TITLE:
The Research of Urban Rail Transit Sectional Passenger Flow Prediction Method
AUTHORS:
Qian Li, Yong Qin, Ziyang Wang, Zhongxin Zhao, Minghui Zhan, Yu Liu, Zhiguo Li
KEYWORDS:
Urban Rail Transit; Neural Network; Sectional Passenger Flow; Prediction Method
JOURNAL NAME:
Journal of Intelligent Learning Systems and Applications,
Vol.5 No.4,
November
12,
2013
ABSTRACT: This paper studies the short-term prediction methods of sectional passenger flow, and selects BP neural network combined with the characteristics of sectional passenger flow itself. With a case study, we design three different schemes. We use Matlab to realize the prediction of the sectional passenger flow of the Beijing subway Line 2 and make comparative analysis. The empirical research shows that combining data characteristics of sectional passenger flow with the BP neural network have good prediction accuracy.