Title
New Travel Demand Models with Back-Propagation Network
Abstract
This paper explores the application of backpropagation network (BPN) to travel demand analysis. Models are developed to simulate travelers' inner-city behaviors and all of them adopt BPNs as main paradigm, for its virtue in non-linear analysis and prediction. Compared to the past researches, which were generally based on aggregate data, the models here are more comprehensive and developed based on disaggregate survey data. At first, three categories of models using BPNs are established to respectively realize trip generation, OD estimation and mode choice analysis-the first three steps in classical "four-step" models for travel demand forecasting. Furthermore, the integrated models are researched in two ways. One method is to use a simple combination of the former separate BPN models, and the other is to create a multilayer back-propagation network (MLBPN). Results show that BPN can be a feasible tool for travel demand analysis.
Year
DOI
Venue
2007
10.1109/ICNC.2007.500
ICNC
Keywords
Field
DocType
new travel demand models,non-linear analysis,travel demand analysis,back-propagation network,backpropagation network,demand analysis,travel demand forecasting,multilayer back-propagation network,aggregate data,former separate bpn model,od estimation,disaggregate survey data,travel industry,backpropagation,demand forecasting,survey data
Survey data collection,Demand forecasting,Computer science,Mode choice,Demand analysis,Trip generation,Operations research,Tourism,Artificial intelligence,Aggregate data,Backpropagation,Machine learning
Conference
Volume
ISSN
ISBN
3
2157-9555
0-7695-2875-9
Citations 
PageRank 
References 
3
0.46
1
Authors
3
Name
Order
Citations
PageRank
Qian ZHOU13613.44
Huapu Lu2347.46
Wei Xu330.46