Risk Factors Influencing Fatal Powered Two-Wheeler At-Fault and Not-at-Fault Crashes: An Application of Spatio-Temporal Hotspot and Association Rule Mining Techniques
Abstract
:1. Introduction
1.1. Background
1.2. Summary and Critique of the Literature
1.3. Study Objective and Contribution
- Where are the spatio-temporal hotspot locations of fatal PTW crashes in South Korea concentrated, and what are the trends associated with them?
- What are the chains of factors associated with PTW crashes at critical crash hotspots?
- Do the elements of the chains of risk factors influencing fatal PTW crashes at critical hotspots differ when the fault status of the PTW rider is considered?
2. Materials and Methods
2.1. Study Framework
2.2. Case Study Area and Data Description
2.2.1. Magnitude of the PTW Safety Problem in South Korea
2.2.2. Descriptive Statistics
2.3. Methodology
2.3.1. Spatio-Temporal Pattern Mining
2.3.2. Association Rule Mining
3. Results and Discussions
3.1. Spatio-Temporal Pattern Mining
3.1.1. Interesting Rules for All Fatal PTW Crashes at Critical Locations
3.1.2. Interesting Rules for Fatal PTW Crashes Based on PTW Rider’s Fault Status
4. Conclusions
4.1. Key Findings
- Identifying different types of fatal PTW crash hotspots in South Korea based on spatio-temporal information, together with their evolution patterns over time;
- Exploring the chains of contributory factors of fatal PTW crashes at the crash hotspots;
- Discovering and comparing the chains of contributory factors influencing fatal PTW crashes considering the fault status of the PTW rider.
4.2. Proposed Countermeasures
- The finding that most fatal PTW crash locations in Seoul have begun getting more popular in recent years and the significant positive trends identified highlight that the safety of PTW riders is gradually worsening. Therefore, there is a need to intensify rider/driver education and enforcement to help check traffic violations such as speeding, signal violations, and centerline violations to help reduce the fatality of these crashes. Education of road users could be undertaken through safety campaigns, and enforcement could be targeted at both the road users and the business owners who use PTWs for business;
- Excessive speeds by both riders and drivers could be managed by the application of traffic calming designs, such as introducing mini traffic circle configurations at intersections, speed humps, roadway diets, and speed limit reductions, where necessary, on rural and urban roads. In addition, other control measures which self-enforce speed reductions, such as horizontal and vertical deflections, could be explored to help reduce the approach speed of vehicles;
- While signal violations could be checked by deploying adequate red-light cameras and enforcement measures, it would be worthwhile to consider making traffic signals more visible for all road users. This can be achieved by carefully considering their design, placement, and luminance when choosing traffic signals. Clearly visible roadway signs should be placed at vantage points to remind riders of impending intersections and speed limits. In addition, adequately putting in measures to control the speeds of vehicles could reduce their chance of running red lights;
- Centerline violations at crash hotspots could be controlled by using countermeasures such as centerline rumble strips to alert drivers who may unintentionally drive across the centerlines. In addition, illuminated in-ground light-emitting diodes (LEDs) and retroreflective lane markings could be used in marking out the centerlines to help provide visual guidance and increase drivers’ awareness of road separations;
- The finding that fatal rider at-fault PTW crashes at hotspot locations is strongly associated with nighttime highlights that these riders may be fatigued, sleepy, or under the influence of drugs due to the need to overwork and achieve daily targets. Again, this problem could be tackled by educating riders on the need to rest when tired. While rumble strips and better lighting at night could be used to check crashes associated with drowsiness and low visibility, nighttime riding restrictions at hotspots could be meted out to PTW riders, particularly delivery company riders who are found culpable to ensure that riders obey traffic regulations even at night. In addition, there is a need to encourage the wearing of luminous vests to increase the conspicuity of riders. Similar interventions could be explored in checking PTW rider at-fault crashes during summer;
- Other vehicle drivers have been identified to have strong associations with traffic infringements such as reckless driving, signal violations, and safety distance violations, leading to PTW rider not-at-fault crashes. These violations are likely due to driver distraction and aggressive driving. To control rider not-at-fault crashes, vehicle drivers need to be trained on the need to stay focused and be on the lookout for PTW riders, especially when making lane changes. Additionally, there is a need to heighten enforcement such that repeat offenders of traffic infringements are subjected to harsher punishments to deter others;
- In the long term, interventions such as providing exclusive PTW lanes at crash hotspots and creating policies for anti-lock braking systems should be considered.
4.3. Study Limitations and Future Study Areas
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Study Objective | Location | Temporal Scope | Methods Adopted | Key Findings |
---|---|---|---|---|
Examining fatal and severe life-threatening accidents at intersections involving a powered two wheeler and another vehicle [11]. | Six countries (UK, The Netherlands, France, Poland, Italy, and Greece) | 2015 to 2016 (n = 92) | Causation analysis | Most vehicles do not yield to the PTW, and causal chains indicate that “looked but failed to see” is still a problem in this type of collision. |
Recognizing segments of motorcycle riders at a notably elevated risk of accidents and pinpointing the contributing risk factors involved [18]. | Norway | 2005 to 2008 (n = 3356) | Survey-based research | The majority of deadly incidents involving sports motorcycles are due to speeding. In Norway, young age, limited experience, hazardous actions, and an “unsafe” mentality appear to be particularly powerful risk elements for motorcyclists. |
Analyzing the factors contributing to motorcycle crashes using a safe systems approach by utilizing the case-series data collected from a recent study that employed a case–control methodology [22]. | Victoria, Australia | January 2012 and August 2014 (n = 235) | Survey-based research | Although PTW crashes, resulting in injury, involve a complex array of factors, several noteworthy connections exist between the primary contributing factor (rider or other road users) and secondary factors such as rider age, traffic density, speed, and road design issues. |
To gain a more profound comprehension of how these incidents happen [23]. | Bogota, Colombia | 2009 (n = 400) | Case study analysis | Various factors, including the absence of clear road markings, a complex intersection, a wide road, and an inexperienced motorcyclist, combine to contribute to the incidence of accidents of this nature. |
Validating a previous model to consider the geometric features of intersections when predicting the safety of motorcyclists [24]. | Italy | 2001 to 2006 | Experimental investigation | The speed at which vehicles approach an intersection and how the intersection is designed are important factors that can help explain why motorcycle accidents occur at junctions. |
Identifying the main risk factors linked with the severity of injuries sustained by motorcyclists in Rawalpindi, Pakistan [27]. | Rawalpindi, Pakistan | 2017 to 2019 | Random parameters logit model with heterogeneity in means and variances | The likelihood of severe and deadly injuries is higher for crashes that happen on weekdays, involve riders over the age of 50, involve a collision between a motorcycle and a passenger car or a heavy vehicle, have a female passenger on the back of the motorcycle, and result from exceeding the speed limit. |
Identifying the factors that increase the severity of injuries sustained by powered two-wheeler (PTW) riders in road accidents in Portugal [28]. | Portugal | 2010 to 2015 (n = 37,769) | Ordered logistic regression | Several factors can lead to more severe injuries, including riding a motorcycle in the PTW category, having rest days, driving on clean and dry roads between 20 h and 5 h and 59 min, traveling in rural areas with bent roads and national roads, being a male rider without a helmet, having a blood alcohol content between 0.5 g/L and 0.8 g/L, and being involved in an accident with a truck or other vehicles where the driver is injured. |
To determine the primary elements responsible for the error of bikers engaged in accidents [32]. | Iran | 2009 to 2012 (n = 90,418) | Classification and regression tree algorithm (CART) | The type of collision is the primary factor determining the probability of motorcyclists being at fault. Based on this information, the chances of a rear-end collision are the highest, while the chances of a side collision are the lowest. |
To analyze and contrast how certain factors impact the degree of harm suffered by drivers involved in accidents, regardless of whether they were responsible for the incident or not [33]. | North Carolina | 2009 to 2013 (n = 349,454) | Proportional odds model | The impact of road characteristics, weather conditions, and geometric characteristics on crash injury severity was similar for both at-fault and not-at-fault drivers. However, the age of the driver, physical condition, gender, vehicle type, and the number and type of traffic rule violations were identified as significant factors that affect the injury severity of not-at-fault drivers compared to at-fault drivers involved in the crash. |
Forecasting the extent of injury in a motorcycle accident caused by the rider at fault [34]. | Wyoming | 2007 to 2016 (n = 1210) | Binary logistic regression and classification trees (CT) | A number of factors that were recognized as similar by both approaches include speed limit displayed on signs, age, functional class of the highway, and adherence to speed regulations. |
To examine how factors contributing to the severity of injuries sustained in alcohol/drug-impaired car crashes vary throughout the day and over time, during three specific phases of crash cycles that occurred after the Great Recession [37]. | North Carolina | 2008 to 2017 | Random parameters logit models with heterogeneity in the means and variances | Significant temporal instability of risk factor impacts was identified. |
To analyze how the COVID-19 pandemic and resulting mobility alterations have affected road traffic safety [35]. | Los Angeles and New York | March, 2020 | Change-point detection and difference-in-differences analysis | The areas where accidents occur have frequently changed in terms of both location and time. |
To determine the crucial elements associated with the severity of motorcycle injuries [38]. | Victoria, Australia | 2006 to 2017 (n = 24,680) | Association rule mining and hotspot analysis | Collisions with trucks, overtaking, overspeeding, collisions late at night/early morning, and collisions with fixed objects are critical factors influencing motorcycle safety in hotspots. |
Category | Frequency | Percentage | Category | Frequency | Percentage |
---|---|---|---|---|---|
Year | Road segment (location) | ||||
2012 | 606 | 17.05 | Bridge section | 44 | 1.24 |
2013 | 564 | 15.86 | At intersection | 1128 | 31.73 |
2014 | 578 | 16.26 | At pedestrian crossing | 43 | 1.21 |
2015 | 570 | 16.03 | Near pedestrian crossing | 12 | 0.34 |
2016 | 616 | 17.33 | Near intersection | 332 | 9.34 |
2017 | 621 | 17.47 | Main road | 1994 | 56.09 |
Season | Other road segments (tunnel/underpass/overpass) | 2 | 0.06 | ||
Fall (Sep.–Nov.) | 1028 | 28.92 | At-fault party | ||
Spring (Mar.–May) | 930 | 26.16 | Agricultural machinery | 8 | 0.23 |
Summer (Jun.–Aug.) | 1068 | 30.04 | Bicycle | 8 | 0.23 |
Winter (Dec.–Feb.) | 529 | 14.88 | Passenger car | 651 | 18.31 |
Time of day | Construction machinery | 39 | 1.10 | ||
Daytime (6 a.m.–5:59 p.m.) | 2022 | 56.88 | Engine-propelled bicycle | 4 | 0.11 |
Nighttime (6 p.m.–5:59 a.m.) | 1533 | 43.12 | Freight truck | 328 | 9.23 |
Day of week | Minibus/van | 99 | 2.78 | ||
Monday | 486 | 13.67 | Other vehicle type | 20 | 0.56 |
Tuesday | 483 | 13.59 | Two wheeler | 2393 | 67.31 |
Wednesday | 476 | 13.39 | Unknown | 5 | 0.14 |
Thursday | 491 | 13.81 | Not-at-fault party | ||
Friday | 522 | 14.68 | Agricultural machinery | 8 | 0.23 |
Saturday | 572 | 16.09 | Bicycle | 13 | 0.37 |
Sunday | 525 | 14.77 | Passenger car | 597 | 16.79 |
Type of collision | Construction machinery | 43 | 1.21 | ||
Angle | 923 | 25.96 | Engine-propelled bicycle | 6 | 0.17 |
Crossing | 102 | 2.87 | Freight truck | 326 | 9.17 |
Driving on edge of road | 5 | 0.14 | Minibus/van | 138 | 3.88 |
Driving on road | 14 | 0.39 | No partner | 1020 | 28.69 |
Head-on | 351 | 9.87 | Other vehicle type | 17 | 0.48 |
Other crash types | 726 | 20.42 | Pedestrian | 163 | 4.59 |
Rear-end | 386 | 10.86 | Two wheeler | 1221 | 34.35 |
Rollover | 393 | 11.05 | Unknown | 3 | 0.08 |
Run-off | 108 | 3.04 | Number of vehicles involved | ||
Sideswipe | 233 | 6.55 | One | 1204 | 33.87 |
Collision on sidewalk | 7 | 0.20 | Two or more | 2351 | 66.13 |
Collision at work zone | 307 | 8.64 | Number of casualties | ||
Violation | One | 2786 | 78.37 | ||
Violation of intersection method | 192 | 5.40 | Two | 595 | 16.74 |
Reckless driving/riding | 2040 | 57.38 | Three or more | 174 | 4.89 |
Other violations | 206 | 5.79 | |||
Pedestrian protection violation | 19 | 0.53 | |||
Centerline crossing | 358 | 10.07 | |||
Safety distance violation | 118 | 3.32 | |||
Signal violation | 546 | 15.36 | |||
Over-speeding | 76 | 2.14 |
Emerging Hotspot Classification | Negative Trend | Positive Trend | Total (Significant Trends) | Total (Non-Significant Trends) | Grand Total | ||
---|---|---|---|---|---|---|---|
Significant Trends at 90% CL | Non-Significant Trends at 90% CL | Significant at 90% CL | Non-Significant at 90% CL | ||||
Consecutive Hotspot | 0 | 0 | 181 | 13 | 181 | 13 | 194 |
New Hotspot | 0 | 1 | 1 | 3 | 1 | 4 | 5 |
No Pattern Detected | 589 | 1626 | 773 | 360 | 1362 | 1986 | 3348 |
Sporadic Hotspot | 0 | 0 | 0 | 8 | 0 | 8 | 8 |
Grand Total | 589 | 1627 | 955 | 384 | 1544 | 2011 | 3555 |
No. | Rules | S% | C% | Lift | LIC |
---|---|---|---|---|---|
1 | {At-fault party: freight truck} => {Day of week: Monday} | 1.64 | 60.00 | 3.92 | - |
2 | {At-fault party: freight truck, Violation: safety distance violation} => {Day of week: Monday} | 1.09 | 100.00 | 6.54 | 1.67 |
3 | {Road segment: near intersection} => {Violation: centerline crossing} | 3.83 | 41.18 | 3.01 | - |
4 | {Road segment: near intersection, Type of collision: head-on} => {Violation: centerline crossing} | 1.09 | 66.67 | 4.88 | 1.62 |
5 | {Road segment: near intersection, Year: 2012} => {Violation: centerline crossing} | 1.64 | 100.00 | 7.32 | 2.43 |
6 | {Road segment: near pedestrian crossing} => {Type of collision: angle} | 1.64 | 75.00 | 2.98 | - |
7 | {Road segment: near pedestrian crossing, Violation: centerline crossing} => {Type of collision: angle} | 1.09 | 100.00 | 3.98 | 1.33 |
8 | {Not-at-fault party: minibus/van} => {Type of collision: angle} | 3.28 | 66.67 | 2.65 | - |
9 | {Not-at-fault party: minibus/van, Violation: signal violation} => {Type of collision: angle} | 1.64 | 100.00 | 3.98 | 1.50 |
10 | {Road segment: at pedestrian crossing} => {Violation: signal violation} | 1.09 | 50.00 | 2.41 | - |
11 | {Road segment: at pedestrian crossing, Year: 2013} => {Violation: signal violation} | 1.09 | 100.00 | 4.82 | 2.00 |
12 | {Road segment: bridge section} => {Type of collision: other crash type} | 2.19 | 66.67 | 2.39 | - |
13 | {Road segment: bridge section, Year: 2017} => {Type of collision: other crash type} | 1.09 | 100.00 | 3.59 | 1.50 |
14 | {Violation: over-speeding} => {Season: summer} | 2.73 | 71.43 | 2.33 | - |
15 | {Violation: over-speeding, Year: 2013} => {Season: summer} | 1.09 | 100.00 | 3.27 | 1.40 |
16 | {At-fault party: freight truck} => {Not-at-fault party: PTW} | 2.19 | 80.00 | 2.32 | - |
17 | {At-fault party: freight truck, Violation: safety distance violation} => {Not-at-fault party: PTW} | 1.09 | 100.00 | 2.90 | 1.25 |
18 | {Violation: centerline crossing} => {Not-at-fault party: passenger car} | 5.46 | 40.00 | 2.15 | - |
19 | {Violation: centerline crossing, Year: 2012} => {Not-at-fault party: passenger car} | 2.73 | 83.33 | 4.49 | 2.08 |
20 | {Violation: centerline crossing, Year: 2014} => {Not-at-fault party: passenger car} | 1.09 | 50.00 | 2.69 | 1.25 |
21 | {Type of collision: rear-end} => {At-fault party: passenger car} | 3.83 | 46.67 | 2.14 | - |
22 | {Type of collision: rear-end, Violation: over-speeding} => {At-fault party: passenger car} | 1.09 | 100.00 | 4.58 | 2.14 |
23 | {Type of collision: rear-end, Year: 2013} => {At-fault party: passenger car} | 2.19 | 66.67 | 3.05 | 1.43 |
24 | {Violation: signal violation} => {Type of collision: angle} | 10.38 | 50.00 | 1.99 | - |
25 | {Violation: signal violation, Year: 2012} => {Type of collision: angle} | 2.19 | 100.00 | 3.98 | 2.00 |
26 | {Violation: signal violation, Year: 2015} => {Type of collision: angle} | 2.19 | 80.00 | 3.18 | 1.60 |
27 | {Type of collision: angle} => {Road segment: at intersection} | 13.66 | 54.35 | 1.95 | - |
28 | {Type of collision: angle, Violation: signal violation} => {Road segment: at intersection} | 9.84 | 94.74 | 3.40 | 1.74 |
No. | Rules | S% | C% | Lift | LIC |
---|---|---|---|---|---|
1 | {Day of week: Saturday} => {At-fault party: PTW} | 13.11 | 82.76 | 1.18 | - |
2 | {Day of week: Saturday, Road segment: other road segments} => {At-fault party: PTW} | 8.20 | 93.75 | 1.34 | 1.13 |
3 | {Day of week: Saturday, Violation: reckless driving/riding} => {At-fault party: PTW} | 9.29 | 94.44 | 1.35 | 1.14 |
4 | {Number of casualties: two} => {At-fault party: PTW} | 18.58 | 80.95 | 1.16 | - |
5 | {Number of casualties: two, Road segment: other road segments} => {At-fault party: PTW} | 10.93 | 86.96 | 1.24 | 1.07 |
6 | {Number of casualties: two, Time of day: nighttime} => {At-fault party: PTW} | 14.75 | 87.10 | 1.25 | 1.08 |
7 | {Number of casualties: two, Violation: reckless driving/riding} => {At-fault party: PTW} | 8.20 | 93.75 | 1.34 | 1.16 |
8 | {Road segment: other road segments} => {At-fault party: PTW} | 43.72 | 80.81 | 1.16 | - |
9 | {Road segment: other road segments, Violation: reckless driving/riding} => {At-fault party: PTW} | 31.69 | 89.23 | 1.28 | 1.10 |
10 | {Road segment: other road segments, Time of day: nighttime} => {At-fault party: PTW} | 33.88 | 87.32 | 1.25 | 1.08 |
11 | {Road segment: other road segments, Time of day: nighttime, Violation: reckless driving/riding} => {At-fault party: PTW} | 24.04 | 93.62 | 1.34 | 1.07 |
12 | {Road segment: other road segments, Season: summer} => {At-fault party: PTW} | 14.75 | 87.10 | 1.25 | 1.08 |
13 | {Time of day: nighttime} => {At-fault party: PTW} | 53.01 | 76.98 | 1.10 | - |
14 | {Time of day: nighttime, Violation: reckless driving/riding} => {At-fault party: PTW} | 31.69 | 89.23 | 1.28 | 1.16 |
15 | {Time of day: nighttime, Year: 2015} => {At-fault party: PTW} | 9.84 | 85.71 | 1.23 | 1.11 |
16 | {Time of day: nighttime, Type of collision: other crash type} => {At-fault party: PTW} | 16.94 | 81.58 | 1.17 | 1.06 |
17 | {Time of day: nighttime, Type of collision: other crash type, Violation: reckless driving/riding} => {At-fault party: PTW} | 12.57 | 88.46 | 1.26 | 1.08 |
18 | {Time of day: nighttime, Year: 2013} => {At-fault party: PTW} | 12.57 | 79.31 | 1.13 | 1.03 |
No. | Rules | S% | C% | Lift | LIC |
---|---|---|---|---|---|
1 | {Type of collision: rear-end} => {Not-at-fault party: PTW} | 4.92 | 60.00 | 1.74 | - |
2 | {Type of collision: rear-end, Year: 2013} => {Not-at-fault party: PTW} | 2.73 | 83.33 | 2.42 | 1.39 |
3 | {Type of collision: head-on} => {Not-at-fault party: PTW} | 5.46 | 55.56 | 1.61 | - |
4 | {Type of collision: head-on, Year: 2017} => {Not-at-fault party: PTW} | 1.64 | 75.00 | 2.18 | 1.35 |
5 | {Type of collision: head-on, Year: 2016} => {Not-at-fault party: PTW} | 2.19 | 66.67 | 1.94 | 1.20 |
6 | {Type of collision: head-on, Violation: signal violation} => {Not-at-fault party: PTW} | 2.19 | 66.67 | 1.94 | 1.20 |
7 | {Number of vehicles involved: two or more} => {Not-at-fault party: PTW} | 34.43 | 51.64 | 1.50 | - |
8 | {Number of vehicles involved: two or more, Violation: safety distance violation} => {Not-at-fault party: PTW} | 5.46 | 71.43 | 2.07 | 1.38 |
9 | {Number of vehicles involved: two or more, Road segment: near pedestrian crossing} => {Not-at-fault party: PTW} | 1.09 | 66.67 | 1.94 | 1.29 |
10 | {Number of vehicles involved: two or more, Road segment: bridge section} => {Not-at-fault party: PTW} | 2.19 | 66.67 | 1.94 | 1.29 |
11 | {Number of vehicles involved: two or more, Type of collision: sideswipe} => {Not-at-fault party: PTW} | 4.37 | 66.67 | 1.94 | 1.29 |
12 | {Number of vehicles involved: two or more, Time of day: daytime} => {Not-at-fault party: PTW} | 14.75 | 65.85 | 1.91 | 1.28 |
13 | {Number of vehicles involved: two or more, Time of day: daytime, Violation: safety distance violation} => {Not-at-fault party: PTW} | 3.28 | 85.71 | 2.49 | 1.30 |
14 | {Number of vehicles involved: two or more, Time of day: daytime, Violation: reckless driving/riding} => {Not-at-fault party: PTW} | 4.92 | 81.82 | 2.38 | 1.24 |
15 | {Number of vehicles involved: two or more, Time of day: daytime, Year: 2013} => {Not-at-fault party: PTW} | 2.19 | 80.00 | 2.32 | 1.21 |
16 | {Number of vehicles involved: two or more, Season: spring, Violation: safety distance violation} => {Not-at-fault party: PTW} | 1.64 | 75.00 | 2.18 | 1.24 |
17 | {Number of vehicles involved: two or more, Season: spring, Year: 2015} => {Not-at-fault party: PTW} | 1.64 | 75.00 | 2.18 | 1.24 |
18 | {Number of vehicles involved: two or more, Season: spring, Time of day: daytime} => {Not-at-fault party: PTW} | 4.37 | 72.73 | 2.11 | 1.20 |
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Tamakloe, R. Risk Factors Influencing Fatal Powered Two-Wheeler At-Fault and Not-at-Fault Crashes: An Application of Spatio-Temporal Hotspot and Association Rule Mining Techniques. Informatics 2023, 10, 43. https://doi.org/10.3390/informatics10020043
Tamakloe R. Risk Factors Influencing Fatal Powered Two-Wheeler At-Fault and Not-at-Fault Crashes: An Application of Spatio-Temporal Hotspot and Association Rule Mining Techniques. Informatics. 2023; 10(2):43. https://doi.org/10.3390/informatics10020043
Chicago/Turabian StyleTamakloe, Reuben. 2023. "Risk Factors Influencing Fatal Powered Two-Wheeler At-Fault and Not-at-Fault Crashes: An Application of Spatio-Temporal Hotspot and Association Rule Mining Techniques" Informatics 10, no. 2: 43. https://doi.org/10.3390/informatics10020043
APA StyleTamakloe, R. (2023). Risk Factors Influencing Fatal Powered Two-Wheeler At-Fault and Not-at-Fault Crashes: An Application of Spatio-Temporal Hotspot and Association Rule Mining Techniques. Informatics, 10(2), 43. https://doi.org/10.3390/informatics10020043