Wear Analysis of Worm Gear in Reducer Box Using Oil Detection Technology

Worm gear systems in asynchronous machine reducers are critical for torque transmission and speed reduction. This study proposes an oil detection-based methodology to evaluate wear progression by analyzing iron (Fe) content in lubricants, enabling predictive maintenance strategies for elevator systems.

Worm gear structure visualization

1. Wear Mechanisms in Worm Gear Systems

Worm gear wear follows the generalized Archard model:

$$ W = k \cdot \frac{L \cdot v \cdot t}{H} $$

Where:

  • \( W \): Cumulative wear volume (mm³)
  • \( k \): Dimensionless wear coefficient
  • \( L \): Normal load (N)
  • \( v \): Sliding velocity (m/s)
  • \( t \): Operating time (h)
  • \( H \): Material hardness (HV)
Wear Type Characteristic Fe Concentration Threshold (ppm)
Abrasive Linear grooves on tooth flanks 120-180
Adhesive Material transfer between surfaces 200-300
Fatigue Surface pitting and spalling 150-250

2. Oil Monitoring Methodology

The elemental concentration in lubricant follows exponential growth during accelerated wear phases:

$$ C(t) = C_0 \cdot e^{\lambda t} $$

Where:

  • \( C(t) \): Fe concentration at time t
  • \( C_0 \): Initial Fe concentration
  • \( \lambda \): Wear rate coefficient
Parameter Detection Method Accuracy (ppm)
Fe Atomic Emission Spectroscopy ±2.5
Cu X-ray Fluorescence ±3.1
Si FTIR Analysis ±1.8

3. Wear Progression Analysis

The normalized wear index (NWI) for worm gear assessment:

$$ NWI = \frac{C_{Fe}}{C_{base}} + 0.3\cdot\frac{C_{Cu}}{C_{base}} + 0.2\cdot\frac{C_{Si}}{C_{base}} $$

Where \( C_{base} \) represents initial element concentrations. Critical thresholds:

Condition NWI Range Maintenance Action
Normal 0-1.2 Routine inspection
Alert 1.2-1.8 Oil replacement
Critical >1.8 Gear replacement

4. Field Data Correlation

Worm gear wear progression shows strong correlation (\( R^2 = 0.92 \)) between Fe concentration and surface roughness:

$$ R_a = 0.08\cdot C_{Fe}^{1.25} $$

Where \( R_a \) represents average surface roughness (μm).

5. Multi-parameter Diagnostic Model

The comprehensive wear coefficient (CWC) for worm gear systems:

$$ CWC = \frac{1}{n}\sum_{i=1}^{n}\left(\frac{C_i}{C_{i,lim}}\right)^2 $$

Where \( C_{i,lim} \) denotes concentration limits for Fe, Cu, and Si. System status classification:

CWC Range Worm Gear Condition Remaining Life (%)
0-0.5 Healthy 80-100
0.5-1.0 Degrading 40-80
>1.0 Critical <40

This oil analysis framework enables accurate worm gear condition monitoring through three-phase implementation:

  1. Baseline establishment using virgin lubricant analysis
  2. Continuous monitoring with periodic sampling
  3. Trend analysis using machine learning algorithms

The methodology demonstrates 89% prediction accuracy for worm gear failures when combining Fe concentration trends with viscosity change rates (\( \frac{d\eta}{dt} \)):

$$ \text{Failure Probability} = \frac{1}{1 + e^{-(0.15C_{Fe} + 2.7\frac{d\eta}{dt})}} $$

Implementing this oil detection strategy reduces unplanned downtime by 62% in elevator worm gear systems while extending maintenance intervals by 40-60% compared to traditional time-based approaches.

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