A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Marine Ship
Abstract
1. Introduction
- Compared with the expensive high sampling frequency data acquisition card, the proposed method uses a low sampling frequency data acquisition module. This allows the filtered acceleration signal to achieve similar signal accuracy as the high sampling frequency system at a lower sampling frequency. This hardware change not only reduces hardware costs but also reduces the burden of data storage and transmission, thereby improving the efficiency of data collection and making it more suitable for real-time monitoring systems of ship status.
- Compared with the traditional filtering method, the proposed method uses digital filtering, which can flexibly adjust the ship heave acceleration under different sea conditions. Secondly, combined with Fast Fourier Transform, the noise component is effectively identified and suppressed, and the phase effect brought by the traditional filter is completely eliminated. Finally, the Kalman time domain filter is used to further suppress the imaginary error brought by the inverse Fourier transform and ensure the amplitude accuracy of the peak-to-peak value.
2. Preliminary Work
2.1. Low-Frequency Component Range of Ship Heave Acceleration
2.2. Low-Frequency Component Filters
3. Proposed Method
3.1. Low Sampling Frequency Data Acquisition Module
3.2. A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Ships
4. Experimental Results and Analysis
4.1. Horizontal Sine Motion Simulation Platform
4.2. Signal Acquisition System
4.3. Detailed Experimental Setup
5. Results and Discussion
6. Conclusions
- (1)
- It can effectively process ultra-low frequency, small amplitude signals of 0.2 Hz–0.5 Hz and maintain high-precision acquisition under low sampling frequency conditions.
- (2)
- This method outperforms the traditional Chebyshev II filter in terms of filtering performance, mean square error (MSE) and correlation coefficient, especially in ultra-low frequency signals.
- (3)
- By using digital frequency domain filtering, the phase error and peak-to-peak error of the traditional filter are overcome, while the cost of analog-to-digital conversion is reduced.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
P-M spectrum | Pierson–Moskowitz spectrum |
PCI | Peripheral Component Interconnect |
FFT | Fast Fourier Transform |
DFT | Discrete Fourier Transform |
TCP | Transmission Control Protocol |
MSE | Mean Squared Error |
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Performance | English | SI |
---|---|---|
Sensitivity (±5%) | 1000 mV/g | 101.9 mV/(m/s2) |
Measurement Range | ±2 g pk | +19.6 m/s2 pk |
Frequency Range (±5%) | 0 to 250 Hz | 0 to 250 Hz |
Frequency Range (+10%) | 0 to 350 Hz | 0 to 350 Hz |
Resonant Frequency | ≥1.3 kHz | ≥1.3 kHz |
Phase Response (10 Hz) | <2.5° | <2.5° |
Broadband Resolution (0.5 to 100 Hz) | 0.25 mg rms | 0.0025 m/s2 rms |
Non-Linearity | ≤1% | ≤1% |
Transverse Sensitivity | ≤3% | ≤3% |
Motion Parameters | Range |
---|---|
Amplitude A | [±50 mm, ±150 mm] |
Reciprocating frequency f | [0.05 Hz, 1 Hz] |
Equipment | Purpose |
---|---|
sine motion platform | Simulate the heave motion of ships |
acceleration sensor | Measuring acceleration signals |
ART data acquisition module | Analog-to-digital conversion |
24 V DC power | Power supply for acquisition module |
Wireless router | Digital signal wirelessly transmitted |
Frequency / Amplitude | Filtered Signal (Using Chebyshev II) | Filtered Signal (Using the Proposed Method) | ||
---|---|---|---|---|
MSE | Correlation Coefficient | MSE | Correlation Coefficient | |
0.2 Hz/±75 mm | 0.00024012 | 0.80365028 | 0.00000646 | 0.95607133 |
0.2 Hz/±100 mm | 0.00410815 | 0.83907569 | 0.00386112 | 0.96365433 |
0.2 Hz/±150 mm | 0.00922387 | 0.82917477 | 0.00895778 | 0.95203325 |
0.3 Hz/±75 mm | 0.00027744 | 0.92173587 | 0.00001544 | 0.98315985 |
0.3 Hz/±100 mm | 0.00033731 | 0.90836091 | 0.00003594 | 0.97360001 |
0.3 Hz/±150 mm | 0.00046533 | 0.90699737 | 0.00007744 | 0.97523929 |
0.4 Hz/±75 mm | 0.00037730 | 0.93607822 | 0.00004478 | 0.98169825 |
0.4 Hz/±100 mm | 0.00045627 | 0.94400958 | 0.00007990 | 0.98140774 |
0.4 Hz/±150 mm | 0.00066728 | 0.94856887 | 0.00017795 | 0.98232436 |
0.5 Hz/±75 mm | 0.00041660 | 0.96536633 | 0.00011006 | 0.98145660 |
0.5 Hz/±100 mm | 0.00058184 | 0.96532077 | 0.00024993 | 0.97599686 |
0.5 Hz/±150 mm | 0.00083354 | 0.97082588 | 0.00025992 | 0.98946692 |
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Share and Cite
Sun, D.; Hu, X.; Han, C.; Chen, X. A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Marine Ship. J. Mar. Sci. Eng. 2025, 13, 1919. https://doi.org/10.3390/jmse13101919
Sun D, Hu X, Han C, Chen X. A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Marine Ship. Journal of Marine Science and Engineering. 2025; 13(10):1919. https://doi.org/10.3390/jmse13101919
Chicago/Turabian StyleSun, Dejian, Xiong Hu, Chongyang Han, and Xinqiang Chen. 2025. "A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Marine Ship" Journal of Marine Science and Engineering 13, no. 10: 1919. https://doi.org/10.3390/jmse13101919
APA StyleSun, D., Hu, X., Han, C., & Chen, X. (2025). A Low-Frequency Component Filtering Method for Heave Acceleration Signal of Marine Ship. Journal of Marine Science and Engineering, 13(10), 1919. https://doi.org/10.3390/jmse13101919