Abstract

BackgroundUrban safety performance functions are used to predict crash frequencies, mostly based on Negative Binomial (NB) count models. They could be differentiated for considering homogeneous subsets of segments/intersections and different predictors.Materials and methodsThe main research questions concerned: a) finding the best possible subsets for segments and intersections for safety modelling, by discussing the related problems and inquiring into the variability of predictors within the subsets; b) comparing the modelling results with the existing literature to highlight common trends and/or main differences; c) assessing the importance of additional crash predictors, besides traditional variables. In the context of a National research project, traffic volumes, geometric, control and additional variables were collected for road segments and intersections in the City of Bari, Italy, with 1500 fatal+injury related crashes (2012–2016). Six NB models were developed for: one/two-way homogeneous segments, three/four-legged, signalized/unsignalized intersections.ResultsCrash predictors greatly vary within the different subsets considered. The effect of vertical signs on minor roads/driveways, critical sight distance, cycle crossings, pavement/markings maintenance was specifically discussed. Some common trends but also differences in both types and effect of crash predictors were found by comparing results with literature.ConclusionThe disaggregation of urban crash prediction models by considering different subsets of segments and intersections helps in revealing the specific influence of some predictors. Local characteristics may influence the relationships between well-established crash predictors and crash frequencies. A significant part of the urban crash frequency variability remains unexplained, thus encouraging research on this topic.

Highlights

  • The use of Safety Performance Functions (SPFs) is crucial for road safety purposes

  • The reliability and variability of calibration factors with geographic and road-related variables should be studied in detail

  • Fatal and injury crash data were collected in the period: 2012–2016.1 They are crashes provided with generic information, exact localization, information about vehicles and persons involved, crash type and circumstances, road-related variables

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Summary

Introduction

Several functions were developed for rural and urban roads [1, 12,13,14, 23, 26]. The effect of some variables (e.g., traffic volumes, geometric characteristics) may depend on the geographic context a single calibration factor may not solve transferability issues [4, 10]. The reliability and variability of calibration factors with geographic and road-related variables should be studied in detail Urban safety performance functions are used to predict crash frequencies, mostly based on Negative Binomial (NB) count models. They could be differentiated for considering homogeneous subsets of segments/ intersections and different predictors

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