Macrolevel accident prediction models for evaluating safety of urban transportation systems.

Auteur(s)
Hadayeghi, A. Shalaby, A.S. & Persaud, B.N.
Jaar
Samenvatting

A series of macrolevel prediction models that would estimate the number of accidents in planning zones in the city of Toronto, Ontario, Canada, as a function of zonal characteristics were developed. A generalized linear modeling approach was used in which negative binomial regression models were developed separately for total accidents and for severe (fatal and nonfatal injury) accidents as a function of socioeconomic and demographic, traffic demand, and network data variables. The variables that had significant effects on accident occurrence were the number of households, the number of major road kilometers, the number of vehicle kilometers traveled, intersection density, posted speed, and volume-capacity ratio. The geographic weighted regression approach was used to test spatial variations in the estimated parameters from zone to zone. Mixed results were obtained from that analysis.

Publicatie aanvragen

3 + 0 =
Los deze eenvoudige rekenoefening op en voer het resultaat in. Bijvoorbeeld: voor 1+3, voer 4 in.

Publicatie

Bibliotheeknummer
C 32683 (In: C 32674 S [electronic version only]) /81 / ITRD E828731
Uitgave

In: Statistical methods and modeling and safety data, analysis, and evaluation : safety and human performance, Transportation Research Record TRR No. 1840, p. 87-95 (3 Fig., 6 Tab., 14 Ref.)

Onze collectie

Deze publicatie behoort tot de overige publicaties die we naast de SWOV-publicaties in onze collectie hebben.