Predicting crash risk and identifying crash precursors on Korean expressways using loop detector data
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- @Article{Kwak:2016:AAP,
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author = "Ho-Chan Kwak and Seungyoung Kho",
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title = "Predicting crash risk and identifying crash precursors
on Korean expressways using loop detector data",
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journal = "Accident Analysi \& Prevention",
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volume = "88",
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pages = "9--19",
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year = "2016",
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ISSN = "0001-4575",
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DOI = "doi:10.1016/j.aap.2015.12.004",
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URL = "http://www.sciencedirect.com/science/article/pii/S0001457515301561",
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abstract = "In order to improve traffic safety on expressways, it
is important to develop proactive safety management
strategies with consideration for segment types and
traffic flow states because crash mechanisms have some
differences by each condition. The primary objective of
this study is to develop real-time crash risk
prediction models for different segment types and
traffic flow states on expressways. The mainline of
expressways is divided into basic segment and ramp
vicinity, and the traffic flow states are classified
into uncongested and congested conditions. Also, Korean
expressways have irregular intervals between loop
detector stations. Therefore, we investigated on the
effect and application of the detector stations at
irregular intervals for the crash risk prediction on
expressways. The most significant traffic variables
were selected by conditional logistic regression
analysis which could control confounding factors. Based
on the selected traffic variables, separate models to
predict crash risk were developed using genetic
programming technique. The model estimation results
showed that the traffic flow characteristics leading to
crashes are differed by segment type and traffic flow
state. Especially, the variables related to the
intervals between detector stations had a significant
influence on crash risk prediction under the
uncongested condition. Finally, compared with the
single model for all crashes and the logistic models
used in previous studies, the proposed models showed
higher prediction performance. The results of this
study can be applied to develop more effective
proactive safety management strategies for different
segment types and traffic flow states on expressways
with loop detector stations at irregular intervals.",
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keywords = "genetic algorithms, genetic programming, Crash risk
prediction, Segment type, Traffic flow state,
Conditional logistic regression analysis, Loop
detector",
- }
Genetic Programming entries for
Ho-Chan Kwak
Seungyoung Kho
Citations