International audienceThis paper addresses the problem of dynamic travel time (DT T) forecasting within highway traffic networks using speed measurements. Definitions, computational details and properties in the construction of DT T are provided. DT T is dynamically clustered using a K-means algorithm and then information on the level and the trend of the centroid of the clusters is used to devise a predictor computationally simple to be implemented. To take into account the lack of information in the cluster assignment for the new predicted values, a weighted average fusion based on a similarity measurement is proposed to combine the predictions of each model. The algorithm is deployed in a real time application and the performance is eval...
We consider the problem of using real-time floating car data to construct vehicle travel time predic...
Travel time is probably the most important indicator of the level of service of a highway, and it is...
Nowadays, the deployment of sensing technology permits to collect massive 1 spatio-temporal data in ...
International audienceThis paper addresses the problem of dynamic travel time (DT T) forecasting wit...
International audienceThis paper addresses the problem of travel time forecasting within a highway. ...
International audienceTraffic forecasting is considered nowadays as one of the most important traffic ...
The current state-of-practice for predicting travel times assumes that the speeds along the various ...
Frequent road traffic congestion is now a global issue. One of the proposed solutions to this proble...
Travel time prediction plays an important role in the research domain of Advanced Traveler Informati...
Abstract. Prediction of travel time has major concern in the research domain of Intelligent Transpor...
US Transportation Collectionhttps://doi.org/10.36501/0197-9191/20-0122020PDFTech ReportMohammadian, ...
This work bases on encouraging a generous and conceivable estimation for modified an algorithm for v...
This monograph presents a simple, innovative approach for the measurement and short-term prediction ...
In this paper, a new practice-ready method for the real-time estimation of traffic conditions and tr...
An iterative travel time forecasting scheme, named the Advanced Multilane Prediction based Real-time...
We consider the problem of using real-time floating car data to construct vehicle travel time predic...
Travel time is probably the most important indicator of the level of service of a highway, and it is...
Nowadays, the deployment of sensing technology permits to collect massive 1 spatio-temporal data in ...
International audienceThis paper addresses the problem of dynamic travel time (DT T) forecasting wit...
International audienceThis paper addresses the problem of travel time forecasting within a highway. ...
International audienceTraffic forecasting is considered nowadays as one of the most important traffic ...
The current state-of-practice for predicting travel times assumes that the speeds along the various ...
Frequent road traffic congestion is now a global issue. One of the proposed solutions to this proble...
Travel time prediction plays an important role in the research domain of Advanced Traveler Informati...
Abstract. Prediction of travel time has major concern in the research domain of Intelligent Transpor...
US Transportation Collectionhttps://doi.org/10.36501/0197-9191/20-0122020PDFTech ReportMohammadian, ...
This work bases on encouraging a generous and conceivable estimation for modified an algorithm for v...
This monograph presents a simple, innovative approach for the measurement and short-term prediction ...
In this paper, a new practice-ready method for the real-time estimation of traffic conditions and tr...
An iterative travel time forecasting scheme, named the Advanced Multilane Prediction based Real-time...
We consider the problem of using real-time floating car data to construct vehicle travel time predic...
Travel time is probably the most important indicator of the level of service of a highway, and it is...
Nowadays, the deployment of sensing technology permits to collect massive 1 spatio-temporal data in ...