What is it about?
Predicting the probability of traffic breakdown can be used as an important input for creating advanced traffic management strategies that are specifically implemented to reduce this probability. However, most, if not all, past research on the probability of breakdown has focused on freeways. This study focuses on the prediction of arterial breakdown probability based on archived traffic data for use in real-time transportation system operations. The breakdown of an arterial segment is defined in this study as a segment's operating condition under the level of service F according to the highway capacity manual threshold, although any other level of service could be used. Data from point detection and automatic vehicle identification matching technologies are aggregated in space and time to allow their use as inputs to the prediction model. A decision tree approach, combined with binary logistic regression, is used in this study to predict the breakdown probability based on these inputs. The model is validated using data not used in the development of the model. The research shows that the root mean square error and the mean absolute error of the prediction was 13.6 and 11%, respectively. The analysis also shows that the best set of parameters used in the prediction can be different for different links, due to the various causes of breakdown and characteristics of different links. Predicting the probability of breakdown in ahead of time will allow the agencies to change the signal-timing plan that can delay or eliminate the breakdown.
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Why is it important?
This methodology will be useful for different agencies who are working on Active Traffic Managment (ATM) especially on Arterial Street. This model will help the agencies for short-time prediction of traffic congestion analyzing the current traffic state data. Therefore, proper ATM strategies could be applied (e.g. signal retiming, access control etc.) to avoid/reduce the effect of traffic congestion.
Perspectives
I believe this article presents a noble idea to predict the arterial breakdown. This is also a good example of implementing data mining techniques on transportation data. I hope this paper could also help the research community to implement different data mining/machine learning techniques on the transportation field.
Dr. Shahadat Iqbal
Florida International University
Read the Original
This page is a summary of: Predicting arterial breakdown probability: A data mining approach, Journal of Intelligent Transportation Systems, January 2017, Taylor & Francis,
DOI: 10.1080/15472450.2017.1279543.
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