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Abstract. Strong steering wheel jitter during idling states of the engine can seriously deteriorate the driving comfort as well as the driving safety. The powertrain ...
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Control of steering wheel idle jitter based on optimization of engine suspension system with verifications using multi-sensor measurement

International Journal of Distributed Sensor Networks 2018, Vol. 14(6) Ó The Author(s) 2018 DOI: 10.1177/1550147718782373 journals.sagepub.com/home/dsn

Shuilong He1,2, Binqiang Chen3, Zhansi Jiang1, Yanxue Wang1 and Fuyun Liu1

Abstract Strong steering wheel jitter during idling states of the engine can seriously deteriorate the driving comfort as well as the driving safety. The powertrain suspension system can be considered as the only essential path for the transmission of vibrations from the engine to the vehicle cab. Its vibration isolation performance directly affects the severity of vibrations on the steering wheel. In this article, aiming at solving the problem of a certain type of commercial vehicle’s steering wheel with strong idle jitter at the idle state, the intrinsic characteristics and vibration isolation performances of the powertrain suspension system were studied in detail. A multi-sensor-based measurement strategy was utilized to evaluate the idle jitter severity of the steering wheel. In order to improve the indicators of the decoupling degree, the vibration transmissibility, and the resonant frequency distributions of the engine suspension system, an optimization model of engine suspension system was established. Parameters of the optimized suspension system were obtained by multiobjective particle swarm optimization. Finally, the effectiveness and feasibility of the optimization algorithm to solve the problem of the vehicle’s steering wheel jitter at idle states were verified through a test using multiple acceleration sensors, which has practical values in the engineering field. Keywords Commercial vehicle, steering wheel, idle jitter, suspension system, optimization, acceleration measurement

Date received: 11 November 2017; accepted: 15 May 2018 Handling Editor: Zhi-Bo Yang

Introduction The engine emerges as the unique source of vibration in idle jitter problem of commercial vehicle. Nonstationary vibrations, generated by the engine, are transmitted via the suspension system to the frame structure or the vehicle body, and finally arrived at the bodies of driving crews through the steering driving wheel, the cab floor, and the seat.1–3 At present, in the commercial vehicles, high-power diesel engines (HPDEs) are usually adopted as the power source. However, for HPDE working at idle states, the rotation speed is relatively slow and caused severe idle jitter problems. In the cases of poor

vibration isolation in the transmitting path and small differences between system frequency and excitation frequency of diesel engine, daunting idle jitter phenomenon

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School of Mechanical and Electrical Engineering, Guilin University of Electronic Technology, Guilin, P.R. China 2 Dongfeng Liuzhou Motor Co., Ltd., Liuzhou, P.R. China 3 School of Aerospace Engineering, Xiamen University, Xiamen, P.R. China Corresponding author: Binqiang Chen, School of Aerospace Engineering, Xiamen University, Xiamen 361005, Fujian Province, P.R. China. Email: [email protected]

Creative Commons CC BY: This article is distributed under the terms of the Creative Commons Attribution 4.0 License (http://www.creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/ open-access-at-sage).

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will occur on several subsystems within the commercial vehicle. Such phenomena can appear in the forms of steering wheel jitter, rearview mirror jitter, pedal jitter, vehicle body jitter, and so on. The presence of strong jitter operations significantly endangers driving comfort and driving security.4–7 In order to prevent the resulting catastrophic accidents and enhance driving comfort, idle jitter state should be carefully monitored and effectively controlled. In this article, we investigate the problem of steering wheel jitter in a four-cylinder diesel engine within a commercial vehicle in production. Multi-sensor measurement strategy is employed to locate. Considering the restriction of change space, we attempted to reduce the severe jitter by means of vibration isolation principles. In the procedure, optimizations on suspension system in the engine are investigated to engender a novel optimized suspension model; parametrization problems in the optimization process are solved by particle swarm optimization (PSO) algorithms. As a result, a more reasonable distribution of natural frequencies of the subsystems is obtained such that mutual excited vibrations are reduced and vibration transmitting power in irrelevant paths is decreased. With the proposed technique, the severe jitter problem on the steering wheel is alleviated at a very low price and the driving comfort is effectively enhanced.

G = ð1  TA Þ 3 100%

ð2Þ

where FT denotes the force amplitude at the vehicle body transmitted via the suspension structure, F0 denotes the excitation force amplitude of the fourcylinder diesel engine, l denotes the ratio between the excitation frequency and the system natural frequency, and j denotes the decaying ratio.

Analysis on excitation frequency in the suspension structure and natural frequency in the system

Fundamentals of suspension vibration isolation for engine Analysis on vibration isolation on suspension system In the commercial vehicle, the engine suspension structure is installed between the HPDE and the vehicle body such that vibrations on irrelevant paths can be reduced or isolated.8 The most important parameter to be considered during the design process of diesel engine suspension system is the vibration transmitting rate or the vibration isolation rate. The lower the vibration transmitting rate, the better the vibration isolation result can be obtained. Essential issues of the vibration isolation problem of diesel engine are how to properly determine the installation locations and the installation angles. To make a quantitative analysis of vibration transmitting rate between the diesel and the vehicle body, a suspension vibration transmitting TA rate can be defined using the below relation vffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffi u u FT 1 + ð2ljÞ2 TA = = t 2 F0 1  l2 + ð2ljÞ2

Figure 1. The curve of relationship between transmissibility and vibration isolation efficiency.

ð1Þ

Correspondingly, the vibration isolation efficiency can be expressed as

According to our engineering experiences, the decaying rate in the engine suspension structure can be set j = 0:08. As a result, according to equation (1), curves of the transmitting efficiency, the vibration isolation efficiency, and the frequency ratio can be calculated and shown in Figure 1. As indicated by the curves in Figure 1, the greater the parameter l, the better the vibration isolation efficiency can be guaranteed, thus more feasible vibration isolation results are obtained. In the design of suspension structure, the excitation frequencies for specified and predetermined diesel engine cannot be changed arbitrarily. For high vibration isolation efficiency, it is worth to reduce the natural frequency of the system so as to increase the value of l. In common design of suspension structure of commercial vehicle, it is proper to set l in the interval of 1.5 and 3. Higher values of l are not recommended because relatively smaller improvement will be resulted. Moreover, with the increase in the parameter l, stiffness of the suspension cushion will be reduced. In such situation, the deformation amount also increases and the entire service life of the cushion can be significantly truncated. Correspondingly, in doing so, vibration displacement can also be amplified, mechanical interferences are more likely to occur

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between components of the power assembly and those of the vehicle cab, and the excitation force between the chassis and the road can cause unexpected resonances in the suspension structure. On the basis of the above argument, the parameter l should be carefully controlled.

Multi-sensor-based testing of the steering wheel jitter vibrations Engine vibration is the source of the vibration of the steering wheel. The main transfer paths of vibration from the engine to the steering wheel are divided into two parts. On one hand, the unbalanced inertial vibration produced by the engine is transmitted from the engine to the corresponding engine frame, which then passes through the steering mechanism, steering column, and eventually reaches the steering wheel. On the other hand, because of the connection between the steering column and the cab dashboard, the vibration of the engine will be transferred to the cab through the suspension structure when passing through the corresponding frame of the engine, and finally, it will be transferred to the steering fixed support structure to affect the steering wheel through the dashboard. The vibration transmission path is presented in Figure 2. To make a quantitative analysis on the jitter vibrations of the steering wheel, in this article, we select a typical type of commercial vehicle with such problem. A LMS testing set-up was employed to make idle state measurement. The multi-sensor-based static testing strategy is shown in Figure 3. Nine three-axis acceleration sensors are mounted on the steering wheel. Because there are no universal quantitative criteria for jitter severity of steering wheel, we can only rely on experiences-based rule. We have solicited investigation to many experts in this field and a proper judgment rule is derived. When the acceleration of the steering wheel on the Y direction is smaller than 0.5 m/s2, the driver received a comfort experience. While for an acceleration greater than 1.5 m/s2, the driver is working at harsh conditions.

System dynamic model of suspension structure Generally, the natural frequencies of the suspension structure of a diesel engine are low in value, much less in value in comparison with the resonance frequency of the lowest elastic mode within the power assembly. Hence, it is feasible to only consider the distributions of rigid-body vibration modes. On the other hand, due to the low values of rubber cushion of the suspension structure in the decaying rate, it is also feasible to ignore this factor in the design process.9 Theoretically,

Figure 2. The chart of the vibration transmission path.

Figure 3. The chart of the sensor deployment.

natural vibration characteristics of the engine suspension structure can be determined using the following formula M€a + Ka = 0

ð3Þ

where M denotes the generalized mass matrix, K denotes the generalized stiffness matrix of the system, and a denotes the column vector belonging to the generalized coordinate in the system. The variable a can be expressed as a = ðx, y, z, a, b, gÞT

ð4Þ

Using the above dynamic model, after obtaining the total mass of the power assembly, centroid position, moment of inertia, product of inertia, and respective stiffness of tree directions of the suspension structure, it is ready to calculate the mass matrix M and stiffness matrix K. Furthermore, the natural frequencies of the

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Figure 4. Coordinate system of diesel engine.

diesel engine suspension structure can be derived using computation algorithms of eigen-values and eigenvectors.

Decoupling analysis on suspension structure Typically, vibrations of the 6 degrees of freedom on the diesel engine suspension system are coupled. The mutual excitation can increase the vibration severity of diesel engine as well as broadening the vibration frequency bandwidth, therefore hampering the efforts in avoiding the approaching of excitation frequency.10 In the state-of-the-art techniques, it is possible to evaluate the decoupling degree in the aspect of energy.11 That is, when considering the jth elastic mode of the system, the ratio between contributed energy from the kth generalized coordinate and that of the whole system can be written as P6

i = 1 ðfi Þl ðfi Þk mkl P6 i=1 k = 1 ðfi Þl ðfi Þk mkl

DIPkj = P6

ð5Þ

where (fi )l denotes the displacement of kth direction induced by the jth elastic mode, and mkl represents the entry locating in the kth row and lth column of the mass matrix M. According to the above expression, it is feasible to determine the energy decoupling degree of each elastic mode of the investigated system. As long as the selfenergy contribution reaches the value of 100% along a specific direction, the system is said to be entirely decoupled in the specific natural frequency. In practical applications, for obtaining better vibration isolation performance, it is beneficial to increase the decoupling degree in each elastic mode. Therefore, improvement in the suspension structure performance can be derived.

Optimization modeling for suspension structure in the diesel engine system Coordinate definition of the diesel engine system The power assembly is always large in mass for a commercial vehicle. It is common to make separate testing of mass parameters of diesel engine, containing clutch coupling, and the transmission gear-box and finally assemble the mass matrix M of the power assembly. In order to guarantee more convenient assembly of the power assembly mass matrix as well as the position coordinate of each components of the suspension structure, we consider the coordinate system defined by the diesel engine as the universal coordinate for the suspension system. In conclusion, the coordinate system for the diesel engine is defined according to the following rules. Let the intersection point indicated by the rear face of the diesel engine flywheel housing and the crankshaft be the original point of the coordinate system, thus one horizontal positive direction can be marked by ‘‘ + X’’ indicating the face of fan and the upward positive direction can marked by ‘‘ + Z,’’ which are displayed in Figure 4.

Optimization model of suspension structure Aiming at solving the idle jitter problem of a type of commercial vehicle in production, we comprehensively consider some major parameters in the suspension structure in the diesel engine. Such parameters include energy decoupling degree, vibration transmission efficiency in the Z direction, and natural resonance frequencies of the suspension structure. We can summarize the above mode using the following parameter optimization model f ðX Þ =

6 X i=1

ðv1i ð100%  DIPii Þ + v2i jfi  fi0 jÞ ! 4 X + v3i TAzi ð6Þ i

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Figure 5. Optimization algorithm flow chart.

where v1i , v2i , and v3i denote the weighting coefficients of the energy decoupling degree, the resonance frequencies, and vibration transmitting efficiency, respectively. TAzi denotes the vibration transmitting efficiency in the Z direction, fi and fi0 denote the actual resonance frequencies and the expected resonance frequencies, and DIPii denotes the energy decoupling degree of the ith resonance frequency. According to the engineering experience, the vibrations of a four-cylinder diesel engine mainly concentrate on the Z direction and the rotation X axis. The energy ratio between the axis v1i and other directions is 3:1. At the same time, in order to avoid the influence of low frequency and engine frequency of the road, the ratio v2i between the two frequencies and other frequencies is 2:1. According to this type of engine, the weight of v3i sets the same value.

updates its velocity and new position according to the following formula

Optimization algorithm. PSO, a global search evolutionary computing technique, which carries out parallel computing based on few parameters and simple principle, preserves the characteristics of global search strategy and parallel processing of genetic algorithm, and determines the fitness of each particle according to the objective function.12 At each iteration of the particle flight, the method updates itself by tracking two extreme values experienced by the particle as it flies, which makes it possible for searching the target according to the adaptive information of the individual and not restricted by function constraints. The particle

ð7Þ

xi = xi + vi

ð8Þ

Here, N represents the total number of particles, vi refers to the velocity of the particles, v is the inertial weight factor, pbesti is the local optimal solution, gbesti refers to the global optimal solution, and xi is the current position of the particle, rand() is between 0 and 1, where c1 and c2 are learning factors. The detailed steps for the entire process are outlined below: 1.

Optimization based on PSO algorithm

vi = v 3 vi + c1 3 randðÞ 3 ðpbesti  xi Þ + c2 3 randðÞ 3 ðgbesti  xi Þ

2.

3.

4.

5.

Initial parameters: given population size N, c1, c2, v, and maximum number of iterations nmax. Initialization of particle populations: according to the constraint conditions, 20 particles can be randomly generated in the position x, velocity v. The fitness of each particle is calculated. The individual extremum pbesti of each particle and the global extremum gbesti of particle swarm are obtained. According to the distance relation of each particle, the position x and velocity v of the particle are updated using formulas (7) and (8). Update the individual extremum pbesti of each particle and the global extremum gbesti of the particle swarm.

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Return step 4 for 100 iterations.

The selection of parameters in this article is as follows: population size is 20, particle size is 12, maximum iteration number nmax = 100, learning factor c1 = c2 = 2, and maximum particle velocity vmax = 1 3 103. The maximum inertial weight factor vmax = 0:9, minimum inertial weight factor vmin = 0:4, the inertial weight v = (vmin 3 number of iterations)/ nmax in the iterative calculation process, the initial value of iterative search is large, which is helpful to jump out of the local minimum, and the value of late search is smaller. The whole algorithm flow is conducive to facilitate the convergence of the algorithm. The corresponding algorithm flow is shown in Figure 5. The design variables. The dynamic characteristics of the powertrain system are related to the quality of the engine, moment of inertia, and the geometry and dynamic parameters of the mount. However, the characteristics of the engine assembly itself cannot be changed, and the mounting position and angle are limited by the frame and other devices; additionally, the range is very narrow. Therefore, each mounting stiffness value can be taken as the design variable. For example, the range of stiffness variation range of the front mount in the three directions (X, Y, Z) is set between 100 and 500, and the rear mount stiffness variation range is between 100 and 700 and so on. Restriction condition. In this article, constraints can be considered and set in four ways: 1.

Predetermined frequency constraint. According to the theory of vibration isolation,13 the fundamentals of vibration isolation theory demonstrate that on condition that the difference of natural frequencies between two structures is greater than pffiffiffi the bigger frequency value multiplied by 2, the vibration can be effectively isolated. Therefore, the maximal natural frequency of the suspension structure should be less than thepvalue of idle firing frequency by a factor of ffiffiffi 1= 2, and simultaneously greater compared with value of the excitation frequency generated by the roads by 2.5 Hz. Meanwhile, the adjacent frequencies should be pulled away as far as possible, at least more than 0.5 Hz. To avoid the

Table 1. Mass and location parameters of engine. Mass (kg)

X (mm)

Y (mm)

Z (mm)

635

166.73

1.66

92.57

2.

3.

4.

influence of resonance, the upper and lower limit values are not close to the limit value as far as possible. The decoupling degree is improved by artificially controlling frequency matching. In this article, for the four-cylinder and fourstoke diesel engine, the idle rotation speed of the engine is 700 r/min and the related firing frequency is calculated at 23.3 Hz. That is, theoretically, we expect the natural frequency of the suspension structure to be lower than 16.5 Hz. Spindle stiffness constraint of mounting element. If the stiffness of the mounting element is too small, the mounting will be too soft, which will not only lead to the increase in the displacement of the powertrain but also affect the life of the mount and may cause motion interference. The stiffness of the mount will decrease the displacement of the power assembly, but the dynamic reaction force will increase, thus the vibration transfer rate will increase. At the same time, for the rubber mounting element, the compression shear stiffness ratio should be between 3 and 8 owing to the rubber material’s own characteristics. Vibration isolation rate constraint. The excitation force of the engine mainly exists in the vertical direction and the direction of rotation around the crankshaft. The main purpose is to control the decoupling ratio of Z direction, and the rotation around X axis is greater than 80% in order to improve the isolation rate of these two directions. Parameter constraint. Simultaneously, we should also take the parameters l, defined as the ratio between the diesel engine excitation frequency and the vibration isolation system natural frequency, the rubber cushion stiffness, and the deformation displacement into consideration, such that the system vibration isolation performance can be enhanced and the cushion life can be extended. In this article l should be between 1.5 and 3.

Engineering applications with multisensor-based verification Original parameters With the testing system based on the principle of trilinear pendulum, the parameters of the total mass of the power assembly, centroid position, moment of inertia, product of inertia, and respective stiffness of tree directions of the suspension structure can be obtained. We assemble the coefficients into a whole mass matrix, which is shown in Tables 1 and 2.

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Table 2. Inertia moment parameters of engine. Ixx (kg m2)

Iyy (kg m2)

Izz (kg m2)

Ixy (kg m2)

Ixz (kg m2)

Iyz (kg m2)

30.77

111.46

103.06

–0.39

22.81

1.06

Table 3. Location parameters of engine mounts. Coordinate axis

X

Y

Z

Front left suspension (mm) Front right suspension (mm) Rear left suspension (mm) Rear right suspension (mm) Installation angle for the front suspension (°) Installation angle for the rear suspension (°)

541 541 44 44 45 0

259.5 –259.5 315 –315

10.5 10.5 113 113

Table 4. Stiffness parameters of original mounts. Values of static stiffness (N/mm)

kx

ky

kz

Front suspension stiffness Rear suspension stiffness

470 1128

310 226

516 511

Figure 6. Original front and rear suspension structure: (a) original front suspension mount structure and (b) original rear suspension mount structure.

Table 5. Natural frequencies energy distribution of vibration coupling in original system. Degree of freedom

X Y Z ux uy uz

Natural frequencies of the system (Hz) 14.2

7.4

10.4

17.9

4.4

11.2

79.2 0.5 11.7 3.3 5.1 0.1

2.7 83.4 4.3 8.7 0.2 0.7

9.8 0.1 67.4 19.5 1.1 2.1

3.1 9.5 0.2 68.1 0.3 18.8

0.3 0.1 12.9 0.2 85.8 0.7

4.9 6.4 3.5 0.1 7.5 77.6

The decoupling degree of the original conditions are shown as the bold values of the matrix.

In this commercial vehicle, the front suspension system is deployed in the form of V-shape, and the rear suspension system is horizontally deployed. Because

this type of commercial vehicle had been in production, changes in diesel engine type, installation locations of each suspension system, and the related installation

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Table 6. Optimized stiffness parameters of mounts. Values of static stiffness (N/mm)

kx

ky

kz

Stiffness of the front suspension system Stiffness of the rear suspension system

337 663

241 132

430 300

Table 7. Natural frequencies energy distribution of vibration coupling in optimized system. Degree of freedom

X Y Z ux uy uz

Natural frequency (Hz) 10.5

5.9

8.0

12.9

4.2

9.3

97.2 1.2 0.7 0.5 0.3 0.1

0.3 93.2 0 2.4 0 4.1

0.5 0.1 95.4 0.2 3.6 0.2

0.2 0 0.1 81.2 0 18.5

1.4 0 3.3 2.4 91.8 1.1

0.4 5.5 0.5 13.3 4.3 75.9

The decoupling degree of the optimized conditions are shown as the bold values of the matrix.

angles are strictly prohibited (Table 3). So in this improvement, we do not attempt to make optimizations on the above parameters. The predetermined parameters are listed in Table 4. And the original front and rear suspension structure is shown in Figure 6. According to the arguments shown in the previous sections, the natural frequencies and the resonance energy coupling distributions belonging to the first six elastic modes are shown in Table 5. In Table 5, it is shown that the natural frequencies of the first five elastic modes are lower compared with the diesel pffiffiffi engine firing frequency by a factor greater than 1= 2. Moreover, the least frequency space is greater than 0.5 Hz. It means they satisfy the design requirements. However, the natural frequency of the highest elastic mode, whose value is 17.9 Hz, is greater than 16.5 Hz, likely to induce the structural resonance phenomenon. This causes the improper distributions of the natural frequencies and unsatisfactory vibration isolation performance. On the other hand, in the viewpoint of energy decoupling degree, the vibrations along the Y direction and the rotation Y axis are relatively good. Except for these 2 degrees of freedom, the decoupling degree of other direction is smaller than 80%. The vibration decoupling degrees on the Z direction and the rotation X axis, which are the most important dimension to be considered in the optimization, are both smaller than 70%. Based on the above data, there are severe coupling phenomena between the vibrations on the different axis, and it causes severe idle jitter vibration on the steering wheel. Proper means should be taken to solve this problem.

In the optimization process, the objective function is set as the minimization of suspension stiffness indicated by equation (6). As a result, the optimized stiffness coefficients of the engine suspension structure are shown in Table 6. As can be seen from Table 6, the optimized suspension stiffness is reduced, and the structure of mount is shown in Figure 7. Taking the optimized suspension structure matrix for establishing new system dynamic model, the updated system natural frequencies and energy decoupling rate can be obtained, as shown in Table 7. From Table 7, the improved natural frequencies are ranged in the interval between 4.2 and 12.9 Hz, considerably far away from the diesel pffiffiffi engine firing frequency multiplied by a factor of 1= 2, thus successfully avoiding the resonance area. The frequency space between neighboring natural frequency is greater than 1 Hz, which can be considered as a proper distribution. In the viewpoint of energy decoupling degree, except for that of rotation Z direction is slightly reduced, the energy decoupling degrees of the other axis are significantly enhanced. Especially, the axis of Z direction and that of the rotation X direction, which suffer the major amount of excitation forces, increased from 67.4% and 68.1% to 95.4% and 81.2%, respectively. In conclusion, the system natural frequencies and the vibration coupling degree are reduced considerably after the proposed optimization process. What’s more, the parameter l, defined as the ratio between the diesel engine firing frequency and system natural frequency, increased from 1.3 (the original type) to 1.8. It means a more robust vibration isolation performance is derived.

Analysis on the optimization results

Experimental verifications

In this article, we attempt to improve the optimization process using PSO with multi-objective fusion ability.14

Based on the optimization scheme, we test the assembly of diesel engine suspension cushion and make whole

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Figure 7. Optimized front and rear suspension structure diagram: (a) optimized front suspension mount structure and (b) optimized rear suspension mount structure.

Figure 8. Comparison curves of left front mount Z direction isolation rate.

vehicle test. Thus, we obtain the resulting curve of each hanger of each cylinder body, the suspension hanger, the driver seat lead rail, the steering wheel, and the rearview mirror. In each testing, accelerations on three orthogonal directions are collected. Vibration isolation efficiency is improved compared with the original vehicle type. For simplicity, we only demonstrate the trend of the Z direction vibration rate for left and right suspension and vibration of the steering wheel, which are strongly related to the idle jitter vibrations of the steering wheel. The comparison isolation rate curves are shown in Figures 8–11. From Figures 8–11, the improvements in the isolation rates in Figures 8 and 9 are not significant, while the improvements in Figures 10 and 11 are much more pronounced. The reason is the front suspension vibration isolation rate has reached target value; therefore, the improvement of the vibration isolation rate is limited. But the initial isolation rate of rear mount is poor. After the optimization, the stiffness changes in the three directions are great. With the decrease in stiffness

value, the damping effect of the rear mount is greatly improved, and the isolation rate of the rear mount is increased obviously. From the testing results from the above figures, the vibration isolation efficiencies during idle states are ranged in the interval between 82% and 86% while indicators of the original vehicle type are ranged in the interval between 73% and 81%. By comparing vibration of idle mount before and after optimization, it can be seen from Figure 12 that the whole vibration of the improved mount is lower than that of the original state. Especially, the vibration of the rear mount is reduced from the original 1 g to about 0.5 g. After the suspension optimization and the reduction of the rear suspension stiffness, the vibration relief effect is well, and the vibration amplitude of the vibration source of the steering wheel is greatly reduced, which improves the isolation rate of the rear suspension mount. The comparison curves of the steering wheel vibration at 3 o’clock direction before and after optimization are presented in Figures 13–15.

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Figure 9. Comparison curves of right front mount Z direction isolation rate.

Figure 10. Comparison curves of left rear mount Z direction isolation rate.

Figure 11. Comparison curves of right rear mount Z direction isolation rate.

Based on the mount optimization method, this article solves the jitter problem of the steering wheel of

commercial vehicles when the idling speed reaches 700 r/min. Just as shown in Figures 13 and 15, the

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11 0.87 m/s2, almost decreased by 90% compared with the original vehicle type. Simultaneously, considering the vibration effect of engine, the speed variation range of the vehicle in the normal running condition is wide. Therefore, the whole operating condition other than idling condition is tested in this article. After the optimization, we effectively solve the problem of strong jitter vibration on the steering wheel, improve the driving comfort remarkably, and promote the competence of the commercial vehicle in the global market.

Figure 12. Vibration change of mount before and after optimization.

Concluding remarks optimization result shows that the vibration values of X, Y and Z on the steering wheel are smaller in 700 r/ min. Especially, the acceleration on the Z direction reduces from 8.75 m/s2 (the original vehicle type) to

In this article, we comprehensively consider the parameters of major elastic mode energy decoupling efficiency, vibration transfer path analysis, vibration transmitting efficiency on the major paths, and natural

Figure 13. Comparison curves of steering wheel X direction vibration.

Figure 14. Comparison curves of steering wheel Y direction vibration.

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Figure 15. Comparison curves of steering wheel Z direction vibration.

frequencies of the suspension structure in establishing the vehicle dynamic model. The optimization process was made using PSO algorithm with multi-objective fusion optimizing ability. We calculated the suspension structure stiffness after the optimization and made the trial product based on the optimization results. The testing results show that the vibration isolation efficiency of the diesel engine is considerably improved in a broad rotating speed range after the optimization. The multi-sensor vibration measurement strategy was utilized to evaluate the jitter vibrations before and after the optimization. Based on the comparison of the data, it is shown that the vibrations between the diesel engine and the steering wheel as well as the vehicle body are effectively truncated. The above results lead to decreasing of idle jitter vibrations on the steering wheel. The proposed optimization method is of significant engineering meaning. Declaration of conflicting interests The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Funding The author(s) disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: This research was financially supported by Project of Scientific Research and Technology Development in Liuzhou (Grant No. 2016B020203) and Basic Ability Promotion Project for Young and Middle-aged Teachers in Guangxi Province (Grant No. 2017KY0207).

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