A Review of Fault Diagnosing Methods in Power Transmission Systems
Abstract
:1. Introduction
2. Disclose the Valuable Information
2.1. Transformations
2.1.1. Wavelet Transform (WT)
2.1.2. Fourier Transform (FT)
2.1.3. S-Transform (ST)
2.2. Dimensionality Reduction
2.3. Modal Transformation
3. Fault Detection (FD)
4. Fault-Types Classification (FC)
4.1. Artificial Neural Network (ANN) Based FC
4.1.1. Feedforward Neural Network (FNN)
4.1.2. Radial basis Function Network (RBFN)
4.1.3. Probabilistic Neural Network (PNN)
4.1.4. Chebyshev Neural Network (ChNN)
4.2. FC Based on Fuzzy Interface Systems (FIS)
4.3. FC Based on Decision Tree (DT) Technique
4.4. FC Based on Support Vector Machine (SVM)
4.5. FC Based on Logic Flow (LF)
5. Comparison of Fault-Type Classification Methods
6. Future Trends in Fault-Type Classification
7. Fault Location Finding Methods
7.1. Wide-Area FL Approach
7.2. Fault Location Finding Algorithm for Series Compensated TLs
7.3. FL Methods for Hybrid TLs
7.4. ANN-based Algorithm for FL
7.5. FIS based Algorithm for FL
7.6. Support Vector Regression-Based Approach for FL
8. Comparison of Fault Location Methods
9. Future Trends in Fault Location Estimation
10. Weaknesses and Strengths of Different Emerging Computational Intelligence Methods
11. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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No. | Algorithm | Input | Test System | Feature | Complexity | Result | Ref. |
---|---|---|---|---|---|---|---|
1 | Fuzzy-neuro method | Fault current and voltage samples | 220 kV, 177.4 km, 50 Hz | Back-propagation and fuzzy controllers are employed. | Medium | FD is realized in less than 10 ms | [53] |
PSCAD/EMTDC used for simulations. | |||||||
High harmonic components removed via FFT. | |||||||
2 | DWT and ANNs | Current and voltage signals | 60 Hz, 230 kV, 188 km | The sampling frequency is 1.2 kHz. | Complex | FD accuracy is 100% with 99.83% FC accuracy | [54] |
Normalization voltage and current signals are from 1 to −1. | |||||||
Db4 is mother wavelet. | |||||||
720 fault cases are considered. | |||||||
3 | WT and self-organized artificial neural network | current and voltage waveforms | 50 Hz, 500 kV, 200 miles | 200 kHz is the sampling rate. | Complex | FD accuracy is 99.7% for single line and 92% for parallel lines. FC accuracy is 99.65% | [55] |
Db5 mother wavelet is used to decompose the signal up to 3 levels. | |||||||
3960 fault cases are considered. | |||||||
An adaptive resonance theory-based neural network is used. | |||||||
4 | Linear discriminant analysis (LDA) and WT | Current signals | 100 km, 400 kV, 50 Hz single-circuitTL | WT is used to process the current samples up to 3 levels. | Medium | Both FD and FC is 100% | [56] |
Reach of the relay set-up to 90% of the TL. | |||||||
5 | Superimposed sequence components based integrated impedance (SSCII) | Current and voltage profiles at both ends of TL | 300 km, 400 kV, 50 Hz with a static VAR compensator (SVC) | The sampling frequency is 1 kHz. | Complex | FD time is less than 20 ms | [57] |
Reliable for low and high resistance faults. | |||||||
The pilot relaying scheme is suitable for high-speed communication channels. | |||||||
6 | Bayesian classifier and adaptive wavelet | Current signals | 500 kV, 864 km, 50 Hz | 500 kHz is the sampling frequency. | Complex | Both FD and FC accuracies are 100%, | [58] |
Db4 is selected as a mother wavelet, used to decompose current signals up to 3 stages. | |||||||
Directional zone protection is obtained. | |||||||
5328 fault cases are analyzed. |
No. | Algorithm | Input | Test System | Feature | Complexity | Result | Ref. |
---|---|---|---|---|---|---|---|
1 | FNN | Voltage and current samples | Double circuit TL of 100 km length. Operated at 380 kV | The sampling frequency is 1.1 kHz. | Simple | 7 ms is the fault-type classification time | [100] |
30 input nodes, two hidden layers, and 11 output layer nodes. | |||||||
Training patterns are 45000. | |||||||
2 | Back-propagation network classifier | Voltage and current samples | Double circuit 128 km long TL with 35 GVA and five GVA generations, respectively | 800 Hz is the sampling frequency and results obtained via three sample data windows. | Simple | Misclassification rate is less than 1% | [101] |
The number of Kohonen neurons is greatly dependent on the number of training sets. BP network classifier is employed as a front end to the output layer with supervised learning. | |||||||
3 | Fuzzy logic and WT- based method | Current signals | 50 Hz, 300 km long TL. operate at 400 kV | 4.5 kHz is selected as sampling rate and Db8 mother wavelet is used. | Complex | FC time is less than 10 ms with 99% accuracy | [102] |
Wavelet is dissolved into four levels. | |||||||
Online FC is done. | |||||||
Fast, robust and accurate FC is obtained. | |||||||
4 | Fuzzy logic | Current signals | 50 Hz, 300 km long TL and operate at 400kV | Digital distance protection is implemented. | Medium | FC accuracy is more than 97% | [103] |
FC time is 10 ms and studied cases were 2400. | |||||||
5 | ST and PNN | Current signals | 50 Hz, 300 km long TL. Operate at 230 kV with Thyristor-controlled series capacitor (TCSC) | Scalable Gaussian window is used for ST with a sampling rate of 1 kHz. | Complex | FC accuracy is 98.62% and faulty section identification accuracy is 99.86% | [104] |
Standard deviation and energy are the features. | |||||||
200 dataset used for testing, 300 for training out of 500 datasets. | |||||||
6 | SVM | Post-fault current and oltage signals | 50 Hz, 300 km long TL. operate at 400 kV | 1 kHz is the sampling frequency. | Simple | Classification of faulty phase and ground detection is done with an error of less than 2% | [105] |
SVM-1 and SVM-2 are trained and tested with 300 datasets for ground detection and phase selection, respectively. | |||||||
Gaussian and polynomial based SVMs are used. | |||||||
7 | Field-programmable gate array (FPGA) with WT. | Current signals | 50 Hz, 300 km long TL and operate at 400kV | 2 kHz is the sampling frequency. | Complex | FC time is 6 ms with 100% accuracy | [106] |
Db6 mother wavelet is employed. | |||||||
3520 test cases created. | |||||||
Karrenbauer’s transformation is used to avoid the need for multipliers. | |||||||
8 | ANFIS | 50 Hz, TL is 20 km and operate at 500 kV | 128 rule system with seven inputs and two membership functions. | Medium | FC accuracy is more than 99.92% | [107] | |
The sampling frequency is 30.24 kHz. | |||||||
2660 fault cases considered for training. | |||||||
9 | Bayesian classifier with adaptive wavelet algorithm | Current signals | 50 Hz, 390 km long TL and operate at 500 kV | 500 kHz is the sampling rate. | Complex | Results with 100% accuracy | [108] |
Db4 is the mother wavelet. | |||||||
Fault cases considered for training: 546. | |||||||
10 | Polynomial-based ChNN and discrete wavelet packet transform (DWPT) | Current signals | 300 km long TL which operates at 400 kV. TCSC is installed at the midpoint | PSCAD/EMTDC is used to study fault patterns. | Medium | 99.93% accurate | [109] |
4 kHz is the sampling frequency. | |||||||
11 | CART algorithm | Positive sequence voltages | 345 kV, 300 km, 50 Hz | CART is a non-parametric DT learning technique that is in the form of if-else statements. | Medium | Results are 99.98% accurate | [110] |
2880 fault cases considered. | |||||||
12 | Dyadic WT and SVM | Current samples | 330 km, 230 kV, 50 Hz | 160 kHz is the sampling frequency and signals are decomposed into 5 levels. | Medium | FC is 100% accurate | [111] |
Fault cases: 1500. | |||||||
SVM trained via 800 faults and remaining 700 used for testing. | |||||||
Random noise is removed via wavelet transform |
No. | Algorithm | Input | Test System | Feature | Complexity | Result | Ref. |
---|---|---|---|---|---|---|---|
1 | ANN | Pre-fault current and voltage samples | La Lomba–Herrera 380 kV, 189.3 km long TL, Spanish power system (50 Hz) | FALNEUR software is used to train network data. | Medium | The maximum error noted is 0.7% while 0.12% is the minimum error in locating fault distance. | [146] |
Training time varies from 5 s to 2.5 min to accomplish the mentioned error level. | |||||||
BP based on Levenberg–Marquardt optimization technique is selected. | |||||||
The ‘ansig’ is selected as a transfer function for the hidden layer, and the linear function for the output layer. | |||||||
2 | Least error square | Current and voltage magnitudes | Length of TL is 100 km, 400 kV, 50 Hz | The sampling frequency is 6400 Hz. | Simple | 0.0099% is the relative error | [147] |
20 ms is the duration of the data window. | |||||||
3 | Impedance-based Algorithm (IBA) | Voltage profile | 500 kV, 200 miles TL, 50 Hz | Shunt capacitance is neglected of the TL which is desirable for online applications. | Simple | 1% error is recorded for IBA | [148] |
Data synchronization is not required | |||||||
4 | Neuro-fuzzy systems and WT | Current and voltage profiles | Hybrid transmission system: 6.06 km cable and 14 km TL with 154 kV operating voltage | DC offset is removed via FIR. | Medium | -- | [149] |
Db4 mother wavelet is used and decomposed into three levels. | |||||||
Back-propagation is used for learning and 228 various faults created for analysis. | |||||||
Post-fault time is a half-cycle. | |||||||
5 | WT | Current samples | 50 Hz, 60 km, 400 kV | Db5 mother wavelet is used and decomposed into three Levels. | Simple | -- | [150] |
The sampling frequency is 3840 Hz with 64 samples/cycle. | |||||||
The fault is located within 1 cycle via A3 components. | |||||||
6 | ANN and wavelet packet transform (WPT) | Current and voltage samples | 360 km, 380 kV and 50 Hz | Db4 mother wavelet is employed and dissolved up to three levels by WPT. | Complex | Minimum and maximum errors in finding fault location are 0.06% and 1.67%, respectively | [151] |
The 10 kHz is the sampling frequency. | |||||||
The computation burden is reduced as it is a reduction technique. | |||||||
Pre and post-fault is a half-cycle. | |||||||
7 | RBF-based SVM and scaled conjugate gradient (SCALCG)-based NN approach | Positive sequence voltage and line currents | 150 km double circuit TL, 400 kV is operating voltage | The 5 kHz is selected as the sampling rate. | Complex | Maximum fault error observed is 1.852 km while 7.874e-003 km is minimum | [152] |
The 2e-004s is time to locate the fault. | |||||||
RBF kernel is used to extract principal eigenvectors of the feature space and to remove noise from the signal. | |||||||
8 | Nelder–Mead simplex | Post-fault Voltage phasors | 320 km, 500 kV, 50 Hz | 960 Hz is the sampling rate. | Complex | 2.7% error is expected with ±5% error in post-fault voltages | [153] |
Current transformer (CT) errors are avoided by not using post-fault current. | |||||||
9 | ANN and WPT | Current samples | 360 km, 380 kV, 50 Hz | Wavelet entropy and energy features are extracted from the decomposed signal. | Complex | FL finding error is Less than 2.05 % | [154] |
Db4 is the mother wavelet. | |||||||
10 kHz is the sampling rate. | |||||||
10 | ANFIS | Zero and fundamental components of three-phase currents | Hybrid transmission system: 10 km cable and 90 km TL. Operating voltage is 220 kV | ANFIS is trained for 2132 patterns. Where 1520 patterns are for TL and rest for cable. | Medium | The maximum error in finding FL is expected below than 0.07% | [155] |
During training, the maximum percentage error of 0.031% and 0.0109% is observed for TL and cable, respectively. | |||||||
During the testing process, the maximum % error of 0.0277% and 0.039% are observed for TL and cable, respectively. | |||||||
11 | ANNs with FPGA | Pre-fault current and voltage samples from one end | L 380 kV, 189.3 km long TL, Spanish power system (50 Hz) | SARENEUR tool is used to run ANN. | Complex | Error in finding fault location is 0.03% | [156] |
Hardware is also implemented. | |||||||
FPGA is designed for 60 MHz and consumes less power | |||||||
12 | FFT with traveling-wave theory | Current samples measured from one end | 50 Hz, 240 km and 400 kV | The selected sampling frequency is 25.6 kHz and 512 samples are collected. | Simple | Fault location error is 0.12% | [157] |
To reduce FFT leakage Hanning window is employed | |||||||
13 | Impedance based method | Current and voltage samples | 300 km, 380 kV, TL with series capacitor | DIgSILENT is used to simulate the test system. | Simple | Achieved FL error is less than 1% | [158] |
10 kHz is the sampling frequency with simulation time 0.2 s. |
Technique | Strength | Weakness |
---|---|---|
ANN Technique | ANN is pretty good in determining the exact fault-type and its implementation is easy. | The training process is quite complex for high-dimension problems. |
Its use is easy, with the adjustment of only a few parameters. | A local optimum solution is provided by the gradient-based back-propagation technique for non-linear separable pattern classification problem. | |
It has a lot of applications in real-life problems. | ANN offers slow convergence in the BP algorithm. | |
ANN learns and no need for reprogramming. | Convergence is dependent on the selection of the initial value of weight constraints connected to the network. | |
PNN Technique | The learning process is not required. | It requires high processing time for large networks. |
Determination of initial weights of the network is not needed. | ||
No correlation of the recalling process and learning process. | ||
Convergence in Bayesian classifier is certain. | Not easy to determine how many layers and neurons are required. | |
PNN show fast learning time. | Large memory space is required to save the model | |
Fuzzy Methods | Simple ‘if-then’ relation is used to solve uncertainty problems. | No robustness is observed. |
Experts are mandatory in order to determine membership function and fuzzy rules, for large training data. | ||
ANFIS Technique | Parameters are tuned properly by the hybrid learning rule. | ANFIS is highly complex in computation. |
It offers a faster convergence. | ||
The search space dimension is reduced. | ||
ANFIS is smooth and adaptable | ||
SVM Technique | SVM is a highly accurate approach. | Demands for more size and speed for the testing and training |
SVM works quite well even for non-linearly separable data in base feature space. | ||
The probability of misclassification is very low. | ||
To reduce error bound, it maximizes the margin. | ||
Upper bound error does not affect the space dimension | Complexity is high in classification and thus large memory is required | |
Decision Tree | Easy interpretation and understanding | When high uncertainty or a number of outcomes are involved, calculations become very complex. |
Compatible with other available decision methods. | DT may suffer from over-fitting | |
Rules can be set easily | Information gain in DTs is biased in favor of those features which have more levels. | |
Wide-area Fault Location | It performs both control and monitoring operations. | PMU placement is a tough task in power systems |
Modal Transform | It is not dependent on electrical values and frequency | Modal parameters are required |
The single transformation matrix is for the three-phase system (identical for current and voltages) | ||
Transposition and non-transposition of electrical values are done by simple multiplication of matrices. No convolution methods are required. | Not reliable for complex structures | |
Deep Learning | Best-in-class performance on problems that significantly outperforms other solutions in multiple domains. This is not by a little bit, but by a significant amount. | A large amount of data is required |
DL reduces the need for feature engineering, one of the most time-consuming parts of machine learning practice. | DL is computationally expensive to train and takes weeks to train via hundreds of machines equipped with expensive graphical processing units (GPUs) | |
It is an architecture that can be adapted to new problems relatively with ease e.g., time series, languages, etc., are using techniques like convolutional neural networks, recurrent neural networks, long short-term memory, etc | Determining the topology/training method for DL is a black art with no theory |
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Raza, A.; Benrabah, A.; Alquthami, T.; Akmal, M. A Review of Fault Diagnosing Methods in Power Transmission Systems. Appl. Sci. 2020, 10, 1312. https://doi.org/10.3390/app10041312
Raza A, Benrabah A, Alquthami T, Akmal M. A Review of Fault Diagnosing Methods in Power Transmission Systems. Applied Sciences. 2020; 10(4):1312. https://doi.org/10.3390/app10041312
Chicago/Turabian StyleRaza, Ali, Abdeldjabar Benrabah, Thamer Alquthami, and Muhammad Akmal. 2020. "A Review of Fault Diagnosing Methods in Power Transmission Systems" Applied Sciences 10, no. 4: 1312. https://doi.org/10.3390/app10041312
APA StyleRaza, A., Benrabah, A., Alquthami, T., & Akmal, M. (2020). A Review of Fault Diagnosing Methods in Power Transmission Systems. Applied Sciences, 10(4), 1312. https://doi.org/10.3390/app10041312