Traffic delay caused by incidents is closely related to three variables: incident frequency, incident duration, and the number of lanes blocked by an incident that is directly related to the bottleneck capacity. Relatively, incident duration has been more extensively studied than incident frequency and the number of lanes blocked in an incident. In this study, we provide an investigation of the influencing factors for all of these three variables based on an incident data set that was collected in New York City (NYC). The information about the incidents derived from the identification can be used by incident management agencies in NYC for strategic policy decision making and daily incident management and traffic operation.
In identifying the influencing factors for incident frequency, a set of models, including Poisson and Negative Binomial regression models and their zero-inflated models, were considered. An appropriate model was determined based on a model decision-making tree. The influencing factors for incident duration were identified based on hazard-based models where Exponential, Weibull, Log-logistic, and Log-normal distributions were considered for incident duration. For the number of lanes blocked in an incident, the identification of the influencing factors was based on an Ordered Probit model which can better capture the order inherent in the number of lanes blocked in an incident. As identified in this study, rain is the only factor that significantly influenced incident frequency. For incident duration and the number of lanes blocked in an incident, various factors had significant impact. As concluded in this study, there is a strong need to identify the influencing factors in terms of different types of incidents and the roadways where the incidents occured.
[1]
S. Chandana Wirasinghe,et al.
DETERMINATION OF TRAFFIC DELAYS FROM SHOCK-WAVE ANALYSIS
,
1978
.
[2]
M G Karlaftis,et al.
Heterogeneity considerations in accident modeling.
,
1998,
Accident; analysis and prevention.
[3]
Fred L. Mannering,et al.
Use of duration models for predicting vehicular delay at a US/Canadian border crossing
,
1994
.
[4]
T F Golob,et al.
An analysis of the severity and incident duration of truck-involved freeway accidents.
,
1987,
Accident; analysis and prevention.
[5]
Asad J. Khattak,et al.
A Simple Time Sequential Procedure for Predicting Freeway Incident duration
,
1995,
J. Intell. Transp. Syst..
[6]
Ted Chira-chavala,et al.
The I-880 Field Experiment: Effectiveness Of Incident Detection Using Cellular Phones
,
1998
.
[7]
Fred L. Mannering,et al.
An exploratory hazard-based analysis of highway incident duration
,
2000
.
[8]
M. Hadi,et al.
ESTIMATING SAFETY EFFECTS OF CROSS-SECTION DESIGN FOR VARIOUS HIGHWAY TYPES USING NEGATIVE BINOMIAL REGRESSION
,
1995
.
[9]
R Hamerslag,et al.
ANALYSIS OF ACCIDENTS IN TRAFFIC SITUATIONS BY MEANS OF MULTIPROPORTIONAL WEIGHTED POISSON MODEL
,
1982
.
[10]
F Mannering,et al.
Analysis of the frequency and duration of freeway accidents in Seattle.
,
1991,
Accident; analysis and prevention.