MEMS Hydrophone Signal Denoising and Baseline Drift Removal Algorithm Based on Parameter-Optimized Variational Mode Decomposition and Correlation Coefficient
Abstract
:1. Introduction
2. Theoretical Basis
2.1. Variational Mode Decomposition (VMD)
- Step 1:
- Initialize the parameters, set , , and to 0;
- Step 2:
- Update the values of , , and according to Formulas (4)–(6);
- Step 3:
- Determine whether the termination condition (7) is satisfied, and repeat step 2 until Formula (7) is satisfied.
2.2. Whale-Optimization Algorithm (WOA)
2.3. Power Spectrum Entropy (PSE)
- Step 1:
- Calculation formula of the power spectrum of signal :
- Step 2:
- Obtain the probability density function of the spectrum of all frequency components by normalization:
- Step 3:
- The PSE value is defined as:
2.4. Correlation Coefficient (CC)
3. The Method Proposed in This Paper (WOA–VMD–CC)
4. Simulation
4.1. Simulation Experiment 1
4.2. Simulation Experiment 2
5. Application in the Experiments of MEMS Hydrophone
5.1. MEMS Vector Hydrophone and Signal Acquisition
5.2. Denoising and Baseline Drift Removal Experiments for MEMS Vector Hydrophones
6. Conclusions
- (1)
- In many literatures, the parameters of VMD are selected by empirical method. In this paper, the whale-optimization algorithm is used to optimize the parameters of the VMD. While taking into account the mutual influence between the two parameters, it is easier to find the global optimal solution, which provides an idea for adaptively searching for the parameters of the VMD.
- (2)
- Power spectrum entropy (PSE) can reflect the variation characteristics of the frequency in the signal. In the whale-optimization algorithm, PSE is used as the fitness function, and it is easier to find the optimal parameters , which can improve the accuracy of signal decomposition. There is no modal aliasing when decomposing the signal using the algorithm proposed in this paper.
- (3)
- This paper calculates the CCs of the IMFs and the original signal, and denoises the signal by setting the CC threshold. The correlation between the denoised signal and the original signal is fully considered, so that the denoised signal retains more important information of the original signal.
- (4)
- Conventional digital signal-processing methods tend to lose useful information when removing baseline drift. The algorithm in this paper has a good performance for baseline drift removal of signals with different characteristics. At the same time, more useful information is retained.
- (5)
- Compared with conventional digital signal-processing methods and other related algorithms proposed recently, the denoising effect of this algorithm is better.
Author Contributions
Funding
Conflicts of Interest
References
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Index | Input Signal | VMD-NPE | 2VMD-CC | EMD-WT | WOA-VMD-CC | LSF-WST | SGSF-WST |
---|---|---|---|---|---|---|---|
SNR | 5.8810 | 9.3281 | 9.4184 | 7.8212 | 18.5693 | 8.5445 | 8.5935 |
RMSE | 1.6560 | 1.5796 | 0.4782 | 1.6382 | 0.1667 | 0.5288 | 0.5030 |
Index | VMD-NPE | WOA-VMD-NPE | 2VMD-CC | WOA-2VMD-CC | WOA-VMD-CC |
---|---|---|---|---|---|
SNR | 9.3281 | 10.7579 | 9.4184 | 17.0467 | 18.5693 |
RMSE | 1.5796 | 1.5480 | 0.4782 | 0.1987 | 0.1667 |
Noise | Index | Input Signal | VMD-NPE | 2VMD-CC | EMD-WT | WOA-VMD-CC | LSF-WST | SGSF-WST |
---|---|---|---|---|---|---|---|---|
−10 db | SNR | −12.9540 | −5.4163 | −8.3212 | −6.1719 | 1.3264 | −7.1079 | −7.9754 |
RMSE | 13.6503 | 6.0592 | 8.3504 | 6.7044 | 2.5752 | 6.8001 | 7.5148 | |
−5 db | SNR | −7.9970 | −1.6381 | −2.5925 | −1.9593 | 5.8786 | −1.4992 | −2.6494 |
RMSE | 8.0206 | 4.5489 | 4.0434 | 4.7587 | 1.5247 | 3.5635 | 4.0707 | |
0 db | SNR | −2.9637 | 3.2030 | 1.9962 | 1.6200 | 12.3969 | 2.0547 | 2.0923 |
RMSE | 5.1673 | 3.6328 | 2.3840 | 3.8343 | 0.7199 | 2.3680 | 2.3585 | |
5 db | SNR | 2.0469 | 8.7231 | 11.0416 | 4.9440 | 15.1702 | 6.1727 | 6.4195 |
RMSE | 3.8618 | 3.2409 | 0.8415 | 3.4430 | 0.5231 | 1.4740 | 1.4328 |
Noise | Index | Input Signal | LSF-WOA-VMD-CC | SGSF-WOA-VMD-CC | WOA-VMD-CC |
---|---|---|---|---|---|
5db | SNR | 2.0469 | 11.5326 | 13.3392 | 15.1702 |
RMSE | 3.8618 | 0.7952 | 0.6459 | 0.5231 |
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Yan, H.; Xu, T.; Wang, P.; Zhang, L.; Hu, H.; Bai, Y. MEMS Hydrophone Signal Denoising and Baseline Drift Removal Algorithm Based on Parameter-Optimized Variational Mode Decomposition and Correlation Coefficient. Sensors 2019, 19, 4622. https://doi.org/10.3390/s19214622
Yan H, Xu T, Wang P, Zhang L, Hu H, Bai Y. MEMS Hydrophone Signal Denoising and Baseline Drift Removal Algorithm Based on Parameter-Optimized Variational Mode Decomposition and Correlation Coefficient. Sensors. 2019; 19(21):4622. https://doi.org/10.3390/s19214622
Chicago/Turabian StyleYan, Huichao, Ting Xu, Peng Wang, Linmei Zhang, Hongping Hu, and Yanping Bai. 2019. "MEMS Hydrophone Signal Denoising and Baseline Drift Removal Algorithm Based on Parameter-Optimized Variational Mode Decomposition and Correlation Coefficient" Sensors 19, no. 21: 4622. https://doi.org/10.3390/s19214622
APA StyleYan, H., Xu, T., Wang, P., Zhang, L., Hu, H., & Bai, Y. (2019). MEMS Hydrophone Signal Denoising and Baseline Drift Removal Algorithm Based on Parameter-Optimized Variational Mode Decomposition and Correlation Coefficient. Sensors, 19(21), 4622. https://doi.org/10.3390/s19214622