New Micromobility Means of Transport: An Analysis of E-Scooter Users’ Behaviour in Trondheim
Abstract
:1. Introduction
2. Materials and Methods
- Elgeseter, with a cycle path and a sidewalk on each side. This is an important bridge connecting the city center and the other part of the city;
- Olav Tryggvasons Gate, also with a cycle path and sidewalk on each side. This carriageway has a lane for each direction on which buses, trucks, and cars pass;
- Nordre Gate, a pedestrian street with a lot of interactions between pedestrians and cyclists; it is crowded in the afternoon when people leave work and schools;
- Innherredsveien, an important connection between the suburbs and the center, consisting of a sidewalk and a cycle path;
- Øvre Alle, a one-lane road with a sidewalk on one side; it connects NTNU University with some schools in the neighbourhood;
- Munkegata street, with two-lanes, parking spots, and two wide sidewalks for each side.
- Gender and age of driver divided into two groups, 18–35 and >35 years.
- Type of e-scooter used (shared or private).
- The path used by e-scooter riders (cycle path, cycle lane, sidewalk, pedestrian zone, or roadway).
- Number of people on the e-scooter at the same moment.
- The distance observed between the e-scooter and the other road users when overtaking. Overtaking is defined as the process of overcoming a slower means of transport or a person travelling in the same direction. Distances were measured at the beginning of the overtaking. The observer fixed some reference points on the analysed section, empirically defining the distances and measuring them. The differences were divided into four categories: no interaction with others, distance 1 m, distance 50 cm, and distance 30 cm (Figure 3).
- Driver behaviour in the presence of other users. It was divided into three categories: straight, when the e-scooter’s users go straight without any influence from obstacles although these are very close; “zig-zag”, when the drivers do not decrease the speed to avoid or to overcome obstacles. The last category includes drivers who reduce speed in the presence of other users (Figure 4).
2.1. Statistical Analysis of the Data
2.1.1. Generalised Linear Model and Student t-Test
- B1 and B2 are values returned by the model for each variable.
- Se1 e Se2: standard error returned by the model for each category.
- A complete overlap when the two categories were statistically similar;
- A complete separation when the two categories were statistically different;
- A partial overlap when the two analysed categories could be statistically similar or different. In this case, it was necessary to study carefully if there was a correlation.
2.1.2. Statistical Analysis of the Collected Data
- Test of model effect, (Table 1) where the level of significance (sig.) of each factor considered in the model was defined for analysis type I and III.
- Parameter estimates, a table (Table 2) providing for each parameter the intercept (reference level speed), the speed value in relation to the reference category, the 95% confidence interval, and the hypothesis test with the significance value. The last element showed how much a category within the variable was statistically significant in relation to the reference category.
2.1.3. Backward Analysis
2.1.4. Binomial Logit Model for the Pavement Choice
3. Results
3.1. E-Scooter Users
3.2. Speed Analysis from Observed Data
- on the cycle path, the users with a distance lower than 50 cm from the other road users during the overtaking were the fastest (16 km/h);
- in the pedestrian zone the rider driving 1 m from another road user, during overtaking, was the fastest. The other two categories held the same average speed. One explanation might be that the driver overtaking another road user at a distance of less than 50 cm did so during rush hours, when the road was busier, and people were driving faster as they were in a hurry;
- on the sidewalk the difference between the average speeds of the two different categories, without interaction and with 50 cm, was equal to 2 km/h. One explanation might be that the driver in a crowded situation usually reduced the speed to avoid interactions and to overtake others with a shorter distance than in other cases. Those who drove keeping 1 m from other road users were as fast as those who drove without finding interactions. In fact, the first category was made up of drivers who were in a hurry and did not reduce the speed but overtook the others maintaining a good distance.
3.3. Speed Statistical Analysis from Observed Data
- Sidewalk–Roadway: these two categories were statistically different with a t-Test value higher than 1.96. This was because those who drove on the road had to pay attention to many things compared with those who proceeded on the sidewalk. The same can be said for the relationship between sidewalk and cycle path;
- Roadway–Pedestrian zone: these two intervals were separated because the speed and the behaviour of riders were statistically different;
- Pedestrian zone–Cycle path: these two intervals were separated. Differences could be found in the different environments and related behaviours this type of path entails as the bike path is included in the road.
- Street: Inherredsveien was the fastest street because the section chosen for the analysis was on a small hill and people could run faster than in the plain. The slowest road was Nordre Gata because this was a pedestrian zone and speed had to be reduced to avoid interaction with other road users;
- Crowding: the relationships between the categories did not change too much. The fastest category was those of riders overtaking other road users with a certain distance (1 m) followed by users without interactions. The slowest consisted of those who overtook with less than 50 cm from the others.
- Behaviour: the difference between the fastest and the slowest speed was very relevant in this case, 2 km/h. The same trend was shown by the simple analysis of the data considering one factor at a time;
- Path: the user on the road was faster than on the other paths but the slowest was the user who rode on a sidewalk due to interactions with pedestrians.
3.4. Analysis of the Choice Infrastructure Percentage by Users
- For the two streets with a good separation between the roadway and the cycle path (Inherredsveien and Elgeseter) all e-scooter users preferred to choose the cycle path (Table 10). This was also supported by the backward analysis because the program returned the same trend regardless of the variables considered within the model (Table 10, last column).
- For the street with a cycle lane adjacent to the roadway without any physical separation, it was possible to see a different behaviour with reference to the age of the users: a higher percentage of young people (18–35 years) chose to ride on the sidewalk (Table 11); the opposite was for the category > 35 years old. A backward analysis showed that for this street the only variable involving some changes was the Age. When street was the only variable, the results showed a higher probability to choose the sidewalk instead of the cycle lane (Table 11, last column).
4. Discussion
5. Conclusions
- Most e-scooter users are young men, but women are present too and the percentage is increasing.
- Gender and Age do not affect the speed of e-scooters.
- In terms of speed, there is not a great difference between bicycles (15–18 km/h) and e-scooters (15.4 km/h).
- Both cyclists and e-scooter drivers choose the infrastructure that makes them feel safer when travelling with limited interaction with weaker users.
- E-scooter riders prefer infrastructures separated from cars, such as cycle paths (90% and 60% in Inherredsveien and Elgeseter, respectively), bike lanes, or sidewalks (55% in Olav Tryggvasons Gate) which allow higher speed and less interactions.
- E-scooter users reduce speed in the presence of vulnerable users on the same way or in crowded conditions.
- The different types of e-scooters, shared or private, do not influence the choice of the infrastructure.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Tests of Model Effects | ||||||
---|---|---|---|---|---|---|
Source | Type I | Type III | ||||
Wald Chi-Square | df | Sig. | Wald Chi-Square | df | Sig. | |
(Intercept) | 4011.752 | 1 | 0.000 | 253.281 | 1 | 0.000 |
Street | 34.623 | 5 | 0.000 | 4.502 | 4 | 0.342 |
Number of people | 1.678 | 1 | 0.195 | 1.745 | 1 | 0.186 |
Gender | 0.769 | 1 | 0.381 | 1.408 | 1 | 0.235 |
Age | 0.808 | 1 | 0.369 | 0.787 | 1 | 0.375 |
Crowding | 7.896 | 3 | 0.048 | 5.838 | 3 | 0.120 |
Behaviour | 1.198 | 2 | 0.549 | 1.390 | 2 | 0.499 |
Path | 2.598 | 2 | 0.273 | 2.598 | 2 | 0.273 |
AddInfo | 0.002 | 1 | 0.965 | 0.002 | 1 | 0.965 |
Parameter Estimates | |||||||
---|---|---|---|---|---|---|---|
Parameter | B | Std. Error | 95% Wald Confidence Interval | Hypothesis Test | |||
Lower | Upper | Wald Chi-Square | df | Sig. | |||
(Intercept) | 13.96 | 21.7 | 9.69 | 18.22 | 41.18 | 1.00 | 0.00 |
(Street = OvreAlle) | 0.48 | 22.3 | −3.90 | 4.85 | 0.05 | 1.00 | 0.83 |
(Street = OlavTrygg) | −0.96 | 0.82 | −2.56 | 0.63 | 1.40 | 1.00 | 0.24 |
(Street = Nordre) | −2.92 | 0.85 | −4.59 | −1.25 | 11.69 | 1.00 | 0.00 |
(Street = Munke) | −0.85 | 12.4 | −3.27 | 1.57 | 0.47 | 1.00 | 0.49 |
(Street = Inherred) | 0.75 | 0.82 | −0.85 | 2.34 | 0.84 | 1.00 | 0.36 |
(Street = Elgeseter) | 0 a | ||||||
(Number of People = 2) | −1.83 | 13.8 | −4.54 | 0.88 | 1.75 | 1.00 | 0.186 |
(Number of People = 1) | 0 a | ||||||
(Gender = M) | 0.66 | 0.56 | −0.43 | 1.75 | 1.41 | 1.00 | 0.24 |
(Gender = F) | 0 a | ||||||
(Age = o) | 0.58 | 0.65 | −0.70 | 1.86 | 0.79 | 1.00 | 0.38 |
(Age = g) | 0 a | ||||||
(Crowding = distance 50 cm) | 0.17 | 16.1 | −2.98 | 3.33 | 0.01 | 1.00 | 0.91 |
(Crowding = distance 30 cm) | −1.29 | 18.9 | −5.00 | 2.42 | 0.47 | 1.00 | 0.49 |
(Crowding = distance 1 m) | 1.90 | 16.7 | −1.38 | 5.18 | 1.29 | 1.00 | 0.26 |
(Crowding = a no interaction) | 0 a | ||||||
(Behaviour = zig-zag) | 1.41 | 13.9 | −1.31 | 4.13 | 1.03 | 1.00 | 0.31 |
(Behaviour = straight) | 2.00 | 19.2 | −1.77 | 5.76 | 1.08 | 1.00 | 0.30 |
(Behaviour = reduction speed) | 0 a | ||||||
(Path = sidewalk) | −1.12 | 0.79 | −2.67 | 0.43 | 1.99 | 1.00 | 0.16 |
(Path = roadway) | 0.79 | 18.8 | −2.89 | 4.46 | 0.18 | 1.00 | 0.68 |
(Path = pedestrian zone) | 0 a | ||||||
(Path = cycle path) | 0 a | ||||||
(AddInfo = sharing e-scooter) | −0.03 | 0.62 | −1.25 | 1.19 | 0.00 | 1.00 | 0.96 |
(AddInfo = private e-scooter) | 0 a | ||||||
(Scale) | 12.055 b | 11.936 | 9.929 | 14.637 |
B | Std. Error | Sig. | |||
---|---|---|---|---|---|
Intercept | 13.545 | 1.983 | Value | Diff. Absolute Value | |
NOP | 2 | −1.741 | 1.372 | 0.205 | 0.031 |
1 | 0 | - | |||
Gender | M | 0.677 | 0.541 | 0.211 | −0.017 |
F | 0 | - | |||
Crowding | distance 50 cm | 0.478 | 1.572 | 0.131 | −0.001 |
distance 30 cm | −0.869 | 1.865 | |||
distance 1 m | 2.201 | 1.652 | |||
a no interaction | 0 | - | |||
Behaviour | zig-zag | 1.954 | 1.303 | 0.237 | 0.032 |
straight | 2.635 | 1.835 | |||
reduction of speed | 0 | - | |||
Path | sidewalk | −1.909 | 0.659 | 0.000 | 0.000 |
roadway | 0.723 | 1.016 | |||
pedestrian zone | −3.184 | 0.751 | |||
cycle path | 0 | - |
Categorical Variable Information | ||||
---|---|---|---|---|
N | Percentage | |||
Factor | Street | Overalle | 10 | 4.90 |
Olavtrygg | 45 | 22.1 | ||
Nordre | 45 | 22.1 | ||
Munke | 15 | 7.4 | ||
Inherred | 45 | 22.1 | ||
Elgeseter | 44 | 21.6 | ||
Total | 204 | 100.0 | ||
Number of person | 2 | 7 | 3.4 | |
1 | 197 | 96.6 | ||
Total | 204 | 100.0 | ||
Gender | M | 139 | 68.1 | |
F | 65 | 31.9 | ||
Total | 204 | 100.0 | ||
Age | 18–35 | 37 | 18.1 | |
>35 | 167 | 81.9 | ||
Total | 204 | 100.0 | ||
Crowding | distance 50 cm | 24 | 11.8 | |
distance 30 cm | 9 | 4.4 | ||
distance 1 m | 24 | 11.8 | ||
a no interaction | 147 | 72.1 | ||
Total | 204 | 100.0 | ||
Behaviour | zig-zag | 40 | 19.6 | |
straight | 153 | 75.0 | ||
reduction speed | 11 | 5.4 | ||
Total | 204 | 100.0 | ||
Path | sidewalk | 57 | 27.9 | |
roadway | 14 | 6.9 | ||
pedestrian zone | 45 | 22.1 | ||
cycle path | 88 | 43.1 | ||
Total | 204 | 100.0 | ||
Addinfo | sharing e-scooter | 159 | 77.9 | |
private e-scooter | 45 | 22.1 | ||
Total | 204 | 100.0 |
N | Min Speed (km/h) | Max Speed (km/h) | Average Speed | Std. Deviation | ||
---|---|---|---|---|---|---|
Dependent Variable | Speed | 204 | 9 | 27 | 15.4 | 3.88 |
Crowding | Average Speed Measured (km/h) | |||
---|---|---|---|---|
Cycle Path | Pedestrian Zone | Sidewalk | Total | |
No interaction | 16.59 | 12.81 | 15.00 | 15.63 |
Dist. ≤ 50 cm | 17.00 | 12.93 | 13.00 | 13.45 |
Dist. 1 m | 16.00 | 16.00 | 15.46 | 15.71 |
Average | 16.59 | 13.49 | 14.61 | 15.26 |
Parameter Estimates | |||||||
---|---|---|---|---|---|---|---|
Parameter | B | Std. Error | 95% Wald Confidence Interval | Hypothesis Test | |||
Lower | Upper | Wald Chi-Square | df | Sig. | |||
(Path = sidewalk) | 14.61 | 0.48 | 13.67 | 15.56 | 924.44 | 1.00 | 0.00 |
(Path = roadway) | 17.21 | 0.97 | 15.31 | 19.12 | 315.04 | 1.00 | 0.00 |
(Path = pedestrian zone) | 13.49 | 0.54 | 12.43 | 14.55 | 621.77 | 1.00 | 0.00 |
(Path = cycle path) | 16.59 | 0.39 | 15.83 | 17.35 | 1839.44 | 1.00 | 0.00 |
(Scale) | 13.169 a | 1.30 | 10.85 | 15.99 |
Average Speed | Sidewalk | Roadway | Ped Zone | Cycle Path | |
---|---|---|---|---|---|
[km/h] | t-Test Value | ||||
Sidewalk | 14.61404 | ||||
Roadway | 17.21429 | 2.40 | |||
Ped zone | 13.48889 | 1.55 | 3.35 | ||
Cycle path | 16.59091 | 3.20 | 0.60 | 4.66 |
B | Std. Error | Sig. | |||
---|---|---|---|---|---|
Intercept | 16.576 | 0.383 | Value | Diff. Absolute Value | |
Crowding | Distance 50 cm | −0.361 | 0.838 | 0.064 | 0.011 |
Distance 30 cm | −2.190 | 1.281 | |||
Distance 1 m | 1.387 | 0.851 | |||
No interaction | 0 | - | |||
Path | Sidewalk | −2.029 | 0.663 | 0.000 | 0.000 |
Roadway | 0.638 | 1.027 | |||
Pedestrian zone | −3.081 | 0.719 | |||
Cycle path | 0 | - |
Inherredsveien | |||||||||
---|---|---|---|---|---|---|---|---|---|
Male | Male | Male | Male | Female | Female | Female | Female | B.A | |
Old | Old | Young | Young | Old | Old | Young | Young | ||
Shared | Private | Shared | Private | Shared | Private | Shared | Private | ||
Psw [%] | 3.75 | 4.13 | 7.71 | 8.45 | 2.73 | 3.00 | 5.67 | 6.23 | 6.67 |
Pcp [%] | 96.25 | 95.87 | 92.29 | 91.55 | 97.27 | 97.00 | 94.33 | 93.77 | 93.33 |
Elgeseter | |||||||||
Male | Male | Male | Male | Female | Female | Female | Female | B.A | |
Old | Old | Young | Young | Old | Old | Young | Young | ||
Shared | Private | Shared | Private | Shared | Private | Shared | Private | ||
Psw [%] | 26.89 | 28.89 | 44.09 | 46.55 | 20.93 | 22.62 | 36.20 | 38.52 | 38.64 |
Pcp [%] | 73.11 | 71.11 | 55.91 | 53.45 | 79.07 | 77.38 | 63.80 | 61.48 | 61.36 |
OlavTrygg | |||||||||
---|---|---|---|---|---|---|---|---|---|
Male | Male | Male | Male | Female | Female | Female | Female | B.A | |
Old | Old | Young | Young | Old | Old | Young | Young | ||
Shared | Private | Shared | Private | Shared | Private | Shared | Private | ||
Psw [%] | 41.54 | 43.97 | 60.37 | 62.72 | 33.83 | 36.09 | 52.29 | 54.76 | 54.76 |
Pcp [%] | 58.46 | 56.03 | 39.63 | 37.28 | 66.17 | 63.91 | 47.71 | 45.24 | 45.24 |
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Pazzini, M.; Cameli, L.; Lantieri, C.; Vignali, V.; Dondi, G.; Jonsson, T. New Micromobility Means of Transport: An Analysis of E-Scooter Users’ Behaviour in Trondheim. Int. J. Environ. Res. Public Health 2022, 19, 7374. https://doi.org/10.3390/ijerph19127374
Pazzini M, Cameli L, Lantieri C, Vignali V, Dondi G, Jonsson T. New Micromobility Means of Transport: An Analysis of E-Scooter Users’ Behaviour in Trondheim. International Journal of Environmental Research and Public Health. 2022; 19(12):7374. https://doi.org/10.3390/ijerph19127374
Chicago/Turabian StylePazzini, Margherita, Leonardo Cameli, Claudio Lantieri, Valeria Vignali, Giulio Dondi, and Thomas Jonsson. 2022. "New Micromobility Means of Transport: An Analysis of E-Scooter Users’ Behaviour in Trondheim" International Journal of Environmental Research and Public Health 19, no. 12: 7374. https://doi.org/10.3390/ijerph19127374
APA StylePazzini, M., Cameli, L., Lantieri, C., Vignali, V., Dondi, G., & Jonsson, T. (2022). New Micromobility Means of Transport: An Analysis of E-Scooter Users’ Behaviour in Trondheim. International Journal of Environmental Research and Public Health, 19(12), 7374. https://doi.org/10.3390/ijerph19127374