会议专题

Short Term Public Transit Dispatch Model Using State Space Neural Networkes

This paper discusses the solution of proposed bus dispatching in short terms using state space neural networks (SSNN).Instead of treating the neural network as a black box model,the design of SSNN can explicitly reflect the relationship that exists in physical public transit system.It allows the interpretation of neuron weights and structure in terms of the inherent mechanism of the network process with clear physical meaning.Model performance is tested by a densely used public transit data in Nanjing.BP neural networks and ARMA model are investigated to compare the performance of the model.Results of the comparisons indicate that in short terms SSNN model can adjust bus departing interval based on passenger flow space and time variations and predict bus dispatching with satisfying effectiveness, robustness and reliability.

public transport dispatch in short terms state space neural networks departing interval prediction component

Jin Gao Wei Deng Yan-jie Ji

Transportation College Southeast University Naniing, China

国际会议

2009 Second International Conference on Intelligent Computation Technology and Automation(2009 第二届IEEE智能计算与自动化国际会议 ICICTA 2009)

长沙

英文

99-102

2009-10-10(万方平台首次上网日期,不代表论文的发表时间)