TY - JOUR
PY - 2019//
TI - Identification of differential risk hotspots for collision and vehicle type in a directed linear network
JO - Accident analysis and prevention
A1 - Briz-Redón, Álvaro
A1 - Martínez-Ruiz, Francisco
A1 - Montes, Francisco
SP - 105278
EP - 105278
VL - 132
IS -
N2 - Traffic accidents can take place in very different ways and involve a substantially distinct number and types of vehicles. Thus, it is of interest to know which parts of a road structure present an overrepresentation of a specific type of traffic accident, specially for some typologies of collisions and vehicles that tend to trigger more severe consequences for the users being involved. In this study, a spatial approach is followed to estimate the risk that different types of collisions and vehicles present in the central area of Valencia (Spain), considering the accidents observed in this city during the period 2014-2017. A directed spatial linear network representing the non-pedestrian road structure of the area of interest was employed to guarantee an accurate analysis of the point pattern. A kernel density estimation technique was used to approximate the probability of risk along the network for each collision and vehicle type. A procedure based on these estimates and the sample size locally available within the network was designed and tested to determine a set of differential risk hotspots for each typology of accident considered. A Monte Carlo based simulation process was then defined to assess the statistical significance of each of the differential risk hotspots found, allowing the elaboration of rankings of importance and the possible rejection of the least significant ones.
Copyright © 2019 Elsevier Ltd. All rights reserved.
Language: en
LA - en SN - 0001-4575 UR - http://dx.doi.org/10.1016/j.aap.2019.105278 ID - ref1 ER -