Real-time traffic flow data across entire networks can be used in a traffic management system to monitor current traffic flows so that traffic can be directed and managed efficiently. Reliable short-term forecasting models of traffic flows are crucial for the success of any traffic management system. The model proposed in this paper for forecasting traffic flows is a multivariate Bayesian dynamic model called the multiregression dynamic model (MDM). This model is an example of a dynamic Bayesian network and is designed to preserve the conditional independences and causal drive exhibited by the traffic flow series. Sudden changes can occur in traffic flow series in response to such events as traffic accidents or roadworks. A traffic ...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
This dissertation introduces traffic forecasting methods for different network configurations and da...
Traffic state forecasting is crucial for traffic management and control strategies, as well as user-...
Real-time traffic flow data across entire networks can be used in a traffic management system to mon...
Real-time traffic flow data across entire networks can be used in a traffic man-agement system to mo...
Traffic flow data are routinely collected for many networks worldwide. These invariably large data ...
Congestion on roads is a major problem worldwide. Many roads now have induction loops implanted into...
Traffic flow data are routinely collected for many networks worldwide. These invariably large data s...
Congestion on roads is a crucial problem which affects our lives in many ways: As a consequence, the...
The problem of modelling multivariate time series of vehicle counts in traffic networks is considere...
Linear multiregression dynamic models (LMDMs), which combine a graphical representation of a multiva...
This paper introduces a new class of Bayesian dynamic models for inference and forecasting in high-d...
Traffic control is essential for the achievement of a sustainable and safe mobility. Monitoring syst...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
This dissertation introduces traffic forecasting methods for different network configurations and da...
Traffic state forecasting is crucial for traffic management and control strategies, as well as user-...
Real-time traffic flow data across entire networks can be used in a traffic management system to mon...
Real-time traffic flow data across entire networks can be used in a traffic man-agement system to mo...
Traffic flow data are routinely collected for many networks worldwide. These invariably large data ...
Congestion on roads is a major problem worldwide. Many roads now have induction loops implanted into...
Traffic flow data are routinely collected for many networks worldwide. These invariably large data s...
Congestion on roads is a crucial problem which affects our lives in many ways: As a consequence, the...
The problem of modelling multivariate time series of vehicle counts in traffic networks is considere...
Linear multiregression dynamic models (LMDMs), which combine a graphical representation of a multiva...
This paper introduces a new class of Bayesian dynamic models for inference and forecasting in high-d...
Traffic control is essential for the achievement of a sustainable and safe mobility. Monitoring syst...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
This dissertation introduces traffic forecasting methods for different network configurations and da...
Traffic state forecasting is crucial for traffic management and control strategies, as well as user-...