Road traffic congestion is an increasing societal problem. Road agencies and users seeks accurate and reliable travel speed information. This thesis developed a network-scale traffic state prediction based on Convolutional Neural Network (CNN). The method can predict the speed over the network accurately by preserving road connectivity and incorporating historical datasets. When dealing with an extensive network, the thesis also developed a clustering method to reduce the complexity of the prediction. By accurately predict the traffic state over a network, traffic operators can manage the network more effectively and travellers can make informed decision on their journeys
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
This study investigates the utilization of Graph Neural Networks (GNNs) within the realm of traffic ...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
This paper proposes a traffic speed prediction framework combining a Convolutional Neural Network (C...
This paper proposes a convolutional neural network (CNN)-based method that learns traffic as images ...
When using the convolutional neural network (CNN) model to predict short-term traffic congestion, du...
Part 6: Intelligent ApplicationsInternational audienceTraffic three elements consisting of flow, spe...
Traffic speed prediction plays an important role in intelligent transportation systems, and many app...
The paper adopts the state-of-The-Art machine learning deep neural network to model the evolution of...
This paper proposes a deep learning approach for traffic flow prediction in complex road networks. T...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Timely and accurate traffic speed predictions are an important part of the Intelligent Transportatio...
Recently, short-term traffic prediction under conditions with corrupted or missing data has become a...
The prediction of accurate traffic information such as speed, travel time, and congestion state is a...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
This study investigates the utilization of Graph Neural Networks (GNNs) within the realm of traffic ...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
This paper proposes a traffic speed prediction framework combining a Convolutional Neural Network (C...
This paper proposes a convolutional neural network (CNN)-based method that learns traffic as images ...
When using the convolutional neural network (CNN) model to predict short-term traffic congestion, du...
Part 6: Intelligent ApplicationsInternational audienceTraffic three elements consisting of flow, spe...
Traffic speed prediction plays an important role in intelligent transportation systems, and many app...
The paper adopts the state-of-The-Art machine learning deep neural network to model the evolution of...
This paper proposes a deep learning approach for traffic flow prediction in complex road networks. T...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Timely and accurate traffic speed predictions are an important part of the Intelligent Transportatio...
Recently, short-term traffic prediction under conditions with corrupted or missing data has become a...
The prediction of accurate traffic information such as speed, travel time, and congestion state is a...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
This study investigates the utilization of Graph Neural Networks (GNNs) within the realm of traffic ...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...