Detection Method for Meshing Wear State of Spur Gear Based on Improved Spectral Residuals

1. Dynamic Modeling of Spur Gear Meshing System

The dynamic behavior of spur gears under meshing conditions is governed by nonlinear interactions between friction, stiffness, and damping. Considering the friction torque and backlash effects, the dynamic equations for a spur gear pair can be expressed as:

$$
\begin{cases}
I_p \ddot{\theta}_p = T_p – R_p \sum_{i=1}^{n_z} F_i – \sum_{i=1}^{n_z} \Lambda_i \rho_{pi} \mu_i F_i \\
I_g \ddot{\theta}_g = R_g \sum_{i=1}^{n_z} F_i + \sum_{i=1}^{n_z} \Lambda_i \rho_{gi} \mu_i F_i – T_g
\end{cases}
$$

Where:
$I_p, I_g$ = moments of inertia
$\theta_p, \theta_g$ = angular displacements
$R_p, R_g$ = base circle radii
$n_z$ = number of engaged teeth
$\mu_i$ = friction coefficient
$\Lambda_i$ = directional function

Parameter Description Unit
$T_p$ Input torque Nm
$T_g$ Output torque Nm
$k(t)$ Time-varying stiffness N/m
$c(t)$ Damping coefficient Ns/m

2. Improved Spectral Residual Method for Wear Detection

The proposed method enhances traditional edge detection through spectral residual analysis for spur gear wear assessment:

$$G(x,y) = \frac{1}{2\pi\delta^2}e^{-\frac{x^2+y^2}{2\delta^2}}$$

Gradient magnitude and direction calculation:

$$
\begin{cases}
M(i,j) = \sqrt{P_x(i,j)^2 + P_y(i,j)^2} \\
\theta(i,j) = \arctan\left(\frac{P_y(i,j)}{P_x(i,j)}\right)
\end{cases}
$$

Threshold Type Value Range Decision Rule
High ($T_h$) 0.6-0.8 Strong edge candidate
Low ($T_l$) 0.3-0.4 Potential edge candidate

3. Wear State Identification Algorithm

The normalized wear index $W$ for spur gears is calculated as:

$$W = \frac{\sum_{i=1}^N |S_{\text{ref}}(i) – S_{\text{test}}(i)|}{\sqrt{\sum_{i=1}^N S_{\text{ref}}^2(i)}}$$

Key parameters for wear classification:

Wear Level $W$ Range Maintenance Action
Normal 0-0.2 No action required
Mild 0.2-0.4 Schedule inspection
Severe >0.4 Immediate replacement

4. Experimental Validation

The proposed method demonstrates superior performance in spur gear wear detection:

$$
\begin{aligned}
\text{Detection Accuracy} &= 91.2\% \pm 2.3\% \\
\text{Processing Time} &= 18.7\text{ms/frame} \pm 1.2\text{ms}
\end{aligned}
$$

Method Accuracy (%) Time (ms)
Proposed 91.2 18.7
Wavelet Transform 83.5 32.4
Canny Edge 76.8 41.9

5. Industrial Applications

The developed method shows significant advantages in spur gear condition monitoring:

  • Real-time detection capability (≤20ms response)
  • Adaptive threshold adjustment for varying lubrication conditions
  • Robustness to surface contamination (up to 15% oil debris tolerance)

The wear progression model for spur gears under different loads:

$$
\frac{dW}{dt} = kP^{1.5}v^{0.8}
$$

Where:
$P$ = contact pressure (Pa)
$v$ = sliding velocity (m/s)
$k$ = material constant

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