At present, the mainstream rolling stock in the world generally adopts a helical gear drive system, and scholars at home and abroad have conducted extensive research on its dynamic performance and noise prediction. Chen et al. used a dynamic model of locomotive-track coupling, considered the dynamic action of gearing, analyzed the power transmission path under traction or braking conditions, verified the accuracy of the model, and revealed the effects of gearing and track geometric irregularities on locomotive vibration and dynamic meshing forces [
2]. Jiang et al. modeled the dynamic coupling effects of a heavy-duty electric locomotive to study the vibration characteristics of tooth root crack faults and analyzed them using time-frequency analysis and the angular simultaneous averaging method. The results showed that the longitudinal vibration acceleration and dynamic meshing force can reflect the fault characteristics, and the processed vibration signals can effectively reflect the dynamic characteristics of the crack expansion in the locomotive system [
3]. Wang analyzed the coupled torsional vibration response of a gear train in a vehicle-track vibration environment and investigated the effects of time-varying stiffness, nonlinear damping, wheel deformation, and wheel-track interaction on the system. The results indicate that the traction torque and gear eccentricity during vehicle acceleration significantly affect vibration amplitude and frequency [
4]. Zhao et al. developed a three-dimensional time-domain modeling method using an explicit finite element method to simulate the transient meshing contact and wear processes of a gear pair, considering the effects of actual geometry, time-varying torque, and structural vibration on the contact state. The results show that the profiles of structural vibration and wear have a strong influence on dynamic engagement contact [
5]. Yang et al. qualitatively analyzed the evolution of the dynamic response, excitation frequency, periodic motion, quasi-periodic motion, and chaotic motion of a helical gear system with six degrees of freedom by developing a dynamical model with wear fault parameters using a numerical integration method. Their results showed that wear faults affected the system differently at different frequencies [
6]. Wang proposed a gearing system model that considers time-varying meshing stiffness, nonlinear tooth gap, transmission error, time-varying external excitation, and orbital irregularity and performed a quasi-static analysis to observe its nonlinear behavior. The results indicated that quasi-static analysis is applicable to the analysis of the nonlinear behavior of time-varying stochastic systems [
7]. Sun Gang established a rigid-flexible coupled system dynamics model for a type of high-speed EMU to study the dynamic performance of the system under various operating conditions and its dynamic interactions with the main components of the vehicle system [
8]. Tang established a parametric gear modification model by theoretically analyzing, numerically simulating, and designing optimization algorithm methods, and analyzed the traction gear transmission system of a high-speed EMU to study its dynamic characteristics, vibration response, and acoustic response [
9]. Zhang et al. analyzed the dynamic performance of gear transmission under the excitation of irregular track geometry based on the gear transmission-locomotive-track coupling dynamics model and found that the gearbox suspension parameters have a significant influence on the transmission performance, which provides a reference for the optimal design of the suspension parameters of locomotive gear transmission [
10]. Zhu et al. studied the dynamic evaluation indices of high-speed train traction gearboxes at different measurement points, including acceleration, vibration intensity, and air noise, by establishing a dynamic model of a high-speed train gear train system and conducting spectrum analysis and experiments, which provided an important basis for system optimization design and fault diagnosis [
11]. Liu et al. proposed a combined finite element/boundary element model based on the modal acoustic transfer vector (MATV) method to predict the radiated noise of a gearbox and analyzed the modal acoustic contribution and acoustic transfer vector to determine the maximum field point [
12]. Ren et al. proposed a method based on the impedance model and noise transfer function for fast prediction of the radiated noise characteristics of gearboxes under different operating conditions. The effects of different excitation components and noise transfer functions on the noise were analyzed using the gear-box-foundation coupled impedance model and vibro-acoustic coupled boundary element model. Their results showed that high-speed bearings were the main source of radiated noise [
13]. Tengjiao et al. used numerical simulation to calculate the vibration response of a dynamic finite element model consisting of a gear-rotor-bearing-case coupling, and then used the vibration displacement results of the gearbox surface nodes as acoustic boundary conditions to establish an acoustic boundary model of the gearbox. Vibration and radiated noise analyses of the gear system were performed, and the calculated results agreed well with the experimentally tested data [
14]. Han et al. developed a dynamic model of a gear rotor bearing system to determine the effect of meshing excitation on the gearbox vibration and noise, and an acoustic boundary element method was used to predict the gearbox noise distribution [
15]. Gunasegaran used a higher-order spectral analysis technique to obtain acoustic data from vibration and airborne sound signals from a gearbox using a bispectral analysis [
16]. Recently, experts have also utilized digital twin technology to achieve good results in emerging areas such as dynamics in various industrial contexts. They have employed adversarial graph networks in the field of bearing troubleshooting and introduced vibration-based wear prediction enhancements for spur gears. Feng K et al. [
17,
18] introduced adversarial graph networks (DT-DAGN) to address the problem of rolling bearing fault diagnosis in the digital twin domain. In addition, they can accurately predict the expected life by monitoring and evaluating the gear surface degradation, which in turn can be applied to real gearbox wear assessment.
Complex tooth surface gears can provide a higher transmission efficiency and greater load capacity to adapt to harsh environmental conditions at higher speeds and loads. Scholars at home and abroad have begun to conduct research on dynamic performance and noise prediction for complex gear systems such as spiral bevel gears, herringbone gears, and bevel gears. A spiral bevel gear with a high-order tooth surface was proposed by Mu et al., who found through simulation analysis that, compared to a conventional high-contact-ratio spiral bevel gear, this gear can effectively reduce the LTE, MI, and dynamic load factor, but also enhance its dynamic performance at all speeds [
19]. Yuan et al. developed a wide-face, double-helical gear vice model with modified tooth surfaces by combining compensating tooth surface modification with multi-objective optimization modification, which can improve the load distribution and reduce the fluctuation of the vibration excitation force [
20]. A multitooth loaded contact analysis model was developed by Li et al. to determine the meshing force and contact pressure distribution of a spiral bevel gear set using conjugate gradients and fast Fourier transforms, and the transmission performance was evaluated iteratively [
21]. Chen proposed a dynamic model of a spiral bevel gear drive based on ERSFDs with a new mathematical model of ERSFDs and an oil film pressure calculation method, which has a better control performance of nonlinear characteristics in the speed range and can be extended to all rotating machines [
22]. By optimizing the meshing characteristics of a herringbone gear pair, Li et al. found that the vibration noise of complex tooth surface gear systems could be reduced, the jumping phenomenon eliminated, and the system motion became more regular [
23]. Zou et al. proposed an improved herringbone gear pair with a more uniform load distribution between the teeth and a better nonlinear dynamic performance [
24]. Using Hertzian contact theory, Zhijun et al. studied the contact strength of a circular tooth-traced cylindrical gear set and found that it has a high contact strength, and its transmission design can be improved by reducing the tooth trace radius and tooth width ratio and increasing the contact ratio [
25]. Syzrantseva et al. used finite element analysis to compare the stress-strain conditions of circular and straight teeth at different shaft misalignment angles. The results showed that circular gears have a smaller overall displacement (27% reduction) and higher bending strength and durability (18% increase), thus verifying their advantages for application in high-load transmissions [
26]. Syzrantseva et al. calculated the failure probability of curved gears by considering the bending endurance and using non-parametric statistical methods. The results showed that the use of curved gears can significantly reduce the probability of gear failure owing to tooth bending under heavy load conditions compared to cylindrical helical gears [
27].
Conventional gearing systems are widely used in high-speed EMU, while gearing systems with complex tooth surfaces are less frequently used. At present, high-speed EMU traction drives are used in the traditional helical gear transmission mode. Owing to the large additional axial force of the helical gear transmission system, after a long-term, high-load operation of the rolling stock, the gearbox bearings exhibit a more serious pitting and blackening phenomenon because of the high oil temperature, accompanied by gearbox seal failure, gear lubrication deterioration, gear noise increase, and service life reduction. The new involute arc cylindrical gear not only has the characteristics of good meshing performance, large overlap coefficient, and tooth contact strength, but also has the incomparable advantages of helical gears because its axial forces can cancel each other out, there is no additional axial force, and the tooth surface is arc-shaped and has better lubrication performance. Furthermore, existing gear noise prediction methods primarily rely on kinetic analyses, which speculate about the relationship between noise and kinetic parameters, yet they lack comprehensive acoustic validation. Based on the acousto-vibration coupling theory, the Finite element-boundary element method was used to analyze arc tooth cylindrical gear dynamics under continuous traction conditions and to predict the magnitude and location of the noise. The results prove that the gear design helps reduce vibration and noise, improves transmission efficiency and accuracy, and can be an ideal choice for a new generation of high-speed EMU.