2.2. Four-Wheeled Road Excitation Model
Typically, road roughness is defined as the variation in height of the road surface with respect to a reference plane along the road’s length. It exhibits characteristics such as randomness, stability, ergodicity, and a zero mean value. This roughness is often modeled as a random process following a Gaussian probability distribution. In spectral analysis, the power spectrum with statistical characteristics is commonly employed. Currently, there are two methods for assessing road surface roughness. The first involves utilizing specialized instruments and continuous measurements to acquire the power spectral density of the road surface. However, this approach is labor-intensive and time-consuming. The second method relies on pre-existing power spectral density data of road surface roughness, which are commonly employed to simulate road surface unevenness.
According to ISO 8608 [
28], the road surface power spectral density is fitted with the following formula:
where
is unevenness index, which is classified into eight levels, from A to H;
W is waviness;
n is the spatial frequency, indicating the number of wavelengths contained in each meter of length;
n0 is the reference spatial frequency with a value of 0.1. Waviness
W = 2 denotes the case when the change in the road vertical displacement per unit distance travelled is the frequency index, which indicates the frequency structure of the road surface power spectral density.
While the frequency index
W = 2, the velocity power spectrum can be expressed as:
Equation (2) eliminates the spatial frequency; then, the speed power spectral density is only related to the road roughness coefficient but has nothing to do with frequency, which is the same as the white noise power spectrum characteristic. Therefore, the space velocity power spectrum can be simulated with white noise, or the displacement power spectrum can be simulated with integrated white noise, which is also the method used in this paper to construct the road roughness model.
The relationship between time frequency
f, space frequency
, and vehicle speed
is as follows:
and, then, the relationship between time frequency bandwidth and corresponding space frequency bandwidth is:
and if the power spectral density is the “power” (mean square value) in the unit frequency band, then the spatial power spectral density is:
is the power contained in the frequency band a of the road surface power spectral density. No matter how the speed changes, the power is always the same.
So, the time power spectrum and velocity power spectrum can be expressed as:
According to the random vibration theory, the road surface roughness model based on the filtered white noise method can be derived as follows:
where
is the displacement power spectrum of road surface roughness;
is the power spectrum of white noise;
= 1.
The ring space frequency corresponding to the cutoff frequency
is
. Since the road surface spectrum is approximately horizontal in the low frequency range, the cutoff frequency
can be introduced into the model:
Then, the frequency–response function is as follows:
Finally, the road surface roughness model is obtained, which can be expressed as:
where
denotes the white noise signal with a unilateral power spectral density of 1.
In order to verify the correctness of the model, the power spectrum of the generated road excitation curve of class A is compared with the power spectrum in the ISO standard. In the generated road excitation curve, the vehicle speed is 10 m/s, and the simulation time is 165 s, as shown in
Figure 2.
In
Figure 2 and
Table 1, the spectral density of the road random excitation generated through the simulation is basically consistent with the spectral density in the ISO 2631 standard [
14], and the corresponding root mean square value is close. Thus, the road random excitation model obtained via simulation is reliable. In order to ensure that the time domain signal is not distorted, the sampling frequency should not be less than twice the maximum frequency of the road spectrum. The maximum spatial frequency of the standard spectrum is 10 m
−1, so the maximum spatial frequency of the simulated road spectrum is 5 m
−1.
To emulate genuine driving scenarios on the road and account for the spatiotemporal correlation amongst all four wheels, having previously established the single-wheel road random excitation model, it becomes essential to formulate a quad-wheel road random excitation model.
where
and
represent the cross-spectrum between the left and right wheel tracks of the vehicle’s front axle;
is the square root of the coherence function between the left and right wheel tracks. Equation (17) is predicated on the assumptions that the auto-power spectra of the car’s left and right wheel tracks are identical, the phase difference is zero, and the statistical properties are consistent.
The transfer function between the left and right wheel road surface white noise excitation inputs can be expressed as follows:
where
and
denote the left and right wheel road excitation inputs.
As for the coherence function
, it is the result of processing the driving signal collected by the CA141 vehicle on a certain asphalt road on the MTS road simulator of the Changchun Research Institute. The fitting expression of the coherence function is:
Using optimization theory to solve the coefficients of the numerator and denominator of the transfer function, then Equation (18) can be simplified as follows:
Then, the state equation and output equation of left and right wheel road excitation can be obtained through the Laplace transform and inverse transform.
Next, it is time to consider the correlation between front and rear wheel road excitation. The paper assumes that if the front and rear wheelbases of the vehicle are equal, and the vehicle is moving in a straight line at a constant speed, then the rear wheel input is the lag of the front wheel input for a period of time A, and then the road surface excitation of the front and rear wheels has the following relationship:
where
and
is the input of front and rear wheel road excitation,
,
L is the wheelbase, and
is the speed of vehicle.
For pure time delay systems, we can use the Pade algorithm to approximate the calculation:
The term
N in Equation (25) is the order of the Pade algorithm; in this paper,
N = 2 and
P = 1/12.
Drawing parallels to Equation (23), we obtain the state and output equations representing the correlation between the vehicle’s front and rear wheel tracks as follows:
According to Equations (16), (23), and (27), the road surface excitation of the right front wheel, left front wheel, and right rear wheel can be calculated; then, the excitation of the left rear wheel can be expressed as follows:
At this point, the four-wheel road excitation model has been established, taking a sedan car as an example, on a class A road with a speed of 36 km/h. The simulated four-wheel random road excitation curve is shown in
Figure 3:
This paper only considers the comfort of drivers and passengers when a single vehicle passes a long-span bridge under VIV, so this study ignores the interactions between the vehicle and the bridge.
2.3. Input Model of Wheel Excitation under Vortex Vibration of Main Beam
During the early exploration of vortex-induced vibration, researchers noticed that the observed vibrational behavior closely resembled that of simple harmonic motion. Consequently, they postulated that the forces exerted by vortex-induced phenomena on the structure exhibited characteristics akin to simple harmonic forces [
29]. Therefore, for the purpose of this study, simple harmonic vibration will be employed to simulate the vibrational response at any given point along the bridge. Compared with the assumption of simple harmonic vibration, there are some enhanced methods [
30] to calculate the VIV response with improved accuracy, including Scanlan’s model, the polynomial model, the describing function-based model, Larsen’s model and a newly developed aerodynamic envelope model. While these methods can enhance VIV amplitude calculation accuracy, they also decrease efficiency.
Simultaneously, this study assumes constant amplitude vortex vibration to investigate how frequency, amplitude, and other factors of vortex-induced vibration affect driving comfort. For constant amplitude and stable vortex-induced vibrations, aerodynamic forces exhibit harmonic stability. Therefore, simplifying constant amplitude vortex-induced vibrations into harmonic vibrations is feasible. This forms the basis for simplifying vortex-induced vibration as simple harmonic vibration in this article.
where
is the amplitude of vortex-induced vibration,
is the frequency of vortex vibration, and
is the phase angle.
The vehicle travels in a straight-line motion at a constant speed along the centerline of the bridge, so the influence of torsional vortex-induced vibrations is minimal. In addition, based on the on-site monitoring data we measured, among the vortex-induced vibration events that have occurred, vertical bending vortex-induced vibrations are predominant, with very few instances of torsional vortex-induced vibrations. Therefore, the primary focus is on vertical bending vortex-induced vibrations, while neglecting torsional vortex-induced vibrations. When the vertical bending vortex-induced vibration with frequency A occurs on the main girder, the corresponding unit mode is S, and the vibration state at position
at time
t on the bridge is:
In this study, if the vehicle moves in a straight line at a uniform speed, then the wheel excitation input is:
Through utilizing Equation (31) as the input for the vortex vibration excitation of the front wheel of the vehicle, we can determine the input for the vortex vibration excitation of the rear wheel as follows:
The bridge model’s effect on the vehicle is transmitted through the simplified mass–spring–damper model representing the vehicle’s wheels in this study. Consequently, this can be translated into inputs associated with wheel displacement and velocity excitations. We simplify the vortex-induced vibrations on the bridge as Equation (30). The bridge’s impact on the vehicle is described by Equations (31) and (32). Furthermore, in the presence of constant amplitude and stable vortex-induced vibrations, the vortex causes little change the vibration characteristics of the bridge, including frequency and amplitude. The vortex’s impact on the bridge is minimal; therefore, this study has neglected the effect of vortices.
Taking a certain bridge in China as a case study, we consider the presence of vortex-induced vibrations on the bridge with a frequency of 0.328 Hz and an amplitude of 0.1 m. The mode in
Figure 4 is obtained through finite element calculation and verified with reference [
28] to ensure the accuracy of the finite element calculation result. The gray color in the figure represents a simplified schematic diagram of the bridge without external forces, while the blue color represents the modal diagram of the bridge under vortex induced vibration. Furthermore, accounting for vehicle speeds of 10 m/s and 20 m/s, the wheel excitation input under vortex vibration is illustrated in
Figure 5.