Short-term Railway Passenger Demand Forecasting di Tsung-Hsien Tsai edito da VDM Verlag
Alta reperibilità

Short-term Railway Passenger Demand Forecasting

Artificial Neural Networks Approaches

Editore:

VDM Verlag

EAN:

9783639161496

ISBN:

3639161491

Pagine:
156
Formato:
Paperback
Lingua:
Tedesco
Acquistabile con o la

Descrizione Short-term Railway Passenger Demand Forecasting

Forecasting passenger arrival is crucial for daily operations. In revenue management, predicting the number of passengers at departure offers essential information for seat allocation, overbooking, and pricing decisions. In recent years, Artificial Neural Networks have been successfully applied on solving time series forecasting problems. In this study, we show how to design ANN models to predict short-term railway passenger demand by using input information as effective as possible. The concept of divide-and-conquer is utilized in designing new structures in this study; three novel networks termed multiple temporal units neural network, parallel ensemble neural network and input recurrent neural network are proposed. Furthermore, six related issues are tested to show the predictive capability of individual models and their combinations. The book should shed some light on ANN network structures and also the benefit of combining models within ANN and between various methodologies; it should be useful for researchers and practitioners who are in the field of time series forecasting, ANN, revenue management and railway transportation.

Spedizione gratuita
€ 61.31
o 3 rate da € 20.44 senza interessi con
Disponibile in 10-12 giorni
servizio Prenota Ritiri su libro Short-term Railway Passenger Demand Forecasting
Prenota e ritira
Scegli il punto di consegna e ritira quando vuoi

Recensioni degli utenti

e condividi la tua opinione con gli altri utenti