E-Scooter Presence in Urban Areas: Are Consistent Rules, Paying Attention and Smooth Infrastructure Enough for Safety?
Abstract
:1. Introduction
2. Literature Review
2.1. Classification of Individual Micromobility Vehicles
2.2. Interaction with Infrastructure, Other Road Users and Collision Dynamics
2.3. Research Topics
- On changing geographical context, a survey on electric micromobility carried out in the Middle East reports that the greatest barriers to e-scooter usage are the deficiency of infrastructure, followed by the weather and poor safety. Most of the interviewees had never used an e-scooter (82%) or had used one once (10%; mainly abroad). Similar to the EU, the prevalent use motivation was leisure, replacing (if available) public transport or ride-hailing services (taxis, Uber, etc.) [60].
- Safety: the perception of low safety is one of the major barriers to e-scooter usage and in many cities an increase in accidents was evident after e-scooter pilot deployment took place [118]. Given that only events involving the police, medical teams, or insurance companies are registered, these figures could be strongly underestimated, as it already holds for accidents involving bikes. The most recurring accident type involves only the driver, mainly due to the lack of familiarity with the vehicle or to deficient instructions provided by the provider, following the adage “sell first, safety later” [119,120]. A recent study in New Zealand found that the total cost of e-scooter injuries over the course of 7 months was over GBP 650,000, with an average of GBP 850/injury [121]. The literature focuses mainly on accident databases (e.g., [122,123]), the type and location of lesions and the use of personal protection (although non-compulsory, helmets are used by less than 5% of users [91,124,125]). Other works surveyed access to emergency rooms following e-scooter events [126,127], showing that a relevant share of the events happened within the tenth trip and listing the main reported causes (i.e., irregular surface, followed by allegedly faulty vehicle, and collision with another vehicle or with fixed obstacles). The same sources emphasize that 40% injures involve non-residents and 16% of injuries follow a rule infringement (i.e., driving in a state of intoxication or carrying a passenger). The incidence of e-scooter events among hospitalization records of minors, people hit and people under the influence is investigated in [128]. In summary, the majority of the events involving e-scooters appear to be linked to the surprise effect/a lack of experience, dangerous behavior and poor infrastructure (extension and quality). Events on the road and involving frequent users are more severe, perhaps due to higher speeds.
2.4. Regulation
- Operators will decrease from 7 to 3: each successful bidder will be allowed to supply between 2500 and 3000 vehicles, with up to an additional 1500 vehicles per bidder allowed if a few supply and service criteria are satisfied in areas close to at least 20 railway and underground stations;
- The concession lasts for 3 years; the fee per vehicle to be paid to the municipality is EUR 1–4/month;
- A maximum of 3000 vehicles are allowed in the central areas, while the remainder will be split over a total area of 95 km2;
- The location of vehicles will be monitored automatically every hour. In the event of repeated infringements, suspension and revocation are possible;
- Bidders must have already operated an authorized service inclusive of more than 1000 vehicles in cities bigger than 750,000 inhabitants;
- Both allowed or prohibited parking areas are defined by the municipality of Rome;
- Vehicles must be equipped with metal plate and QR code to allow immediate identification; speed will be adjusted automatically from 20 km/h to 6 km/h in pedestrian areas;
- Rental is permitted only to people over 18 after a compulsory registration with a valid identity card.
3. Materials and Methods
3.1. Interaction Study (IS)
3.1.1. IS-Settings
- Car Ford Kuga 1.5 TDCI, 120 CV, diesel, manual gearbox, cruise control. Dimensions 454/184/170 cm; weight 1516 kg.
- E-scooter Aerlang h6 v2, e-engine 0.5 kW, max speed 40 km/h; lithium-ion battery 840 Wh, range 50–60 km. Tubeless tyres 10”, disk brake on both tyres, ABS. Front and rear suspensions. Dimensions 119/20 cm, handlebar width 50 cm, adjustable height. Front and rear lights. Three modes. Max load 120 kg. Unladen weight 20 kg.
- Bike Medium size with tessellated tyres and skate brakes on both wheels. Reflective, front and rear lights. Wheels 26”, height 106 cm, unladen weight 13 kg.
- Mobile phone Redmi Note 9 for filming onboard the car. Processor MTK Helio G85 freq 2,0 GHz, RAM 4 GB and 128 GB archive, quad-core camera 48 MP;
- Selfie stick and strips to secure the phone without hampering the driver;
3.1.2. IS-Survey Structure
- 1/2/3/4/5/6/7—see Table 4
- 8/9/10/11—look at the video and press stop when you would brake;
- 12—on comparing artificial and natural light condition, you braked… (earlier, later, the same);
- 13—location memory (yes–no);
- 14—sequence memory: is the third video about an e-scooter? (yes–no);
- 15—in natural light conditions, which is the most demanding interaction (overtaking an e-scooter, overtaking a bike, a bike crossing my path, an e-scooter crossing my path);
- 16—in artificial light conditions, the most demanding interactions are those… (involving e-scooters, involving bikes, the same as those in natural light).
3.2. Vehicle Performance (VP)
VP Settings
- E-scooter Model #1 is the Aerlang h6 v2, detailed above.
- E-scooter Model #2 is equipped with a 0.3 kW electric engine, lithium-ion battery. Tubeless wheels 8.5”. Electric brake with regeneration on the front wheel and an actuated disk brake on rear wheel. No ABS nor front/rear suspensions.
- Smartphone Xiaomi Redmi 9S; mounted on the e-scooter footboard and with principal axles detailed as in Figure 4 below to evaluate the acceleration profiles (x = longitudinal; y = lateral; z = vertical)
- Accelerometer Analyzer version 16.11.27;
- Video-camera Action-cam Xiaomi Yi 4K;
4. Results
4.1. IS-Discussion
- The outliers have been discarded (i.e., the stated time precedes the appearance of the weak user in the video);
- If the stated time is greater than the video duration, it is labelled “99”;
- The instant of the appearance of the weak user in the video is subtracted from the stated time.
- In Video 1, a pedestrian wearing red appears right before the bike, which might be confusing;
- The front wheel of bikes is more prominent than that of e-scooters’, so bikers appear later;
- In terms of gender, even if the percentages for location and sequence tests are comparable, the perception of behaving more prudently (i.e., braking earlier) in artificial light conditions is greater among females. Both genders deem e-scooter manoeuvres to be more dangerous (with crossing more dangerous than overtaking). The male gender considers bike crossing slightly more dangerous than bike overtaking, unlike the female gender, which indicates the opposite (i.e., the bike turning left is perceived as less predictable). In artificial light conditions, both pay more attention to e-scooter manoeuvres (perceived as 5.5 times more dangerous), while about one in three declare that they does not perceive a difference.
- In terms of age, respondents < 40 years have better identified location and sequence, while people > 40 believe they adopt more prudent behaviour in artificial light conditions. The two groups agree in attributing a greater perceived danger to e-scooter crossing and overtaking; people > 40 perceive bike overtaking to be more dangerous than bike crossing (i.e., a bike turning left is perceived as less predictable). In artificial light conditions, both agree upon paying greater attention to e-scooters (which are perceived to be from 4.5 to 8 times more dangerous), while about one in three sees no difference.
- In terms of driving license ownership, both those owning a license for less than 10 years and those not owning one at all performed better in the two test questions. On the other hand, people with greater driving experience exhibit more prudent behaviour in artificial light conditions. All licence owners agree in attributing e-scooter crossing and overtaking to be a greater perceived danger. In artificial light conditions, those owning a driving license for more than 3 years pay more attention to e-scooters, while those who do not have a license would pay more attention to bikes.
4.2. VP Discussion
4.2.1. Acceleration
4.2.2. Braking
4.2.3. Comfort and Vibration
- For S1, vertical acceleration spans between [−0.5; 0.5] m/s2.
- For S2, vertical acceleration spans between [−1; 1] m/s2.
- For S3, vertical acceleration spans between [−3.5; 3.5] m/s2.
5. Scope for Further Research and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Pros | Cons |
---|---|
Easy to use and easy to park Low-cost solution Reduced travel time compared to car, public transport and foot/bike Contributes to reduced urban congestion | Low-quality infrastructure Misperception by other road users Imprudent behaviour by individual users and towards weak users Mistrust and sense of impunity |
Item | Rule |
---|---|
Classification | E-scooters are considered as similar to bikes, except when stated otherwise |
Driving style | E-scooters must be driven in standing position; drivers must keep both hands on the handlebar except when showing intention to turn |
Speed limit | 20 km/h on road/bike lanes; 6 km/h in pedestrian areas |
Setting | E-scooters are allowed on all pedestrian/cycle areas and along urban and extra-urban roads on bike lanes; circulation is prohibited on sidewalks and counterflow, except in two-lane roads |
Power | Electric powertrain—Max 0.5 kW |
Age-worthiness | Users must be aged over 14 and must wear a helmet if underage |
Night rules | Both frontal and rear lights must be on; a rear cataphote must also be present; drivers must wear a high-visibility jacket |
Other rules | It is forbidden to carry people/pets onboard and to be towed by other vehicles; rental and free-float services must have insurance |
Parking | It is forbidden to park on sidewalks except when stated otherwise and parking is allowed in bike and motorcycle stalls; e-scooter operators must require a photo of the standing e-scooter at the release, from which the location is clearly identifiable |
Fines | Vehicles whose equipment is different from the requirements are confiscated and owners will be fined EUR 100–400; improper parking is fined EUR 41–168, other infringements are fined EUR 50–250 |
Equipment | Starting 1 July 2022, new e-scooters must be equipped with turn indicators and brakes on both wheels; existing vehicles must comply prior to 1 January 2024 |
Item | References |
---|---|
Gender | [31], [49], [50], [51], [58], [77], [85], [87], [90], [96], [97], [108], [111], [125], [126], [127], [128], [135] |
Age | [31], [49], [51], [58], [59], [69], [77], [85], [90], [96], [98], [108], [111], [117], [125], [126], [127], [128], [135] |
City size | [28], [49], [59], [87], [96], [112], [127], [135], [136] |
Driving experience | [60], [77], [112], [136] |
Previous experience with e-scooters | [49], [60], [87], [112], [128] |
Use frequency of e-scooters | [28], [31], [51], [58], [77], [87], [96], [112], [113], [126], [135] |
Main use motivation of e-scooters | [31], [51], [59], [60], [96], [97], [112], [116], [127], [136] |
Safety perception | [49], [59], [60], [78], [85], [87], [88], [91], [96], [98], [109], [112], [120], [127], [128], [135] |
Light condition perception | [127], [137] |
Question | Options | Answers | %Share |
---|---|---|---|
1—Gender | Female | 101 | 44.9 |
Male No answer | 123 1 | 54.7 0.4 | |
2—Age | <40 | 106 | 47.1 |
>40 | 119 | 52.9 | |
3—Living | City over 100,000 inhabitants | 98 | 43.6 |
City below 100,000 inhabitants No answer | 122 5 | 54.2 2.2 | |
4—Driving Licence Age | No + no answer | 8 | 3.6 |
Less than 3 years | 11 | 4.9 | |
3 to 6 years | 29 | 12.9 | |
6 to 10 years | 28 | 12.4 | |
Over 10 years | 149 | 66.2 | |
5—Previous Experience with e-scooters | Yes | 45 | 20.0 |
No + no answer | 181 | 80.0 | |
6—Use frequency | Never + no answer | 181 | 80.0 |
Once per month | 29 | 12.9 | |
2–3 times per month | 3 | 1.7 | |
Once per week | 4 | 1.8 | |
Regular use | 8 | 3.6 | |
7—Main use motivation (45 user = 100%) | Work/study | 23 | 51.1 |
Free time/leisure | 20 | 44.4 | |
No answer | 2 | 4.5 |
Video n° | 1 | 2 | 3 | 4 | |
---|---|---|---|---|---|
Setting | Light [D = daylight; A = artificial] | D | D | A | A |
Weak user involved | cyclist | e-scooter | e-scooter | cyclist | |
When the weak user appears… | Dist. Car—Crosswalk [m] | 20.00 | 20.00 | 20.00 | 20.00 |
Dist. User—Crosswalk [m] | 5.50 | 5.50 | 2.52 | 2.52 | |
When the braking occurs… | Time [s] | 1.00 | 1.20 | 0.88 | 0.86 |
Dist. Car—Crosswalk [m] | 10.00 | 10.50 | 9.90 | 10.10 | |
Dist. User—Crosswalk [m]. | 2.70 | 2.70 | 0.15 | 0.15 |
Video | 99 | Outliers | No Answer | Valid Answers | Avg. Time | Std. Dev. | ||||
---|---|---|---|---|---|---|---|---|---|---|
N° | % | N° | % | N° | % | N° | % | [s] | [s2] | |
1 | 70 | 31 | 34 | 15 | 5 | 2 | 116 | 52 | 1.00 | 0.684 |
2 | 45 | 20 | 8 | 4 | 4 | 2 | 168 | 75 | 1.20 | 0.797 |
3 | 37 | 16 | 18 | 8 | 3 | 1 | 167 | 74 | 0.88 | 0.616 |
4 | 21 | 9 | 25 | 11 | 5 | 2 | 174 | 77 | 0.86 | 0.607 |
Item | Option | N° | % |
---|---|---|---|
Location | Correct answer | 126 | 56 |
Wrong answer | 96 | 43 | |
Sequence | Correct answer | 150 | 67 |
Wrong answer | 73 | 32 | |
By comparing artificial and natural light conditions, you brake… | The same | 110 | 49 |
Earlier | 64 | 28 | |
Later | 50 | 22 | |
In natural light conditions, which is the most demanding interaction | E-scooter crossing | 106 | 47 |
Overtaking an e-scooter | 61 | 27 | |
Overtaking a bike | 30 | 13 | |
Bike crossing | 28 | 12 | |
In artificial light conditions, the most demanding interaction is… | Involving an e-scooter | 127 | 56 |
Involving a bike | 22 | 10 | |
The same as in daylight. | 76 | 34 |
Item | Option | Gender | Age | Driving License [year] | ||||||
---|---|---|---|---|---|---|---|---|---|---|
F | M | <40 | >40 | >10 | 10 | 6 | 3 | No | ||
Location | Correct answer | 62 | 64 | 71 | 55 | 74 | 20 | 21 | 7 | 3 |
Wrong answer | 39 | 59 | 35 | 64 | 75 | 8 | 8 | 4 | 4 | |
Sequence | Correct answer | 70 | 79 | 77 | 73 | 96 | 21 | 18 | 8 | 6 |
Wrong answer | 31 | 44 | 29 | 46 | 53 | 7 | 11 | 3 | 1 | |
By comparing artificial and natural light conditions, you brake… | The same | 45 | 66 | 51 | 60 | 74 | 15 | 9 | 6 | 5 |
Earlier | 36 | 28 | 24 | 40 | 49 | 3 | 9 | 1 | 2 | |
Later | 20 | 29 | 31 | 19 | 26 | 10 | 11 | 4 | 0 | |
In natural light conditions which is the most demanding interaction | E-scooter crossing | 42 | 64 | 55 | 51 | 63 | 17 | 16 | 6 | 4 |
Overtaking an e-scooter | 30 | 30 | 27 | 34 | 42 | 6 | 6 | 3 | 3 | |
Overtaking a bike | 16 | 14 | 12 | 18 | 23 | 3 | 2 | 2 | 0 | |
Bike crossing | 13 | 15 | 12 | 16 | 21 | 2 | 5 | 0 | 0 | |
In artificial light conditions, the most demanding interaction is… | Involving an e-scooter | 55 | 72 | 58 | 69 | 84 | 18 | 19 | 4 | 2 |
Involving a bike | 10 | 12 | 7 | 15 | 16 | 2 | 1 | 0 | 3 | |
The same as in daylight | 36 | 39 | 41 | 35 | 49 | 8 | 9 | 7 | 2 | |
Total | 101 | 123 | 106 | 119 | 149 | 28 | 29 | 11 | 7 |
Mean | Dev std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|
−0.056 | 1.114 | 0.082 | −0.218 | 0.106 | −0.684 | 184 | 0.495 |
V4 | Mean = 5.307; N = 185; Std dev = 1.225; Err std mean = 0.090 | ||||||
V3 | Mean = 5.363; N = 185; Std dev = 1.221; Err std mean = 0.090 |
Mean | Dev std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|
−1.15 | 1.284 | 0.104 | −0.356 | −0.944 | −11.009 | 150 | 0.000 |
V1 | Mean = 5.116; N = 151; Std dev = 1.629; Err std mean = 0.132 | ||||||
V2 | Mean = 6.266; N = 151; Std dev = 1.443; Err std mean = 0.117 |
Gender | Mean | Dev std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Female Male | −0.852 −1.363 | 1.098 1.376 | 0.137 0.025 | −1.126 −1.658 | −0.578 −1.068 | −6.205 −9.186 | 63 85 | 0.000 0.000 |
V1 | Female: Mean = 5.41, N = 64, Std dev = 1.59, Err std mean = 0.198 Male: Mean = 4.91; N = 86; Std dev = 1.64; Err std mean = 0.177 | |||||||
V2 | Female: Mean = 6.26, N = 64, Std dev = 1.54, Err std mean = 0.193 Male: Mean = 6.27, N = 86, Std dev = 1.38, Err std mean = 0.149 |
Gender | Mean | Dev std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Female Male | −0.093 0.174 | 1.255 0.983 | 0.139 0.097 | −0.369 −0.019 | 0.183 0.367 | −0.672 1.784 | 81 101 | 0.503 0.077 |
V3 | Female: Mean = 5.38, N = 82, Std dev = 1.50, Err std mean = 0.165 Male: Mean = 5.35; N = 102; Std dev = 0.96; Err std mean = 0.095 | |||||||
V4 | Female: Mean = 5.47, N = 82, Std dev = 1.20, Err std mean = 1.132 Male: Mean = 5.17, N = 102, Std dev = 1.24, Err std mean = 0.123 |
Age | Mean | Dev std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
<40 >40 | 0.132 0.230 | 1.132 1.075 | 0.112 1.110 | −0.370 0.012 | 0.107 0.448 | −1.098 2.098 | 88 95 | 0.275 0.039 |
V3 | <40: Mean = 5.170; N = 89; Std dev = 1.340; Err std mean = 0.142 >40: Mean = 5.542; N = 96; Std dev = 1.075; Err std mean = 1.110 | |||||||
V4 | <40: Mean = 5.302; N = 89; Std dev = 1.146; Err std mean = 1.122 >40: Mean = 5.312; N = 96; Std dev = 1.300; Err std mean = 0.133 |
Age | Mean | Dev Std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
<40 >40 | −1.078 −1.217 | 0.971 1.522 | 0.114 0.172 | −1.305 −1.561 | 0.851 −0.874 | −9.479 −7.063 | 72 77 | 0.000 0.000 |
V1 | <40: Mean = 5.020; N = 73; Std dev = 1.547; Err std mean = 0.181 >40: Mean = 5.206; N = 78; Std dev = 1.708; Err std mean = 0.193 | |||||||
V2 | <40: Mean = 6.098; N = 73; Std dev = 1.570; Err std mean = 1.184 >40: Mean = 6.423; N = 78; Std dev = 1.304; Err std mean = 0.148 |
Guess | Mean | Dev Std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Wrong Correct | −1.218 −1.119 | 1.367 1.215 | 0.163 0.137 | −1.544 −1.391 | −0.892 −0.847 | −7.457 −8.186 | 69 78 | 0.000 0.000 |
V1 | Wrong: Mean = 5.121; N = 70; Std dev = 1.595 Correct: Mean = 5.161; N = 79; Std dev = 1.581 | |||||||
V2 | Wrong: Mean = 6.334; N = 70; Std dev = 1.342 Correct: Mean = 6.280; N = 79; Std dev = 1.380 |
Guess | Mean | Dev Std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Wrong Correct | 0.171 −0.030 | 1.132 1.104 | 0.124 0.110 | −0.076 −0.249 | 0.418 0.189 | 1.377 −0.274 | 82 99 | 0.172 0.785 |
V3 | Wrong: Mean = 5.42; N = 83; Std dev = 1.00; Err std mean = 0.11 Correct: Mean = 5.37; N = 100; Std dev = 1.3; Err std mean = 0.13 | |||||||
V4 | Wrong: Mean = 5.25; N = 83; Std dev = 1.01; Err std mean = 0.11 Correct: Mean = 5.40; N = 100; Std dev = 1.3; Err std mean = 0.13 |
Gender | Freq | % | Age | Freq | % | ||
---|---|---|---|---|---|---|---|
Female | Wrong | 41 | 41.4 | <40 | Wrong | 42 | 40.0 |
Correct | 58 | 58.6 | Correct | 63 | 60.0 | ||
Male | Wrong | 55 | 45.8 | ≥40 | Wrong | 54 | 47.4 |
Correct | 65 | 54.2 | Correct | 60 | 52.6 |
Guess | Mean | Dev Std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Wrong Correct | −1.163 −1.146 | 1.222 1.323 | 0.176 0.131 | −1.517 −1.406 | −0.808 −0.886 | −6.591 −8.743 | 47 101 | 0.000 0.000 |
V1 | Wrong: Mean = 5.31; N = 48; Std dev = 1.33; Err std mean = 0.19 Correct: Mean = 5.0; N = 102; Std dev = 1.76; Err std mean = 0.17 | |||||||
V2 | Wrong: Mean = 6.47; N = 48; Std dev = 0.75; Err std mean = 0.11 Correct: Mean = 6.2; N = 102; Std dev = 1.67; Err std mean = 0.17 |
Guess | Mean | Dev Std | Err Std Mean | Min | Max | T | DF | Sig (2-Code) |
---|---|---|---|---|---|---|---|---|
Wrong Correct | −0.065 −0.113 | 1.326 1.005 | 0.173 0.090 | −0.411 −0.064 | 0.281 0.291 | −0.377 1.260 | 58 124 | 0.708 0.210 |
V3 | Wrong: Mean = 5.43; N = 59; Std dev = 0.87; Err std mean = 0.11 Correct: Mean = 5.33; N = 125; Std dev = 1.4; Err std mean = 0.12 | |||||||
V4 | Wrong: Mean = 5.50; N = 59; Std dev = 0.99; Err std mean = 0.13 Correct: Mean = 5.22; N = 125; Std dev = 1.3; Err std mean = 0.12 |
Gender | Freq | % | Age | Freq | % | ||
---|---|---|---|---|---|---|---|
Female | Wrong | 35 | 35.4 | <40 | Wrong | 33 | 31.4 |
Correct | 64 | 64.6 | Correct | 72 | 68.6 | ||
Male | Wrong | 37 | 30.8 | ≥40 | Wrong | 39 | 34.2 |
Correct | 83 | 69.2 | Correct | 75 | 65.8 |
a | b | c | d | |
---|---|---|---|---|
Model #1 | −0.046 | 0.976 | −0.154 | 0.008 |
Model #2 | −0.041 | 0.778 | 0.231 | 0.012 |
Video | Accelerometer | |||
---|---|---|---|---|
Mean Rear Light Activ. Time [s] | Mean Rear Light-to-Wheel Lost Time [s] | Mean Total Braking System Activ. Time [s] | Mean Braking System Activ. Time [s] | |
Model #1 | 0.25 | 0.15 | 0.4 | 0.4 |
Model #2 | 0.15 | 0.35 | 0.5 | 0.5 |
Accelerometer [m/s2] | On-Field Measure [m/s2] | |
---|---|---|
Model #1 | 4.10 | 4.15 |
Model #2 | 3.10 | 3.20 |
Smooth Asphalt S1 | Paved Asphalt S2 | Worn Asphalt S3 | ||||
---|---|---|---|---|---|---|
DCI | IRI | DCI | IRI | DCI | IRI | |
Model #1 | 0.98 | 8.4 | 0.38 | 31 | 0.27 | 40 |
Model #2 | 0.96 | 19.61 | 0.32 | 46 | 0.22 | 55 |
λ [cm] | vm [km/h] |
---|---|
70 | 25 |
55 | 20 |
41 | 15 |
27 | 10 |
14 | 5 |
11 | 4 |
5.5 | 2 |
p-Value Tests | |||
---|---|---|---|
Natural Light | Artificial Light | ||
Total sample | 0.000 | 0.495 | |
Gender | Female | 0.000 | 0.503 |
Male | 0.000 | 0.077 | |
Age | <40 | 0.000 | 0.275 |
>40 | 0.000 | 0.039 | |
Location | Wrong | 0.000 | 0.172 |
Correct | 0.000 | 0.785 | |
Sequence | Wrong | 0.000 | 0.708 |
Correct | 0.000 | 0.210 |
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della Mura, M.; Failla, S.; Gori, N.; Micucci, A.; Paganelli, F. E-Scooter Presence in Urban Areas: Are Consistent Rules, Paying Attention and Smooth Infrastructure Enough for Safety? Sustainability 2022, 14, 14303. https://doi.org/10.3390/su142114303
della Mura M, Failla S, Gori N, Micucci A, Paganelli F. E-Scooter Presence in Urban Areas: Are Consistent Rules, Paying Attention and Smooth Infrastructure Enough for Safety? Sustainability. 2022; 14(21):14303. https://doi.org/10.3390/su142114303
Chicago/Turabian Styledella Mura, Matteo, Serena Failla, Nicolò Gori, Alfonso Micucci, and Filippo Paganelli. 2022. "E-Scooter Presence in Urban Areas: Are Consistent Rules, Paying Attention and Smooth Infrastructure Enough for Safety?" Sustainability 14, no. 21: 14303. https://doi.org/10.3390/su142114303
APA Styledella Mura, M., Failla, S., Gori, N., Micucci, A., & Paganelli, F. (2022). E-Scooter Presence in Urban Areas: Are Consistent Rules, Paying Attention and Smooth Infrastructure Enough for Safety? Sustainability, 14(21), 14303. https://doi.org/10.3390/su142114303