Error Correction Method of Laser Detection for Involute Spur Gear

1. Introduction

In modern manufacturing, the precision of spur gear directly impacts the performance and longevity of mechanical systems. Traditional contact-based measurement methods, such as coordinate measuring machines (CMMs), face limitations in efficiency, universality, and potential surface damage. To address these challenges, this study explores a non-contact laser displacement sensing technique tailored for involute spur gear profile inspection. By leveraging laser triangulation, we achieve rapid, wear-free measurements while establishing an error correction model to enhance accuracy.


2. Laser Measurement Principle

2.1 Laser Triangulation in Gear Inspection

Laser triangulation operates by projecting a laser beam onto the spur gear surface and capturing the reflected light via a CCD sensor. The displacement of the reflected spot correlates with the gear’s surface geometry, enabling non-contact measurement of tooth profiles. Key advantages include:

  • High resolution: Sub-micron accuracy for detecting minute deviations.
  • Speed: Real-time data acquisition reduces inspection time.
  • Versatility: Suitable for materials prone to wear or contamination.

The relationship between displacement (dd) and sensor output is expressed as:d=Δx⋅sin⁡(θ)sin⁡(α−θ)d=sin(αθx⋅sin(θ)​

where ΔxΔx is the CCD pixel shift, θθ is the laser incidence angle, and αα is the detector angle.


3. Experimental Setup and Methodology

3.1 Equipment Configuration

The experiment utilized a HJY054 four-axis measurement center equipped with a Keyence LK-H050 laser displacement sensor. Key specifications are summarized below:

ParameterValue
Measurement Range±10 mm
Linearity Error±0.02% F.S.
Repeatability0.025 μm
Laser Wavelength650 nm (Red Semiconductor)

The setup included linear axes (X, Y, Z) and a rotary C-axis for 360° gear rotation. A Renishaw grating system ensured positional accuracy of 1 μm (linear) and 0.001° (rotary).

3.2 Data Acquisition Protocol

  1. Sensor Calibration: Align the laser beam perpendicular to the spur gear surface.
  2. Variable Control: Adjust incidence angles (−45° to 45°) and depths (−10 mm to 10 mm).
  3. Error Mapping: Record sensor outputs at 1 mm intervals and compare with reference values from a laser interferometer.

4. Error Source Analysis

Laser-based measurements of spur gear is influenced by:

  1. Incidence Angle: Larger angles amplify nonlinear errors due to geometric distortion.
  2. Surface Inclination: Tilted surfaces cause light scattering, reducing signal clarity.
  3. Environmental Noise: Temperature fluctuations (±0.01% F.S./°C) and vibrations affect stability.

4.1 Quantifying Angle-Dependent Errors

Experimental data revealed a direct correlation between incidence angle (θθ) and measurement error (EE):

Incidence Angle (°)Error (μm)
100.05
200.12
300.25
400.45

5. Error Correction Model

5.1 Mathematical Formulation

A polynomial regression model was developed to compensate for systematic errors:Ec=k1θ+k2θ2+k3d+k4d2Ec​=k1​θ+k2​θ2+k3​d+k4​d2

where EcEc​ is the corrected error, and k1k1​-k4k4​ are coefficients derived from experimental data.

5.2 Database Integration

An error compensation database was created to store pre-calibrated correction values for specific combinations of θθ and dd. During measurement, real-time adjustments are applied using lookup tables.


6. Experimental Results and Validation

6.1 Pre- vs. Post-Correction Accuracy

The error correction model significantly improved measurement precision for spur gear:

ParameterBefore Correction (μm)After Correction (μm)
Profile Error (FaFa​)13.08.9
Pitch Error (FpFp​)27.319.6

6.2 Compliance with Standards

Post-correction results met GB/T10095.1-2008 tolerances for Grade 6 spur gear, validating the method’s industrial applicability.


7. Conclusion

This study demonstrates that laser-based non-contact inspection, combined with an adaptive error correction model, enhances the accuracy and efficiency of spur gear quality control. Future research will focus on:

  • Integrating machine learning for dynamic error prediction.
  • Expanding the database for diverse gear geometries.
  • Optimizing sensor placement for complex tooth profiles.
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