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  1. (Dept. of Nuclear Power Plant Engineering, KEPCO International Nuclear Grduate School(KINGS), Korea.)



Artificial neural network (ANN), grid voltage degradation, generator output voltage, nuclear power plant (NPP), on load tap changer (OLTC)

1. Introduction

The article(1)(2) introduces that Nigeria, a new member of the IAEA country, is preparing to add nuclear power plants (NPPs) to its energy mix. This is much needed in order to mitigate the perennial energy shortage being experienced in the country. Stable and reliable power supply is the basis for any nation's growth as it enhances all other sectors, leading to the country's socio-economic development. This is much needed to actualize the country’s economic growth rate that has risen from 1.9% to 2.3% (1). Nigeria currently has 12,000 MW(e) of installed generation capacity, being largely dependent on hydropower and gas fired combined cycle power sources; 12.5% and 87.5% respectively. It is important to note that currently only 3,500 MW(e) to 6,000 MW(e) is typically available for onward transmission to the final consumer (3). The discrepancy between the installed generation capacities and the available capacities being transmitted to the final user is due to the following reasons:

•The vandalism of transmission and distribution equipment,

•Ageing and poor maintenance of existing power infrastructure,

•Low generation capacity.

A key requirement for the introduction of nuclear power into the energy mix of any country is to have in place a reliable and stable electric grid network(4). The electric grid is expected to be large enough to accommodate the base load generation from the nuclear power plant in an efficient and safe manner.

The reliability of the electric grid is also important as a result of the off-site power it will provide for the safety systems in the NPP(5). A stable and reliable grid system is one in which the frequency and voltage are controlled within pre- defined limits. Under any circumstance where the grid frequency and voltage go beyond the acceptable limits or the grid voltage fluctuates beyond the acceptable limits, the NPP will be expected to be disconnected from the grid or shutdown (6). In addition, the NPP requires a reliable and stable grid for commercial reasons so that the nuclear plant unit can achieve a high load factor, unconstrained by grid faults and that incessant trips collapse do not shorten the life of the plant.

But during peak load conditions, the Nigerian electric grid becomes vulnerable to extreme voltage fluctuations, in particular voltage degradation(7). If countermeasures such as load shedding within the acceptable and appropriate time limit are not put in place, these conditions can lead to voltage collapse. Thus, the effects of such adverse conditions on the safe and economic operation of an NPP must be analyzed and studied.

This research proposes implementation of artificial neural network (ANN) as a control scheme for the effective and efficient operation of the main transformer OLTC tap settings. ETAP simulation results are used as target data of the ANN model to train and test the model for an accurate prediction of the MT OLTC tap settings during voltage fluctuations from the grid.

By implementing the ANN-based OLTC control scheme proposed in this study in the OLTC for MT of a nuclear power plants, it will contribute to the mitigation of voltage excursions in the power grid and to smooth operation of the OLTC(8)(9).

2. Effects of Grid Voltage Excursions on Generator Output Voltage

2.1 Generator Voltage Control

In the advanced country, there is usually no need to install the OLTC on the generator main transformer since the power grid is sufficiently stable. Contrary, in the developing countries, because of severe voltage fluctuation on the grid, an OLTC should be installed on the generator’s main transformer in many cases(10). With the increment of variable energy source such as renewable energy sources, the stability of the grid is getting challenged even in advanced countries also(11). The synchronous generator’s automatic voltage regulators (AVR) is much faster than the OLTC, it can provide more robust voltage regulation. In addition, its operation is smooth and does not cause step voltages as in the case of the OLTC transformer. On the other hand, its range of control is limited by the reactive power capability of the machine. For these reasons, generator AVR control could be used for fast, fine voltage regulation and the OLTC control could be used for coarse, secondary control(12).

Thus, this paper aims to regulate voltage excursion on the unit’s MT and its inherent effect on the generator output voltage of an NPP in Nigeria. Also implementation of artificial neural network (ANN) as a control mechanism for the effective and efficient operation of the MT OLTC tap settings is proposed.

2.2 Connection of NPP to Electric Grid

The key equipment and their characteristics important to the interaction between the electric grid and an NPP proposed in this study are shown by the schematic power system illustrated in fig. 1.

그림. 1 Typical system connection

Fig. 1 Typical system connection

../../Resources/kiee/KIEE.2022.71.2.342/fig1.png

2.3 Limits on Generator Operation

The main generator(MG) must be able to provide reactive power to the power grid as well as absorb reactive power from the power grid in order to maintain the grid voltage within acceptable range.

The typical generator reactive power capability curve is shown in the fig. 2(6) for a rated generator voltage. The curve shows the three thermal limits under which the generator operates and these are the overexcited limit, the stator heating limit, and the under excited limit (13).

그림. 2 Generator capability curve

Fig. 2 Generator capability curve

../../Resources/kiee/KIEE.2022.71.2.342/fig2.png

The generator megawatt (MW) output is limited bythe turbine capability as shown in the fig. 2. The MT MVA rating should never restrict the generator MW output for any given turbine output.

The generator usually operates with lagging power factor (PF) to supply both active and reactive power to the grid. In a deregulated grid system such as Nigeria, a key decision must be made whether the connected NPP is to operate as a base load or having the capability to perform load following within its transmission system (6). The IEEE Std C50.13-2005 states that “Generators shall be thermally capable of continuous operation within the confines of their reactive capability curves over the range of ± 5% in voltage.” Reactive power flow depends on the voltage magnitude difference between generator voltage and system voltage. Therefore reactive power range should be taken into account primarily in the selection of impedance and turns ratio.

3. The Nigerian Grid Characteristics

3.1 Grid Voltage and Operation Conditions

The key characteristics of the Nigerian grid as related to this research in accordance with the country’s grid code are as follows:

The high-voltage side of the MT is connected to the 330kV of the grid. The transmission company of Nigeria (TCN) i.e. the system operator, shall endeavor to control the different busbar voltages to be within the voltage control ranges specified in the table 1. Under system stress or following system faults, voltages can be expected to deviate beyond the above limits by a further +/-5% (7).

표 1. Voltage control range

Table 1. Voltage control range

Voltage level kV

Minimum voltage kV (pu)

Maximum voltage kV (pu)

330

280.5 (0.85)

346.5 (1.05)

132

112.2 (0.85)

145.2 (1.10)

66

62.04 (0.94)

69.96 (1.06)

33

31.02 (0.94)

34.98 (1.06)

11

10.45 (0.95)

11.55 (1.05)

The nominal frequency of the system shall be 50 Hz. The national control center will endeavor to control the system frequency within a narrow operating band of +/-0.5% from 50 Hz (49.75–50.25 Hz). But under system stress, the frequency on the power system could often experience variations within the limits of +/-2.5% from 50 Hz (48.75 – 51.25 Hz). Each generating unit must be capable of supplying rated power output (MW) at any point between the limits of 0.85 power factor lagging and 0.95 power factor leading (7)

3.2 Generator Terminal Voltage Evaluation by Power Transfer Formular

The evaluation of the effect of severe voltage degradation on the MG output voltage of APR1400 when connected to the 330 kV Nigerian grid was performed through two different approaches; the use of power transfer equation according to IEEE Std. C57.116-2014,

load flow analysis using ETAP® software.

Considering a power system represented by fig. 3, the power transfer equation between the transmission system and the NPP generator’s output voltage is given by equation (1)(13)

그림. 3 Conceptual diagram of APR1400 electrical power system (Division I)

Fig. 3 Conceptual diagram of APR1400 electrical power system (Division I)

../../Resources/kiee/KIEE.2022.71.2.342/fig3.png

(1)
$\overline{V_{S}}=\overline{V_{Q}}-\frac{\left[\frac{(M W \pm M \omega r)^{*}}{M V A_{T}}\right]}{V_{Q}} \times\left(R_{T}+j X_{T}\right)$

Making Vg the subject of the equation:

(2)
$V_{g}=\dfrac{(V_{s}\angle\delta)+-\sqrt{(V_{s}\angle\delta)^{2}+[\dfrac{MW +- j MVar}{MVA_{T}}]}(R_{T}+j X_{T})}{2}$

Note: The bar over and are complex numbers.

Where:

Vs = system voltage, kV

$\delta$ = voltage angle (Vs is d degree lag than Vg)

Vg = generator voltage (assumed to be at zero angle for reference) per unit on Vgbase

(MW$\pm$jMvar) = generator output (less unit auxiliary loads) MW and Mvar

MVAT = megavoltampere rating of MT for VTHV tap

(RT+jXT) = resistance and reactance of MT, per unit at the nominal MT turns ratio.

When active power of the generator is constant, the variation in the reactive and apparent power due to changes in power factor (PF) for values between 0.9 leading and 0.85 lagging are as shown in table 2(14). The effect of the voltage degradation of the Nigerian 330 kV grid on the MG output voltage is calculated using the equation (2) above and the calculated values of P and Q for the PF values between 0.90 leading and 0.85 lagging as shown in table 2. This calculation was done with the input data of the daily voltage variations profile of the Nigerian 330 kV electric grid over specific period of time.

표 2. Generator data

Table 2. Generator data

Power Factor

P (MW)

Q (Mvar)

S (MVA)

0.90 lead

1521.0

-736.7

1690.0

0.95 lead

1521.0

-499.9

1601.1

1.0

1521.0

0.0

1521.0

0.95 lag

1521.0

499.9

1601.1

0.90 lag

1521.0

736.7

1690.0

0.85 lag

1521.0

942.0

1789.4

The results from the power transfer equation calculation shows that the MG output voltage will go beyond the tolerable ±5% limit of its rated voltage during degraded voltage condition of the grid. This is undesirable for the reactive power generation capability of the MG of the NPP.

The rated terminal voltage of the MG is maintained during voltage fluctuation conditions from the grid through appropriate tap settings of the OLTC installed on the MT.

3.3 Voltage Control Simulation by ETAP Program

The second approach used to evaluate the effect of voltage degradation of the Nigerian 330 kV transmission system on the generator’s output when connected to the NPP shown in fig. 3was modelled in detail using ETAP® 20.0.0. A load flow analysis was performed to assess the capability of the MG of the NPP to operate within the tolerable limit of ±5% of its rated terminal when subjected to the Nigerian grid characteristics and MG operating limit under normal power operation mode and loading conditions. The switchyard voltage was set at 110%, 105%, 100%, 95%, 90%, and 85% of the nominal value (330 kV). This was determined based on the maximum and minimum expected value of grid voltage during transient conditions.

4. OLTC Control Scheme by ANN

In this paper, the artificial neural network (ANN) using regression technique was implemented for the prediction of the MT OLTC tap settings to cope with the degraded voltage condition of the electric grid.

4.1 Architecture of ANN

A multiple-layer perceptron (MLP) ANN consisting of the input layer, multiple hidden layers and an output layer was used in the proposed ANN technique as fig. 4shows (9)(15): Keras in Python was used to develop the ANN model for the MT OLTC tap settings prediction. The model has one input layer with three input variables, the activation function for that layer was 'relu'. The input data to the ANN model for the MT OLTC tap settings prediction are the system voltage (Vs), active (P) and reactive (Q) power which are the generator outputs dependent on the power factor of the generator while the generator output voltage is dependent on the system (grid) voltage and this is illustrated as in table 3. The model has six hidden layers, the first 128 neurons, and the second to sixth layers have 256 neurons. The activation function for the hidden layers are 'ReLU' and the kernel optimizer is 'normal'. The output layer has one neuron for the regression output, also the layer has activation function of ‘linear’ and optimizer of ‘Adam’. (16) (17).

그림. 4 Typical simple MLP ANN model

Fig. 4 Typical simple MLP ANN model

../../Resources/kiee/KIEE.2022.71.2.342/fig4.png

표 3. ANN model parameter

Table 3. ANN model parameter

Parameter

Size

Number

Input dense layer

1 inputs, 128 neurons

1

Kernel initializer

Normal

Hidden layer

256 neurons

6

Activation function

Input layer: ReLU

Hidden layer: ReLU

Output layer: linear

Output dense layer

1

1

Metrics

Mean absolute error

Optimizer

Adam

Epochs

500

4.2 Training and Testing processes of the ANN Model

table 3 shows the parameters of the ANN model used for the MT OLTC tap settings prediction. The model was trained with 60% of the input data from load flow analysis results as shown in table 3 and validated with 40% of the training data. A new data set was seeded in the model for the testing purposes. The ANN model was trained with a batch size of 32 and various numbers of epochs with optimal number of 500. Adam optimizer was adopted to minimize the loss of the ANN model. The mean absolute error (MAE) was used to evaluate the model's loss function and accuracy.

5. Results

5.1 Load flow analysis results

The load flow analysis result for normal power operation shows that during voltage variation of the grid, the MG tried to maintain its terminal rated within the tolerable limit of ±5%. This is usually done by the automatic voltage regulator but, the sufficient reactive power to counteract the condition was not usually met by the AVR.

table 4 shows the summary of the load flow analysis results for all the PF values between 0.90 leading and 0.85 lagging including how the OLTCs on the MT automatically adjusts their turn ratios in order to keep the MG output voltage within the tolerable limit in spite of the voltage excursion from the grid.

표 4. Summary of load flow results for normal operations with OLTC taps

Table 4. Summary of load flow results for normal operations with OLTC taps

Case

PF

Vs (pu)

Vg (pu)

P (MW)

Q (Mvar)

OLTC (MT) Tap (%)

1

0.9 lead

1.1

1.0682

1521

-736.66

10

1.05

1.0158

1521

-736.66

10

2

0.95 lead

1.1

1.0428

1521

-499.93

10

1.05

1.0087

1521

-499.93

8.75

3

1

1.1

1.0086

1521

0.00

7.5

1.05

1.003

1521

0.00

3.125

1

1.0043

1521

0.00

-1.875

0.95

1.0054

1521

0.00

-6.875

0.9

0.9842

1521

0.00

-10.00

4

0.95 lag

1

1.0071

1521

499.93

3.75

0.95

1.0053

1521

499.93

-1.25

0.9

1.0033

1521

499.93

-6.25

5

0.9 lag

1

1.0011

1521

736.66

7.5

0.95

1.0033

1521

736.66

1.875

0.9

0.9999

1521

736.66

-3.125

6

0.85 lag

1

1.0087

1521

942.63

9.375

0.95

1.0099

1521

942.63

3.75

0.9

1.0005

1521

942.63

-0.625

The MG rated terminal voltage level are maintained within the tolerable limit of ±5% by appropriate adjustment of the voltage tap settings of the MT.

5.2 ANN training and test results

The essential step in any machine learning model is to evaluate the accuracy of the model. The mean squared error (MSE), mean absolute error (MAE), root mean squared error(RMSE), and R-Squared or coefficient of determination metrics are used to evaluate the performance of the model in regression analysis (18). Figures 5 through 7 show the performance of ANN model after training. They illustrate the drop decline in MAE and MSE values, and the excellent performance of XGBoost regression, R-Value 1.0000.

그림. 5 Plot of the mean absolute error (MAE)

Fig. 5 Plot of the mean absolute error (MAE)

../../Resources/kiee/KIEE.2022.71.2.342/fig5.png

그림. 6 Plot of the mean squared error (MSE)

Fig. 6 Plot of the mean squared error (MSE)

../../Resources/kiee/KIEE.2022.71.2.342/fig6.png

그림. 7 Plot of the model cross validation results on predicted vs the target OLTC set points

Fig. 7 Plot of the model cross validation results on predicted vs the target OLTC set points

../../Resources/kiee/KIEE.2022.71.2.342/fig7.png

The comparison of the value of the MT OLTC tap settings from the IEEE Std. C57.116 power transfer equation and the ANN model OLTC tap settings prediction are then compared to see which of them have closer values to that obtained from the ETAP simulations results (target) as the appropriate tap settings required to mitigate voltage excursion. The result of which is shown in table 5.

표 5. Comparison of the MT OLTC tap settings position from the ANSI equation, ANN model and the ETAP simulation approaches

Table 5. Comparison of the MT OLTC tap settings position from the ANSI equation, ANN model and the ETAP simulation approaches

Case

Power

Factor

Grid Voltage (kV)

Main Transformer OLTC TAP (%) Range=+/-10%, 1.25%step

IEEE Std. Equation

ANN Model

ETAP(Target)

PF

Vs

Calculated

Tap (%)

Setting

Tap (%)

Calculated

Tap (%)

Setting

Tap (%)

OLTC (MT)

TAP (%)

1

0.9 lead

363.00

10.37

10

9.99998

10

10.000

359.70

9.00

8.75

9.99998

10

10.000

349.80

5.41

5

9.99998

10

10.000

346.50

4.19

3.75

9.99998

10

10.000

330.00

-2.04

-2.5

7.49993

7.5

7.500

313.50

-8.22

-8.75

1.87497

1.875

1.875

297.00

-14.19

-10

-3.12498

-3.125

-3.125

2

0.95 lead

363.00

8.80

8.75

9.99998

10

10.000

359.70

7.70

7.5

9.99998

10

10.000

349.80

4.20

5

9.9999

10

10.000

346.50

3.00

2.5

8.75002

8.75

8.750

330.00

-2.70

-2.5

3.75006

3.75

3.750

313.50

-8.30

-8.75

-1.25

-1.25

-1.250

297.00

-13.60

-10

-6.24992

-6.25

-6.250

3

1

363.00

6.70

6.25

7.5

7.5

7.500

359.70

5.70

6.25

6.87498

6.875

6.875

349.80

2.60

2.5

3.75009

3.75

3.750

346.50

1.60

1.25

3.125

3.125

3.125

330.00

-3.20

-3.75

-1.87487

-1.875

-1.875

313.50

-7.90

-7.5

-6.8749

-6.875

-6.875

297.00

-12.10

-10

-9.99986

-10

-10.000

4

0.95 lag

363.00

5.60

5

9.99998

10

10.000

359.70

4.90

5

9.99998

10

10.000

349.80

2.30

2.5

9.99998

10

10.000

346.50

1.50

1.25

8.75002

8.75

8.750

330.00

-2.50

-2.5

3.75006

3.75

3.750

313.50

-6.30

-6.25

-1.25

-1.25

-1.250

297.00

-9.70

-8.75

-6.24992

-6.25

-6.250

5

0.9 lag

363.00

5.60

5

9.99998

10

10.000

359.70

4.90

5

9.99998

10

10.000

349.80

2.50

2.5

9.99998

10

10.000

346.50

1.80

1.25

9.99998

10

10.000

330.00

-1.90

-2.5

7.49994

7.5

7.500

313.50

-5.30

-5

1.87495

1.875

1.875

297.00

-8.50

-8.75

-3.12492

-3.125

-3.125

6

0.85 lag

346.50

2.10

6.25

9.99998

10

10.000

330.00

-1.30

-1.25

9.37485

9.375

9.375

313.50

-4.60

-5

3.74991

3.75

3.750

297.00

-7.50

-7.5

-0.62505

-0.625

-0.625

The comparison of the MT OLTC tap settings position amongst the different approaches used in the research showed the results from the ETAP simulation curve (red) matches fitly with the ANN model curve (green-superimposed under the red curve) are much closer compared to that from the power transfer equation as shown in fig. 8.

그림. 8 Chart of comparison of the MT OLTC tap settings positions from the ANSIequation, ANN model and the ETAP simulation approaches

Fig. 8 Chart of comparison of the MT OLTC tap settings positions from the ANSIequation, ANN model and the ETAP simulation approaches

../../Resources/kiee/KIEE.2022.71.2.342/fig8.png

The evaluation metric for the prediction model are as follows: Mean absolute error (MAE): This metric measures the closeness of the predicted values to that of the actual or real values. The best model is obtained with the minimum MAE. The MAE is defined by the equation 3:

(3)
$M A B=\frac{1}{n} \sum_{i=1}^{n}\left|\left(y_{i}-\overline{y_{i}}\right)\right|$

Where:

n = samples number

$y_{i}$ = actual output value

$\overline{y_{i}}$= predicted values

Mean squared error (MSE): This metric measures the squared errors average between the predicted values to that of the actual or real values. The best model is obtained with the minimum MSE. The MSE is defined by the equation 4:

(4)
$M B=\frac{1}{n} \sum_{i=1}^{n}\left(y_{i}-\overline{y_{i}}\right)^{2}$

(5)
$R^{2}=1-\frac{S \bar{y}}{S \bar{H} \bar{y}}$

Where:

$SE\widetilde y$ = Squared error of the regression line

$SE\widetilde y$ = Squared error of the regression line

The metrics obtained from the ANN model for the MT OLTC tap settings prediction are displayed in the table 6. The performance of the ANN model is measured with the MAE metric value of which implies that the MT OLTC tap settings prediction at any point in time would only be off the target value from ETAP simulation approximately by 9.8611 X 10-5%

표 6. ANN model metric performance

Table 6. ANN model metric performance

Metrics

ANN Model

MAE

9.8611 × 10-3

MSE

3.3706 ×10-4

R2

1.0000

6. Discussion

This paper analyzed and studied the effect of severe grid voltage fluctuation on the MG output voltage of the APR1400 plant with special consideration of the generator’s operating limit within the tolerable limit of ±5% of its rated voltage under normal power operation condition. In this study, two approaches were used to study these effects: the power transfer equation according to IEEE Std. C57.116-2014 and the ANNM model developed in this study. The results of load flow analysis using ETAP® were used as target data for training ANNModel.

The results from the IEEE Std. C57.116 power transfer equation showed the generator to be operating outside its rated output voltage during normal power operation when subjected to severe voltage fluctuations experienced on the Nigerian electric grid.

Conventional OLTCs using only voltage data cannot smoothly regulate the voltage at the main transformer when the NPP generator must supply and/or consume reactive power under conditions of high grid voltage fluctuations.

The effect of implementing an ANN based on regression technique for the prediction of tap position changes on the MT OLTC of an NPP to mitigate grid voltage excursion was tested. The results obtained from the ANN model output as shown in fig. 8clearly showed that the model can be used for an accurate prediction of the MT OLTC tap settings in comparison to that obtained from the ETAP simulation (target).

7. Conclusion

This study establishes through simulations and analysis that the adoption of an APR 1400 generating unit to the Nigerian power grid without installation of an OLTC on the main transformer would be a challenge. However, simulation results using the ANN model-based OLTC show that the fluctuating grid voltage does not affect the main generator and auxiliary loads of the power plant by proper adjustment of the transformer taps.

Optimal OLTC setting aids to maintain more stable voltage profiles in the power system. The successful adoption of the ANN based control mechanism for the OLTC indicated a feasible approach for the automatic control of the tap settings and thus enhanced the effective and efficient operation of the MT OLTC. The ANN model as a control mechanism ensures that optimum performance of the MT OLTC tap settings is achievable. The model was successfully developed and trained sufficiently using the simulation and analysis data to yield accurate predictions of the tap settings.

Acknowledgements

This research was supported by 2021 Research Fund of the KEPCO International Nuclear School (KINGS), Ulsan, Republic of Korea.

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저자소개

Erastus Mwongela Musyoka
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He is a continuing student of M.S. degree in Nuclear Power Engineering in KEPCO International Nuclear Graduate School (KINGS) and holds a bachelor’s degree in Mechatronics Engineering from Dedan Kimathi University of Technology-Kenya (2016).

He works with Kenya Rural Electrification Authority as a Renewable Energy Engineer.

His area of interest is in Electrical Power Systems engineering.

Harold Chisano Oyando
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He is a registered Graduate Engineer working as an Assistant Engineer in Kenya Power and Lighting Co.Ltd (KPLC) where he leads a regional team of experts in transmission and distribution network management (since 2015).

He is currently undertaking a master’s degree program in Nuclear Power Plant Engineering at KEPCO International Nuclear graduate school with interests in NPP power system design and analysis.

Choong-koo Chang
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He received a M.S. in Electrical Engineering from Inha University in 1990, and a Ph. D degree in Electrical Engineering from Myongji University in 2001.

He participated in the nuclear power plant design projects from 1985 to 1993 at KOPEC.

From 1993 to 1998 he worked as a senior engineer for Samsung Electronics.

He was vice president and CTO of Sangjin Engineering from 2001 to 2012.

Since 2013, he has been a professor at the NPP Engineering Department at KEPCO International Graduate School. (KINGS).