Quantitative Identification of Internal and External Wire Rope Damage Based on VMD-AWT Noise Reduction and PSO-SVM
Abstract
:1. Introduction
2. Noise Reduction and Recognition Principles
2.1. VMD-AWT Adaptive Noise Reduction
2.2. Wavelet Energy Entropy
3. Quantitative Analysis Model Construction
3.1. Support Vector Machine Principle
- (1)
- For a given training set, the computation is performed to obtain the best separated hyperplane, and the original classification problem is equated to an optimization problem that is to be solved, which can be expressed as:
- (2)
- The Lagrangian functions constructed for the aforementioned equations based on the KKT conditions for ω and b are processed by taking partial derivatives and setting them to zero. Consequently, the optimal discriminant function can be solved, which is denoted as:
- (3)
- The kernel functions for SVM are then defined. The commonly used kernel functions for SVM include linear kernel functions, polynomial functions, radial basis functions (RBF), and sigmoid kernel functions. The RBF is selected as the kernel function of SVM since the RBF kernel contains fewer parameters, has relatively less of an impact on the complexity of the prediction model, and has a wider convergence domain and stronger generalization ability; it is expressed as follows:
3.2. PSO-Based Optimization of SVM Parameters
- (1)
- Normalize the data required for PSO-SVM training and prediction
- (2)
- Set the parameter values in the PSO algorithm and SVM model.
- (3)
- Initialize the particle population, calculate the corresponding fitness value of the particle according to Equation (16), and update its speed and position according to Equation (17).
- (4)
- During the process of continuous iteration in the search space, if the algorithm termination condition is satisfied, the optimal parameter is output; otherwise, step (3) is repeated.
- (5)
- The optimal parameters C and γ are used to train the SVM and build the PSO-SVM model to obtain the recognition results.
4. Simulation of Internal and External Damage Thresholds
Analysis of Simulation Results
5. Experimental Verification
5.1. Experimental Platform Design
5.2. Flaw Detector Prototype Design
5.3. Experimental Design
6. Data Noise Reduction Processing
6.1. VMD-AWT Algorithm to Decompose the Signal for Noise Reduction
6.2. Comparison of Noise Reduction Effect
- (1)
- Signal-to-noise ratio (SNR):
- (2)
- Mean square error (RMSE):
- (3)
- Correlation coefficient, R:
7. Quantitative Identification of Damage within PSO-SVM
7.1. Damage Signal Eigenvalue Extraction
7.2. Comparison of Internal and External Damage Identification
7.2.1. PSO-SVM Damage Identification Results
7.2.2. Comparison of Multiple Algorithms in Internal and External Damage Recognition
8. Conclusions
- (1)
- Noise components still existed after the VMD decomposition of the noise signal. The wavelet threshold method was introduced to further process the noise components. The signal components were reconstructed to obtain the denoised signal via the identification of the useful components. In terms of morphology, we can effectively deal with the damage signal in the presence of sudden changes, spikes, and other nonlinear, local characteristics, and apply smoothing to retain the effective characteristics of the signal and adequately characterize the original signal, thereby improving the recognition rate of the damage signal inside and outside the wire rope.
- (2)
- Based on the damage signal obtained following noise reduction using the particle swarm algorithm to optimize the penalty factor and kernel function parameters of the SVM, seven different feature vectors, namely, the waveform area, peak, peak-valley, and wavelet energy entropy, were extracted through experimental and theoretical analyses to identify the internal and external damages of the wire rope. Compared with those of the SVM and PSO-SVM algorithms, the proposed algorithm displayed a superior identification performance.
- (3)
- The VMD-AWT noise reduction algorithm was compared with the AWT and EMD algorithms. From the comparative analysis values, the SNR of the VMD-AWT noise reduction method proposed in this study reached 27.5950 dB, which was higher than those of the AWT and EMD algorithms, which were 4.3427 and 6.2421 dB, respectively. Moreover, the noise reduction effect was more significant.
- (4)
- The experimental results showed that the proposed method was feasible, and the recognition rate of the VMD-AWT-PSO-SVM algorithm reached 97.619%, which could effectively identify the internal and external damages. Meanwhile, the comparison with the EMD-SVM, AWT-SVM, EMD-PSO-SVM, and AWT-PSO-SVM algorithms verified that the performance of this method was superior to that of other algorithms.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
VMD | Variational modal decomposition noise reduction algorithm |
AWT | Wavelet noise reduction algorithm |
PSO | Particle swarm optimization algorithm |
SVM | Support vector machine algorithm |
EMD | Empirical modal decomposition noise reduction algorithm |
VMD–AWT | Variational modal decomposition noise reduction algorithm based on wavelet adaptive filtering |
PSO–SVM | Particle swarm optimization based on support vector machine |
RBF | Radial basis function |
MFL | Magnetic leakage detection |
AdaBoost | Weak classifier algorithm |
IMF | Eigen modulus obtained after variational modal decomposition |
Hilber | Hilbert transform |
Lagrange | Lagrangian function |
SNR | Signal-to-noise ratio |
RMSE | Mean square error |
R | Correlation coefficient |
EEMD | Ensemble empirical mode decomposition |
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K | Center Frequencies | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
6 | 1.3 × 10−10 | 0.3527 | 0.668 | 0.9622 | 1.3366 | 1.7781 | |||||
7 | 1.3 × 10−10 | 0.3449 | 0.6537 | 0.9274 | 1.2252 | 1.5048 | 1.7858 | ||||
8 | 1.3 × 10−10 | 0.2200 | 0.4522 | 0.6944 | 0.9480 | 1.2311 | 1.5092 | 1.7862 | |||
9 | 1.3 × 10−10 | 0.2148 | 0.4394 | 0.6807 | 0.9301 | 1.1952 | 1.4007 | 1.6140 | 1.7969 | ||
10 | 1.3 × 10−10 | 0.2026 | 0.4092 | 0.6344 | 0.8138 | 0.9393 | 1.2153 | 1.4154 | 1.6212 | 1.7980 | |
11 | 1.3 × 10−10 | 0.1951 | 0.3145 | 0.5013 | 0.6694 | 0.8420 | 1.0222 | 1.2255 | 1.4226 | 1.6245 | 1.7984 |
Noise Reduction Indicators | SNR | RMSE | R |
---|---|---|---|
AWT | 23.2523 | 0.0619 | 0.9903 |
EMD | 21.3529 | 0.0656 | 0.9865 |
VMD-AWT | 27.5950 | 0.0593 | 0.9910 |
Serial Number | Peak Value | Peak-to-Peak Value | Area below the Waveform | Area above the Waveform | Wavelet Energy Entropy | Wire Rope Diameter | Wire Diameter |
---|---|---|---|---|---|---|---|
1 | 0.04358 | 0.0939 | 12.504 | −10.9718 | 0.0017 | 0.3 | 0.08 |
2 | 0.0457 | 0.08616 | 10.8723 | −8.4009 | 0.0018 | 0.3 | 0.08 |
3 | 0.04447 | 0.08237 | 11.2564 | −11.6126 | 0.0013 | 0.3 | 0.08 |
4 | 0.03313 | 0.06224 | 9.2805 | −8.1743 | 0.0014 | 0.3 | 0.08 |
5 | 0.02583 | 0.05189 | 6.8754 | −7.0832 | 0.0019 | 0.3 | 0.08 |
6 | 0.02418 | 0.04783 | 4.5371 | −7.52 | 0.0015 | 0.3 | 0.08 |
7 | 0.1091 | 0.2407 | 24.2996 | −24.7881 | 0.0024 | 0.3 | 0.08 |
8 | 0.09866 | 0.19352 | 13.5774 | −8.7307 | 0.0042 | 0.3 | 0.08 |
9 | 0.0613 | 0.15481 | 5.4995 | −15.9693 | 0.0056 | 0.3 | 0.08 |
10 | 0.04003 | 0.11305 | 13.9955 | −15.9619 | 0.0082 | 0.3 | 0.08 |
11 | 0.03867 | 0.08336 | 24.379 | −4.7879 | 1.62 × 10−5 | 0.3 | 0.08 |
12 | 0.0144 | 0.05574 | 5.6312 | −4.8955 | 1.32 × 10−5 | 0.3 | 0.08 |
13 | 0.01078 | 0.0346 | 6.364 | −3.4975 | 1.91 × 10−5 | 0.3 | 0.08 |
14 | 0.03816 | 0.09071 | 6.3293 | −7.184 | 2.43 × 10−5 | 0.3 | 0.08 |
15 | 0.02118 | 0.06409 | 5.0068 | −7.7042 | 1.29 × 10−5 | 0.3 | 0.08 |
16 | 0.01909 | 0.05717 | 1.6488 | −11.6167 | 2.72 × 10−5 | 0.3 | 0.08 |
17 | 0.008588 | 0.046494 | 4.2232 | −7.0306 | 2.42 × 10−5 | 0.3 | 0.08 |
18 | 0.01377 | 0.03742 | 6.8358 | −3.3085 | 1.26 × 10−5 | 0.3 | 0.08 |
19 | 0.001713 | 0.024893 | 0.898 | −9.769 | 1.94 × 10−5 | 0.3 | 0.08 |
20 | 0.01143 | 0.03476 | 1.9496 | −5.2623 | 2.08 × 10−5 | 0.3 | 0.08 |
Serial Number | Algorithm | Identification Accuracy (%) | Average Identification Accuracy (%) | ||||
---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | |||
1 | EMD-AWT-PSOSVM | 97.6190 | 97.6190 | 97.6190 | 95.0476 | 97.6190 | 97.1047 |
2 | EMD-SVM | 61.3208 | 61.3208 | 58.4905 | 61.3208 | 61.3208 | 60.7547 |
3 | AWT-SVM | 87.7358 | 85.8491 | 87.7358 | 88.6792 | 87.7358 | 87.5471 |
4 | EMD-PSOSVM | 67.9245 | 67.9245 | 66.0377 | 67.9245 | 67.9245 | 67.5471 |
5 | AWT-PSOSVM | 92.4528 | 92.4528 | 90.0566 | 92.4528 | 92.4528 | 91.9735 |
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Tian, J.; Li, P.; Wang, W.; Ma, J.; Sun, G.; Wang, H. Quantitative Identification of Internal and External Wire Rope Damage Based on VMD-AWT Noise Reduction and PSO-SVM. Entropy 2022, 24, 981. https://doi.org/10.3390/e24070981
Tian J, Li P, Wang W, Ma J, Sun G, Wang H. Quantitative Identification of Internal and External Wire Rope Damage Based on VMD-AWT Noise Reduction and PSO-SVM. Entropy. 2022; 24(7):981. https://doi.org/10.3390/e24070981
Chicago/Turabian StyleTian, Jie, Pengbo Li, Wei Wang, Jianwu Ma, Ganggang Sun, and Hongyao Wang. 2022. "Quantitative Identification of Internal and External Wire Rope Damage Based on VMD-AWT Noise Reduction and PSO-SVM" Entropy 24, no. 7: 981. https://doi.org/10.3390/e24070981
APA StyleTian, J., Li, P., Wang, W., Ma, J., Sun, G., & Wang, H. (2022). Quantitative Identification of Internal and External Wire Rope Damage Based on VMD-AWT Noise Reduction and PSO-SVM. Entropy, 24(7), 981. https://doi.org/10.3390/e24070981