Over the past decade, many approaches have been introduced for traffic speed prediction. However, providing fine-grained, accurate, time-efficient, and adaptive traffic speed prediction for a growing transportation network where the size of the network keeps increasing and new traffic detectors are constantly deployed has not been well studied. To address this issue, this paper presents DistTune based on long short-term memory (LSTM) and the Nelder-Mead method. When encountering an unprocessed detector, DistTune decides if it should customize an LSTM model for this detector by comparing the detector with other processed detectors in the normalized traffic speed patterns they have observed. If a similarity is found, DistTune directly shares ...
Accurate predictive modeling of traffic flow is critically important as it allows transportation use...
In general, the availability of an accurate machine learning (ML) model plays a particularly importa...
With the world constantly improving their standard of living, an increase in usage of motor vehicles...
Short-term traffic speed prediction has been an important research topic in the past decade, and man...
Over the past decade, several approaches have been introduced for short-term traffic prediction. How...
EXECUTIVE SUMMARY Traffic congestions on Riverside Freeway, California, SR 91 usually happen on wee...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
This paper addresses the problem of stretch wide short-term prediction of traffic stream speeds. Thi...
Predicting traffic conditions for road segments is the prelude of working on intelligent transportat...
Short-term traffic speed prediction is a promising research topic in intelligent transportation syst...
Timely and accurate traffic speed predictions are an important part of the Intelligent Transportatio...
Congestion on roadways is an issue in many cities, especially at peak times, which causes air and no...
Smart cities are nowadays equipped with pervasive networks of sensors that monitor traffic in real-t...
International audienceThis paper presents NeuTM, a framework for network Traffic Matrix (TM) predict...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
Accurate predictive modeling of traffic flow is critically important as it allows transportation use...
In general, the availability of an accurate machine learning (ML) model plays a particularly importa...
With the world constantly improving their standard of living, an increase in usage of motor vehicles...
Short-term traffic speed prediction has been an important research topic in the past decade, and man...
Over the past decade, several approaches have been introduced for short-term traffic prediction. How...
EXECUTIVE SUMMARY Traffic congestions on Riverside Freeway, California, SR 91 usually happen on wee...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
This paper addresses the problem of stretch wide short-term prediction of traffic stream speeds. Thi...
Predicting traffic conditions for road segments is the prelude of working on intelligent transportat...
Short-term traffic speed prediction is a promising research topic in intelligent transportation syst...
Timely and accurate traffic speed predictions are an important part of the Intelligent Transportatio...
Congestion on roadways is an issue in many cities, especially at peak times, which causes air and no...
Smart cities are nowadays equipped with pervasive networks of sensors that monitor traffic in real-t...
International audienceThis paper presents NeuTM, a framework for network Traffic Matrix (TM) predict...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
Accurate predictive modeling of traffic flow is critically important as it allows transportation use...
In general, the availability of an accurate machine learning (ML) model plays a particularly importa...
With the world constantly improving their standard of living, an increase in usage of motor vehicles...