Fault Diagnosis of Spiral Bevel Gear Based on Local Bispectrum and Convolutional Neural Network

Spiral bevel gears are critical components in heavy-duty machinery due to their high load-bearing capacity and stable transmission ratio. However, their complex vibration signals under harsh working conditions make fault diagnosis challenging. This paper proposes a novel method combining local bispectrum analysis and convolutional neural networks (CNN) to address these challenges effectively.

1. Theoretical Framework

1.1 Convolutional Neural Network (CNN)

A typical CNN architecture includes convolutional layers, pooling layers, and fully connected layers. The forward propagation process is defined as:

$$ a^l_j = \sigma\left(\sum_{i \in M_j} a^{l-1}_i \times \omega^l_{ij} + b^l_j\right) $$

where \(a^l_j\) is the output of the \(j\)-th neuron in layer \(l\), \(\omega^l_{ij}\) represents weights, and \(b^l_j\) denotes biases. The Softmax classifier in the final layer is expressed as:

$$ h(x) = f(b_0 + w_0 x) $$

1.2 Bispectrum Analysis

For a zero-mean stationary signal \(\{x(n)\}\), the bispectrum is derived from the third-order cumulant:

$$ B(\omega_1, \omega_2) = X(\omega_1)X(\omega_2)X^*(\omega_1 + \omega_2) $$

where \(X(\omega)\) is the Fourier transform of \(x(n)\). The local bispectrum retains only the non-redundant upper-left quadrant (Figure 1), reducing computational complexity while preserving critical fault features.

Spiral bevel gear structure

2. Methodology

The proposed diagnostic framework involves:

  1. Vibration signal acquisition from spiral bevel gears
  2. Data segmentation into 1024-sample fragments
  3. Local bispectrum computation and image cropping (128×128 pixels)
  4. CNN model training and validation
CNN Architecture Configuration
Layer Type Feature Maps Kernel Size Stride
Input 1
Conv1 8 3×3 1×1
Pool1 8 2×2 2×2
Conv2 16 3×3 1×1
Pool2 16 2×2 2×2
Conv3 32 3×3 1×1
Fully Connected 4

3. Experimental Validation

A spiral bevel gear test rig was used to collect vibration data under four conditions: healthy, 1/3 tooth fracture, 2/3 tooth fracture, and root crack. Key parameters include:

$$ \text{Sampling frequency: } 8192\ \text{Hz} $$
$$ \text{Rotational speed: } 1200\ \text{r/min} $$

The confusion matrix for fault identification demonstrates superior performance:

Diagnostic Accuracy Comparison
Method Accuracy (%) Training Time (s)
Local Bispectrum + CNN 99.56 15
Full Bispectrum + CNN 99.53 78
Raw Signal + CNN 92.65 18
Local Bispectrum + SVM 98.03 2763
Local Bispectrum + BP 88.91 631

4. Conclusion

The proposed method achieves 99.56% diagnostic accuracy for spiral bevel gears with significantly reduced computational load. Key advantages include:

  1. Local bispectrum reduces data redundancy by 75% compared to full bispectrum
  2. CNN automatically extracts hierarchical features from vibration patterns
  3. Superior noise immunity through higher-order statistical analysis

This approach provides an effective solution for condition monitoring of spiral bevel gears in industrial applications, particularly in aerospace and heavy machinery sectors where reliability is paramount.

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