Weak Fault Feature Extraction for AUV Thrusters with Multi-Input Signals
Abstract
1. Introduction
- Conventional methods are constrained by an insufficient number of input signals, leading to a non-monotonic mapping between extracted fault features and fault severity in the context of weak faults. Consequently, subsequent fault severity identification becomes infeasible. To overcome this limitation, this study expands the input set by incorporating all available measurable signals.
- Increasing the number of input signals introduces challenges in signal denoising and enhancement. Specifically, the conventional method demonstrates limited effectiveness in reducing noise and enhancing features across multi-input signals, with substantial variability in performance across different signal types. This inconsistency adversely affects the results of subsequent feature fusion. To address this issue, this paper proposes a denoising method that integrates Feature Mode Decomposition (FMD) with wavelets, along with a signal enhancement approach that combines energy operators with the Modified Bayesian (MB) method. Moreover, the study adopts signal-specific strategies for denoising, enhancement, and fault feature fusion, tailored to the specific characteristics of each input signal.
- The expansion of input signal quantity introduces a challenge in fault feature extraction and fusion: the mapping between extracted fault features and fault severity becomes non-monotonic, thereby preventing accurate fault severity identification. To overcome this issue, this study proposes a multi-domain fault feature extraction and fusion method based on sensitive feature selection and evidence theory. Unlike conventional approaches that extract features solely from the raw input signals, the proposed method derives multiple fault features from the time, frequency, and time–frequency domains. A sensitivity analysis method is introduced to select the most relevant fault features, and multi-feature fusion is performed using evidence theory to obtain the final weak fault features of the thruster. Finally, weak fault severity is identified using grey relational theory.
2. General Ideas of the Proposed Method
2.1. Problems with Conventional Methods and Corresponding Solutions of the Proposed Method
2.2. Overall Structure of the Proposed Method
- (A)
- Signal input
- (B)
- Preprocessing
- (C)
- Signal denoising
- (D)
- Signal enhancement
- (E)
- Fault feature extraction and fusion
- (F)
- Fault severity identification
2.3. Differences Between the Proposed Method and the Conventional Method
- (1)
- Differences in input signals
- (2)
- Differences in signal denoising method
- (3)
- Differences in signal enhancement method
- (4)
- Differences in fault feature extraction and fusion method
3. Implementation Process of the Proposed Method
3.1. Adding New Input Signals
- (1)
- Problem and causal analysis
- (2)
- Idea of the proposed method
3.2. Signal Denoising and Enhancement Method
- (1)
- Problem and causal analysis
- (A)
- The intensity of weak fault signals is weaker than that of interference noise signals.
- (B)
- Frequency band aliasing occurs between weak fault signals and external interference, rendering their effective separation challenging. Wavelet denoising reduces noise by thresholding high-frequency coefficients (which typically contain noise). However, due to the low intensity of weak fault features, although wavelet denoising is effective in noise reduction, its effectiveness remains suboptimal. This, in turn, leads to inadequate performance of subsequent traditional MB enhancement.
- (C)
- For multiple heterogeneous input signals, each with distinct characteristics, the same denoising and enhancement method should not be uniformly applied. Instead, technical approaches for denoising and enhancement tailored to the specific characteristics of each signal type should be designed.
- (2)
- Idea of the proposed method
- (A)
- To resolve the problem of separating weak fault signals from interfering noise due to frequency band aliasing, this paper introduces FMD. FMD separates noise from fault information by adaptively adjusting bandwidth and excels in addressing overlaps between fault features and interference [20]. Thus, a denoising method for AUV thruster fault signals that combines wavelet denoising with FMD denoising is proposed.
- (B)
- To resolve the problem of weak fault signals relative to interference, this paper introduces the energy operator. Characterized by its capability to enhance the transient features of signals, the energy operator can amplify the transient variations in the main thruster voltage signal caused by faults [21,22]. Consequently, an enhancement method for AUV thruster fault signals that combines an energy operator with MB is proposed.
- (C)
- We design distinct denoising and enhancement technical routes for different input signals. The results of this study indicate that, across all input signal scenarios, the traditional processing workflow failed to achieve optimal processing performance for all signals. This workflow comprises two steps: first, applying a denoising method, followed by signal enhancement. Among these, the denoising method integrates the wavelet transform with FMD, while the enhancement method is based on the energy operator and MB. While incorporating the energy operator notably enhances the main thruster voltage signal, it yields insignificant improvements or even detrimental effects for the surge velocity signal, yaw angle signal, and lateral thruster voltage signal. Consequently, it is imperative to devise specific noise reduction and enhancement strategies for different input signals. Specifically, for the main thruster voltage signal, wavelet and FMD are employed for noise reduction, followed by energy operator and MB for enhancement; for the remaining three input signals, wavelet and FMD are used for noise reduction, with MB then applied for enhancement.
- (3)
- Implementation of the proposed signal denoising and enhancement method
- (A)
- Signal preprocessing
- (B)
- FMD-based denoising
- (a)
- Mode decomposition
- (b)
- Retain the modality with a low noise level
- (I)
- Calculate the information entropy of each mode
- (II)
- Evaluating the noise content of each mode
- (III)
- Obtain the FMD-denoised signal
- (C)
- Wavelet denoising
- (a)
- Wavelet decomposition
- (b)
- Threshold processing
- (c)
- Wavelet reconstruction
- (D)
- Signal enhancement
- (a)
- Energy operator enhancement
- (b)
- MB enhancement
3.3. Fault Feature Extraction and Fusion Method
- (1)
- Problem and causal analysis
- (2)
- Idea of the proposed method
- (3)
- Implementation of the proposed fault feature extraction and fusion method
- (A)
- Multi-domain fault feature extraction
- (a)
- Determination of fault features in time, frequency, and time–frequency domains
- (b)
- Calculation of fault features in time, frequency, and time–frequency domains
- (B)
- Selecting sensitive features from multiple domains
- (a)
- Identification of fault features with monotonicity
- (b)
- Processing for consistency of monotonic trends in fault features
- (c)
- Selection of sensitive features
- (I)
- Definition of feature set
- (II)
- Calculation of the mean value of the j-th type of feature
- (III)
- Calculation of the inter-class average distance of the j-th type of feature
- (IV)
- Calculation of the sensitivity factor of the j-th type of feature
- (C)
- Fault feature fusion based on D-S evidence theory
- (a)
- Construction of the frame of discernment Θ
- (b)
- Construction of two mass functions m1 and m2
- (I)
- Mass function m1 based on sensitivity factors
- (II)
- Mass m2 based on Pearson correlation coefficients
- (c)
- Fusion based on Dempster’s rule
- (d)
- Obtaining final fusion fault features
4. Experimental Validation
4.1. Experimental Setup
- (1)
- Experimental Equipment and Environment
- (2)
- Experimental Process
4.2. Experimental Verification of Signal Denoising and Enhancement Effects for the Proposed Method and the Conventional Method
4.2.1. Enhancement Effect of the Main Voltage Signal
- (A)
- Comparative analysis of fault thruster values
- (B)
- Comparative analysis of FNR
4.2.2. Enhancement Effects of Other Input Signals
- (A)
- Comparative analysis of fault feature values
- (B)
- Comparative analysis of FNR
4.3. Experimental Verification of Fault Feature Extraction and Fusion Effects for the Proposed Method and the Conventional Method
4.3.1. Experimental Results of Multi-Domain Sensitive Feature Selection
- (1)
- Extraction of multi-domain monotonic fault features
- (2)
- Monotonic trend consistency processing of fault features
- (3)
- Selection of sensitive features
4.3.2. Experimental Verification of the Effect of Adding Sensitive Feature Selection on Monotonicity in the Proposed Method
4.3.3. Experimental Comparison of Fusion Fault Features Between the Proposed Method and the Conventional Method
- (1)
- Comparison of fault feature monotonicity
- (2)
- Comparison of fault severity identification results
4.3.4. Discussion on the Real-Time Applicability of the Proposed Method
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Fault Severity | Conventional Method | Proposed Method | Enhancement Ratio of Fault Feature Values | Enhancement Ratio of FNR | ||
---|---|---|---|---|---|---|
Fault Feature Values | FNR | Fault Feature Values | FNR | |||
2% | 3.37 | 1.19 | 3.44 | 2.10 | 2.11% | 76.43% |
5% | 2.43 | 1.12 | 6.05 | 8.77 | 148.79% | 680.26% |
8% | 9.66 | 1.65 | 11.55 | 11.08 | 19.56% | 570.47% |
10% | 3.57 | 4.28 | 5.28 | 6.27 | 47.97% | 46.38% |
Input Signal | Fault Severity | Conventional Method | Proposed Method | Enhancement Ratio of Fault Feature Values | Enhancement Ratio of FNR | ||
---|---|---|---|---|---|---|---|
Fault Feature Values | FNR | Fault Feature Values | FNR | ||||
Yaw angle signal | 2% | 3.32 | 1.17 | 4.34 | 1.19 | 30.72% | 1.71% |
5% | 2.73 | 1.15 | 5.03 | 3.8 | 84.25% | 230.43% | |
8% | 2.15 | 1.16 | 2.53 | 1.54 | 17.67% | 32.44% | |
10% | 2.24 | 1.82 | 2.46 | 2.68 | 9.82% | 47.25% | |
Lateral thruster voltage signal | 2% | 1.14 | 1.64 | 1.88 | 1.88 | 64.91% | 14.63% |
5% | 0.63 | 1.02 | 7.04 | 7.04 | 1017.46% | 590.20% | |
8% | 2.06 | 1.40 | 4.14 | 4.14 | 100.97% | 195.71% | |
10% | 0.92 | 1.11 | 4.93 | 4.93 | 435.87% | 344.14% | |
Surge velocity signal | 2% | 1.15 | 1.79 | 54.98 | 55.53 | 4680.87% | 3002.23% |
5% | 2.54 | 1.28 | 23.71 | 18.96 | 833.46% | 1378.88% | |
8% | 1.57 | 1.67 | 31.22 | 36.30 | 1888.54% | 2073.65% | |
10% | 2.78 | 1.03 | 46.63 | 47.58 | 1577.34% | 4515.26% |
Input Signal | Fault Feature | Fault Severity | |||
---|---|---|---|---|---|
2% | 5% | 8% | 10% | ||
Surge velocity signal | Mean value | 3.21 | 3.25 | 3.89 | 5.87 |
Variance | 50.31 | 65.25 | 77.85 | 79.65 | |
Skewness | 0.33 | 0.28 | 0.2 | 0.1 | |
Margin factor | 78.29 | 63.54 | 46.14 | 36.14 | |
Mean frequency | 0.0009 | 0.00093 | 0.0017 | 0.0018 | |
Approximate entropy | 1.092 | 1.194 | 1.324 | 1.647 | |
Sample entropy | 0.154 | 0.173 | 0.191 | 0.193 | |
Yaw angle signal | Mean value | 1.36 | 2.46 | 2.56 | 3.59 |
RMS | 5.39 | 5.66 | 8.63 | 9.81 | |
Mean frequency | 0.00058 | 0.00059 | 0.0024 | 0.0034 | |
Approximate entropy | 0.48 | 0.85 | 0.89 | 1.75 | |
Fuzzy entropy | 0.98 | 1.44 | 1.47 | 1.71 | |
Main thruster voltage signal | Variance | 13.17 | 14.64 | 15.88 | 19.09 |
RMS | 5.25 | 6.97 | 7.446 | 9.49 | |
Margin factor | 12.915 | 13.23 | 23.99 | 24.6 | |
Standard deviation frequency | 1.465 | 1.434 | 1.158 | 1.155 | |
Centroid frequency | 99.593 | 101.675 | 101.383 | 102.317 | |
Negentropy | 0.23 | 0.35 | 0.66 | 1.178 | |
Lateral thruster voltage signal | Rms | 5.258 | 5.584 | 9.627 | 10.584 |
Kurtosis | 2.32 | 2.99 | 3.483 | 3.83 | |
Fuzzy entropy | 0.96 | 0.52 | 0.34 | 0.11 |
Input Signal | Fault Feature | 2% | 5% | 8% | 10% |
---|---|---|---|---|---|
Surge velocity signal | Skewness | 0.67 | 0.72 | 0.8 | 0.9 |
Margin factor | 21.71 | 36.46 | 53.86 | 63.86 | |
Main thruster voltage signal | Standard deviation frequency | 8.535 | 8.566 | 8.842 | 8.845 |
Lateral thruster voltage signal | Fuzzy entropy | 0.04 | 0.48 | 0.66 | 0.89 |
Input Signal | Fault Feature | 2% | 5% | 8% | 10% | Sensitive Factor |
---|---|---|---|---|---|---|
Surge velocity signal | Mean value | 3.21 | 3.25 | 3.89 | 5.87 | 0.770 |
Variance | 50.31 | 65.25 | 77.85 | 79.65 | 5.400 | |
Margin factor | 21.71 | 36.46 | 53.86 | 63.86 | 15.848 | |
Yaw angle signal | Mean value | 1.36 | 2.46 | 2.56 | 3.59 | 0.667 |
RMS | 5.39 | 5.66 | 8.63 | 9.81 | 1.301 | |
Approximate entropy | 0.48 | 0.85 | 0.89 | 1.75 | 0.583 | |
Main thruster voltage signal | Variance, | 13.17 | 14.64 | 15.88 | 19.09 | 0.809 |
RMS | 5.25 | 6.97 | 7.446 | 9.49 | 0.835 | |
Margin factor | 12.915 | 13.23 | 23.99 | 24.60 | 4.502 | |
Negentropy | 0.23 | 0.35 | 0.66 | 1.178 | 0.592 | |
Lateral thruster voltage signal | Rms | 5.258 | 5.584 | 9.627 | 10.584 | 1.928 |
Kurtosis | 1.32 | 2.99 | 3.483 | 3.83 | 0.851 | |
Fuzzy entropy | 0.31 | 0.48 | 0.66 | 0.72 | 0.500 |
Fault Severity | Previous Method | Proposed Method |
---|---|---|
2% | 0.098 | 0.142 |
5% | 0.094 | 0.258 |
8% | 0.110 | 0.289 |
10% | 0.082 | 0.387 |
Fault Severity | Conventional Method | Proposed Method |
---|---|---|
2% | 0.598 | 0.142 |
5% | 0.794 | 0.258 |
8% | 0.793 | 0.289 |
10% | 0.429 | 0.387 |
Fault Severity | Conventional Method | Proposed Method | ||
---|---|---|---|---|
Identification Results | Relative Error | Identification Results | Relative Error | |
2% | 3.52% | 76.00% | 1.56% | 22.00% |
5% | 5.34% | 6.80% | 5.26% | 5.20% |
8% | 7.26% | 9.25% | 7.85% | 1.88% |
10% | 2.56% | 74.40% | 9.12% | 8.80% |
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Share and Cite
Yu, D.; Yao, F.; Gao, Y.; Liu, X.; Zhang, M. Weak Fault Feature Extraction for AUV Thrusters with Multi-Input Signals. J. Mar. Sci. Eng. 2025, 13, 1519. https://doi.org/10.3390/jmse13081519
Yu D, Yao F, Gao Y, Liu X, Zhang M. Weak Fault Feature Extraction for AUV Thrusters with Multi-Input Signals. Journal of Marine Science and Engineering. 2025; 13(8):1519. https://doi.org/10.3390/jmse13081519
Chicago/Turabian StyleYu, Dacheng, Feng Yao, Yan Gao, Xing Liu, and Mingjun Zhang. 2025. "Weak Fault Feature Extraction for AUV Thrusters with Multi-Input Signals" Journal of Marine Science and Engineering 13, no. 8: 1519. https://doi.org/10.3390/jmse13081519
APA StyleYu, D., Yao, F., Gao, Y., Liu, X., & Zhang, M. (2025). Weak Fault Feature Extraction for AUV Thrusters with Multi-Input Signals. Journal of Marine Science and Engineering, 13(8), 1519. https://doi.org/10.3390/jmse13081519