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Journal ArticleDOI

Vehicular Congestion Detection and Short-Term Forecasting: A New Model With Results

Gustavo Marfia, +1 more
- 07 Jun 2011 - 
- Vol. 60, Iss: 7, pp 2936-2948
TLDR
An algorithm is devised that, exploiting probe vehicles, for any given road, identifies if it is congested or not and provides the estimation that a current congested state will last for at least a given time interval and can be applied to any type of road.
Abstract
While vehicular congestion is very often defined in terms of aggregate parameters, such as traffic volume and lane occupancies, based on recent findings, the interpretation that receives most credit is that of a state of a road where traversing vehicles experience a delay exceeding the maximum value typically incurred under light or free-flow traffic conditions. We here propose a new definition according to which a road is in a congested state (be it high or low) only when the likelihood of finding it in the same congested state is high in the near future. Based on this new definition, we devised an algorithm that, exploiting probe vehicles, for any given road 1) identifies if it is congested or not and 2) provides the estimation that a current congested state will last for at least a given time interval. Unlike any other existing approach, an important advantage of ours is that it can generally be applied to any type of road, as it neither needs any a priori knowledge nor requires the estimation of any road parameter (e.g., number of lanes, traffic light cycle, etc.). Further, it allows performing short-term traffic congestion forecasting for any given road. We present several field trials gathered on different urban roads whose empirical results confirm the validity of our approach.

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Citations
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Journal ArticleDOI

Road Traffic Forecasting: Recent Advances and New Challenges

TL;DR: The ultimate goal of this work is to set an updated, thorough, rigorous compilation of prior literature around traffic prediction models so as to motivate and guide future research on this vibrant field.
Journal ArticleDOI

Research on Traffic Flow Prediction in the Big Data Environment Based on the Improved RBF Neural Network

TL;DR: The experimental results indicate that the accuracy of prediction for Lozi and Tent chaotic time series and the measured traffic flow improves greatly in the big data environment using the proposed algorithms, which proves the effectiveness of the proposed algorithm in predicting traffic flow time series.
Journal ArticleDOI

Traffic congestion analysis at the turn level using Taxis' GPS trajectory data

TL;DR: The results support the feasibility of this approach for detecting and analyzing traffic congestion at the turn level and compared with other approaches that detect traffic congestion using GPS trajectory data, this approach can sense traffic congestion over a larger area and at a lower cost.
Proceedings ArticleDOI

Cooperative spectrum management in cognitive Vehicular Ad Hoc Networks

TL;DR: An experimental study of the spectrum availability and sensing accuracy in a moving vehicle and a collaborative spectrum management framework, called Cog-V2V, which allows the vehicles to share spectrum information, and to detect spectrum opportunities in the licensed band are proposed.
References
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Traffic signal settings

F V Webster
TL;DR: In this article, the authors present an approach to evaluate the number of delays at a signal-to-interception intersection and propose a formulae to calculate the average delay per vehicle.
Journal ArticleDOI

Short‐term traffic forecasting: Overview of objectives and methods

TL;DR: This field of research was examined by disaggregating the process of developing short‐term traffic forecasting algorithms into three essential clusters: the determination of the scope, the conceptual process of specifying the output and the process that includes several decisions concerning the selection of the proper methodological approach.
Proceedings ArticleDOI

Traffic Estimation And Prediction Based On Real Time Floating Car Data

TL;DR: This paper proposes two algorithms, respectively based on artificial neural networks and pattern-matching, designed to on-line perform short-term predictions of link travel speeds by using current and near-past link average speeds estimated by the OCTOTelematics FCD system.
Proceedings ArticleDOI

Surface street traffic estimation

TL;DR: Evaluation results show that traffic patterns on a road are very consistent over time, provided that the underlying road conditions do not change, which allows the system to use a longer history in identifying traffic conditions with higher accuracy.
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