Currently, mainly aggregated statistics are used for bicycle crash risk calculations. Thus, the understanding of spatial patterns at local scale levels remains vague. Using an agent-based flow model and a bicycle crash database covering 10 continuous years of observation allows us to calculate and map the crash risk on various spatial scales for the city of Salzburg (Austria). In doing so, we directly account for the spatial heterogeneity of crash occurrences. Additionally, we provide a measure for the statistical robustness on the level of single reference units and consider modifiable areal unit problem (MAUP) effects in our analysis. This study is the first of its kind. The results facilitate a better understanding of spatial patterns of...
In order to be effective, road safety officers must have a complete overview of the accidents in the...
Over the last decade, bicycle ridership has been encouraged as a sustainable mode of transportation ...
Traditional accident risk prediction models need adequate data on explanatory variables, most import...
Currently, mainly aggregated statistics are used for bicycle crash risk calculations. Thus, the unde...
Promoting cycling aims at reducing congestion and pollution as well as encouraging healthy and susta...
The majority of bicycle crash studies aim at determining risk factors and estimating crash risks by ...
Objective: Urban and transport planners worldwide have recently designed and implemented policies fo...
The majority of bicycle crash studies aim at determining risk factors and estimating crash risks by ...
Problem Bicycle volumes are increasing in many regions worldwide leading to higher relevance of an i...
The characteristics of bicycle crashes in cities where bicycles are a minor transport mode have rece...
The study contributes to literature on bicycle safety by building on the traditional count regressio...
Increased cycling has led to a surge in bicycle-motorized vehicle accidents and casualties in re-cen...
The study contributes to literature on bicycle safety by building on the traditional count regressio...
Traditional accident risk prediction models need adequate data on explanatory variables, most import...
Increased cycling has led to a surge in bicycle-motorized vehicle accidents and casualties in re-cen...
In order to be effective, road safety officers must have a complete overview of the accidents in the...
Over the last decade, bicycle ridership has been encouraged as a sustainable mode of transportation ...
Traditional accident risk prediction models need adequate data on explanatory variables, most import...
Currently, mainly aggregated statistics are used for bicycle crash risk calculations. Thus, the unde...
Promoting cycling aims at reducing congestion and pollution as well as encouraging healthy and susta...
The majority of bicycle crash studies aim at determining risk factors and estimating crash risks by ...
Objective: Urban and transport planners worldwide have recently designed and implemented policies fo...
The majority of bicycle crash studies aim at determining risk factors and estimating crash risks by ...
Problem Bicycle volumes are increasing in many regions worldwide leading to higher relevance of an i...
The characteristics of bicycle crashes in cities where bicycles are a minor transport mode have rece...
The study contributes to literature on bicycle safety by building on the traditional count regressio...
Increased cycling has led to a surge in bicycle-motorized vehicle accidents and casualties in re-cen...
The study contributes to literature on bicycle safety by building on the traditional count regressio...
Traditional accident risk prediction models need adequate data on explanatory variables, most import...
Increased cycling has led to a surge in bicycle-motorized vehicle accidents and casualties in re-cen...
In order to be effective, road safety officers must have a complete overview of the accidents in the...
Over the last decade, bicycle ridership has been encouraged as a sustainable mode of transportation ...
Traditional accident risk prediction models need adequate data on explanatory variables, most import...