Growing concern over traffic safety has led to research into prediction of freeway crashes in an advanced traffic management and information systems environment. A crash likelihood prediction model was developed by using real-time traffic flow variables (measured through a series of underground sensors) potentially associated with crash occurrence. The issues related to real-time application, including range of stations and time slice duration to be examined, were also addressed. The methodology used, matched case-control logistic regression, was adopted from epidemiological studies in which every crash is a case and corresponding noncrashes act as controls. The 5-min average occupancy observed at the upstream station during the 5 to 10 min...
This research aims at developing real-time accident prediction models to be incorporated in Advanced...
Growing concern over traffic safety has led to research efforts directed towards predicting freeway ...
Data mining is the analysis of large observational datasets to find unsuspected relationships that...
Growing concern over traffic safety has led to research into prediction of freeway crashes in an adv...
The future of traffic management and highway safety lies in proactive traffic management systems. Cr...
Reactive traffic management strategies such as incident detection are becoming less relevant with th...
Reactive traffic management strategies such as incident detection are becoming less relevant with th...
Research into the application of freeway loop detector data for traffic safety has gained momentum i...
Research into the application of freeway loop detector data for traffic safety has gained momentum i...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
Objectives: The main objective of this paper is to investigate whether real-time traffic flow data, ...
Objectives: The main objective of this paper is to investigate whether real-time traffic flow data, ...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
In-ground loop detectors have recently been used by many researchers to investigate the links with r...
This research aims at developing real-time accident prediction models to be incorporated in Advanced...
Growing concern over traffic safety has led to research efforts directed towards predicting freeway ...
Data mining is the analysis of large observational datasets to find unsuspected relationships that...
Growing concern over traffic safety has led to research into prediction of freeway crashes in an adv...
The future of traffic management and highway safety lies in proactive traffic management systems. Cr...
Reactive traffic management strategies such as incident detection are becoming less relevant with th...
Reactive traffic management strategies such as incident detection are becoming less relevant with th...
Research into the application of freeway loop detector data for traffic safety has gained momentum i...
Research into the application of freeway loop detector data for traffic safety has gained momentum i...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
Objectives: The main objective of this paper is to investigate whether real-time traffic flow data, ...
Objectives: The main objective of this paper is to investigate whether real-time traffic flow data, ...
Predicting a crash occurrence is the key to traffic safety. Real-time identification of freeway segm...
In-ground loop detectors have recently been used by many researchers to investigate the links with r...
This research aims at developing real-time accident prediction models to be incorporated in Advanced...
Growing concern over traffic safety has led to research efforts directed towards predicting freeway ...
Data mining is the analysis of large observational datasets to find unsuspected relationships that...