Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Systems (ITSs). Indeed, most control and management strategies on transportation systems are based on the knowledge of user flows. For implementing ITS strategies, the forecast of user flows on some network links obtained as a function of user flows on other links (for instance, where data are available in real time with sensors) may provide a significant contribution. In this paper, we propose the use of Artificial Neural Networks (ANNs) for forecasting metro onboard passenger flows as a function of passenger counts at station turnstiles. We assume that metro station turnstiles record the number of passengers entering by means of an automatic ...
Abstract: Relevant path planning using public transporta-tion is limited by reliability of the trans...
An Artificial neural network (ANN) is a mathematical model that imitates biological neural network p...
The ability to accurately forecast train arrival times is essential for the safe and efficient opera...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
Artificial Neural Networks (ANNs) were used in this study to estimate the hourly passenger populatio...
<p>Passenger flow estimation of transit systems is essential for new decisions about additional faci...
Passenger flow estimation of transit systems is essential for new decisions about additional facilit...
The project the authors of this paper are involved in is titled "System for intelligent realtime tim...
Real-time and accurate travel time information of transit vehicles is valuable as it allows passenge...
Abstract: This paper develops two dynamic neural network structures to forecast short-term railway p...
At present the problem of forecasting passenger transport demand is of immense importance for air tr...
WCRR 2019, 12th World Congress on Railway Research, TOKYO, JAPON, 28-/10/2019 - 01/11/2019Passenger ...
In this paper a new methodology to estimate/update and forecast dynamic real time origin–destination...
This study analyses the use of neural networks to produce accurate forecasts of total bookings and c...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
Abstract: Relevant path planning using public transporta-tion is limited by reliability of the trans...
An Artificial neural network (ANN) is a mathematical model that imitates biological neural network p...
The ability to accurately forecast train arrival times is essential for the safe and efficient opera...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
Artificial Neural Networks (ANNs) were used in this study to estimate the hourly passenger populatio...
<p>Passenger flow estimation of transit systems is essential for new decisions about additional faci...
Passenger flow estimation of transit systems is essential for new decisions about additional facilit...
The project the authors of this paper are involved in is titled "System for intelligent realtime tim...
Real-time and accurate travel time information of transit vehicles is valuable as it allows passenge...
Abstract: This paper develops two dynamic neural network structures to forecast short-term railway p...
At present the problem of forecasting passenger transport demand is of immense importance for air tr...
WCRR 2019, 12th World Congress on Railway Research, TOKYO, JAPON, 28-/10/2019 - 01/11/2019Passenger ...
In this paper a new methodology to estimate/update and forecast dynamic real time origin–destination...
This study analyses the use of neural networks to produce accurate forecasts of total bookings and c...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
Abstract: Relevant path planning using public transporta-tion is limited by reliability of the trans...
An Artificial neural network (ANN) is a mathematical model that imitates biological neural network p...
The ability to accurately forecast train arrival times is essential for the safe and efficient opera...