A New Fault Diagnosis Method for a Diesel Engine Based on an Optimized Vibration Mel Frequency under Multiple Operation Conditions
Abstract
:1. Introduction
- In order to overcome the interference of complex operation conditions, this paper presents a novel representative feature from vibration signals by incorporating VMD into the effective adaptive decomposition of non-stationary signals to combine it with the excellent feature representation of MFCC.
- In order to wipe out the strong noise and enhance signal improvement, an adaptive correlation threshold method is first proposed to weaken the invalid data before the feature extraction.
2. Diesel Engine Test-Bed and Signal Analysis
2.1. Diesel Engine Equipment and Data Acquisition
2.2. Establishment of Diesel Engine Valve Fault
2.3. Time-Frequency of Sound and Vibration Signals
3. Methodology Based on Improved MFCC
3.1. Mel Frequency Cepstrum Coefficient
3.2. Variational Mode Decomposition
4. Comprehensive Procedure of the Proposed Method
4.1. Signal Improvement
4.2. IVMD-MFCC
- Step 1: Input the raw signal x(t) and obtain a processed signal y(t) by utilizing the adaptive correlation threshold.
- Step 2: Initialize the parameters , , , n and step-wise decomposition by using VMD to obtain mode components (default k = 3).
- Step 3: Preprocess mode components . To compensate for high frequency loss, each mode component is first weighed, and the weighted filter is shown in Equation (12), where ρ represents a constant (default ρ = 0.96):Then, a framing and hamming window are used successively to convert non-stationary signals into quasi-stationary signals, thereby reducing frequency leakage.
- Step 4: To carry out fast a Fourier transform (FFT). The FFT transformation is presented in Equation (13), where p represents the pth line in frequency-domain, N is the data point number of , and l refers to the lth sub-frame signal:
- Step 5: To calculate the linear spectrum energy of each frame signal. Linear spectrum energy corresponding to the lth sub-frame signal is represented in Equation (14):
- Step 6: Design a series of triangular filters named Mel filter banks, calculate the Mel-frequency spectrum energy of each frame signal, and then take the logarithm:
- Step 7: To introduce discrete cosine transform (DCT) and extract the IVMD-MFCC features. This relationship is expressed as Equation (16):
4.3. Vector Quantization
4.4. K-Nearest Neighbor (KNN)
4.5. Outline of the Proposed Method
5. Diagnosis Results of Valve Clearance Fault
5.1. Results Analysis of the Proposed Method
5.2. Results Analysis of Comparative Methods
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
Abbreviations | ss | The ssth label of testing sample | |
AC | Accuracy | Mel | Mel frequency |
EEMD | Ensemble empirical mode decomposition | f | Hertz frequency |
EVCI | Exhaust valve closing impact | Y | Fast Fourier transform of mode component |
FFT | Fast fourier transform | t | Time |
FI | Fire impact | E | The linear spectrum energy of pth line of each frame signal |
FINC | Fire impact adjacent cylinder | The kth decomposed mode components | |
IVCI | Intake valve closing impact | Central frequency | |
IVMD-MFCC | Improved vibrational mode decomposition and Mel frequency cepstrum coefficient | , , | The corresponding Fourier transformation |
LBG | Linde -Buzo-Gray | x(t) | Original signal |
LDA | Linear discriminative analysis | j | Imaginary unit |
LFE | Large clearance fault of exhaust valve | p | The pth line in frequency-domain |
LFI | Large clearance fault of intake valve | N | The data point number of |
LFIE | Large clearance fault of intake and exhaust valve | s | The sth data of |
LMD | Local mean decomposition | L | the integer cycle signal length |
Ma Tec | Maintenance technicians | M | Number of sliding windows |
MFC | Mel frequency cepstrum coefficient | IM | IVMD-MFCC feature |
MFCC | Mel frequency cepstrum coefficient | l | the lth sub-frame signal |
NVC | Normal valve clearance | Rrms | Mean square root of correlation coefficient |
PCA | Principal component analysis | d | Euclidean distance between X and Yc |
PR | Precision | n | Number of iterations |
IMFs | Intrinsic mode functions | J | The number of feature vector subspaces |
ISOMap | Isometric feature mapping | ρ | A constant |
SE | Sensitivity | F | The total number of Mel filter banks |
SHM | Structural health monitoring | fr | The frth Mel filter bank |
SI | Signal improvement | X | Training set of vector quantization |
SFE | Small clearance fault of exhaust valve | Yc | Codebook of cth subspace |
SFI | Small clearance fault of intake valve | S | Mel-frequency spectrum energy of each frame signal |
SFIE | Small clearance fault of intake and exhaust valve | SU | Number of training set subspaces |
SMVK | The proposed method without VMD | Tts | Training sample of KNN |
SVMK | The proposed method without vector quantization | Wls | Label set of Tn |
SVMS | The proposed method replacing KNN with SVM | SSS | Testing sample of KNN |
STFT | Short time Fourier transform spectrum | Nwl | Length of sliding window |
VMD | Variational mode decomposition | Nss | Moving step size of sliding window |
VMVK | The proposed method without signal improvement | m | The mth data point of the sliding window |
VQ | Vector quantization | Convergence criteria of vector quantization | The mth data point of the sliding window |
Symbols | Total distortion of all subspaces | ||
Convergence criteria | Ra | Correlation coefficient between (a − 1)th and ath sliding window | |
A castigatory quadratic | TS | Number of training sample | |
Lagrangian multiplicator operator | SS | Number of testing sample | |
extended Lagrangian function | ts | The tsth training sample | |
δ | Dirac distribution function | ls | The lsth label of training sample |
τ | Noise tolerance parameter |
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Case | Intake Valve | Exhaust Valve | Number of Training Samples | Number of Testing Samples |
---|---|---|---|---|
Normal valve clearance (NVC) | 0.3 | 0.5 | 120 | 980 |
Small clearance fault of intake valve (SFI) | 0.25 | 0.5 | 120 | 980 |
Large clearance fault of intake valve (LFI) | 0.4 | 0.5 | 120 | 980 |
Small clearance fault of exhaust valve (SFE) | 0.3 | 0.45 | 120 | 980 |
Large clearance fault of exhaust valve (LFE) | 0.3 | 0.6 | 120 | 980 |
Small clearance fault of intake and exhaust valve (SFIE) | 0.25 | 0.45 | 120 | 980 |
Large clearance fault of intake and exhaust valve (LFIE) | 0.4 | 0.6 | 120 | 980 |
Number | Speed (rpm) | Load (N·m) | Number | Speed (rpm) | Load (N·m) |
---|---|---|---|---|---|
1 | 1500 | 700 | 7 | 1800 | 1600 |
2 | 1500 | 1000 | 8 | 2100 | 700 |
3 | 1500 | 1300 | 9 | 2100 | 1000 |
4 | 1800 | 700 | 10 | 2100 | 1300 |
5 | 1800 | 1000 | 11 | 2100 | 1600 |
6 | 1800 | 1300 | 12 | 2100 | 2200 |
Predicted Class | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
NVC | SFI | LFI | SFE | LFE | SFIE | LFIE | AC (%) | PR (%) | SE (%) | ||
Actual Class | NVC | 956 | 4 | 8 | 3 | 2 | 5 | 2 | 97.55 | 93.36 | |
SFI | 22 | 958 | 0 | 0 | 0 | 0 | 0 | 97.76 | 99.58 | ||
LFI | 42 | 0 | 938 | 0 | 0 | 0 | 0 | 95.71 | 99.15 | ||
SFE | 0 | 0 | 0 | 980 | 0 | 0 | 0 | 100 | 99.69 | ||
LFE | 4 | 0 | 0 | 0 | 976 | 0 | 0 | 99.59 | 99.80 | ||
SFIE | 0 | 0 | 0 | 0 | 0 | 980 | 0 | 100 | 99.49 | ||
LFIE | 0 | 0 | 0 | 0 | 0 | 0 | 980 | 100 | 99.80 | ||
Overall Performance | 98.66 | 98.66 | 98.70 |
Predicted Class | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
NVC | SFI | LFI | SFE | LFE | SFIE | LFIE | AC (%) | PR (%) | SE (%) | ||
Actual Class | NVC | 940 | 5 | 11 | 5 | 3 | 7 | 9 | 95.92 | 87.52 | |
SFI | 28 | 952 | 0 | 0 | 0 | 0 | 0 | 97.14 | 94.48 | ||
LFI | 52 | 0 | 928 | 0 | 0 | 0 | 0 | 94.70 | 98.83 | ||
SFE | 12 | 0 | 0 | 968 | 0 | 0 | 0 | 98.78 | 99.49 | ||
LFE | 10 | 0 | 0 | 0 | 970 | 0 | 0 | 98.98 | 99.69 | ||
SFIE | 17 | 0 | 0 | 0 | 0 | 963 | 0 | 98.27 | 99.28 | ||
LFIE | 15 | 0 | 0 | 0 | 0 | 0 | 965 | 98.47 | 99.08 | ||
Overall Performance | 97.46 | 97.47 | 96.91 |
Number of Training/Testing Samples | Average Accuracy (%) | Average Precision (%) | Average Sensitivity (%) | Average Calculation Time (s) |
---|---|---|---|---|
60/1040 | 95.71 | 93.18 | 96.12 | 52.32 |
120/980 | 98.54 | 97.50 | 98.50 | 55.30 |
180/920 | 98.86 | 97.66 | 98.17 | 65.15 |
240/860 | 99.72 | 98.80 | 98.35 | 80.38 |
300/800 | 99.70 | 99.15 | 98.30 | 100.86 |
Methods | Average Accuracy (%) | Average Precision (%) | Average Sensitivity (%) | Average Calculation Time (s) |
---|---|---|---|---|
The proposed method | 98.54 | 97.50 | 98.50 | 55.30 |
VMVK | 94.31 | 92.15 | 93.08 | 50.15 |
SMVK | 85.27 | 86.56 | 83.25 | 40.76 |
SVMK | 93.50 | 91.31 | 89.95 | 80.20 |
SVMS | 58.72 | 60.30 | 59.22 | 42.38 |
Deep autoencoder | 89.11 | 91.20 | 90.15 | 70.86 |
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Zhao, H.; Zhang, J.; Jiang, Z.; Wei, D.; Zhang, X.; Mao, Z. A New Fault Diagnosis Method for a Diesel Engine Based on an Optimized Vibration Mel Frequency under Multiple Operation Conditions. Sensors 2019, 19, 2590. https://doi.org/10.3390/s19112590
Zhao H, Zhang J, Jiang Z, Wei D, Zhang X, Mao Z. A New Fault Diagnosis Method for a Diesel Engine Based on an Optimized Vibration Mel Frequency under Multiple Operation Conditions. Sensors. 2019; 19(11):2590. https://doi.org/10.3390/s19112590
Chicago/Turabian StyleZhao, Haipeng, Jinjie Zhang, Zhinong Jiang, Donghai Wei, Xudong Zhang, and Zhiwei Mao. 2019. "A New Fault Diagnosis Method for a Diesel Engine Based on an Optimized Vibration Mel Frequency under Multiple Operation Conditions" Sensors 19, no. 11: 2590. https://doi.org/10.3390/s19112590
APA StyleZhao, H., Zhang, J., Jiang, Z., Wei, D., Zhang, X., & Mao, Z. (2019). A New Fault Diagnosis Method for a Diesel Engine Based on an Optimized Vibration Mel Frequency under Multiple Operation Conditions. Sensors, 19(11), 2590. https://doi.org/10.3390/s19112590