This study analyses the use of neural networks to produce accurate forecasts of total bookings and cancellations before departure, of a major European rail operator. Effective forecasting models, can improve revenue performance of transportation companies significantly. The prediction model used in this research is an improved multi-layer perceptron (MLP) describing the relationship between number of passengers and factors affecting this quantity based on historical data. Relevant pre-processing approaches have been employed to make learning more efficient. The generalisation of the network is tested to evaluate the accuracy prediction of the regression model for future trends of reservations and cancellations using actual railroad data. Th...
WCRR 2019, 12th World Congress on Railway Research, TOKYO, JAPON, 28-/10/2019 - 01/11/2019Passenger ...
At present the problem of forecasting passenger transport demand is of immense importance for air tr...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...
Abstract: This paper develops two dynamic neural network structures to forecast short-term railway p...
Forecasting models and neural networks -- Problem definition and treatment of the data -- Model stru...
Demiryolu yolcu planlamaları ve gerekli noktalara yapılması düşünülen projelerin taşıma oranını beli...
The research in Revenue Management has tightly focused on airline markets and somewhat neglected oth...
In the 1980s a renewed interest in artificial neural networks (ANN) has led to a wide range of appli...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
This paper deals with the tricky issue of forecasting the number of daily orders received by a deliv...
The choice of the optimal amount of food to load on each individual train is a crucial topic for the...
Objectives The purpose of this research is to provide a series of Forecasts to the Argentinian Rail...
This paper aims to compare the performance of three different artificial neural network techniques f...
This paper aims to compare the performance of three different artificial neural network techniques f...
This paper aims to compare the performance of three different artificial neural network techniques f...
WCRR 2019, 12th World Congress on Railway Research, TOKYO, JAPON, 28-/10/2019 - 01/11/2019Passenger ...
At present the problem of forecasting passenger transport demand is of immense importance for air tr...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...
Abstract: This paper develops two dynamic neural network structures to forecast short-term railway p...
Forecasting models and neural networks -- Problem definition and treatment of the data -- Model stru...
Demiryolu yolcu planlamaları ve gerekli noktalara yapılması düşünülen projelerin taşıma oranını beli...
The research in Revenue Management has tightly focused on airline markets and somewhat neglected oth...
In the 1980s a renewed interest in artificial neural networks (ANN) has led to a wide range of appli...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
This paper deals with the tricky issue of forecasting the number of daily orders received by a deliv...
The choice of the optimal amount of food to load on each individual train is a crucial topic for the...
Objectives The purpose of this research is to provide a series of Forecasts to the Argentinian Rail...
This paper aims to compare the performance of three different artificial neural network techniques f...
This paper aims to compare the performance of three different artificial neural network techniques f...
This paper aims to compare the performance of three different artificial neural network techniques f...
WCRR 2019, 12th World Congress on Railway Research, TOKYO, JAPON, 28-/10/2019 - 01/11/2019Passenger ...
At present the problem of forecasting passenger transport demand is of immense importance for air tr...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...