Predicting the duration of non-recurring road incidents by cluster-specific models

Autor: Justin Dauwels, Wentong Cai, Ulrich Fastenrath, Banishree Ghosh, Muhammad Tayyab Asif, Hongliang Guo
Přispěvatelé: School of Electrical and Electronic Engineering, School of Computer Science and Engineering, Interdisciplinary Graduate School (IGS), 2016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC), Energy Research Institute @ NTU (ERI@N)
Jazyk: angličtina
Rok vydání: 2016
Předmět:
Zdroj: ITSC
Popis: In metropolitan areas, about 50% of traffic delays are caused by non-recurring traffic incidents. Hence, accurate prediction of the duration of such events is critical for traffic management authorities. In this paper, we study the predictability of the duration of traffic incidents by considering various external factors. As incident data is typically sparse, training a large number of models (for instance, model for each road) is not possible. On the other hand, training one model for the entire network may not be a suitable solution, as such a model will be too generalized and consequently unsuitable for many relatively rare scenarios. Therefore, we propose to solve this issue by first grouping incidents through common latent similarities among them and then training data-driven predictors for each group. In our numerical analysis we consider incident data from Singapore and the Netherlands. Our results show that by training cluster-specific models we can reduce the prediction error by 19.41% for incidents in Singapore and by 17.8% for incidents in the Netherlands. Accepted version
Databáze: OpenAIRE