Intelligent Fault Diagnosis of Rolling Element Bearings Based on Modified AlexNet †
Abstract
:1. Introduction
2. Proposed Methods and Materials
2.1. Data Pre-Processing
2.1.1. Wavelet Transform
2.1.2. Vibration Image Construction
2.2. Feature Selection
2.2.1. Best Pre-Trained Model Selection
2.2.2. Modified AlexNet Model
- Pcf = number of parameters;
- Wcf = The number of weights in an FC layer that is linked to a conv layer;
- Bcf = The number of biases in an FC layer that is linked to a conv layer;
- O = The size of the previous conv layer’s output image;
- N = The number of kernels in the last conv layer;
- F = The number of neurons in the FC layer.
- number of parameters;
- The number of weights in an FC layer that is linked to an FC layer;
- The number of biases in an FC layer that is linked to an FC layer;
- F = The number of neurons in the FC layer;
- The number of neurons in the just before FC layer.
2.2.3. Best Classifier Selection for Bearing Faults
3. Experimental Verification Based on Vibration Signals
3.1. Testbed Description
3.2. Experimental Outcome
3.2.1. The Proposed System’s Performance
3.2.2. Evaluation Measurements of the Proposed System
3.2.3. Evaluation in a Noisy Situation
3.2.4. Performance Evaluation with Various Loads
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Pre-Trained Model | Accuracy (%) | Average | ||||
---|---|---|---|---|---|---|
Trial 1 | Trial 2 | Trial 3 | Trial 4 | Trial 5 | ||
GoogleNet | 95.30 | 94.98 | 94.65 | 95.60 | 95.80 | 95.27 |
VGG16 | 87.50 | 87.98 | 88.50 | 87.30 | 88.50 | 87.96 |
AlexNet | 97.50 | 97.30 | 98.10 | 96.88 | 97.78 | 97.51 |
ResNet50 | 96.98 | 97.35 | 96.38 | 95.88 | 96.78 | 96.67 |
Layer Name | Size | Parameters |
---|---|---|
conv1 | 55 × 55 × 96 | 34,944 |
conv2 | 27 × 27 × 256 | 614,656 |
conv3 | 13 × 13 × 384 | 885,120 |
conv4 | 13 × 13 × 384 | 1,327,488 |
conv5 | 13 × 13 × 256 | 884,992 |
fc6 | 4096 × 1 | 37,752,832 |
fc7 | 4096 × 1 | 16,781,312 |
fc8 | 1000 × 1 | 4,097,000 |
Total number of parameters | 62,378,344 |
Name | Type | Activations | Learnable |
---|---|---|---|
Data 227 × 227 × 1 images | Image input | 227 × 227 × 1 | - |
conv1 | Convolution | 55 × 55 × 96 | Weights 11 × 11 × 1 × 96; Bias 1 × 1 × 96 |
batchnorm-1 | Batch Normalization | 55 × 55 × 96 | offset 1 × 1 × 96 scale 1 × 1 × 96 |
Relu-1 | ReLu | 55 × 55 × 96 | - |
Pool-1 | Max Pooling | 27 × 27 × 96 | - |
conv2 | Convolution | 27 × 27 × 256 | Weights 5 × 5 × 48 × 128; Bias 1 × 1 × 128 × 2 |
batchnorm-2 | Batch Normalization | 27 × 27 × 256 | offset 1 × 1 × 256 scale 1 × 1 × 256 |
Relu-2 | ReLu | 27 × 27 × 256 | - |
Pool-2 | Max Pooling | 13 × 13 × 96 | - |
conv3 | Convolution | 13 × 13 × 384 | Weights 3 × 3 × 256 × 384; Bias 1 × 1 × 384 |
batchnorm-3 | Batch Normalization | 13 × 13 × 384 | offset 1 × 1 × 384 scale 1 × 1 × 384 |
Relu-3 | ReLu | 13 × 13 × 384 | - |
conv4 | Convolution | 13 × 13 × 384 | Weights 3 × 3 × 192 × 192; Bias 1 × 1 × 192 × 2 |
batchnorm-4 | Batch Normalization | 13 × 13 × 384 | offset 1 × 1 × 384 scale 1 × 1 × 384 |
Relu-4 | ReLu | 13 × 13 × 384 | - |
conv5 | Convolution | 13 × 13 × 256 | Weights 3 × 3 × 192 × 128 × 2; Bias 1 × 1 × 128 × 2 |
batchnorm-5 | Batch Normalization | 13 × 13 × 256 | offset 1 × 1 × 256 scale 1 × 1 × 256 |
Relu-5 | ReLu | 13 × 13 × 256 | - |
Pool-5 | Max Pooling | 6 × 6 × 256 | - |
drop 6 | Dropout | 6 × 6 × 256 | - |
Relu-6 | ReLu | 6 × 6 × 256 | - |
gapool | Global Average Pooling | 1 × 1 × 256 | - |
Prob Softmax | Softmax | 1 × 1 × 4 | - |
Layer Name | Size | Parameters |
---|---|---|
conv1 | 55 × 55 × 96 | 34,944 |
Batchnorm-1 | 55 × 55 × 96 | 384 |
conv2 | 27 × 27 × 256 | 614,656 |
Batchnorm-2 | 27 × 27 × 256 | 1024 |
conv3 | 13 × 13 × 384 | 885,120 |
Batchnorm-3 | 13 × 13 × 384 | 1536 |
conv4 | 13 × 13 × 384 | 1,327,488 |
Batchnorm-4 | 13 × 13 × 384 | 1536 |
conv5 | 13 × 13 × 256 | 884,992 |
Batchnorm-5 | 13 × 13 × 256 | 1024 |
Total number of parameters | 3,752,704 |
AlexNet | Using Fully Connection Layer (FC) | Using Global Average Pooling (GAP) | ||
---|---|---|---|---|
Training Accuracy (%) | Testing Accuracy (%) | Training Accuracy (%) | Testing Accuracy (%) | |
Trial 1 | 97.50 | 94.40 | 95.80 | 95.20 |
Trial 2 | 97.30 | 94.30 | 95.50 | 95.10 |
Trial 3 | 98.10 | 95.20 | 96.60 | 96.00 |
Trial 4 | 96.88 | 94.00 | 95.20 | 94.85 |
Trial 5 | 97.78 | 94.50 | 96.20 | 95.95 |
Method | Training Accuracy (%) | Testing Accuracy (%) | Training Time(s) | Testing Time (s) |
---|---|---|---|---|
AlexNet | 97.50 | 94.40 | 148.92 | 0.295 |
Modified AlexNet | 98.74 | 98.30 | 112.48 | 0.157 |
Model | TP | FP | FN | Precision Rate | Recall Rate | F1-Measure |
---|---|---|---|---|---|---|
Modified AlexNet-SVM | 185 | 2 | 0 | 98.93% | 100% | 99.46% |
Modified AlexNet-Softmax | 183 | 3 | 1 | 96.51% | 98.81% | 98.92% |
Modified AlexNet-kNN | 186 | 3 | 0 | 98.41% | 100% | 99.20% |
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Mohiuddin, M.; Islam, M.S.; Islam, S.; Miah, M.S.; Niu, M.-B. Intelligent Fault Diagnosis of Rolling Element Bearings Based on Modified AlexNet. Sensors 2023, 23, 7764. https://doi.org/10.3390/s23187764
Mohiuddin M, Islam MS, Islam S, Miah MS, Niu M-B. Intelligent Fault Diagnosis of Rolling Element Bearings Based on Modified AlexNet. Sensors. 2023; 23(18):7764. https://doi.org/10.3390/s23187764
Chicago/Turabian StyleMohiuddin, Mohammad, Md. Saiful Islam, Shirajul Islam, Md. Sipon Miah, and Ming-Bo Niu. 2023. "Intelligent Fault Diagnosis of Rolling Element Bearings Based on Modified AlexNet" Sensors 23, no. 18: 7764. https://doi.org/10.3390/s23187764