Compared to traditional internal combustion engine vehicles, electric vehicle transmission systems operate under high-frequency, high-impact, and ultra-long-cycle dynamic loads. This operational environment significantly increases the risk of contact fatigue failure in transmission gears. To accurately calculate dynamic loads and predict service life for high-speed helical gears in electric vehicles, this study establishes a comprehensive methodology integrating motor dynamics, contact mechanics, and fatigue theory.
Electric Vehicle Transmission System Architecture
Electric vehicle powertrains typically employ fixed-ratio transmissions to maximize efficiency. The simplified architecture comprises:
$$T_L = \frac{\sum F \cdot r}{i_g i_0 \eta_T}$$
Where \(T_L\) = motor load torque, \(\sum F\) = total driving resistance (rolling + aerodynamic + gradient + acceleration), \(r\) = wheel radius, \(i_g\) = gear ratio, \(i_0\) = final drive ratio, and \(\eta_T\) = transmission efficiency. This equation links vehicle dynamics to transmission loading.

Permanent Magnet Synchronous Motor (PMSM) Modeling
The PMSM vector control model with \(i_d=0\) strategy provides precise torque dynamics essential for electric vehicle gear analysis:
$$u_d = R_s i_d + p\psi_d – \omega_e \psi_q$$
$$u_q = R_s i_q + p\psi_q + \omega_e \psi_d$$
$$T_e = \frac{3}{2} p_n \left[ \psi_f i_q + (L_d – L_q) i_d i_q \right]$$
Where \(T_e\) = electromagnetic torque, \(p_n\) = pole pairs, \(\psi_f\) = permanent magnet flux linkage, \(L_d/L_q\) = d/q-axis inductances. UDDS driving cycle simulations reveal high-frequency torque fluctuations critical for gear loading:
| Parameter | Value | Parameter | Value |
|---|---|---|---|
| Rated Voltage | 300 V | d-axis Inductance | 0.27 mH |
| Rated Power | 24 kW | q-axis Inductance | 0.67 mH |
| Max. Speed | 7,200 rpm | Stator Resistance | 0.013 Ω |
| Max. Torque | 118 N·m | Magnetic Flux | 0.101 Wb |
Gear Contact Stress Calculation
Dynamic motor torque outputs drive the contact stress analysis for high-speed helical gears using Hertzian theory. Critical contact stress occurs at the pitch point:
$$\sigma_H = \sqrt{\frac{2T(1/R_1 + 1/R_2)}{d_1 \pi B \cos\alpha_n \cos\beta \left[ (1-\nu_1^2)/E_1 + (1-\nu_2^2)/E_2 \right]}}$$
Where \(R_1 = r_{b1}\tan\alpha\), \(R_2 = r_{b2}\tan\alpha\), with curvature radii derived from base circle radii \(r_{b}\). This formulation captures stress concentrations in electric vehicle gear pairs.
| Parameter | Value | Parameter | Value |
|---|---|---|---|
| Base Circle Radii | 0.02/0.084 m | Normal Module | 2.25 mm |
| Normal Pressure Angle | 20° | Poisson’s Ratio | 0.3 |
| Helix Angle | 25° | Young’s Modulus | 206 GPa |
| Face Width | 27 mm | Transmission Ratio | 4.2 |
Load Spectrum Processing
The contact stress time history undergoes signal reconstruction to create continuous load sequences for individual gear teeth. Rainflow counting then extracts stress amplitude-mean relationships:
$$N(S) = k \cdot S^{-m}$$
Statistical analysis confirms:
- Stress amplitudes follow Weibull distribution
- Mean stresses follow Normal distribution (\(\mu\) = 508 MPa, \(\sigma\) = 82.3 MPa)
These distributions characterize the unique load spectrum for electric vehicle gear durability assessment.
Fatigue Life Prediction
Modified P-S-N curves (99% reliability) incorporate size (\(\varepsilon\) = 0.86), surface (\(\beta\) = 0.90), and loading (\(C_L\) = 0.85) factors:
$$S_0 = \sigma_0 \varepsilon \beta C_L / K_T$$
Goodman correction handles non-zero mean stresses:
$$N(S_e)^m = N\left( \frac{S_{ae}}{S_b – S_{me}} S_b \right)^m = C$$
Miner’s rule quantifies cumulative damage per UDDS cycle (\(D\) = 3.22×10⁻⁵):
$$D = \sum_{i=1}^{k} \frac{n_i}{N_i} = 1 \Rightarrow T = 1/D$$
Result: Predicted contact fatigue life = 31,000 UDDS cycles ≈ 370,000 km for the electric vehicle gear pair.
Conclusion
This methodology integrates motor dynamics, contact mechanics, and fatigue theory to predict electric vehicle gear life under real-world loading. Key findings:
- Motor torque dynamics induce high-frequency stress variations in electric vehicle gears
- Reconstructed load spectra enable accurate rainflow counting for helical gears
- Modified P-S-N curves with Goodman correction capture electric vehicle gear reliability requirements
- Validation shows 3% error between simulated and measured motor torques
The framework provides critical insights for designing durable electric vehicle transmissions, particularly regarding high-speed gear durability under electromagnetic torque excitations.
