A Novel Microgrid Islanding Detection Algorithm Based on a Multi-Feature Improved LSTM
Abstract
:1. Introduction
- A new islanding detection scheme based on the multi-feature and attention-LSTM method is proposed for microgrids with all types of inverted, interfaced distributed generation units. The proposed scheme can also be implemented on synchronous generators.
- A deep learning classier based on the attention-mechanism-optimized LSTM network is applied.
- A novel index for islanding detection is proposed. The method combines SDFT-SCM with EMD, which is a good way to retrieve the essential features of signals during islanding and disturbance conditions. The proposed method does not require a threshold value.
- The proposed method has an accuracy level of 98.4% and a loss value of 0.0725 with a maximal detection time of 66.94 ms and a reduced NDZ and detection time. The robustness of the proposed scheme is verified by its anti-noise performance.
- The proposed method is recommended due to its accuracy and detection time compared with other methods, such as the pure 1D-CNN, BP, SVM, and LSTM.
2. Analysis of the Islanding Features of the Microgrid
2.1. SDFT and SCM
Analysis of the Islanding Features Index by SDFT-SCM
2.2. EMD
- 1.
- For a voltage or current signal x(t), all maximum points are identified as the upper envelope xu(t), and all minimum points are recognized as the lower envelope xl(t). m(t) represents the mean value of the upper envelope and the lower envelope and can be calculated using Equation
- 2.
- In step 2, h1(t) is regarded as the original data, and m1(t) is the mean value of the upper and lower envelope of h1(t). The second IMF h2(t) is determined using the method shown in Step 1.
- 3.
- The same process is repeated to evolve the subsequent IMFs, and this is repeated n times until hn(t) is an IMF or the residual component rn(t). Then, the decomposition process terminates.
- 4.
- In conclusion, q1(t) = h1(t), q2(t) = h2(t)⋯qn(t) = hn(t), x(t) is finally decomposed into IMF qi(t) and residual component rn(t), as shown in Equation (8).
2.2.1. Analysis of the Islanding Features Index by EMD
3. Intelligent Fault Identification Algorithm for the Microgrid Based on Deep Learning
3.1. The LSTM Network
3.2. Attention Mechanism
3.3. The Proposed Intelligent Islanding Detection Algorithm for the Microgrid
4. Simulation
4.1. Test System
4.2. Experimental Environment and Results
5. Performance Analysis and Discussion
5.1. Anti-Noise Performance
5.2. Detection Time
5.3. Comparison with Other Algorithms
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
SDFT | Sliding Window Discrete Fourier Transform |
EMD | Empirical Mode Decomposition |
LSTM | Long Short-Term Memory |
PCC | Point of Common Coupling |
SCM | Symmetrical Component Method |
IMF | Intrinsic Mode Function |
NDZ | Non-detection Zone |
BP | Back-Propagation |
SVD | Singular Value Decomposition |
VMD | Variational Mode Decomposition |
AR | Autoregressive |
WT | Wavelet Transform |
SSKNN | Subspace-K-Nearest Neighbor |
DFT | Discrete Fourier Transform |
SNR | Signal-to-Noise Ratio |
TP | True Positive |
TN | True Negative |
FN | False Negative |
FP | False Positive |
1D-CNN | 1D Convolutional Neural Network |
SVM | Support Vector Machine |
DNN | Deep Neural Network |
ANN | Artificial Neural Network |
WT | Wavelet Transform |
ANFIS | Adaptive Neuro Fuzzy Inference System |
ST | S-Transform |
ELM | Extreme Learning Machine |
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Ref. | Test System | Feature Extraction Method | Classifier | Input Signal | Point of Measurement | No Need for Pre-Processing | NDZ Analysis |
---|---|---|---|---|---|---|---|
[19] | Inverter based microgrid | SVD | BP | Voltage and current | PCC | √ | × |
[20] | Inverter/synchronous based microgrid | VMD | ANN | Voltage and current | PCC | × | √ |
[21] | IEEE 13-bus | AR | SVM | Voltage and current | PCC | × | √ |
[22] | Synchronous based microgrid | LSTM | LSTM | Voltage and frequency | PCC | × | √ |
[23] | Inverter/synchronous based microgrid | Multi-LSTM | Multi-LSTM | Voltage and current | PCC | √ | √ |
[24] | Inverter based microgrid | WT | BP | Voltage and current | PCC and inverter output | √ | × |
[25] | Induction/synchronous/inverter based microgrid | VMD | SSKNN | Voltage and current | PCC | × | √ |
[26] | IEC Microgrid and IEEE 13-bus | Empirical WT | LSTM | Voltage | PCC | √ | √ |
Parameters, Hyper-Parameters and Layer Type | Specific Value |
---|---|
Training/Testing/Verifying | 4201/900/900 |
Epochs | 3000 |
Batch size | 500 |
Shuffle | every-epoch |
Optimizer | Adam |
Gradient Threshold | 2 |
Learning rate | 0.01 |
Batch Normalization layer | momentum is 0.99, epsilon is 0.001 |
Input layer | (5552, 2, 10) |
Number of hidden layer units | 15 |
Dense layer | 100 neurons, activation function is tanh |
Dropout layer | 0.3 |
Dense layer | 2 neurons, activation function is softmax |
Type of Fault | SNR/dB | Total Number of Samples | Test Accuracy/% |
---|---|---|---|
Case A | 40 | 125 | 97.0 |
50 | 99.1 | ||
60 | 99.2 | ||
Case B | 40 | 125 | 97.1 |
50 | 99.1 | ||
60 | 1 | ||
Case C | 40 | 125 | 97.2 |
50 | 97.6 | ||
60 | 98.4 | ||
Case D | 40 | 125 | 97.2 |
50 | 98.7 | ||
60 | 99.5 |
Predicted Class Label | |||
---|---|---|---|
Non-Islanding Event (0) | Islanding Event (1) | ||
True class label | Non-islanding event (0) | TP (0, 0) | FN (0, 1) |
Islanding event (1) | FP (1, 0) | TN (1, 1) |
Ref. | Methodology | Measurement Points | No. of Features | Detection Time/ms | Test Accuracy/% | Comparison with Other Methods |
---|---|---|---|---|---|---|
[33] (2018) | WT-DNN | PCC | 4 | 180 | 98.3 | DT, SVM |
[34] (2017) | ANN | PCC | 5 | 40 | 95 | SVM, ANFIS |
[35] (2019) | ANFIS | PCC | 7 | ~40 | 78.7 | ANFIS |
[36] (2020) | Feedback-mechanism | PCC | 1 | ~700 | - | - |
[37] (2017) | Adaboost | PCC | 5 | 219 | 98.8 | UOV/UOF |
[38] (2016) | Multi-ANN with WT | PCC | 3 | ~50 | - | - |
[39] (2020) | ST + ELM | PCC | 7 | ~26 | 95.39 | UOV/UOF, BP |
[40] (2019) | DT with DATA mining Approach | PCC | - | ~162 | 94.5% | Auto-Grounding Method |
Proposed method | Multi-feature-Attention-LSTM | PCC | 10 | 66.94 | 98.4 | 1D-CNN, BP, SVM, LSTM |
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Xia, Y.; Yu, F.; Xiong, X.; Huang, Q.; Zhou, Q. A Novel Microgrid Islanding Detection Algorithm Based on a Multi-Feature Improved LSTM. Energies 2022, 15, 2810. https://doi.org/10.3390/en15082810
Xia Y, Yu F, Xiong X, Huang Q, Zhou Q. A Novel Microgrid Islanding Detection Algorithm Based on a Multi-Feature Improved LSTM. Energies. 2022; 15(8):2810. https://doi.org/10.3390/en15082810
Chicago/Turabian StyleXia, Yan, Feihong Yu, Xingzhong Xiong, Qinyuan Huang, and Qijun Zhou. 2022. "A Novel Microgrid Islanding Detection Algorithm Based on a Multi-Feature Improved LSTM" Energies 15, no. 8: 2810. https://doi.org/10.3390/en15082810
APA StyleXia, Y., Yu, F., Xiong, X., Huang, Q., & Zhou, Q. (2022). A Novel Microgrid Islanding Detection Algorithm Based on a Multi-Feature Improved LSTM. Energies, 15(8), 2810. https://doi.org/10.3390/en15082810