. The threshold quantization method based on the minimum error probability criterion has a better effect [18], but this method has two significant shortcomings. On the one hand, the prior probability is not taken into account. Generally, the probabilities of WF equivalent models being valid and invalid are not equal and may have large differences. On the other hand, it does not consider the losses to power systems caused by wrong judgments. For the power system stability analysis, the loss caused by missed judgment and misjudgment of the model validity is markedly different.
The remainder of this paper is organized as follows. In Section 2, the equivalent modeling of WFs and error analysis methods are introduced. The quantitative model of minimum risk of equivalent error threshold of WFs based on the Bayes discriminant criterion is presented in detail in Section 3. The example analysis and conclusions are discussed in Section 4 and Section 5.

2. Equivalent Modeling of WFs and Error Analysis Methods

2.1. Single-Machine Equivalent Modeling Method for WFs

Except for the situations where one WF contains different types of wind turbines or has inconsistent control algorithms, a single-machine equivalent model (SEM) generally has the same behavior at the point of interconnection (POI) as a detailed model [13,19]. In addition, the SEM can maximize the excitation of equivalent errors, which is consistent with the intention of usually setting the fault point at the POI [20]. Therefore, this paper adopts the SEM; this means that the whole WF is aggregated into one equivalent machine for equivalent error analysis.
The SEM requires equivalent parameters of input wind speed, wind turbine, pad-transformer, and a collector system. The input wind speed is calculated according to the principle of equal wind energy captured before and after an equivalent value; the calculation of wind turbine and end-transformer is calculated by the capacity-weighted method; and the calculation of the collector system is based on the principle of equal power loss of the collector line before and after an equivalent value. The method for calculating the equivalent parameters is detailed in [12].

2.2. WF Equivalent Error Calculation

Compared with bias error, relative error and absolute value of relative error, the Euclidean error is the most reasonable measure to quantify the active and reactive power errors of the WF equivalent model [21]. To avoid the similar and single expression of error information in mean error measures, this paper further adopts a six-time window division method to quantify equivalent errors, as shown in Figure 1 [21]. The Euclidean error of each time window is calculated according to Equation (1).
e E E = 1 N i = 1 N Y f ( i ) Y ( i )
where Y f ( i ) and Y ( i ) are the active or reactive power of the detailed model and the SEM corresponding with the i th sampling point, respectively, and N is the total number of sampling points within one time window.

2.3. Probability Density Function of Equivalent Errors

Considering the uncertainty of input wind speed and fault disturbance, this paper selects kernel density estimation to fit the probability density distribution of equivalent errors of WFs [22]. Let x 1 , x 2 , ... , x n represent the equivalent power error of WFs, then the kernel density function with respect to x can be written as
f ^ ( x ) = 1 n h i = 1 n K ( x x i h )
where f ^ ( x ) denotes the probability density function of the equivalent error of the WF, K ( x ) denotes the kernel function, h denotes the window width, and n denotes the number of samples.
The window width h is crucial for kernel density estimation. Currently, the insertion method based on a fixed window width is the most widely used and efficient window width selection method, which originates from the idea of least-square difference and obtains the optimal window width by minimizing the mean integral square error (MISE). The solution process is shown below.
M I S E ( f ^ ( x ) ) = E [ f ^ ( x ) f ( x ) ] 2 d x = [ E f ^ ( x ) f ( x ) ] 2 d x + V a r f ^ ( x ) d x
where the first term represents the integral of the square deviation between the expected value of f ^ and the true value, and the second term represents the variance integral of the estimate. By solving and transforming Equation (3), the optimal window width h * can be determined, namely
h * = K ( t ) 2 d t ( t 2 K ( t ) d t ) 2 f ( x ) 2 d x 1 5 n 1 5

3. Quantitative Model of Minimum Risk of Error Threshold of WF Equivalent Model

The 3 σ criterion is the most commonly used threshold quantification method, but it requires the data to conform to a normal distribution. The threshold quantization method based on the minimum error probability is more effective, but it ignores the fact that the probabilities of model validity and invalidity are usually not equal and differ greatly. In addition, the impacts of missed judgment and misjudgment on power systems are not the same. The Bayes discriminant criterion can efficiently take into account a prior probability of WF equivalent error and a loss of wrong judgments, which can reduce the risk while improving the robustness of WF equivalent models.

3.1. The Bayes Discriminant Criterion and Mathematical Model

Assume that the prior probability of the WF equivalent model in the valid state is q o k , and the prior probability of the invalid state is q f a u l t . The loss caused by the WF equivalent model’s missed judgment is L ( o k | f a u l t ) , and the loss caused by misjudgment is L ( f a u l t | o k ) . The Bayes discriminant function of the WF equivalent model is
W ( x ) = f o k ( x ) f f a u l t ( x ) , d = q f a u l t L ( o k | f a u l t ) q o k L ( f a u l t | o k )
The Bayes discriminant criterion is as follows:
x o k , W ( x ) > d x f a u l t , W ( x ) d
According to Equation (6), it is converted into an equation, which is
f o k ( x ) f f a u l t ( x ) = q f a u l t L ( o k | f a u l t ) q o k L ( f a u l t | o k )
To solve Equation (7), the solution is the error threshold T h of the WF equivalent model under the minimum risk. Based on T h , the validity of the WF equivalent model can be determined according to Equation (8).
x o k , x < T h x f a u l t , x T h

3.2. Real-Time Weighted Prior Probability Algorithm

The Bayes discriminant criterion requires a prior probability of the equivalent error of WFs, and we adopt a real-time weighted solver algorithm to obtain the prior probability. The algorithm does not rely on prior knowledge and can adaptively adjust in real-time by measuring system parameters.
In the case of insufficient prior knowledge, let the prior probabilities of a valid and invalid WF equivalent model equal, i.e., q o k = q f a u l t = 0.5 . Assuming the weighting coefficient n = 1 , it can be interpreted that the increase or decrease in the value of the prior probability at the current moment is completely dependent on the state of the previous moment, or that the increase or decrease in the value of the prior probability at the next moment is completely dependent on the state of the current moment, i.e.,
q i + 1 ( o k ) = p i ( o k | s )
q i + 1 ( f a u l t ) = 1 q i + 1 ( o k )
where p i ( o k | s ) represents the probability value that the state s , and the wind farm equivalent model is in a valid state at the time of monitoring.
According to the Bayes full probability model, there is a monitored state s at the time i :
p i ( o k | s ) = f i ( s | o k ) × q i ( o k ) f i ( s | o k ) × q i ( o k ) + f i ( s | f a u l t ) × q i ( f a u l t )
where f i ( s | o k ) (or f i ( s | f a u l t ) ) represents the probability of monitoring state s if the WF equivalent model is in a valid (invalid) state at the time.
The identity transformation of Equation (11) gives
p i ( o k | s ) = 1 1 + f i ( s | f a u l t ) f i ( s | o k ) × q i ( f a u l t ) q i ( o k )
Substituting q i ( f a u l t ) = 1 q i ( o k ) into Equation (12) yields
p i ( o k | s ) = 1 1 + a i × b i
where a i = 1 1 q i ( o k ) , b i = f i ( s i | f a u l t ) f i ( s i | o k ) .
What is discussed above is the real-time update algorithm of prior probability when n = 1 ; when n 1 , it only needs to transform Equations (9) and (10) into
q i + 1 ( o k ) = j = 0 n 1 w j p i j ( o k | s )
q i + 1 ( f a u l t ) = 1 q i + 1 ( o k )
where j = 0 n 1 w j = 1 and, under normal circumstances, w 0 > w 1 > ... > w n , w j represents the contribution factor of the prior probability of moment ( i 1 ) to moment ( i + 1 ) .

4. Example Analysis

An actual WF consists of 28 × 1.5 MW doubly fed induction generators (DFIGs), which are connected to node 1 of the IEEE 39-node system. The network topology is shown in Figure A1. Based on the MATLAB/Simulink R2024a platform, the detailed model and SEM of the WF are built, in which the parameters of the detailed model are shown in Table A1. Parameters of the SEM are calculated according to Section 2.1, and the equivalent errors of the WF are calculated as described in Section 2.2. The voltage dip is realized by setting a short-circuit fault at the POI.

4.1. Determination of WF Equivalent Error Probability Density Function

Between the cut-in and cut-out wind speeds of the DFIG, 200 sets of input wind speeds of 28 DFIGs and 100 sets of input wind speeds of 28 × 2 DFIGs are randomly generated. In total, 300 sets of voltage dips are randomly generated within the range of 0.1 to 0.9 p.u. A short-circuit fault occurs at 20 s, and the fault is cleared after 0.625 s. The power response curves at the POI are simulated based on the above data, and the equivalent errors are carried out according to Equation (1) with a 5 ms sample step.
According to Equation (2), the density functions of an equivalent error in six time windows are fitted, and then the probability density curves can be drawn. The active and reactive powers of time window 4 are shown in Figure 2 and Figure 3, respectively.
It can be seen that the kernel density estimation method based on a fixed window width can reflect the distribution characteristics of the frequency histogram of sample data, and the fitted probability density function curve is smooth, which is conducive to reducing the error of subsequent data processing.

4.2. Influence of Different Missed Judgment and Misjudgment Loss Ratio Thresholds

Due to the subjectivity of the selection of the loss ratio of missed judgment and misjudgment in the WF equivalent model validation, the loss ratios of missed judgment and misjudgment are set as 1, 10, 50, and 100 in turn. The error threshold of the WF equivalent models under each time window is quantified according to Equation (7), as shown in Figure 4 and Figure 5.
It can be seen that the error threshold of WF equivalent models under each time window shows a decreasing trend but has little change with the increase in the loss ratio of missed judgement and misjudgement of model validation. With the increase in the cost of missed judgment, the threshold quantification method based on minimum risk is more prone to misjudgment, and the error threshold is reduced in the validity criterion. According to the actual situation, the losses caused by missed judgment and misjudgment of the WF equivalent model validity are different. When the loss ratio is 1, the proportion of missed judgments will increase, and the losses caused to the system will also increase. With the increase in loss ratio, the equivalent error threshold of WFs will decrease, which is easy to cause misjudgment. Therefore, this paper sets the loss ratio of missed judgment and misjudgment of the equivalent WF validity as 10.

4.3. Determination of Equivalent Error Threshold for WFs

According to the minimum-risk Bayes threshold selection theory and the threshold discrimination criterion of Equation (7), threshold selection research is carried out to judge the validity of the WF equivalent models. Among them, the density function curve of an equivalent WF power error can be obtained through Section 4.1, and the prior probability of valid and invalid equivalent WF models can be obtained by real-time weighting algorithms. Based on Section 4.2, it is determined that the loss ratio of missed judgment and misjudgment of equivalent WF model validity is 10. The threshold quantization results of equivalent errors of WFs are shown in Table 1 and Table 2.
To shorten the discriminant time while ensuring the accuracy of the discriminant, this paper further distinguishes the main discriminant time window and the secondary discriminant time window. In total, 80 sets of test data are randomly generated within the input wind speed range of 4~22 m/s and voltage dip range of 0.1~0.9 p.u. Through preliminary observation of the test data, it is found that time window 1 and time window 2 are easy to cause misjudgment of the equivalent WF model validity, so the discrimination window is selected from the other four time windows. As a result, six typical discrimination combinations of time window are selected according to the test data and discrimination requirements, as shown in Table 3.
As can be seen from Table 3, when window 3 and window 4 are the main validation window and window 5 is the secondary validation window, the accuracy of discrimination is not only high but also the validation time of the equivalent WF models is shortened. The specific validation method is as follows: when the equivalent errors of windows 3 and 4 are lower than the given error threshold at the same time, the WF equivalent model is judged to be valid. When the equivalent errors of windows 3 and 4 are both higher than the given error threshold, it is also necessary to verify whether time window 5 meets the given error threshold. If it is less than the given error threshold, the WF equivalent model will be judged to be valid. Otherwise, it will be invalid.

4.4. Verification in Different Wind Speed Scenarios

To verify the validity of the proposed threshold quantization method of the WF equivalent models, four scenarios are selected, including random wind speed, rated wind speed, sub-synchronous speed, and super-synchronous speed. For each scenario, five sets of test data are generated in the voltage dip range of 0.2~0.9 p.u. In the random wind speed scenario, the input wind speeds are generated randomly in the range of 4 to 22 m/s. For the rated wind speed scenario, the input wind speeds are fixed at 12.5 m/s. The input wind speeds in the sub-synchronous and super-synchronous speed scenario are randomly generated within the range of 4~9.5 m/s and 9.6~22 m/s, respectively. Table 4, Table 5 and Table 6 list the quantitative analysis results of equivalent errors in the hyper-synchronous speed scenario, and Appendix B, Appendix C and Appendix D list the quantitative analysis results in the other three scenarios.
As shown in Table 4, Table 5, Table 6 and Table 7, it can be seen that the error rate corresponding to the 3 σ criterion and the minimum error probability criterion is 5%, while the error rate corresponding to Spanish PO 12.3 is 60%, which is much higher than other discrimination criteria. The reason why Spanish PO 12.3 is poor is that its model validity time is only set to 1 s (calculated from 0.1 s before the fault), while the time in the fault recovery stage is only 0.275 s. This paper finds that the fault recovery period has a great impact on the judgment results, resulting in a high error rate of this method. Therefore, this validation method has been gradually replaced. The error rate corresponding to NB/T 31053-2021 is also 5%, but the error threshold criterion has too many verification indexes, making the validity verification process complicated. The quantized error threshold of the method in this paper can not only reduce the error rate to 0 but can also be distinguished by focusing on the index comparison of the initial period of fault recovery (time windows 3 and 4), which is simpler and more efficient in the engineering application process.

5. Conclusions

To solve the problem of the model accuracy of WFs as a component in power systems, this paper puts forward a minimum risk quantification method of equivalent error thresholds of WFs based on the Bayes discriminant criterion, which integrates the probability difference between the valid and invalid equivalent WF models and the different losses caused by missed judgment and misjudgment of model validity into the error threshold quantification model. Through the analysis of simulation examples, the following conclusions are obtained:
(1)
In the case that prior knowledge cannot be obtained, the real-time weighted prior probability solving algorithm can update the probability of the validity of the WF equivalent models according to the dynamic data set, and solve the problem of prior distribution selection in the Bayes discrimination criterion.
(2)
The identification method of “error thresholds of the windows 3 and 4 are the main ones, and error threshold of the window 5 is the auxiliary one” can accurately and efficiently determine the validity of the WF equivalent model, and improve the engineering practical value of the threshold quantization results.
(3)
Compared with the error threshold of existing wind power models, the Bayes threshold quantization result oriented to minimum risk can more accurately determine the validity of WF equivalent models.
However, the main drawback of this paper is that it only considers the equivalent error of DFIG-based WFs using the single-machine equivalent modeling method. To expand the applicability of the error threshold, the equivalent errors of DFIG-based WFs with different turbine parameters, PMSG-based WFs and hybrid WFs with both DFIGs and PMSGs need to be analyzed in future works. In addition, the equivalent errors under different equivalent modeling methods might need to be discussed.

Author Contributions

Conceptualization, Y.S. and H.Y.; methodology, Y.S. and J.X.; software, K.L.; validation, J.W. and Q.Z.; formal analysis, Q.Z., Y.S. and H.Y.; investigation, J.X. and K.L.; resources, H.Y.; data curation, J.W.; writing—original draft preparation, Q.Z.; writing—review and editing, Q.Z. and Y.S.; visualization, H.Y.; project administration, Q.Z. and K.L. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the Science and Technology Project Funding of State Grid Anhui Electric Power Co., Ltd. Economic and Technological Research Institute.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Conflicts of Interest

Authors Yuming Shen, Hao Yang, Jiayin Xu, Kun Li, Jiaqing Wang were employed by the company State Grid Anhui Electric Power Co., Ltd. The remaining author declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Appendix A

Figure A1. WF topology.
Figure A1. WF topology.
Energies 17 04793 g0a1
Table A1. Simulation parameters.
Table A1. Simulation parameters.
DFIGWind turbine
Blade radius (m)31Stiffness coefficient of shafting (pu/rad)1.11
Inertial time constant (s)4.32Rated wind speed (m/s)12.5
Cut-in wind speed (m/s)4Cut-out wind speed (m/s)22
Doubly fed induction generator
Rated power (MW)1.5Rated frequency (Hz)50
Rated voltage (kV)0.575Stator impedance (pu)0.016 + j0.16
Rotor impedance (pu)0.023 + j0.18Mutual impedance of stator and rotor (pu)j2.9
Power converter
Rotor side converterRated capacity (MVA)0.525Network side converterRated capacity (MVA)0.75
Rated voltage of DC bus (kV)1.15DC side bus capacitance (F)0.01
Pry bar circuit input threshold (pu)2Pry bar circuit cut out threshold (pu)0.35
Pry resistance (pu)0.1
Pad Mounted TransformerRated capacity (MVA)1.75Rated frequency (Hz)50
Rated ratio (kV)25/0.575Impedance (pu)0.06
Main TransformerRated capacity (MVA)150Rated frequency (Hz)50
Rated ratio (kV)343/25Impedance (pu)0.135
Cable LineUnit resistance (Ω/km)0.1153Unit inductance (Ω/km)j0.3297

Appendix B. Random Wind Speed

Table A2. Determination results of WF equivalent model based on the proposed method in random wind speed scenario.
Table A2. Determination results of WF equivalent model based on the proposed method in random wind speed scenario.
Test Group NumberTime Window 3Time Window 4Time Window 5Time Window 6Decision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power3σ CriterionMinimum Error Probability CriterionProposed Method
10.0846 0.1566 0.0077 0.0881 0.0037 0.0293 0.0005 0.0250 right right right
20.3197 0.2718 0.0512 0.1965 0.0107 0.0290 0.0012 0.0342 rightrightright
30.5126 1.9903 0.0779 0.3969 0.0142 0.0258 0.0049 0.0238 right right right
41.3435 1.7370 1.2144 1.0222 1.1117 1.0768 0.9668 0.8299 rightrightright
51.4019 0.5076 1.0836 1.2057 0.9696 0.9295 0.9713 0.8331 right right right
Table A3. Determination results of WF equivalent model based on NB/T 31053-2021 in random wind speed scenario.
Table A3. Determination results of WF equivalent model based on NB/T 31053-2021 in random wind speed scenario.
Test Group NumberPre-Failure Mean Absolute DeviationMean Absolute Deviation during FailureMean Absolute Deviation after FailureWeighted Mean Absolute DeviationDecision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power
10.0050.0140.0130.0100.0050.0340.0090.018right
20.0050.0140.0350.0920.0180.0490.0260.072right
30.0050.0140.0340.0200.0290.1060.0300.045right
40.0050.0140.0280.0131.0260.9350.3250.290right
50.0050.0140.0090.0040.9930.8720.3040.266right
Table A4. Determination results of WF equivalent model based on Spanish PO 12.3 in random wind speed scenario.
Table A4. Determination results of WF equivalent model based on Spanish PO 12.3 in random wind speed scenario.
Test Group NumberError Sampling Point Below 0.1 p.u./%Decision Result
Active PowerReactive Power
193.0378.11wrong
279.654.73wrong
374.6372.64wrong
473.1373.13right
573.6375.12right

Appendix C. Rated Wind Speed

Table A5. Determination results of WF equivalent model based on the proposed method in rated wind speed scenario.
Table A5. Determination results of WF equivalent model based on the proposed method in rated wind speed scenario.
Test Group NumberTime Window 3Time Window 4Time Window 5Time Window 6Decision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power3σ CriterionMinimum Error Probability CriterionProposed Method
10.12530.2715 0.04220.0699 0.02070.0814 0.03020.1145 right right right
20.18130.2862 0.03810.0228 0.02420.0745 0.03620.1101 rightrightright
30.58851.2373 0.08050.1556 0.03000.0711 0.03570.0953 right right right
41.17980.9082 1.37261.0970 1.26611.0904 1.26921.0554 rightrightright
52.13370.8535 1.48450.7110 1.31191.1293 1.23851.0630 right right right
Table A6. Determination results of WF equivalent model based on NB/T 31053-2021 in rated wind speed scenario.
Table A6. Determination results of WF equivalent model based on NB/T 31053-2021 in rated wind speed scenario.
Test Group NumberPre-Failure Mean Absolute DeviationMean Absolute Deviation during FailureMean Absolute Deviation after FailureWeighted Mean Absolute DeviationDecision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power
10.0360.1080.0350.1630.0330.1080.0350.141right
20.0360.1080.1570.1470.0390.1010.1090.129right
30.0360.1080.0510.0250.0570.1270.0510.064right
40.0360.1080.0570.0281.2751.0630.4200.346right
50.0360.1080.0100.0141.3011.0550.4000.336right
Table A7. Determination results of WF equivalent model based on Spanish PO 12.3 in rated wind speed scenario.
Table A7. Determination results of WF equivalent model based on Spanish PO 12.3 in rated wind speed scenario.
Test Group NumberError Sampling Point below 0.1 p.u./%Decision Result
Active PowerReactive Power
185.0717.91wrong
229.8528.36wrong
374.1363.68wrong
473.1362.69right
574.1365.17right

Appendix D. Sub-Synchronous Speed (Five Groups of Detailed WF Models and SEMs Are Valid)

Table A8. Determination results of WF equivalent model based on the proposed method in sub-synchronous speed scenario.
Table A8. Determination results of WF equivalent model based on the proposed method in sub-synchronous speed scenario.
Test Group NumberTime Window 3Time Window 4Time Window 5Time Window 6Decision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power3σ CriterionMinimum Error Probability CriterionProposed Method
10.0242 0.0943 0.0058 0.0134 0.0053 0.0355 0.0086 0.0069 right right right
20.0848 0.1675 0.0128 0.0689 0.0036 0.0335 0.0071 0.0166 rightrightright
30.0963 0.1689 0.0160 0.1174 0.0030 0.0296 0.0062 0.0234 right right right
40.2173 0.2840 0.0361 0.2084 0.0077 0.0259 0.0053 0.0304 rightrightright
50.2054 0.3129 0.0468 0.1313 0.0106 0.0367 0.0092 0.0305 right right right
Table A9. Determination results of WF equivalent model based on NB/T 31053-2021 in sub-synchronous speed scenario.
Table A9. Determination results of WF equivalent model based on NB/T 31053-2021 in sub-synchronous speed scenario.
Test Group NumberPre-Failure Mean Absolute DeviationMean Absolute Deviation during FailureMean Absolute Deviation after FailureWeighted Mean Absolute DeviationDecision Result
Active PowerReactive PowerActive PowerReactive PowerActive powerReactive PowerActive PowerReactive Power
10.0010.0090.0130.0400.0080.0180.0100.030right
20.0010.0090.0200.0070.0090.0290.0150.014right
30.0010.0090.0200.0040.0090.0350.0150.014right
40.0010.0090.0170.0170.0150.0470.0150.025right
50.0010.0090.0030.0010.0190.0470.0080.016right
Table A10. Determination results of WF equivalent model based on Spanish PO 12.3 in sub-synchronous speed scenario.
Table A10. Determination results of WF equivalent model based on Spanish PO 12.3 in sub-synchronous speed scenario.
Test Group NumberError Sampling Point below 0.1 p.u./%Decision Result
Active PowerReactive Power
110092.04right
291.0487.06right
387.5680.1wrong
484.5880.1wrong
577.1178.61wrong

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Figure 1. Short-circuit fault process represented by voltage dip (red line), and segmentation of equivalent power error based on six-time window division.
Figure 1. Short-circuit fault process represented by voltage dip (red line), and segmentation of equivalent power error based on six-time window division.
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Figure 2. Time window 4 active power equivalent error probability density.
Figure 2. Time window 4 active power equivalent error probability density.
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Figure 3. Time window 4 reactive power equivalent error probability density.
Figure 3. Time window 4 reactive power equivalent error probability density.
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Figure 4. Equivalent error threshold of active power under different loss ratios.
Figure 4. Equivalent error threshold of active power under different loss ratios.
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Figure 5. Equivalent error threshold of reactive power under different loss ratios.
Figure 5. Equivalent error threshold of reactive power under different loss ratios.
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Table 1. Active power equivalent error threshold of WFs.
Table 1. Active power equivalent error threshold of WFs.
Active Time Window123456
Proposed method0.03560.1810.65250.13280.13220.0876
Minimum error probability criterion0.02360.14620.23770.10250.08990.0535
3σ criterion0.03870.14220.47530.11210.09440.06
Table 2. Reactive power equivalent error threshold of WFs.
Table 2. Reactive power equivalent error threshold of WFs.
Reactive Time Window123456
Proposed method0.03160.24310.63350.27080.04470.0323
Minimum error probability criterion0.02540.22190.57490.22570.03670.0218
3σ criterion0.03840.22260.45080.19350.05910.0398
Table 3. Threshold decision results under different validation time windows.
Table 3. Threshold decision results under different validation time windows.
The Main Discriminant Time WindowSecondary Discriminant Time WindowNumber of Wrong JudgmentsCorrect Rate/%
Window 3, 4Window 5, 6297.5
Window 5, 6Window 3, 4297.5
Window 3, 4Window 5297.5
Window 3, 4Window 6297.5
Window 3, 4none593.75
Window 5, 6none2173.75
Table 4. Determination results of the WF equivalent model based on the proposed method.
Table 4. Determination results of the WF equivalent model based on the proposed method.
Test Group NumberTime Window 3Time Window 4Time Window 5Time Window 6Decision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power3σ CriterionMinimum Error Probability CriterionMethodology of This Paper
10.06770.12480.07650.06340.05690.06830.04090.0942right rightright
20.59761.25450.08100.16420.15830.02490.12610.0633rightrightright
31.3517 0.8261 0.3966 1.1961 0.1089 0.1610 0.1303 0.0305 wrongwrongright
40.63231.40611.41890.97391.30361.09691.29141.0548rightrightright
52.08310.89321.48730.67251.31761.12061.28671.0569rightrightright
Table 5. Determination results of WF equivalent model based on NB/T 31053-2021 in super-synchronous speed scenario.
Table 5. Determination results of WF equivalent model based on NB/T 31053-2021 in super-synchronous speed scenario.
Test Group NumberPre-Failure Mean Absolute DeviationMean Absolute Deviation during FailureMean Absolute Deviation after FailureWeighted Mean Absolute DeviationDecision Result
Active PowerReactive PowerActive PowerReactive PowerActive PowerReactive PowerActive PowerReactive Power
10.0460.0930.0060.1420.0470.0860.0230.120right
20.0460.0930.0520.0240.1450.0950.0790.053right
30.046 0.091 0.065 0.030 0.187 0.157 0.099 0.074 wrong
40.0460.0930.0310.0271.2811.0730.4080.347right
50.0460.0930.0100.0141.3351.0480.4110.332right
Table 6. Determination results of WF equivalent model based on Spanish PO 12.3 in super-synchronous speed scenario.
Table 6. Determination results of WF equivalent model based on Spanish PO 12.3 in super-synchronous speed scenario.
Test Group NumberParametersError Sampling Point below 0.1 p.u./%Decision Result
1Active power96.02wrong
Reactive power17.91
2Active power74.13wrong
Reactive power73.63
3Active power72.64wrong
Reactive power75.12
4Active power74.13right
Reactive power75.62
5Active power73.63right
Reactive power73.63
Table 7. Different criteria determine the results under different wind speeds.
Table 7. Different criteria determine the results under different wind speeds.
CriterionNumber of Misjudgments
(Sample Number is 20)/Piece
False Judgment Rate/%Correct Rate/%
Proposed method00100
3σ criterion1595
MPE criterion1595
NB/T 31053-20211595
PO 12.3126040
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Shen, Y.; Yang, H.; Xu, J.; Li, K.; Wang, J.; Zhu, Q. Minimum Risk Quantification Method for Error Threshold of Wind Farm Equivalent Model Based on Bayes Discriminant Criterion. Energies 2024, 17, 4793. https://doi.org/10.3390/en17194793

AMA Style

Shen Y, Yang H, Xu J, Li K, Wang J, Zhu Q. Minimum Risk Quantification Method for Error Threshold of Wind Farm Equivalent Model Based on Bayes Discriminant Criterion. Energies. 2024; 17(19):4793. https://doi.org/10.3390/en17194793

Chicago/Turabian Style

Shen, Yuming, Hao Yang, Jiayin Xu, Kun Li, Jiaqing Wang, and Qianlong Zhu. 2024. "Minimum Risk Quantification Method for Error Threshold of Wind Farm Equivalent Model Based on Bayes Discriminant Criterion" Energies 17, no. 19: 4793. https://doi.org/10.3390/en17194793

APA Style

Shen, Y., Yang, H., Xu, J., Li, K., Wang, J., & Zhu, Q. (2024). Minimum Risk Quantification Method for Error Threshold of Wind Farm Equivalent Model Based on Bayes Discriminant Criterion. Energies, 17(19), 4793. https://doi.org/10.3390/en17194793

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