In most regions of the world, traffic systems are under increasing pressure as the population and number of automobiles grow. To reduce the burden on the urban road network caused by the increasing number of vehicles, it is essential to know the dynamic traffic speeds on the road network at each time of day to help with real-time vehicle planning to prevent congestion. Understanding traffic speeds requires estimation and prediction based on historical speed data, which is made possible with the help of artificial intelligence and large amounts of historical data. Before the model can be trained, it is essential to process the dataset. For the model to truly reflect the dynamics of the road network, historical speeds and trajectories data ne...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Map matching is a crucial data processing task for transferring measurements from the dynamic sensor...
Nowadays short-term traffic prediction is of great interest in Intelligent Transportation Systems (I...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
Big data from floating cars supply a frequent, ubiquitous sampling of traffic conditions on the road...
Real-time urban traffic speed estimation provides significant benefits in many real-world applicatio...
Rapidly increasing vehicle congestion has been deteriorating the quality of life of people in urba...
Route planning is an important part for companies that transport goods between different locations. ...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
The objective of this study is to estimate the real time travel times on urban networks that are par...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
This paper addresses the problem of stretch wide short-term prediction of traffic stream speeds. Thi...
A full methodology of short-term traffic prediction is proposed for urban road traffic network via A...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Map matching is a crucial data processing task for transferring measurements from the dynamic sensor...
Nowadays short-term traffic prediction is of great interest in Intelligent Transportation Systems (I...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
Big data from floating cars supply a frequent, ubiquitous sampling of traffic conditions on the road...
Real-time urban traffic speed estimation provides significant benefits in many real-world applicatio...
Rapidly increasing vehicle congestion has been deteriorating the quality of life of people in urba...
Route planning is an important part for companies that transport goods between different locations. ...
Frequent traffic congestion and gridlocks are causing global economies staggering cost in terms of f...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
The objective of this study is to estimate the real time travel times on urban networks that are par...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
This paper addresses the problem of stretch wide short-term prediction of traffic stream speeds. Thi...
A full methodology of short-term traffic prediction is proposed for urban road traffic network via A...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Map matching is a crucial data processing task for transferring measurements from the dynamic sensor...