New Power Quality Analysis Method Based on Chaos Synchronization and Extension Neural Network
Abstract
:1. Introduction
2. Power Quality Disturbances and Basic Architecture of Proposed Power Quality Analysis System
3. Proposed Power Quality Detection Method
3.1. Chaos Synchronization Detection Method
3.2. Extension Neural Network Classification Scheme
3.2.1. Structure of Extension Neural Network
3.2.2. Learning Phase
- Step 1:
- Set the connection weights between the input nodes and the output nodes in accordance with the ranges of the corresponding features in the classical domain. Note that these ranges can be obtained directly from previous experience, or determined from the training data as follows:
- Step 2:
- Read the i-th training pattern and its cluster number p:
- Step 3:
- Use the extension distance (ED) metric to calculate the distance between the input pattern Xi and the k-th cluster as follows:
- Step 4:
- Find the cluster m which satisfies the condition EDim = min{EDik}. If m = p (where p is the target cluster for the given input), then skip to Step 6; otherwise proceed to Step 5.
- Step 5:
- Update the weights of the p-th and m-th clusters as follows:
- Step 6:
- Repeat Step 2 to Step 5 for the next training pattern. If there are no further training patterns to be classified, terminate the learning epoch.
- Step 7:
- If the clustering process has converged, or the error satisfies the predetermined criterion, terminate the learning process; else return to Step 3.
3.2.3. Operation Flowchart of Extension Neural Network
- Step 1:
- Prepare the training samples.
- Step 2:
- Construct the ENN structure with three input nodes and six output nodes.
- Step 3:
- Train the ENN using the learning algorithm described in Section 3.2.2.
- Step 4:
- Return to Step 3 if training process is not finished; else go to Step 5.
- Step 5:
- Save the connection weights of the trained ENN.
- Step 6:
- Use the trained ENN to identify the state of the power supply system signal.
4. Simulation Results and Discussion
Chaotic system signal | Lorenz | New Lorenz | Sprott | |
---|---|---|---|---|
Normal | With noise | 98.5% | 96% | 96% |
Without noise | 99.5% | 97% | 98.5% | |
Sag | With noise | 98.% | 97% | 97% |
Without noise | 99% | 97.5% | 98% | |
Swell | With noise | 97% | 96.5% | 96.5% |
Without noise | 99.5% | 98.5% | 98.5% | |
Interruption | With noise | 98.5% | 98% | 97.5% |
Without noise | 100% | 98.5% | 99% | |
Harmonics | With noise | 97.5% | 96% | 98% |
Without noise | 99.5% | 98.5% | 98.5% | |
Total average | With noise | 98.% | 96.7% | 97% |
Without noise | 99.5% | 98% | 98.5% |
Testing method | Signal processing | Accuracy (%) |
---|---|---|
K-means clustering | Wavelet Transform | 59.2 |
Fuzzy C-means clustering | Wavelet Transform | 61.2 |
Extension theory | Wavelet Transform | 85.4 |
Extension genetic algorithm | Wavelet Transform | 91.7 |
Extension theory | Lorenz chaotic system | 97 |
Extension Neural Network | Lorenz chaotic system | 99.5 |
Extension Neural Network | Sprott chaotic system | 98.5 |
5. Conclusions
- (1)
- The simulation results have shown that given the use of the Lorenz chaotic system, the proposed detection method achieves an average detection accuracy of 99.5% given the absence of noise in the power system signal and 98% given the presence of 5% noise in the power signal.
- (2)
- The simulation results have confirmed that the proposed detection system can be implemented using various chaotic systems, including the Lorenz system, the New Lorenz system and the Sprott system. In addition, it has been shown that the detection systems based on the Lorenz system and Sprott system, respectively, yield a higher detection accuracy than five existing methods presented in the literature.
- (3)
- In the ENN classification scheme proposed in this study, the state of the power system signal (i.e., normal, voltage sag, voltage swell, interruption or harmonics) is identified using just three fundamental characteristics of the chaotic dynamic error waveform. Importantly, these fundamental characteristics can be reliably determined even when the power system signal is contaminated by noise. Thus, in contrast to existing methods, the proposed scheme has an improved detection performance when applied to real-world power quality monitoring and analysis applications characterized by the presence of noise.
- (4)
- The proposed ENN classification scheme has a short learning time, a rapid computation time, a low memory requirement, a high classification accuracy, and good scalability. As a result, it provides an ideal solution for the future development of hand-held power quality analyzers and real-time detection devices.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Wang, M.-H.; Yau, H.-T. New Power Quality Analysis Method Based on Chaos Synchronization and Extension Neural Network. Energies 2014, 7, 6340-6357. https://doi.org/10.3390/en7106340
Wang M-H, Yau H-T. New Power Quality Analysis Method Based on Chaos Synchronization and Extension Neural Network. Energies. 2014; 7(10):6340-6357. https://doi.org/10.3390/en7106340
Chicago/Turabian StyleWang, Meng-Hui, and Her-Terng Yau. 2014. "New Power Quality Analysis Method Based on Chaos Synchronization and Extension Neural Network" Energies 7, no. 10: 6340-6357. https://doi.org/10.3390/en7106340
APA StyleWang, M. -H., & Yau, H. -T. (2014). New Power Quality Analysis Method Based on Chaos Synchronization and Extension Neural Network. Energies, 7(10), 6340-6357. https://doi.org/10.3390/en7106340