The paper discusses the issues to face in applications of short-term traffic predictions on urban road networks and the opportunities provided by explicit and implicit models. Different specifications of Bayesian Networks and Artificial Neural Networks are applied for prediction of road link speed and are tested on a large floating car data set. Moreover, two traffic assignment models of different complexity are applied on a sub-area of the road network of Rome and validated on the same floating car data set.
Short-term traffic predictions on large urban traffic networks: applications of network-based machine learning models and dynamic traffic assignment models / Fusco, Gaetano; Colombaroni, Chiara; Comelli, Luciano; Isaenko, Natalia. - STAMPA. - (2015), pp. 93-101. (Intervento presentato al convegno Models and Technologies for Intelligent Transportation Systems tenutosi a Budapest, Hungary nel 3-5 June 2015).
Short-term traffic predictions on large urban traffic networks: applications of network-based machine learning models and dynamic traffic assignment models
FUSCO, Gaetano;COLOMBARONI, CHIARA;COMELLI, LUCIANO;ISAENKO, NATALIA
2015
Abstract
The paper discusses the issues to face in applications of short-term traffic predictions on urban road networks and the opportunities provided by explicit and implicit models. Different specifications of Bayesian Networks and Artificial Neural Networks are applied for prediction of road link speed and are tested on a large floating car data set. Moreover, two traffic assignment models of different complexity are applied on a sub-area of the road network of Rome and validated on the same floating car data set.File | Dimensione | Formato | |
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Fusco_Short-term-traffic_2015.pdf
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