AbstractThis study proposes a statistical model to estimate route traffic flows in congested networks. In the study, it is assumed that route traffic flows conform to the stochastic user equilibrium (SUE) principle while being treated as random variables in order to exploit the stochastic nature of traffic. The proposed model formulates the distribution of these random variables as the conditional distribution of route flows and origin–destination (O-D) travel demand, given the observed link flows and the SUE principle. Here, the SUE principle is accounted for through the likelihood of user behaviours rather than by using a bi-level formulation. In this study, the Bayesian theorem is applied to derive the probability density function (PDF) ...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
Network-based transport models are used for a host of purposes, from estimation of travel demand thr...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
We study Bayesian models and methods for analysing network traffic counts in problems of inference a...
In order to better understand the stochastic dynamic features of signalized traffic networks, we pro...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
Estimation of origin⁻destination (OD) demand plays a key role in successful transportation stu...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
Origin-destination (O-D) matrices are essential inputs to dynamic traffic assignment and traffic sim...
Traffic parameter characteristics in congested road networks are explored based on traffic flow theo...
Evaluating uncertainty of traffic networks is very important. In order to assess the uncertainty the...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
<p>Traffic state estimation (TSE) aims to estimate the time-varying traffic characteristics (such as...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
Network-based transport models are used for a host of purposes, from estimation of travel demand thr...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
We study Bayesian models and methods for analysing network traffic counts in problems of inference a...
In order to better understand the stochastic dynamic features of signalized traffic networks, we pro...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
Estimation of origin⁻destination (OD) demand plays a key role in successful transportation stu...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
Origin-destination (O-D) matrices are essential inputs to dynamic traffic assignment and traffic sim...
Traffic parameter characteristics in congested road networks are explored based on traffic flow theo...
Evaluating uncertainty of traffic networks is very important. In order to assess the uncertainty the...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
<p>Traffic state estimation (TSE) aims to estimate the time-varying traffic characteristics (such as...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
Network-based transport models are used for a host of purposes, from estimation of travel demand thr...