Multi-Objective Optimisation of Tyre and Suspension Parameters during Cornering for Different Road Roughness Profiles
Abstract
:1. Introduction
2. Methods and Materials
2.1. Vehicle Model
2.2. Suspension Designs
2.3. Tread Model
2.4. Vehicle Performance Assessment
2.4.1. Tyre Wear Quantity
2.4.2. Ride Comfort
2.4.3. Vehicle Handling
2.5. Road Profiles and Path
3. Validation of the Model with IPG CarMaker 8.0
- The sliding distance () is calculated according to Equation (12).
- The parameter () is calculated as follows:
- The sliding force is obtained by integrating the maximum possible frictional force distribution () over the sliding region :
- Finally, the wear energy per contact area according to Equation (26) is evaluated by multiplying the sliding force with the slipping distance () and dividing it by the contact area:
4. Optimisation Configuration
4.1. Objectives
4.2. Design Variables: Scenario 1
4.3. Design Variables: Scenario 2
5. Results
- Scenario 1 investigates the tyre optimisation in a vehicle being employed with a passive suspension and driven over an S-Path, in which road surfaces of Class A (Case 1) and B (Case 2) are assigned. The optimisation results are illustrated in Figure 8 and Figure 9, which display the Pareto fronts with regards to the objectives (Figure 8a,b) and the design variables (Figure 9a–e). Having obtained the optimal solution alternatives for the two cases, common solutions are sought between them, requiring to provide similar wear in the two cases (<8% difference) and have close design variable values (<9% difference). The common solutions identified with the above characteristics are illustrated in Figure 8 and Figure 9 alongside the alternatives, while their values are listed in Table 5. In addition, in Figure 10, the final circumferential tread profiles for the optimum designs are compared with the initial tyre design, after driving over the Class B S-Path twenty times back and forth.
- Scenario 2 explores the suspension optimisation for two road cases and various suspension types (PS, SH-2, ADD, SH-ADD-2, GH-2, PDD and SH-PDD). The optimisation results are illustrated in Figure 11, which presents the Pareto fronts of the optimum solutions for the two cases. For each suspension type, a common solution is identified among the optimal alternatives provided by the two optimisation cases, requiring them to have close design variables values (<3–15% difference according to the cases). Finally, the values of the identified common solutions are presented in Table 6 alongside with the threshold of difference that was allowed.
5.1. Optimum Tyre Design Solutions
Optimisation Results
5.2. Optimum Suspension Design
6. Conclusions
- Comfort illustrates the same conflicting relation with wear as with vehicle stability. This means that the increase of the suspension travel, hence degradation of handling, leads to an increase in wear but to an improvement in comfort.
- Wear could increase up to 21% in different road profiles, while the appropriate tyre design could provide only 2% increase if the road roughness changes from Class A to B. The appropriate tyre design could be extracted using the optimisation method proposed in the current work.
- For the same tyre design, two pressures could optimally combine comfort, wear and stability in two road roughness cases but also maintain wear at the same levels in these two cases. The recursive feasibility of this outcome should be tested, but it is an interesting remark for the current case study.
- Regarding suspension types, according to the results, the type and their control algorithm should be selected with regards to tyre wear damage. In the current case study, SH-2 and SH-ADD-2 seemed to be able to provide the best wear performance. After the selection of the control algorithm, the tuning of the suspension parameters, i.e., stiffness and damping coefficient, should take place mainly with regards to comfort and vehicle handling. This is because according to the results it seems that different configurations do not affect wear to a great extent.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Masses [kg] | Springs [N/m] | Dampers [Nm/s] | ||||||
---|---|---|---|---|---|---|---|---|
= | 1301/4 | = | 25000 | = | 2500 | |||
= | 43 | = | 0.80 | = | 2508 | |||
= | Equation (6) | = | 367240 | = | 508 |
Case | Description | Control Law a |
---|---|---|
1 | SH-2 | |
3 | ADD | |
4 | SH-ADD-2 b | |
5 | GH-2 | |
6 | PDD | |
7 | SH-PDD |
Wear and Tread Model Parameters | ||||
---|---|---|---|---|
[KPa] | [m] | [m] | [m] | [m] |
250 | 0.1950 | 0.3175 | 0.1660 | 0.1550 |
Scenario 1 | Scenario 2 | ||||
---|---|---|---|---|---|
Design Variable | Bounds | Design Variable | Bounds | ||
P[KPa] | 150 | 350 | [N/m] | 15,000 | 60,000 |
c[m] | 0.14 | 0.22 | [Ns/m] | 500 | 5000 |
d[m] | 0.27 | 0.35 | [Ns/m] | 500 | 2500 |
[m] | 0.12 | 0.19 | [Ns/m] | 2500 | 5000 |
[m] | 0.12 | 0.20 | [rad/s] a | 10 | 60 |
Solution | Optimum Design Variables | ||||
---|---|---|---|---|---|
P[KPa] | c[m] | d[m] | [m] | [m] | |
1 | 252 | 0.1889 | 0.2728 | 0.1215 | 0.1420 |
2 | 192 | 0.1883 | 0.2746 | 0.1206 | 0.1441 |
Solution | Optimum Design Variables | ||||
---|---|---|---|---|---|
[N/m] | [Nm/s] | [Nm/s] | [rad/sec] | Threshold () | |
PS | 16,042 | 3675 | - | - | 6.0% |
SH-2 | 43,181 | 2275 | 4394 | - | 9.5% |
GH-2 | 16,160 | 2415 | 3327 | - | 3.0% |
ADD | 41,406 | 2452 | 4530 | - | 5.0% |
PDD | 15,534 | 1442 | 4045 | - | 5.0% |
SH-PDD | 42,281 | 2416 | 4749 | - | 5.0% |
SH-ADD2 | 17,246 | 684 | 3515 | 23.5 | 15.0% |
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Papaioannou, G.; Jerrelind, J.; Drugge, L. Multi-Objective Optimisation of Tyre and Suspension Parameters during Cornering for Different Road Roughness Profiles. Appl. Sci. 2021, 11, 5934. https://doi.org/10.3390/app11135934
Papaioannou G, Jerrelind J, Drugge L. Multi-Objective Optimisation of Tyre and Suspension Parameters during Cornering for Different Road Roughness Profiles. Applied Sciences. 2021; 11(13):5934. https://doi.org/10.3390/app11135934
Chicago/Turabian StylePapaioannou, Georgios, Jenny Jerrelind, and Lars Drugge. 2021. "Multi-Objective Optimisation of Tyre and Suspension Parameters during Cornering for Different Road Roughness Profiles" Applied Sciences 11, no. 13: 5934. https://doi.org/10.3390/app11135934
APA StylePapaioannou, G., Jerrelind, J., & Drugge, L. (2021). Multi-Objective Optimisation of Tyre and Suspension Parameters during Cornering for Different Road Roughness Profiles. Applied Sciences, 11(13), 5934. https://doi.org/10.3390/app11135934