An intelligent system to enhance traffic safety analysis

Traffic phenomena are characterized by complexity and uncertainty, hence require sophisticated information management to identify patterns relevant to safety. Traffic information systems have emerged with the aim to ease traffic congestion and improve road safety. However, assessment of traffic safe...

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Bibliographic Details
Main Authors: Gregoriades, A., Mouskos, K., Ruiz-Juri, N., Parker, N., Hadjilambrou, I., Krishna, Aneesh
Other Authors: Eugen Borcoci
Format: Conference Paper
Published: IARIA 2011
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/49220
Description
Summary:Traffic phenomena are characterized by complexity and uncertainty, hence require sophisticated information management to identify patterns relevant to safety. Traffic information systems have emerged with the aim to ease traffic congestion and improve road safety. However, assessment of traffic safety and congestion requires significant amount of data which in most cases is not available. This work illustrates an approach that aims to alleviate this problem through the integration of two mature technologies namely, simulation basedDynamic Traffic Assignment (DTA) and Bayesian Belief Networks (BBN). The former generates traffic information that is utilised by a Bayesian engine to quantify accident risk. Dynamic compilation of accident risks is used to gives rise to overall traffic safety. Preliminary results from this research have been validated.