Abstract

First responders including firefighters, paramedics, and police officers are among the first to respond to vehicle collisions on roads and highways. Police officers conduct regular roadside Please check if the country name is correct traffic controls and checks on urban and rural roads, and highways. Once first responders begin such operations, they are vulnerable to motor vehicle collisions by oncoming traffic, a circumstance that calls for a better understanding of contributing factors and the extent to which they affect tragic outcomes. In light of factors identified in the literature, this paper applies machine learning methods including decision tree and random forest to a subset of the National Collision Database (NCDB) of Canada that includes information on collisions between two vehicles (one in parked position) and the severity of these collisions as measured by having or not having injuries. Findings reveal that key measurable, predictable, and sensible factors such as time, location, and weather conditions, as well as the interconnections among them, can explain the severity of collisions that may happen between motor vehicles and first responders who are working alongside the roads. Analysis from longitudinal data is rich and the use of automated methods can be used to predict and assess the risk and vulnerability of first responders while responding to or operating on different roads and conditions.

Highlights

  • At the scene of a traffic emergency, the first responders including police officers, firefighters, rescuers, paramedics, and emergency medical technicians are the trained personnel who are among the first to arrive and provide assistance

  • There are several responsibilities that each officer performs during a shift, which increases their exposure to collisions

  • By reviewing the existing literature and employing machine learning methods to five years of data on collisions, this paper aims to identify the factors that influence collisions between vehicles and first responders, those who are working on roadsides

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Summary

Introduction

At the scene of a traffic emergency, the first responders including police officers, firefighters, rescuers, paramedics, and emergency medical technicians are the trained personnel who are among the first to arrive and provide assistance. There are several responsibilities that each officer performs during a shift, which increases their exposure to collisions These duties include investigating vehicle crashes, assisting motorists, deploying/providing equipment, overseeing work zones, patrolling, performing traffic control, performing a traffic stop, and training [2]. The likelihood of being struck by a vehicle is low, the consequences are potentially fatal, given the speed and weight of approaching vehicles Reducing these risks through technology development, procedural changes, training, and education require a better understanding of the underlying causes of such incidents. By reviewing the existing literature and employing machine learning methods to five years of data on collisions, this paper aims to identify the factors that influence collisions between vehicles and first responders, those who are working on roadsides. Section five concludes the paper, acknowledging limitations and proposing future directions in light of the findings

Factors Influencing Road Traffic Collisions
First Responder’s Collisions
Materials and Methods
Methodology and Algorithms
Examining Predictions through the Machine Learning Method
Findings
Conclusions
Full Text
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