Sensitivity of Mass Geometry Parameters on E-Scooter Comfort: Design Guide
Abstract
:1. Introduction
2. Methodology
- Reference model. The starting point was a real e-scooter, which has been modelled in 3D to obtain its values of mass, centre of gravity and moments of inertia to use them as reference values. Driver data will be constant;
- Dynamic simulations. A dynamic model of multibody systems has been generated to simulate the behaviour of the e-scooter against different vibrations modelled as different vertical road profiles. In this model, the different combinations of parameters defined in the design of the experiment will be simulated;
- Postprocessing. The accelerations resulting from each simulation will be processed according to the UNE-ISO 2631-1:2008 standar [37] to obtain frequency-averaged values that will allow the degree of comfort to be decided. These values will be used to:
- a.
- Obtain statistical models by multiple regression;
- b.
- Obtain graphs from the statistical model and the raw simulation output data:
- i.
- One variable graph to evaluate the variation of each parameter independently;
- ii.
- Contour maps (two variable graphs) based on constant comfort lines and colour maps based on the averaged acceleration value.
2.1. E-Scooter Reference Model
2.2. Driver Data
2.3. Comfort Evaluation
2.4. Multibody Dynamic Model
2.4.1. Topologic Diagram
2.4.2. Simulation Data
2.4.3. Road Profiles
- φi is the random phase angle that follows a uniform probabilistic distribution within the interval ;
- Ωi is the angular spatial frequency , which for N points will have a value of
2.5. Brief of Mass Geometry
2.6. Design of Experiment
3. Results
3.1. Statistical Model
- , weighted acceleration [];
- , e-scooter frame mass [];
- , e-scooter longitudinal speed [];
- , lateral axis inertia moment [];
- z (vertical) coordinate of centre of gravity [];
- x (longitudinal) coordinate of centre of gravity [].
3.2. Graphical Results
4. Discussion: Design Guide
4.1. Analysis of Graphical Results
- 1.
- It is observed how the increase in mass causes a maximum of 8.4 kg, and the minimum value of comfort acceleration (av) is achieved with 3.48 kg. Figure 11 shows an example of this tendency in both graphs (a) from raw data and (b) from the statistical model.
- a.
- Mass is the second variable with the most weight after speed. Depending upon this, it has greater or lesser influence, as Figure 12 shows.
- b.
- Increasing mass may cause graphs to become more regular for the simulation raw result. This effect is not appreciated though contour maps obtained from the statistical model, as can be seen in Figure 13.
- 2.
- A higher value of Iyy leads to lower values of comfort acceleration (av), although it is not a linear variation. Figure 14 shows an example for a 3.48 kg e-scooter frame mass.
- a.
- The influence of is more relevant for speeds higher than 15 km/h (see an example for a 3.48 kg e-scooter frame mass in Figure 16). The effect is similar in both results (a) from raw data and (b) from the statistical model.
- b.
- In raw data contour maps, the influence of does not have a linear variation linked to and , but it causes areas of favourable or unfavourable combinations with this, as Figure 17 shows. This tendency is filtered into contour maps of the statistical model.
- (a)
- Based on the raw data of simulation results, changing causes the irregularities that move with the change of other parameters. Figure 19a shows this in the variation of and . Raw data contour maps also show the existence of regions with better behaviour than others. The contour maps provided from the statistical model filters this effect. However, these contour maps show the worst comfort behaviour for the middle value of .
- 3.
- It is observed how the increase in causes a slight decrease in the value of comfort acceleration () at least for the maximum speed, 25 km/h (Figure 20). These results are obtained from both raw data (a) and from the statistical model (b).
4.2. Design Guide
- Decrease the mass of the e-scooter frame. Probed up to 50%;
- Increase the transversal inertia moment . Probed up to 50%;
- Decrease/increase the height of the centre of gravity, . Probed ±50%;
- Increase the longitudinal position of the centre of gravity, .Probed up to 50%;
- Combine points 1 to 4, reaching the maximum comfort acceleration and maximum driver comfort for the combination of the four points;
- If there were some difficulties in achieving points 1–4 in the e-scooter frame design, increasing the mass up to double (100% of increment), increasing to 50% of and decreasing to 50% of .
4.3. Application Cases
4.4. Validation and Sensor Basic Proposal
5. Conclusions
- Inertial parameters have a very non-linear and complex relationship with user comfort, which makes the study of these parameters and how they affect comfort quite difficult;
- Speed has the greatest weight in user comfort. Then, mass stands out as an influencing factor, followed by the moment of inertia and the centre of gravity z, , followed by the mass and finally the centre of gravity x, , whose influence is small;
- A design guide for the electric scooter frame has been developed that will reduce the impact of the vibrations received on the driver’s comfort. In this guide, the indications on each independent parameter will be difficult to carry out since the change of any of the mass geometry parameters can have an influence on the rest;
- The results show that the vibrations associated with the comfort that drivers of this type of scooters currently receive could be improved by more than 9%. This improvement could be achieved with several actions on the mass geometry parameters, such as simply lowering the mass of the scooter frame by 50% and keeping the rest of the parameters constant (centre of gravity and lateral moment of inertia);
- The proposed dynamic model has been qualitatively validated based on the results of real measurements taken in similar models;
- A basic sensor proposal and colour scale for ride comfort has been proposed due to the variability of vibrations for different reasons (mainly e-scooter model, user, speed and road quality). This is a recommendation for e-scooter manufacturers.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Mass [kg] | 11.593 | |
---|---|---|
Centre of gravity coordinates [m] | X | 0.002 |
Y | 0.082 | |
Z | 0.139 | |
Inertia moments [kg·m2] | Ixx | 1.828 |
Ixy | 0.781 | |
Iyy | 1.084 | |
Ixz | 0.001 | |
Iyz | −0.282 | |
Izz | 1.029 |
Properties | Values |
---|---|
Centre of gravity height [cm] | 71.81 |
Mass [kg] | 71 |
Ixx [kg·m2] | 11.7 |
Iyy [kg·m2] | 13 |
Izz [kg·m2] | 1.5 |
(m/s2) | Comfort Scale |
---|---|
<0.315 | Not uncomfortable |
0.315–0.63 | Slightly uncomfortable |
0.5–1 | Fairly uncomfortable |
0.8–1.6 | Uncomfortable |
1.25–2.5 | Very uncomfortable |
>2 | Extremely uncomfortable |
Mass [kg] | 6.961 | |
---|---|---|
Centre of gravity coordinates [m] | X | 0.077 |
Y | 0.003 | |
Z | 0.172 | |
Inertia moments [kg·m2] | Ixx | 1.005 |
Ixy | −0.001 | |
Iyy | 1.354 | |
Ixz | −0.356 | |
Iyz | −0.01 kg m2 | |
Izz | 0.383 kg m2 |
Mass Geometry Properties | Frame | Driver | Total |
---|---|---|---|
Mass [kg] | 6.961 | 71 | 77.961 |
Coordinate centre of mass in Z [m] | 0.172 | 0.7181 | 0.6693 |
Coordinate centre of mass in X [m] | 0.077 | 0 | 0.0069 |
Ixx [kg·m2] | 1.005 | 48.31 | 49.315 |
Iyy [kg·m2] | 1.354 | 49.61 | 50.964 |
Izz [kg·m2] | 0.383 | 1.5 | 1.883 |
Ixy [kg·m2] | −0.001 | 0 | −0.01 |
Ixz [kg·m2] | −0.356 | 0 | −0.001 |
Iyz [kg·m2] | −0.01 | 0 | −0.356 |
Properties | Rear Whell | Front Wheel | |
---|---|---|---|
Mass [kg] | 1.002 | 3.63 | |
Centre of gravity coordinates [m] | X | −3.91 | 0.399 |
Y | −0.04 | 0 | |
Z | −0.06 | 0.06 | |
Inertia moments [kg·m2] | Ixx | 0.006 | 0.02 |
Ixy | −0.002 | 0 | |
Iyy | 0.160 | 0.601 | |
Ixz | −0.024 | 0.086 | |
Iyz | 0 | 0 | |
Izz | 0.155 | 0.584 |
Road Class | ||||
---|---|---|---|---|
Lower Limit | Upper Limit | Lower Limit | Upper Limit | |
A | - | 32 | - | 2 |
B | 32 | 128 | 2 | 8 |
Parameters | Values [% Ref] | ||||||
---|---|---|---|---|---|---|---|
% | −50% | −25% | 0% Ref | +25% | +50% | +75% | +100% |
Mass [kg] | 3.4805 | 5.22075 | 6.961 | 8.70125 | 10.4415 | 12.18175 | 13.922 |
CoG z [m] | 0.086 | 0.129 | 0.172 | 0.215 | 0.258 | ||
CoG x [m] | 0.00385 | 0.005775 | 0.0077 | 0.009625 | 0.01155 | ||
Iyy [kg·m2] Frame/Total | 0.677/ 50.2870 | 0.677/ 50.6255 | 1.354/ 50.9640 | 1.6925/ 51.3025 | 2.031/ 51.6410 |
] | Speed [km/h] | ] | [m] | [m] | Mass [kg] |
---|---|---|---|---|---|
3.26 | 25 | 50.964 | 0.6693 | 0.0069 | 6.961 |
Improvement | ||||
---|---|---|---|---|
9.37% | - | - | - | |
7.72% | 0.8% | - | - | |
9.28% | 0.14% | 0.67% | - | |
9.16% | 0.47% | 0.69% | 0.01% |
Cases | Improvement | ||||
---|---|---|---|---|---|
01 | - | 9.34% | |||
02 | - | 8.94% | |||
03 | - | 9.44% | |||
04 | - | 0.17% | |||
05 | 9.53% |
(m/s2) | Comfort Colour Scale |
---|---|
<0.63 | Green |
0.63–1.25 | Orange |
>1.6 | Red |
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Cano-Moreno, J.D.; Arenas Reina, J.M.; Parra Lanillos, V.d.C.; Islán Marcos, M.E. Sensitivity of Mass Geometry Parameters on E-Scooter Comfort: Design Guide. Sensors 2024, 24, 399. https://doi.org/10.3390/s24020399
Cano-Moreno JD, Arenas Reina JM, Parra Lanillos VdC, Islán Marcos ME. Sensitivity of Mass Geometry Parameters on E-Scooter Comfort: Design Guide. Sensors. 2024; 24(2):399. https://doi.org/10.3390/s24020399
Chicago/Turabian StyleCano-Moreno, Juan David, José Manuel Arenas Reina, Victorina del Carmen Parra Lanillos, and Manuel Enrique Islán Marcos. 2024. "Sensitivity of Mass Geometry Parameters on E-Scooter Comfort: Design Guide" Sensors 24, no. 2: 399. https://doi.org/10.3390/s24020399
APA StyleCano-Moreno, J. D., Arenas Reina, J. M., Parra Lanillos, V. d. C., & Islán Marcos, M. E. (2024). Sensitivity of Mass Geometry Parameters on E-Scooter Comfort: Design Guide. Sensors, 24(2), 399. https://doi.org/10.3390/s24020399